254
Zoltán J. Ács László Szerb Erkko Autio 2015

Zoltán J. Ács László Szerb Erkko Autio

Embed Size (px)

Citation preview

Page 1: Zoltán J. Ács László Szerb Erkko Autio

m

alam

lic

bago

mirates

public

Zoltán J. Ács László Szerb Erkko Autio

2015

Page 2: Zoltán J. Ács László Szerb Erkko Autio

Global Entrepreneurship Index 2015

Page 3: Zoltán J. Ács László Szerb Erkko Autio

ii

Zoltán J. Ács

Professorial Fellow London School of Economics and Political Science, UK University Professor in the School of Public Policy at George Mason University, USA

László Szerb

University Professor and Director of the Department of Business and Management Studies in the Faculty of Business and Economics at the University of Pecs, Hungary

Erkko Autio

Chair in Technology Venturing and Entrepreneurship and Director of the Doctoral Programme at Imperial College London Business School, UK

© The Global Entrepreneurship and Development Institute, Washington, D.C., USA

Page 4: Zoltán J. Ács László Szerb Erkko Autio

Table of Contents

About The Global Entrepreneurship and Development Institute........................................................................... vii

Preface: A Compass for Strengthening Entrepreneurial Ecosystems ................................................................... ix

Global Entrepreneurship in 2015 ............................................................................................................................... xi

Chapter 1: Introduction ............................................................................................................................................... 1

Chapter 2: The Global Entrepreneurship Index ....................................................................................................... 13

Introduction ............................................................................................................................................................. 13

The S-Shaped Curve ............................................................................................................................................... 13

The 14 Pillars of Entrepreneurship .......................................................................................................................... 15

Entrepreneurial Attitude Pillars ................................................................................................................................ 15

Entrepreneurial Ability Pillars .................................................................................................................................. 16

Entrepreneurial Aspiration Pillars ............................................................................................................................ 17

The Global Entrepreneurship Index, 2015 Rankings ............................................................................................... 18

The Ranking of the 3As ........................................................................................................................................... 21

Summary and Conclusion ....................................................................................................................................... 27

Chapter 3: Performance by Country and Country Group ....................................................................................... 31

Sub-Saharan Africa ................................................................................................................................................. 32

Middle East and North Africa (MENA) ..................................................................................................................... 35

Asia-Pacific ............................................................................................................................................................. 38

Europe ..................................................................................................................................................................... 42

North America ......................................................................................................................................................... 46

South and Central America and the Caribbean ....................................................................................................... 49

Chapter 4: Enhancing Entrepreneurship Ecosystems. A “Systems of Entrepreneurship” Approach to Entrepreneurship Policy ............................................................................................................................................ 55

Introduction ............................................................................................................................................................. 55

What Are Systems of Entrepreneurship? ................................................................................................................ 56

Systems of Entrepreneurship and Entrepreneurship Ecosystem Policy .................................................................. 58

Using the GEI Approach for Entrepreneurship Ecosystem Policy Analysis ............................................................. 60

Using the GEI Method for Entrepreneurship Ecosystem Policy Design .................................................................. 62

Chapter 5: Methodology and Data Description ....................................................................................................... 67

Introduction ............................................................................................................................................................. 67

The Index Structure ................................................................................................................................................. 67

The Individual Variables and Dataset ...................................................................................................................... 68

Page 5: Zoltán J. Ács László Szerb Erkko Autio

iv

Summary ................................................................................................................................................................. 80

Appendix A Pillar distributions ........................................................................................................................... 81

Appendix B The Global Entrepreneurship Sub-Index Rank of Countries in alphabetical order, 2015 ......... 89

Appendix C Entrepreneurial Attitudes Sub-Index and Pillar Values of Countries in alphabetical order, 2015 ........................................................................................................................................................... 93

Appendix D Entrepreneurial Abilities Sub-Index and Pillar Values of Countries in alphabetical order, 2015 . ........................................................................................................................................................... 97

Appendix E Entrepreneurial Aspirations Sub-Index and Pillar Values of Countries in alphabetical order, 2015 ......................................................................................................................................................... 101

Country Pages ..........................................................................................................................................................107

Tables, Figures, and Highlight Boxes

Figure 1.1: The Structure of the Global Entrepreneurship Index .................................................................................... 3 Table 1.1: The Ten Most Entrepreneurial Countries in 2015 ......................................................................................... 4 Table 1.2: Points and Ranks of the Countries in the 2015 GEI ....................................................................................Table 1.3: The Ten Biggest Gains in GEI Score from 2014 to 2015 .............................................................................. 6 Table 1.4: The Ten Biggest Declines in GEI Score between 2014 and 2015 ................................................................ 6 Table 1.5: The Top Performing Country in Each Region ............................................................................................... 7 Map: The 2015 GEI Results ........................................................................................................................................... 8 Figure 2.1: The S-Curve of Entrepreneurship .............................................................................................................. 14 Table 2.1: The Global Entrepreneurship Index Rank of all Countries, 2015 ................................................................ 19 Figure 2.2: The Three Sub-Indexes in Terms of Per Capita Real GDP (2006-2013, all data included) ....................... 22 Table 2.2: The Global Entrepreneurship Index and Sub-Index Ranks of the First 25 Countries, 2015 ........................ 23 Table 2.3: Entrepreneurial Attitudes Sub-Index and Pillar Values for the First 25 Countries, 2015* ............................ 24 Table 2.4: Entrepreneurial Abilities Sub-Index and Pillar Values for the First 25 Countries, 2015 ............................... 25 Table 2.5: Entrepreneurial Aspirations Sub-Index and Pillar Values for the First 25 Countries, 2015* ........................ 26 Table 3.1: Country Groups Analyzed in This Chapter .................................................................................................. 31 Table 3.2: GEI Ranking of the Sub-Saharan African Countries ................................................................................... 33 Figure 3.1: Pillar Level Comparison of Africa and the World ........................................................................................ 34 Figure 3.2: Pillar-Level Comparison of South Africa, Nigeria, and Uganda.................................................................. 35 Table 3.3: GEI Ranking of the Middle East and North African Countries ..................................................................... 36 Figure 3.3: Pillar-Level Comparison of MENA and the World ...................................................................................... 37

Page 6: Zoltán J. Ács László Szerb Erkko Autio

Figure 3.4: Pillar-Level Comparison of the United Arab Emirates, Tunisia, and Egypt ................................................ 38 Table 3.4: GEI Ranking of the Asia-Pacific Countries .................................................................................................. 38 Figure 3.5: Pillar-Level Comparison of Asia and the World .......................................................................................... 39 Figure 3.6: Pillar-Level Comparison of Australia, China, and Bangladesh ................................................................... 41 Table 3.5: GEI Ranking of the European Countries ..................................................................................................... 42 Figure 3.7: Pillar-Level Comparison of Europe and the World ..................................................................................... 44 Figure 3.8: Pillar-Level Comparison of the United Kingdom, Greece, and Russia ....................................................... 45 Table 3.6: GEI Ranking of the North American Countries ............................................................................................ 46 Figure 3.9: Pillar-Level Comparison of North America and the World .......................................................................... 47 Figure 3.10: Pillar-Level Comparison of the United States, Canada, and Mexico ........................................................ 48 Table 3.7: GEI Ranking of the South and Central American and Caribbean Countries ............................................... 49 Figure 3.11: Pillar-Level Comparison of the Latin American Region and the World .................................................... 50 Figure 3.12: Pillar-Level Comparison of Chile, Brazil, and Suriname........................................................................... 51 Figure 2.1: Dynamic of National Systems of Entrepreneurship .................................................................................... 59 Figure 2.2: Entrepreneurship Ecosystem Profiles of the U.S., Japan, and India .......................................................... 60 Table 2.1: Ecosystem Optimization Analysis for UK Home Nations ............................................................................ 62 Table 5.1: The Description of the Individual Variables Used in the GEI ....................................................................... 68 Table 5.2: The Distribution of the Sample by Countries and the Calculation of the Individual Variables ..................... 69 Table 5.3: The Description and Source of the Institutional Variables Used in the GEI ................................................ 72 Table 5.4: The Correlation Matrix between the Original Indicators (2006-2013 dataset) ............................................. 78 Table 5.5: The Correlation Matrix between the Indicators, Sub-Indexes and the GEI Super-Index after Normalizing and Applying the PFB Method (2006-2012 dataset) .................................................................................................... 79

Acknowledgements:

We would like to thank Ainsley Lloyd for producing the 2015 Global Entrepreneurship Index. She managed the entire production process from start to finish, including the country tables, the artwork, the layout, editing and proofreading.

We would like to thank Jonathan Ortmans and Global Entrepreneurship Network for their support and collaboration on the production and dissemination of the 2015 GEI.

Page 7: Zoltán J. Ács László Szerb Erkko Autio
Page 8: Zoltán J. Ács László Szerb Erkko Autio

About The Global Entrepreneurship and Development Institute

Zoltán J. Ács Founder and President, the GEDI Institute

The Global Entrepreneurship and Development Institute (GEDI Institute) is a non-profit organisation that advances research on links between entrepreneurship, economic development and prosperity. The institute was founded by world-leading entrepreneurship scholars from the George Mason University, University of Pécs and Imperial College London. The flagship project of the Institute is the GEI Index, a breakthrough advance in measuring the quality and dynamics of entrepreneurship ecosystems at a national and regional level. The Global Entrepreneurship Index methodology, upon which the data in this report is based, has been validated in rigorous academic peer reviews and has been widely reported in media, including in The Economist, The Wall Street Journal, Financial Times and Forbes.

Page 9: Zoltán J. Ács László Szerb Erkko Autio
Page 10: Zoltán J. Ács László Szerb Erkko Autio

Preface: A Compass for Strengthening Entrepreneurial Ecosystems

Jonathan Ortmans President, Global Entrepreneurship Network

The globalization of entrepreneurship is producing an explosion of programs, startup communities, policy interventions and investments across the world. Now, ideas, capital and talent speed across borders finding “founder teams” to create new ventures that fuel economic growth and stability. These are exciting times when a new generation of risk takers are leveling the playing field and creating new opportunities for more people.

These developments are manifested in the various activities of the Global Entrepreneurship Network (GEN) – a community that has arisen from Global Entrepreneurship Week, the annual celebration of entrepreneurs now in more than 150 countries. Started as a grassroots movement anchored in established economies with stable political systems, GEN has evolved and matured into a year-round platform that operates in all types of economies and cultures.

A careful look at this entrepreneurial renaissance reveals, however, that new challenges have emerged. In particular, data collection and analysis has not been able to keep pace with the rapid growth of programs and other interventions designed to increase rates of new firm formation. There exists a paucity of data, not just around what works and what does not in supporting new entrepreneurs, but about the overall entrepreneurial performance of our societies. In short, we do not know where and how our efforts are succeeding and failing.

Countries seeking to add entrepreneurial resilience to their economies benchmark their regulatory frameworks and ecosystem performance against other economies. At the same time, academics and economists still debate what to measure, which data is credible and which methodologies should be considered reliable. This has given rise to a new dialogue between startup community leaders and government leaders seeking more sophisticated tools, programs and research to help them most efficiently direct their attention and funds to areas that have the greatest impact on future economic growth.

Such dialogue is certainly a key part of the experimentation formula that unearths solutions in both the startup and policy worlds – and as a broad-based movement of leaders and feeders to the entrepreneurial ecosystem, GEN is actively working to build trust between these players. Coupled with solid data, such dialogue could go much further in helping us all fine-tune our efforts and in a much more efficient way. GEN has therefore partnered with the Global Entrepreneurship and Development Institute to present the Global Entrepreneurship Index (GEI).

The Global Entrepreneurship Index, while by no means the definitive answer, seeks to provide more than just a country’s relative global ranking. The Index sheds light on the efficiency of national startup ecosystems through analysis of 34 essential individual and institutional variables. It attempts to reveal the bottlenecks that erode hard-won competitive advantages for startup ecosystems and provide rankings by region to provide policymakers regulatory environment comparisons with surrounding economies.

The pulse-taking in this report will be updated annually, with a fresh assessment released each November during Global Entrepreneurship Week. Due in part to the efforts of those leading GEW and of the myth-busting work of the knowledge houses that today form the Global Entrepreneurship Research Network, GEN hopes to help governments around the world improve upon and expand their understanding of new and young firm formation. As a platform for all these concerted efforts, GEN is committed to feed that interest and push the frontier forward in terms of academic rigor. The Global Entrepreneurship Index is a firm step in that direction.

Page 11: Zoltán J. Ács László Szerb Erkko Autio
Page 12: Zoltán J. Ács László Szerb Erkko Autio

Rank Country GEI Score

1 United States

2 Canada

3 Australia

4 United Kingdom

5 Sweden

6 Denmark

7 Iceland

8 Taiwan

9 Switzerland

10 Singapore

Global Entrepreneurship in 2015

The world is at 52% of its entrepreneurial capacity

%%

United States (#1)is at a historical high of

Top Performers by Region

#1

(#21) tops the region at

#21

(#20) tops the region at

#20

(#4) leads at

#4

(#53) leads at

#53

points

-0.7

-5.2

2.0

-2.5

0.3

Europe

Asia-Pacific

Middle East / North Africa

South and Central

America / Caribbean

Sub- Saharan

Africa

Page 13: Zoltán J. Ács László Szerb Erkko Autio
Page 14: Zoltán J. Ács László Szerb Erkko Autio
Page 15: Zoltán J. Ács László Szerb Erkko Autio
Page 16: Zoltán J. Ács László Szerb Erkko Autio

Chapter 1: Introduction The world economy is facing important medium- and long-term challenges. Whereas rich countries will be challenged to increase their economic productivity to sustain current standards of living as their populations rapidly age, low-income economies will need to integrate more than two billion young adults into the world economy by 2050. Economic initiatives by enterprising individuals are likely to be key in addressing the challenges of long-term productivity in rich countries, whereas poor countries will continue to struggle to integrate their rapidly growing populations into their economies.

These economic challenges occur unevenly in different regions of the globe. In the developed world, the population of the 15-59 age group, the core of the labor force, is expected to lose almost 15 percent between 2010 and 2040. However, the number of people in that age group in the developing world is still rising rapidly and is expected to increase by 50 percent by 2050, excluding China whose labor force has already stopped growing). In sub-Saharan Africa alone, the population aged 15-59 will increase from 455 million today to over one billion by 2050. Thus, the lion’s share of the growth in the world labor force in the coming decades will occur in the less developed countries (again excluding China), where the number of 15- to 59-year-olds will increase by 1.3 billion in the next 40 years.

Although global population growth is slowing in some regions, the 1980s and 1990s were years of high fertility in most countries of the world, and the exceptionally large cohorts born during those decades are now entering the labor market. Thus we are in the midst of a labor force boom not likely to end for another 30 or 40 years. Clearly, what the world economy most needs now is jobs; the main questions are, how many will we need to create, and how fast.

How can more than one billion jobs be created in the developing world within this timeframe, especially in the least developed countries, where poverty and massive unemployment are already the dominant facts of economic life? The approaches used by the development community in the last 50 years have generally not been effective. Simply making capital more readily available in the form of grants and loans has created debt and squandered resources. The idea that, if rich countries build roads, dams, and power stations, jobs will follow, has proved misguided. More recent approaches, such as microcredit, improving the rule of law, and supporting smallholder property registration, all efforts to jumpstart the founding of small businesses, have helped in many localities, but they have yet to produce the increase in large-scale, labor-intensive industries that will create jobs where they are most needed.

The one solution that can provide jobs on that scale lies in a combination of innovation and entrepreneurship. Research on economic growth over the last 30 years has strongly emphasized that rapid job creation comes from rapidly growing companies. Therefore, the world’s developing countries will be able to provide the jobs their rapidly increasing populations require only by encouraging the founding of companies that grow rapidly by providing widely desired new products or services. Such companies are usually created by exploiting new market niches and offering novel products, services, or processes that have few competitors or substitutes. The combination of novel products, few immediate competitors, and high demand created by new markets can sustain high levels of profitability, which will provide the capital and the incentives for the rapid expansion of production and employment.

Some economists believe that developing economies should exploit their comparative advantage of using low-cost labor to produce primary products, while advanced economies provide the technical innovation and entrepreneurship that create new industries. However, this approach has not, and will not, be sufficient to meet the employment challenges facing the developing world. Competing globally by providing low-cost

Page 17: Zoltán J. Ács László Szerb Erkko Autio

labor was effective when the rich countries seemed able to absorb an unending stream of cheap imports, but that is no longer the case; in fact, only a few nations actually followed this path.

Moreover, such a strategy is unlikely to be effective when a billion new workers are looking for employment while the economies of the developed world—aging and paying down their accumulated debts—are shifting from rapid to tepid growth. Relying on the production of primary products condemns countries to endless cycles of commodity boom and bust, as countries from Russia to Zambia have discovered. To succeed in the rapidly growing markets of the emerging nations will require that new products be developed for these markets that are cheaper, easier to maintain, and vastly more efficient. Only innovation and the creation of new enterprises are likely to offer a long-term solution to the economic needs of developing countries.

How can we encourage the spread of innovation and entrepreneurship in the developing world that will be the key to future global prosperity? The answer is entrepreneurship. More than one hundred years ago, in the Theory of Economic Development, Joseph Schumpeter pointed out that entrepreneurs are important for development. Today we can expand on that and say they are the key drivers of economic development. While Schumpeter was describing countries that had similar levels of development, in today’s globalized world we are dealing with countries that have very different levels of development. Furthermore, the importance that institutions such as the rule of law and education play in economic development has become increasingly clear to economists and policymakers alike. We now must understand clearly why institutions are important for development and what roles they play. We already know that they are important because they create the incentive structure that determines the behavior of entrepreneurs. Without these positive incentives, entrepreneurs will not engage in productive activities.

The Global Entrepreneurship Index (GEI) provides a detailed look at the entrepreneurial ecosystem of nations by combining individual data with institutional components. We have developed a system that links institutions and agents through a National Entrepreneurial System (ecosystem) in which each biotic and abiotic component is reinforced by the other at the country level. This composite index of both individual- and country-level institutional data gives policymakers a tool for understanding the entrepreneurial strengths and weaknesses of their countries’ economies, thereby enabling them to implement policies that foster productive entrepreneurship. GEI is designed to help governments harness the power of entrepreneurship to address these types of challenges.

The GEI is a joint project with the Global Entrepreneurship Network (GEN), the communities, organizations and leaders that have been inspired and brought together from 150 nations to build healthier entrepreneurship ecosystems as a result of Global Entrepreneurship Week. The methodology used for the GEI is significantly different from previous efforts to organize this data done by the Global Entrepreneurship Development Institute. In addition, since the number of countries in the Index has grown, we are now able to provide regional information. For example, we can focus on Africa, whose needs are different from those of Western Europe or the Middle East. However, as a result, previous results cannot be directly compared to the 2015 data given (a) the changes in the variables, (b) the alteration of the pillars, and (c) the adjustment of the benchmark values.

The purpose of this index is to measure the quality and the scale of the entrepreneurial process in 130 countries around the world. The GEI provides a rich understanding of entrepreneurship and a more precise ability to measure it. It also captures the contextual features of entrepreneurship by measuring entrepreneurial attitudes, abilities, and aspirations. These data, and the contribution they make to the process of creating businesses, are supported by three decades of research into entrepreneurship across a host of countries.

Distinct from both output-based entrepreneurship indexes (i.e., new firm counts) and process-based indexes (i.e., comparisons of policies and regulations), the GEI is designed to profile national systems of entrepreneurship. The GEI is not a simple count of, say, new firm registrations, nor is it an exercise in policy benchmarking. The Index also does not focus exclusively on high-growth entrepreneurship; it also considers the characteristics of entrepreneurship that enhance productivity: innovation, market expansion, being growth oriented, and having an international outlook.

Page 18: Zoltán J. Ács László Szerb Erkko Autio

Moreover, because entrepreneurship can have both economic and social consequences for the individual, the GEI captures the dynamic, institutionally embedded interactions between the individual-level attitudes, abilities, and aspirations that drive productive entrepreneurship.

Finally, the GEI recognizes that entrepreneurship can mean very different things in different economic and institutional contexts. A local horticultural venture, for example, would have different economic consequences for the Kenyan economy than a social media startup in Silicon Valley. Recognizing that entrepreneurship has a different impact in different contexts, the GEI combines individual-level data with data that describe national institutions, as well as economic and demographic structures, to provide an institutionally embedded view of the drivers of productive entrepreneurship. Figure 1.1 shows the structure of the GEI sub-indexes, pillars, and variables.

Figure 1.1: The Structure of the Global Entrepreneurship Index

Attitudes Sub-Index Abilities Sub-Index Aspirations Sub-Index

OPPO

RTUN

ITY

PERC

EPTI

ON

STAR

TUP

SKIL

LS

NETW

ORKI

NG

CULT

URAL

SUP

PORT

OPPO

RTUN

ITY

STAR

TUP

TECH

NOLO

GY A

BSOR

PTIO

N

HUMA

N CA

PITA

L

COMP

ETIT

ION

PROD

UCT

INNO

VATI

ON

PROC

ESS

INNO

VATI

ON

HIGH

GRO

WTH

INTE

RNAT

IONA

LIZA

TION

RISK

CAP

ITAL

MARK

ET A

GGLO

MERA

TION

OPPO

RTUN

ITY

POST

-SEC

EDU

CATI

ON

SKIL

L RE

COGN

ITIO

N

BUSI

NESS

RIS

K

INTE

RNET

USA

GE

KNOW

ENT

REPR

ENEU

R

CORR

UPTI

ON

CARE

ER S

TATU

S

FREE

DOM

TEA

OPPO

RTUN

ITY

TECH

ABS

ORPT

ION

TECH

SEC

TOR

STAF

F TR

AINI

NG

HIGH

EDU

CATI

ON

MARK

ET D

OMIN

ANCE

COMP

ETIT

ION

TECH

TRA

NSFE

R

NEW

PRO

DUCT

GERD

NEW

TEC

HNOL

OGY

BUSI

NESS

STR

ATEG

Y

GAZE

LLE

GLOB

ALIZ

ATIO

N

EXPO

RT

DEPT

H OF

CAP

ITAL

MAR

KET

INFO

RMAL

INVE

STME

NT

Note: The GEI is a super index made up of three sub-indexes, each of which is composed of several pillars. Each pillar consists of an institutional variable (denoted in bold) and an individual variable (denoted in bold italic).

If the GEI were a weather report, stormy weather would indicate a higher level of unproductive entrepreneurship, such as rent-seeking and contraband activities that interfere with and undermine a country’s economic growth and prosperity. Today’s rising “barometric pressure” means better conditions lie ahead as the world transitions from a managed economy to a more entrepreneurial society.

So what does the GEI tell us? First, as we celebrate Global Entrepreneurship Week, which sparks thousands of entrepreneurial activities all over the world, we sometimes wonder how entrepreneurship is actually faring. Are we making real progress? While we have some very good tools to predict the weather, no such simple tool has existed in the world of entrepreneurship. Until now. This is important, because as we look toward the world of 2050 we see storm clouds on the horizon: an exploding population, global warming, increasing urbanization that produces (poorly performing) larger and larger cities, and the lack of opportunity that will ultimately reduce the level of productive entrepreneurship.

Page 19: Zoltán J. Ács László Szerb Erkko Autio

The GEI measures entrepreneurship across the world and gives it a number that enables us to understand if it is getting stronger or weaker from year to year. Twenty-five years ago, before the Berlin Wall fell, the world was experiencing a very low level of entrepreneurship. With the exception of some enterprising people in a few countries in the West—the United States, Canada, the UK, and Australia—almost no one was actively pursuing productive entrepreneurship. This was especially true in Brazil, Russia, India, and China, some of today’s most rapidly developing economies. In comparison, the world today is operating at better than 50 percent of its productive entrepreneurship capacity, which has been rising slowly over the years.

How is the world economy currently faring? Are we sailing on stormy seas, or does the clear evening sky indicate a calm sail ahead? To help answer this, Table 1.1 presents the ten most entrepreneurial countries in the 2015 data for the GEI and compares them to the 2014 rankings. Note that the 2014 rankings have been recalculated with the most recent version of the GEI method (for details, see Chapter 5).

Table 1.1: The Ten Most Entrepreneurial Countries in 2015

Country GEI 2015 Rank 2015 GEI 2014 Rank 2014 United States 85.0 1 82.0 1 Canada 81.5 2 n.a. n.a. Australia 77.6 3 76.8 3 United Kingdom 72.7 4 69.9 5 Sweden 71.8 5 73.7 4 Denmark 71.4 6 78.2 2 Iceland 70.4 7 68.0 11 Taiwan 69.1 8 69.6 7 Switzerland 68.6 9 69.4 8 Singapore 68.1 10 66.4 14

The United States maintained its number-one position on the 2015 GEI. Moreover, its point value increased sharply, from 82 to 85. Thus the U.S. not only remains the most entrepreneurial country in the world, it also is increasing its lead. The four top countries—the United States, Canada, Australia, the UK—all had higher GEI point values in 2015 than in 2014. As a result, the gap between the U.S. at the top and the Scandinavian countries that follow has increased slightly. The difference between the U.S. and the strongest European nations, Sweden, Denmark, Switzerland, and Iceland is larger than in 2014. Singapore and Taiwan increased their level of productive entrepreneurship. Taiwan, with its historically high score of 69, is in eighth place, while Singapore ranks tenth, also making the GEI top ten for the first time. In sum, the top-performing entrepreneurial ecosystems in the world are the four largest English-speaking countries, followed by three Scandinavian nations and two Asian countries; Switzerland rounds out the top ten.

Table 1.2 looks at the whole world, with its listing of all 130 countries in the 2015 GEI ranking. The table shows countries in Africa, South America, Asia, and the Middle East. Many African countries were added to the 2015 list; Nigeria, the largest nation in Africa, ranks 84th, while Uganda and Bangladesh occupy the last two places. The United Arab Emirates (UAE), which continues to lead the Middle East, is clustered with Chile, Estonia, and Israel. The relatively low rankings of India and, surprisingly, China are explained by their large rural and agricultural sectors, which pull down their rankings.

Page 20: Zoltán J. Ács László Szerb Erkko Autio

Rank Country GEI Rank Country GEI Rank Country GEI 1 United States 85.0 44 Bulgaria 42.7 87 Nicaragua 28.4 2 Canada 81.5 45 Hungary 42.7 88 Kazakhstan 28.4 3 Australia 77.6 46 Cyprus 42.5 89 Trinidad &

Tobago 28.4

4 United Kingdom 72.7 47 Greece 42.0 90 Ecuador 28.2 5 Sweden 71.8 48 Uruguay 41.4 91 Egypt 28.1 6 Denmark 71.4 49 Italy 41.3 92 Bolivia 28.0 7 Iceland 70.4 50 Lebanon 40.7 93 Gabon 27.7 8 Taiwan 69.1 51 Croatia 40.6 94 Iran 27.7 9 Switzerland 68.6 52 South Africa 40.0 95 Philippines 27.7

10 Singapore 68.1 53 Malaysia 40.0 96 Senegal 27.3 11 Germany 67.4 54 Montenegro 39.1 97 Jamaica 27.2 12 France 67.3 55 Costa Rica 37.7 98 Cambodia 26.3 13 Netherlands 66.5 56 Argentina 37.2 99 Rwanda 26.2 14 Finland 65.7 57 Moldova 37.2 100 Brazil 25.8 15 Norway 65.6 58 Macedonia 37.1 101 Gambia. The 25.6 16 Belgium 65.5 59 Barbados 37.1 102 Benin 25.6 17 Ireland 65.3 60 Brunei

Darussalam 36.9 103 Liberia 25.5

18 Austria 64.9 61 China 36.4 104 India 25.3 19 Chile 63.2 62 Paraguay 36.0 105 Ghana 24.8 20 United Arab

Emirates 61.6 63 Tunisia 35.5 106 Mozambique 24.3

21 Estonia 60.2 64 Ukraine 33.6 107 Côte d’Ivoire 24.1 22 Israel 59.9 65 Jordan 33.3 108 Tanzania 23.6 23 Luxembourg 57.2 66 Botswana 33.0 109 Myanmar 23.1 24 Qatar 56.2 67 Panama 32.2 110 Zambia 23.0 25 Turkey 54.6 68 Thailand 32.1 111 Angola 22.7 26 Lithuania 54.6 69 Namibia 31.9 112 Venezuela 22.6 27 Latvia 54.5 70 Russia 31.7 113 Mali 22.5 28 Korea 54.1 71 Sri Lanka 31.1 114 Burkina Faso 22.1 29 Slovenia 53.1 72 Lao PDR 31.1 115 Cameroon 22.0 30 Portugal 50.8 73 Libya 31.0 116 Madagascar 22.0 31 Saudi Arabia 49.6 74 Peru 30.9 117 Sierra Leone 21.6 32 Spain 49.6 75 Mexico 30.7 118 Swaziland 21.4 33 Japan 49.5 76 Albania 30.6 119 Mauritania 21.1 34 Puerto Rico 48.9 77 Dominican

Republic 30.6 120 Indonesia 21.0

35 Czech Republic 48.9 78 Serbia 30.6 121 Suriname 20.7 36 Colombia 47.9 79 Algeria 30.2 122 Guatemala 20.3 37 Kuwait 47.7 80 Honduras 29.8 123 Pakistan 20.1 38 Poland 47.4 81 El Salvador 29.6 124 Burundi 18.4 39 Oman 47.3 82 Morocco 29.4 125 Ethiopia 17.2 40 Hong Kong 45.9 83 Bosnia 28.9 126 Chad 16.6 41 Slovakia 45.4 84 Nigeria 28.9 127 Guyana 16.2

Table 1.2: Points and Ranks of the Countries in the 2015 GEI

Page 21: Zoltán J. Ács László Szerb Erkko Autio

Rank Country GEI Rank Country GEI Rank Country GEI 42 Romania 45.3 85 Vietnam 28.8 128 Malawi 15.6 43 Bahrain 45.1 86 Kenya 28.5 129 Uganda 15.1

130 Bangladesh 14.4

Table 1.3 shows which countries made the greatest gains in GEI score from 2014 to 2015. The ten countries that made the greatest gains changed rankings from as many as ten places to as few as zero. Greece increased 4.5 points, followed by the UAE with 12.8 points. The biggest gainers are six European countries, three in the Middle East, and one in North America. Perhaps the big surprise is Iran, which moved up seven places.

Table 1.3: The Ten Biggest Gains in GEI Score from 2014 to 2015

Country Points 2014

Points 2015

Difference in Points

Difference in Ranking

United Arab Emirates** 48.8 61.6 12.8 -9 Latvia 48.1 54.5 6.4 -6 Lithuania 49.6 54.6 5.0 -2 Turkey 49.9 54.6 4.8 -2 Greece 37.5 42.0 4.5 -10 Portugal 46.4 50.8 4.4 -6 Czech Republic* 44.8 48.9 4.0 -4 Iran 24.3 27.7 3.4 -7 United States 82.0 85.0 3.0 0 Spain 46.7 49.6 2.9 -3

Legend: Included only those countries that have participated in the GEM survey and have not estimated individual data *both 2014 and 2015 individual data are from 2011**2014 individual data are from 2011

Table 1.4 compares the biggest losers in the 2014 GEI data to their place in the 2015 data. The losses were greater than the gains; for example, Puerto Rico and Indonesia both lost more than ten points. The decline was most notable in Denmark, Finland, and the Netherlands, which all lost ground. However, the European rankings are in general much improved, as the Euro crisis and the recession have eased. Mexico and Peru also lost ground.

Table 1.4: The Ten Biggest Declines in GEI Score between 2014 and 2015

Country Points 2014

Points 2015

Difference in Points

Difference in Ranking

Puerto Rico* 60.8 48.9 -11.9 12

Indonesia** 31.7 21.0 -10.7 20

Peru 39.2 30.9 -8.3 16

Denmark*** 78.2 71.4 -6.7 3

Mexico 36.3 30.7 -5.6 9

India**** 30.6 25.3 -5.3 13

Page 22: Zoltán J. Ács László Szerb Erkko Autio

Finland 69.3 65.7 -3.6 4

Malaysia 42.8 40.0 -2.8 6

Netherlands 69.3 66.5 -2.7 2

Angola 25.4 22.7 -2.7 3

Legend: Included only those countries that have participated in the GEM survey and have not estimated individual data *2013 individual data are from 2007**2013 individual data are from 2006 ***2014 individual data are from 2012 ****2014 individual data are from 2008

Table 1.5 shows the leading country in each of the six regions of the world: North America, Europe, Sub-Saharan Africa, Latin America, the Middle East North Africa and Asia- Pacific. The United States, Australia and the United Kingdom are the leaders in North America, Asia and Europe. In Sub-Saharan Africa, South Africa is the leader, followed by the UAE in the MENA region and Chile in Latin America.

Table 1.5: The Top Performing Country in Each Region

World Rank Country Region Per capita

GDP Attitudes Abilities Aspirations GEI

1 United States North America 45336 83.4 84.7 86.8 85.0

3 Australia Asia-Pacific 35608 77.9 81.3 73.5 77.6

4 United Kingdom Europe 32514 70.9 82.8 64.3 72.7

19 Chile South and Central America / Caribbean 15848 74.7 50.4 64.5 63.2

20 United Arab Emirates

Middle East / North Africa 36267 55.8 57.6 71.4 61.6

52 South Africa Sub-Saharan Africa 9655 33.4 38.5 48.1 40.0

Page 23: Zoltán J. Ács László Szerb Erkko Autio

Map: The 2015 GEI Results

Country GEI Score Country GEI Score Country GEI Score Country GEI Score Country GEI ScoreUnited States 85.0 Latvia 54.5 Malaysia 40.0 Algeria 30.2 Ghana 24.8Canada 81.5 Korea 54.1 Montenegro 39.1 Honduras 29.8 Mozambique 24.3Australia 77.6 Slovenia 53.1 Costa Rica 37.7 El Salvador 29.6 Côte d’Ivoire 24.1United Kingdo 72.7 Portugal 50.8 Argentina 37.2 Morocco 29.4 Tanzania 23.6Sweden 71.8 Saudi Arabia 49.6 Moldova 37.2 Bosnia 28.9 Myanmar 23.1Denmark 71.4 Spain 49.6 Macedonia 37.1 Nigeria 28.9 Zambia 23.0Iceland 70.4 Japan 49.5 Barbados 37.1 Vietnam 28.8 Angola 22.7Taiwan 69.1 Puerto Rico 48.9 Brunei Darus 36.9 Kenya 28.5 Venezuela 22.6Switzerland 68.6 Czech Repub 48.9 China 36.4 Nicaragua 28.4 Mali 22.5Singapore 68.1 Colombia 47.9 Paraguay 36.0 Kazakhstan 28.4 Burkina Faso 22.1Germany 67.4 Kuwait 47.7 Tunisia 35.5 Trinidad & To 28.4 Cameroon 22.0France 67.3 Poland 47.4 Ukraine 33.6 Ecuador 28.2 Madagascar 22.0Netherlands 66.5 Oman 47.3 Jordan 33.3 Egypt 28.1 Sierra Leone 21.6Finland 65.7 Hong Kong 45.9 Botswana 33.0 Bolivia 28.0 Swaziland 21.4Norway 65.6 Slovakia 45.4 Panama 32.2 Gabon 27.7 Mauritania 21.1Belgium 65.5 Romania 45.3 Thailand 32.1 Iran 27.7 Indonesia 21.0Ireland 65.3 Bahrain 45.1 Namibia 31.9 Philippines 27.7 Suriname 20.7Austria 64.9 Bulgaria 42.7 Russia 31.7 Senegal 27.3 Guatemala 20.3Chile 63.2 Hungary 42.7 Sri Lanka 31.1 Jamaica 27.2 Pakistan 20.1United Arab E 61.6 Cyprus 42.5 Lao PDR 31.1 Cambodia 26.3 Burundi 18.4Estonia 60.2 Greece 42.0 Libya 31.0 Rwanda 26.2 Ethiopia 17.2Israel 59.9 Uruguay 41.4 Peru 30.9 Brazil 25.8 Chad 16.6Luxembourg 57.2 Italy 41.3 Mexico 30.7 Gambia, The 25.6 Guyana 16.2Qatar 56.2 Lebanon 40.7 Albania 30.6 Benin 25.6 Malawi 15.6Turkey 54.6 Croatia 40.6 Dominican Re 30.6 Liberia 25.5 Uganda 15.1Lithuania 54.6 South Africa 40.0 Serbia 30.6 India 25.3 Bangladesh 14.4

GEI Score 2015

Page 24: Zoltán J. Ács László Szerb Erkko Autio

References

Acemoglu, D., & Robinson, J. (2001). Why nations fail: The origins of power, prosperity and poverty. New York: Crown Press.

Acs, Z. J., Szerb, L., & Autio, E. (2014). The global entrepreneurship and development index. Seattle: On Demand. Acs, Z. J., Szerb, L., & Autio, E. (2013). The global entrepreneurship and development index. Cheltenham, England:

Edward Elgar. Acs, Z. J., & Szerb, L. (2012). The global entrepreneurship and development index. Cheltenham, England: Edward

Elgar. Acs, Z. J., & Szerb, L. (2011). The global entrepreneurship and development index. Cheltenham, England: Edward

Elgar.

Page 25: Zoltán J. Ács László Szerb Erkko Autio
Page 26: Zoltán J. Ács László Szerb Erkko Autio
Page 27: Zoltán J. Ács László Szerb Erkko Autio
Page 28: Zoltán J. Ács László Szerb Erkko Autio

Chapter 2: The Global Entrepreneurship Index Introduction

The modern “temple” of the entrepreneurial ecosystem is like many temples of the ancient world: both are held up by pillars. Today’s economic ecosystem is supported by the pillars of development, which are held together by the cement of incentives created by institutions that influence the behavior of individuals. If a fully developed economy is to continue to flourish, these pillars need constant attention, continuous improvement, and careful maintenance, and they must be of similar height and strength.

In this chapter, we present the Global Entrepreneurship Index (GEI). We begin by discussing the S-shaped curve of entrepreneurship and the 14 pillars of entrepreneurship. We report country rankings and values in terms of GEI and these 14 pillars. We then present the three sub-indexes: attitudes toward entrepreneurship, entrepreneurial abilities, and entrepreneurial aspirations. Finally, we analyze and compare the different countries and country groups included in the GEI.

The S-Shaped Curve

Between 1945 and 1980, nearly one hundred colonies in Africa, Asia, and the Caribbean gained their independence and began creating a development strategy for their citizens.1 Sadly, many of those countries have experienced neither significant per capita growth nor economic development.2 Indeed, moderate to extreme poverty remains a significant concern for many developing countries.3

After failed attempts at development through import substitution (protecting domestic producers from the competition of imports) and programs to protect infant industries, as well as somewhat mixed results from export promotion strategies, developing countries are beginning to focus on improving their business environments and creating economic spaces that are conducive to private enterprise, both domestic and foreign. Indeed, in recent years, promoting entrepreneurship and the promulgation of small- and medium-sized enterprise policy have become important prescriptions for development.4

While focusing on entrepreneurship may seem a novel approach to development, it is consistent with and even complementary to older, more traditional development strategies. As developing economies have moved from centralized economies to market economies, enterprise and entrepreneurship have become increasingly important. As Woolridge writes, “The emerging world, long a source of cheap labor, now rivals the rich countries for business innovation. Developing countries are becoming hotbeds of business innovation in much the same way as Japan did from the 1950s onwards.”5

In his classic text, The Stages of Economic Growth, W. W. Rostow suggests that countries go through five stages of economic growth: (1) the traditional society, (2) the preconditions for take-off, (3) the take-off, (4) the drive to maturity, and (5) the age of high mass consumption.6 While these stages are an oversimplified way of looking at the development of modern economies, they do identify critical events. Michael Porter, who follows recent developments in the economics of innovation while conducting research on the current age of high mass consumption, provides a modern rendition of Rostow’s approach by identifying three stages of development: (1) a factor-driven stage, (2) an efficiency-driven stage, and (3) an innovation-driven stage.7

Entrepreneurship is an important mechanism that can promote economic development through employment, innovation, and welfare, but it does not appear like manna from heaven as a country moves through the stages of development. Rather, it is a process that plays a role in all stages of development and continues over many years. Economists have come to recognize the “input-completing” and “gap-filling” capacities of entrepreneurial activity in development8—in other words, that someone has to create the technology for new products and create the markets

Page 29: Zoltán J. Ács László Szerb Erkko Autio

where people will buy them. Figure 2.1 shows the relationship between entrepreneurship and economic development.

The S-shaped curve shown in Figure 2.1 addresses two important questions about entrepreneurship. First, the S-shaped curve represents the source of poverty, whereas the intersection of the S-curve and the vertical axis suggests that, if individuals in a country are very poor, they may be in a poverty trap where the chances for growing their income or wealth are limited: tomorrow’s income may be less than today’s, and any attempt to get out of this trap may further reduce future income, since at very low levels of income any investment in future income will result in a decline in current consumption that cannot be afforded. This helps to explain why the poor, and poor countries, are so little involved in entrepreneurship.9

The S-shaped curve also addresses how much productive entrepreneurship there is in countries at different stages of development and how rapidly it grows. Where the S-curve rises less steeply and then levels off it represents a situation where tomorrow’s income is greater than today’s, so entrepreneurial activity is possible.10 How quickly countries modernize depends on the rise of this curve. The area above the curve is a “valley of backwardness,” which can only be eliminated when nations build better institutions and change their society’s incentive structure, all of which requires good government and governance.11 As institutions become stronger, destructive and unproductive activities decline, and more entrepreneurial activity can focus on productive entrepreneurship, thus strengthening economic development.12

The second source of backwardness is unproductive entrepreneurship, where one group gives and another only takes. This form of rent-seeking is prevalent in many developed and developing countries. If rent-seeking by governments and other groups persists, entrepreneurs will remain reluctant to make the long-term investments of time and money that are needed to create productive, high-impact firms. If countries have extractive economies where only a few benefit at the expense of others, development will not take place.

Therefore, as activity shifts away from destructive and unproductive entrepreneurship, more productive forms of entrepreneurship can have a significant positive effect on the creation of social value. In today’s interconnected world, we need to improve institutions and be able to measure this progress.

Figure 2.1: The S-Curve of Entrepreneurship

entre

pren

eurs

hi

economic development

factor-driven stage

efficiency-driven stage

innovation-driven

stage

Page 30: Zoltán J. Ács László Szerb Erkko Autio

The 14 Pillars of Entrepreneurship

The pillars of entrepreneurship are many and complex. While a widely accepted definition of entrepreneurship is lacking, there is general agreement that the concept has numerous dimensions.13 We take this into account in creating our entrepreneurship index, as some businesses clearly have a larger impact on markets, create more new jobs, and grow faster and larger than others. We also take into account the fact that entrepreneurship plays a different role at different stages of development. Considering the various possibilities and limitations, we define entrepreneurship as “the dynamic, institutionally embedded interaction between entrepreneurial attitudes, entrepreneurial abilities, and entrepreneurial aspirations by individuals, which drives the allocation of resources through the creation and operation of new ventures.”14

The GEI is composed of three building blocks or sub-indexes—what we call the 3As: entrepreneurial attitudes, entrepreneurial abilities, and entrepreneurial aspirations. These three sub-indexes stand on 14 pillars, each of which contains an individual and an institutional variable that correspond to the micro- and the macro-level aspects of entrepreneurship. Unlike other indexes that incorporate only institutional or individual variables, the GEI pillars include both individual and institutional variables. These pillars are an attempt to capture the open-ended nature of entrepreneurship; analyzing them can provide an in-depth view of the strengths and weaknesses of those listed in the Index. We now describe the 14 pillars of entrepreneurship.

Entrepreneurial Attitude Pillars

Pillar 1: Opportunity Perception. This pillar captures the potential “opportunity perception” of a population by considering the size of its country’s domestic market and level of urbanization. This opportunity perception potential is an essential ingredient of entrepreneurial start-ups. Within this pillar is the individual variable Opportunity Recognition, which measures the percentage of the population that can identify good opportunities to start a business in the area where they live. However, the value of these opportunities also depends on the size of the market. The institutional variable Market Agglomeration consists of two smaller variables: the size of the domestic market (Domestic Market) and urbanization (Urbanization). The Urbanization variable is intended to capture which opportunities have better prospects in developed urban areas than they do in poorer rural areas. Market Agglomeration is determined by multiplying the size of the domestic market by the percentage of the population living in urban areas.15

Pillar 2: Start-Up Skills. Launching a successful venture requires the potential entrepreneur to have the necessary start-up skills. Skill Perception measures the percentage of the population who believe they have adequate start-up skills. Most people in developing countries think they have the necessary skills to start a business, but their skills usually are acquired through workplace trial and error in relatively simple business activities. In developed countries, business formation, operation, management, etc., require skills that are acquired through formal education and training. Hence education, especially postsecondary education, plays a vital role in teaching and developing entrepreneurial skills. Today there are 150 million students enrolled in some kind of education beyond high school, a 53 percent increase in less than a decade. People all over the world see education as a pathway out of poverty.16

Pillar 3: Risk Acceptance. Of the personal entrepreneurial traits, fear of failure is one of the most serious obstacles, as aversion to high-risk start-up enterprises can retard nascent entrepreneurship. Risk Perception is defined as the percentage of the population who do not believe that fear of failure would prevent them from starting a business. Business Risk reflects the availability and reliability of corporate financial information, legal protections for creditors, and institutional support of intercompany transactions.17

Pillar 4: Networking. Networking combines an entrepreneur’s personal knowledge with their ability to use the Internet for business purposes. This combination serves as a proxy for networking, which is also an important ingredient of successful venture creation and entrepreneurship. Entrepreneurs who have better

Page 31: Zoltán J. Ács László Szerb Erkko Autio

networks are more successful, can identify more viable opportunities, and can access more and better resources. We define the basic networking potential of a possible entrepreneur by the percentage of the population who personally know an entrepreneur who started a business within the previous two years (Know Entrepreneurs). However, connecting through cyberspace with the rest of the world adds another dimension to networking and opens up much greater opportunities than before (Internet Usage).18

Pillar 5: Cultural Support. This pillar is a combined measure of how a country’s inhabitants view entrepreneurs in term of status and career choice, and how the level of corruption in that country affects this view. Without strong cultural support, the best and brightest do not want to be responsible entrepreneurs, and they decide to enter a traditional profession. Career Status is the average percentage of the population age 18-64 who consider entrepreneurship a good career choice that enjoys high status. The associated institutional variable measures the level of corruption. High levels of corruption can undermine the high status and steady career paths of legitimate entrepreneurs. 19

Entrepreneurial Ability Pillars

Pillar 6: Opportunity Start-Up. This is a measure of start-ups by people who are motivated by opportunity but face regulatory constraints. An entrepreneur’s motivation for starting a business is an important sign of quality. Opportunity entrepreneurs are believed to be better prepared, to have superior skills, and to earn more than what we call necessity entrepreneurs. Opportunity Motivation is defined as the percentage of the Total Entrepreneurial Activity (TEA) businesses started to exploit a good opportunity, to increase income, or to fulfill personal aims, which contrasts to those started by people who have no other options for work. The institutional variable applied here is business freedom, one sub-index of the Index of Economic Freedom. The Economic Freedom variable is appropriate for capturing the overall burden of regulation, and the regulatory efficiency of the government in influencing start-ups and operating businesses.20

Pillar 7: Technology Absorption. In the modern knowledge economy, information and communications technologies (ICT) play a crucial role in economic development. Not all sectors provide the same chances for businesses to survive or their potential for growth. The Technology Level variable is a measure of the businesses that are in technology sectors. The Tech Absorption institutional variable is a measure of a country’s capacity for firm-level technology absorption, as reported by the World Economic Forum. The diffusion of new technology, as well as the capability to absorb it, is vital for innovative firms with high growth potential.21

Pillar 8: Human Capital. The prevalence of high-quality human capital is vitally important for ventures that are highly innovative and require an educated, experienced, and healthy workforce in order to continue to grow. An important feature of a venture with high growth potential is the entrepreneur’s level of education. The Educational Level variable captures the quality of entrepreneurs; it is widely held that entrepreneurs with higher education degrees are more capable and willing to start and manage high-growth businesses. Employee quality also has an impact on business development, innovation, and growth potential. The institutional variable Staff Training signifies a country’s level of investment in business training and employee development. It can be expected that investing heavily in employees pays off and that training increases their quality.22

Pillar 9: Competition. Competition is a measure of the uniqueness of a business’s product or market, combined with the market power of existing businesses and business groups. The variable Competitors is defined as the percentage of TEA businesses that have only a few competitors offering the same product or service. However, market entry can be prevented or made more difficult if powerful business groups dominate a market. The extent of market dominance by a few business groups is measured by the variable Market Dominance, as reported by the World Economic Forum.23

Page 32: Zoltán J. Ács László Szerb Erkko Autio

Entrepreneurial Aspiration Pillars

Pillar 10: Product Innovation. New products play a crucial role in the economy of all countries. While rich countries for years were the source of most new products, developing countries today are producing products that are dramatically cheaper than their Western equivalents. New Product is a measure of a country’s potential to generate new products and to adopt or imitate existing products. In order to quantify the potential for new product innovation, an institutional variable related to technology and innovation transfer seems to be relevant. Technology Transfer is a complex measure of whether a business environment allows the application of innovations for developing new products.

Pillar 11: Process Innovation. Applying and/or creating new technology is another important feature of businesses with high growth potential. New Tech is defined as the percentage of businesses whose principal underlying technology is less than five years old. However, most entrepreneurial businesses do not just apply new technology, they create it. The problem is similar to the New Product variable; whereas many businesses in a developing country may apply the latest technology, they tend to buy or copy it. An appropriate institutional variable applied here is research and development (R&D). Gross Domestic Expenditure on Research and Development (GERD) is the R&D percentage of GDP as reported by the Organisation for Economic Co-operation and Development. While R&D alone does not guarantee successful growth, it is clear that, without systematic research activity, the development and the implementation of new technologies—and therefore future growth—will be inhibited.24

Pillar 12: High Growth. This is a combined measure of the percentage of high-growth businesses that intend to employ at least ten people and plan to grow more than 50 percent in five years (the Gazelle variable) with business strategy sophistication (the Business Strategy variable). It might be argued that a shortcoming of the Gazelle variable is that growth is not an actual but an expected rate. However, a measure of expected growth is in fact a more appropriate measure of aspiration than a measure of realized growth. Business Strategy refers to “the ability of companies to pursue distinctive strategies, which involves differentiated positioning and innovative means of production and service delivery.”25 High Growth combines high growth potential with a sophisticated strategy.26

Pillar 13: Internationalization. Internationalization is believed to be a major determinant of growth. A widely applied proxy for internationalization is exporting, which demands capabilities beyond those needed by businesses that produce only for domestic markets. However, the institutional dimension is also important: a country’s openness to international entrepreneurs—that is, the potential for internationalization—can be estimated by its degree of globalization. The Internationalization pillar is designed to capture the degree to which a country’s entrepreneurs are internationalized, as measured by the exporting potential of businesses, controlling for the extent to which the country is economically globalized.27

Pillar 14: Risk Capital. The availability of risk finance, particularly equity rather than debt, is an essential precondition for fulfilling entrepreneurial aspirations that are beyond an individual entrepreneur’s personal financial resources.28 Here we combine two kinds of finance, the informal investment (Informal Investment) and the institutional depth of capital market (DCM). Informal Investment is defined as the percentage of informal investors in the population age 18-64, multiplied by the average size of individuals’ investment in other people’s new businesses. While the rate of informal investment is high in factor-driven economies, the amount of informal investment is considerably larger in efficiency- and innovation-driven countries; combining them balances these two effects. Our institutional variable here is DCM, one of the six sub-indexes of the Venture Capital and Private Equity index. This variable is a complex measure of the size and liquidity of the stock market, level of IPO, M&A, and debt and credit market activity, which encompass seven aspects of a country’s debt and capital market.29

Page 33: Zoltán J. Ács László Szerb Erkko Autio

The Global Entrepreneurship Index, 2015 Rankings

In this section, we report the rankings of the 130 countries on the Global Entrepreneurship Index and the three sub-indexes. The pillar values of the three sub-indexes are presented later.

We present the rankings in terms of country development, as measured by per capita GDP. The overall ranking of the countries by GEI score is shown in Table 2.1. Anglo-Saxon, Nordic, and Western European countries in the innovation-driven stage of development are in the front ranks. The United States, Canada, Australia, and the United Kingdom lead the rankings. The big surprise is the UK’s ranking in 4th place. Two of the five Nordic countries, Denmark and Sweden, are in the top ten, and Iceland and Finland are 11th and 14th, respectively—still a good performance. Taiwan, the highest ranked Asian country, is in 8th place, and Singapore is 10th. The Netherlands at 13th it is still among the most entrepreneurial nations of the world and Switzerland is also a surprise ranking in 5th place. Besides their high entrepreneurial performance, these countries also represent high levels of income.

Page 34: Zoltán J. Ács László Szerb Erkko Autio

Tabl

e 2.1:

The

Glo

bal E

ntre

pren

eurs

hip

Inde

x Ran

k of a

ll Cou

ntrie

s, 20

15

Rank

Co

untry

GD

P 20

12*

GEI

Rank

Co

untry

GD

P 20

12*

GEI

Rank

Co

untry

GD

P 20

12*

GEI

1 Un

ited S

tates

45

336

85.0

44

Bulga

ria

1217

6 42

.7 87

Ni

cara

gua

3510

28

.4 2

Cana

da

3606

7 81

.5 45

Hu

ngar

y 17

073

42.7

88

Kaza

khsta

n 11

978

28.4

3 Au

strali

a 35

608

77.6

46

Cypr

us

2345

2 42

.5 89

Tr

inida

d & T

obag

o 23

260

28.4

4 Un

ited K

ingdo

m

3251

4 72

.7 47

Gr

eece

21

275

42.0

90

Ecua

dor

8443

28

.2 5

Swed

en

3492

6 71

.8 48

Ur

ugua

y 13

821

41.4

91

Egyp

t 57

95

28.1

6 De

nmar

k 32

291

71.4

49

Italy

2692

0 41

.3 92

Bo

livia

4552

28

.0 7

Icelan

d 33

819

70.4

50

Leba

non

1259

2 40

.7 93

Ga

bon

1381

1 27

.7 8

Taiw

an

3481

7 69

.1 51

Cr

oatia

16

002

40.6

94

Iran

1075

4 27

.7 9

Switz

erlan

d 39

294

68.6

52

South

Afric

a 96

55

40.0

95

Philip

pines

38

01

27.7

10

Sing

apor

e 53

266

68.1

53

Malay

sia

1482

2 40

.0 96

Se

nega

l 16

71

27.3

11

Germ

any

3545

3 67

.4 54

Mo

ntene

gro

1060

2 39

.1 97

Ja

maica

75

28

27.2

12

Fran

ce

2981

9 67

.3 55

Co

sta R

ica

1115

6 37

.7 98

Ca

mbod

ia 21

50

26.3

13

Nethe

rland

s 36

466

66.5

56

Arge

ntina

16

425

37.2

99

Rwan

da

1167

26

.2 14

Fin

land

3161

1 65

.7 57

Mo

ldova

29

51

37.2

100

Braz

il 10

264

25.8

15

Norw

ay

4751

7 65

.6 58

Ma

cedo

nia

9323

37

.1 10

1 Ga

mbia.

The

16

67

25.6

16

Belgi

um

3268

0 65

.5 59

Ba

rbad

os

2320

5 37

.1 10

2 Be

nin

1364

25

.6 17

Ire

land

3610

2 65

.3 60

Br

unei

Daru

ssala

m

4597

9 36

.9 10

3 Lib

eria

560

25.5

18

Austr

ia 36

340

64.9

61

China

79

58

36.4

104

India

3390

25

.3 19

Ch

ile

1584

8 63

.2 62

Pa

ragu

ay

5290

36

.0 10

5 Gh

ana

1764

24

.8 20

Un

ited A

rab E

mira

tes

3626

7 61

.6 63

Tu

nisia

8442

35

.5 10

6 Mo

zamb

ique

882

24.3

21

Eston

ia 19

070

60.2

64

Ukra

ine

6394

33

.6 10

7 Cô

te d’I

voire

17

57

24.1

22

Israe

l 27

882

59.9

65

Jord

an

5289

33

.3 10

8 Ta

nzan

ia 13

80

23.6

23

Luxe

mbou

rg

6579

8 57

.2 66

Bo

tswan

a 14

109

33.0

109

Myan

mar

6677

23

.1 24

Qa

tar

7193

1 56

.2 67

Pa

nama

14

320

32.2

110

Zamb

ia 14

74

23.0

25

Turke

y 13

737

54.6

68

Thail

and

8463

32

.1 11

1 An

gola

5262

22

.7 26

Lit

huan

ia 18

785

54.6

69

Nami

bia

6520

31

.9 11

2 Ve

nezu

ela

1162

3 22

.6 27

La

tvia

1575

7 54

.5 70

Ru

ssia

1517

7 31

.7 11

3 Ma

li 10

55

22.5

Page 35: Zoltán J. Ács László Szerb Erkko Autio

Rank

Co

untry

GD

P 20

12*

GEI

Rank

Co

untry

GD

P 20

12*

GEI

Rank

Co

untry

GD

P 20

12*

GEI

28

Kore

a 27

991

54.1

71

Sri L

anka

53

84

31.1

114

Burki

na F

aso

1298

22

.1 29

Sl

oven

ia 24

495

53.1

72

Lao P

DR

2522

31

.1 11

5 Ca

mero

on

2025

22

.0 30

Po

rtuga

l 21

056

50.8

73

Libya

10

073

31.0

116

Mada

gasc

ar

843

22.0

31

Saud

i Ara

bia

2734

6 49

.6 74

Pe

ru

9431

30

.9 11

7 Si

erra

Leon

e 11

71

21.6

32

Spain

26

089

49.6

75

Mexic

o 13

067

30.7

118

Swaz

iland

45

22

21.4

33

Japa

n 31

429

49.5

76

Alba

nia

8123

30

.6 11

9 Ma

urita

nia

2244

21

.1 34

Pu

erto

Rico

30

248

48.9

77

Domi

nican

Rep

ublic

87

94

30.6

120

Indon

esia

4272

21

.0 35

Cz

ech R

epub

lic

2382

4 48

.9 78

Se

rbia

9683

30

.6 12

1 Su

rinam

e 76

41

20.7

36

Colom

bia

9143

47

.9 79

Al

geria

74

00

30.2

122

Guate

mala

4397

20

.3 37

Ku

wait

4063

7 47

.7 80

Ho

ndur

as

3657

29

.8 12

3 Pa

kistan

24

02

20.1

38

Polan

d 18

307

47.4

81

El S

alvad

or

6125

29

.6 12

4 Bu

rund

i 48

3 18

.4 39

Om

an

3966

5 47

.3 82

Mo

rocc

o 45

73

29.4

125

Ethio

pia

971

17.2

40

Hong

Kon

g 44

770

45.9

83

Bosn

ia 73

56

28.9

126

Chad

18

70

16.6

41

Slov

akia

2118

5 45

.4 84

Ni

geria

22

95

28.9

127

Guya

na

2930

16

.2 42

Ro

mania

11

946

45.3

85

Vietn

am

3318

28

.8 12

8 Ma

lawi

660

15.6

43

Bahr

ain

2154

3 45

.1 86

Ke

nya

1522

28

.5 12

9 Ug

anda

11

65

15.1

130

Bang

lades

h 16

22

14.4

*Per

capit

a GDP

in P

PP 20

12 or

lates

t ava

ilable

data,

in 20

05 co

nstan

t inter

natio

nal d

ollar

sSo

urce

: Wor

ld Ba

nk; H

ong

Kong

is fr

om IM

F an

d Pue

rto R

ico is

from

CIA

Page 36: Zoltán J. Ács László Szerb Erkko Autio

The United States is in first place. Australia, Canada, and the Netherlands are good performers, but they all have weaknesses in at least one of the sub-indexes. Of the most populous EU countries, only the UK, in 4th place, is among the top ten countries. The other large European countries rank in the middle: France is 12th, Germany is 11th, Poland is 38th, and Spain is 32st, followed by Italy in 49th place. While the UK, France, and Germany are relatively well balanced over the 15 pillars, Poland, Spain, and Italy are entrepreneurially less efficient.

A likely explanation for the EU countries’ relatively weak economic performance over the last decade is their low level of entrepreneurship; the same applies to Japan, which took 36th place. Factor-driven countries with low GDPs, such as Pakistan, Bangladesh, Uganda and other poor African countries, are at the bottom of the entrepreneurship ranking, as expected. At the same time, these countries’ entrepreneurial performance is the least unbalanced. However, some countries—including two former socialist countries, Serbia and Russia, innovation-driven Italy, and two South American countries, Brazil and Trinidad and Tobago—should have higher levels of entrepreneurship, as implied by their development trend lines and more efficient use of entrepreneurial resources.

The Ranking of the 3As

By definition, the GEI is a three-component index that takes into account the different aspects of the entrepreneurial ecosystem. However, all three components, called sub-indexes, are in themselves complex measures that include various characteristics of entrepreneurial attitudes, entrepreneurial abilities, and entrepreneurial aspirations.

Entrepreneurial attitudes are societies’ attitudes toward entrepreneurship, which we define as a population’s general feelings about recognizing opportunities, knowing entrepreneurs personally, endowing entrepreneurs with high status, accepting the risks associated with business start-ups, and having the skills to launch a business successfully. The benchmark individuals are those who can recognize valuable business opportunities and have the skills to exploit them; who attach high status to entrepreneurs; who can bear and handle start-up risks; who know other entrepreneurs personally (i.e., have a network or role models); and who can generate future entrepreneurial activities.

Moreover, these people can provide the cultural support, financial resources, and networking potential to those who are already entrepreneurs or want to start a business. Entrepreneurial attitudes are important because they express the general feeling of the population toward entrepreneurs and entrepreneurship. Countries need people who can recognize valuable business opportunities, and who believe that they have the skills required to exploit these opportunities. Moreover, if a nation’s attitude toward entrepreneurship is positive, it will generate cultural support, financial support, and networking benefits to those who want to start businesses.

Entrepreneurial abilities refer to entrepreneurs’ characteristics and those of their businesses. Different types of entrepreneurial abilities can be distinguished within the realm of new business efforts. Creating businesses may vary by industry sector, the legal form of organization, and demographics such as age and education. We define entrepreneurial abilities as start-ups in the medium- or high-technology sectors that are initiated by educated entrepreneurs, and launched because a person is motivated by an opportunity in an environment that is not overly competitive. Entrepreneurial abilities also refer to the equal participation of women in start-ups and other opportunities. In order to calculate the opportunity start-up rate, we use the GEM TEA Opportunity Index. TEA captures new start-ups not only as the creation of new ventures but also as start-ups within existing businesses, such as a spinoff or other entrepreneurial effort. Differences in the quality of start-ups are quantified by the entrepreneur’s education level—that is, if they have a postsecondary education—and the uniqueness of the product or service as measured by the level of competition. Moreover, it is generally maintained that opportunity motivation is a sign of better planning, a more sophisticated strategy, and higher growth expectations than “necessity” start-ups.

Entrepreneurial aspiration reflects the quality aspects of start-ups and new businesses. Some people simply hate their employer and want to be their own boss, while others want to create the next Microsoft. Entrepreneurial aspirations is defined as the early-stage entrepreneur’s effort to introduce new products and/or services, develop new

Page 37: Zoltán J. Ács László Szerb Erkko Autio

production processes, penetrate foreign markets, substantially increase their company’s staff, and finance the business with formal and/or informal venture capital. Product and process innovation, internationalization, and high growth are considered the key characteristics of entrepreneurship. Here we added a finance variable to capture the informal and formal venture capital potential that is vital for innovative start-ups and high-growth firms.

Each of these three building blocks of entrepreneurship influences the other two. For example, entrepreneurial attitudes influence entrepreneurial abilities and entrepreneurial aspirations, while entrepreneurial aspirations and abilities also influence entrepreneurial attitudes.

Figure 2.2 shows the relationship between the GEI, the three sub-indexes, and national per capita wealth, based on purchasing power parity GDP. In all the figures, we provide the associated trend line and R2 values. All the trend lines are based on third-degree polynomial equations.

Figure 2.2: The Three Sub-Indexes in Terms of Per Capita Real GDP (2006-2013, all data included)

Number of observations: 425 As an outlier, UAE has been removed from the graphs.

Page 38: Zoltán J. Ács László Szerb Erkko Autio

For example, the overall Index shows a good fit and a positive relationship between development and entrepreneurship. The two move in the same direction, with an R2 = 0.78, which implies a close, strong relationship between entrepreneurship and economic development. Unlike other entrepreneurship measures that find an L-shaped (self-employment rate) or a U-shaped (Total Early-Phase Entrepreneurial Activity Index) relationship between entrepreneurship and development, we find a mild S-shaped relationship.

The relationship between the Entrepreneurial Attitudes (ATT) sub-index and development is shown in the right-hand figure. The relationship is similar to the logarithmic function, implying that the overall entrepreneurship attitude increases as the country develops. The explanatory power, based on the R2 = 0.67, shows a significant, strong correlation between ATT and per capita GDP.

The lower-left figure contains the Entrepreneurial Abilities (ABT) sub-index values in terms of economic development. The explanatory power, R2 = 0.74, is the highest among the three sub-indexes, implying a close and strong relationship between entrepreneurial abilities and development

The trend of the Entrepreneurial Aspirations (ASP) sub-index is probably no surprise. The explanatory power of R2 = 0.67 is significant and strong.

Table 2.2 shows the ranking of the top 25 countries by GEI score and their sub-index rankings. The sub-index points and rankings for all 130 countries can be found in the Appendix. For example, the United States is first in the overall Index, and also in two of the three sub-indexes. Australia is 3rd in attitudes and in abilities but 5th in aspirations, as it is more interested in high-impact entrepreneurship than in replicative activities. Chile represents a more unbalanced case, ranking 19th in the overall Index, 6th in attitudes, 34th in abilities, and 15th in aspirations. Generally, countries that rank at the bottom in GEI also rank at the bottom of the three sub-indexes.

Table 2.2: The Global Entrepreneurship Index and Sub-Index Ranks of the First 25 Countries, 2015

Country GEI GEI Rank

ATT ATT Rank

ABT ABT Rank

ASP ASP Rank

United States 85.0 1 83.4 1 84.7 2 86.8 1 Canada 81.5 2 79.2 2 85.7 1 79.6 2 Australia 77.6 3 77.9 3 81.3 5 73.5 5 United Kingdom 72.7 4 70.9 10 82.8 4 64.3 16 Sweden 71.8 5 77.1 4 74.7 7 63.5 18 Denmark 71.4 6 59.4 16 83.4 3 71.6 8 Iceland 70.4 7 71.5 8 69.9 13 69.7 13 Taiwan 69.1 8 60.8 14 67.5 15 79.0 3 Switzerland 68.6 9 62.8 12 72.0 9 71.1 10 Singapore 68.1 10 52.1 25 73.5 8 78.8 4 Germany 67.4 11 59.9 15 72.0 10 70.3 11 France 67.3 12 62.0 13 70.3 12 69.7 12 Netherlands 66.5 13 71.0 9 68.1 14 60.3 26 Finland 65.7 14 75.8 5 59.3 20 62.0 21 Norway 65.6 15 72.8 7 75.4 6 48.8 41 Belgium 65.5 16 57.5 18 66.1 17 72.8 6 Ireland 65.3 17 57.9 17 71.5 11 66.5 14 Austria 64.9 18 65.6 11 66.5 16 62.6 20 Chile 63.2 19 74.7 6 50.4 34 64.5 15 United Arab Emirates 61.6 20 55.8 21 57.6 23 71.4 9

Page 39: Zoltán J. Ács László Szerb Erkko Autio

Estonia 60.2 21 57.2 19 61.8 19 61.7 22 Israel 59.9 22 54.7 22 53.2 31 71.7 7 Luxembourg 57.2 23 45.1 43 64.9 18 61.6 23 Qatar 56.2 24 52.8 23 59.0 21 56.7 31 Turkey 54.6 25 51.7 27 48.5 37 63.7 17

Tables 2.3-2.5 list the rankings and the 14 pillar values of the first 25 countries for the three sub-indexes. Each table gives the pillar values for each of the pillars that make up the respective index. The ranks and the pillar values for all the 130 countries can be found in the Appendices.

As stated earlier, entrepreneurial attitude is defined as the general attitude of a country’s population toward recognizing opportunities, knowing entrepreneurs personally, attaching high status to entrepreneurs, accepting the risks associated with a business start-up, and having the skills to successfully launch businesses. Entrepreneurial attitudes are important because they express the population’s general feelings toward entrepreneurs and entrepreneurship.

Table 2.3: Entrepreneurial Attitudes Sub-Index and Pillar Values for the First 25 Countries, 2015*

Countries ATT Opportunity Perception

Start-Up Skills

Risk Acceptance

Networking Cultural Support

United States 83.4 1.00 1.00 0.88 0.63 0.83 Canada 79.2 1.00 0.66 0.87 0.67 0.86 Australia 77.9 0.92 0.94 0.82 0.67 0.80 Sweden 77.1 1.00 0.61 0.83 1.00 0.90 Finland 75.8 0.73 0.71 0.81 1.00 0.96 Chile 74.7 1.00 0.95 0.79 0.71 0.77 Norway 72.8 0.91 0.53 0.92 0.87 0.90 Iceland 71.5 0.44 0.89 0.91 1.00 0.67 Netherlands 71.0 0.60 0.71 0.81 0.88 1.00 United Kingdom 70.9 0.69 0.60 0.81 0.71 0.79 Austria 65.6 0.65 0.78 0.75 0.85 0.64 Switzerland 62.8 0.55 0.47 0.94 0.73 0.70 France 62.0 0.66 0.41 0.70 0.76 0.74 Taiwan 60.8 0.70 0.48 0.64 0.69 0.62 Germany 59.9 0.65 0.44 0.66 0.57 0.77 Denmark 59.4 0.70 0.52 0.78 0.84 0.37 Ireland 57.9 0.30 0.71 0.75 0.74 0.72 Belgium 57.5 0.63 0.52 0.66 0.46 0.64 Estonia 57.2 0.40 0.65 0.57 0.80 0.57 Saudi Arabia 56.9 1.00 0.78 0.26 0.69 0.62 United Arab Emirates 55.8 0.67 0.36 0.43 0.73 0.79 Israel 54.7 0.65 0.43 0.55 0.70 0.63 Qatar 52.8 1.00 0.15 0.58 1.00 0.66 Spain 52.6 0.29 0.92 0.64 0.61 0.49 Singapore 52.1 0.43 0.38 0.79 0.38 0.76

*Pillar values are the normalized pillar scores after the average pillar correction.

Page 40: Zoltán J. Ács László Szerb Erkko Autio

The benchmark individuals are those who can (1) recognize valuable business opportunities, (2) have the necessary skills to exploit these opportunities, (3) attach high status and respect to entrepreneurs, (4) handle start-up risks, and (5) know entrepreneurs personally (i.e., have a network or role models). Moreover, these people can provide the cultural support, financial resources, and networking potential to those who are already entrepreneurs or want to start a business. The United States leads the Entrepreneurial Attitudes Index, followed by Canada, Australia, Sweden, Finland, Chile, Norway, Iceland, Netherlands, and the UK. Chile’s 6th place is a very strong showing for a South American country. Factor-driven African and Asian countries, including Swaziland, Mali, Sierra Leone, Ethiopia, Bangladesh, Pakistan, Malawi, Chad, and Burundi, are at the bottom.

High entrepreneurial abilities are associated with start-ups in the medium- or high-technology sectors that are initiated by educated entrepreneurs and launched because of opportunity motivation in a not too competitive environment. Quality differences in start-ups are quantified by the motivation and education level of the entrepreneur, and the uniqueness of the product or service, as measured by the level of competition.

Canada ranks number one on the Entrepreneurial Abilities Index and has a very strong showing in two of the four pillars, including Human Capital and Competition. The U.S. ranks second and is relatively weak in Opportunity Start-up and Technology Absorption. Australia is stronger than the U.S. in two pillars, Opportunity Start-Ups and Technology Absorption, but weaker in Human Capital and very weak in Competition. The UK ranks 4th, with a significantly lower entrepreneurial abilities score than the United States and Australia, but it is relatively strong in Competition, implying that fresh entrepreneurs are mainly looking for market niches that do not have many competitors. The large share of start-ups initiated in the medium- and high-technology sectors is also a strong point of the UK. The first four countries are followed by Australia, Norway, Sweden, Singapore, Switzerland, and Germany.

Table 2.4: Entrepreneurial Abilities Sub-Index and Pillar Values for the First 25 Countries, 2015

Countries ABT Opportunity Start-Up

Technology Absorption

Human Capital

Competition

Canada 85.7 0.84 0.83 0.95 0.90 United States 84.7 0.73 0.86 0.94 1.00 Denmark 83.4 1.00 0.98 1.00 1.00 United Kingdom 82.8 0.87 0.75 0.86 0.97 Australia 81.3 0.93 1.00 0.89 0.69 Norway 75.4 1.00 0.93 0.79 0.73 Sweden 74.7 0.94 1.00 0.71 0.67 Singapore 73.5 1.00 0.77 1.00 0.57 Switzerland 72.0 0.63 0.80 0.78 1.00 Germany 72.0 0.78 0.76 0.62 0.93 Ireland 71.5 0.66 0.89 0.97 0.87 France 70.3 0.69 0.94 0.71 0.72 Iceland 69.9 1.00 1.00 0.53 0.53 Netherlands 68.1 0.94 0.69 0.60 0.79 Taiwan 67.5 0.84 0.73 0.85 0.45 Austria 66.5 0.65 0.98 0.54 0.87 Belgium 66.1 0.64 0.46 0.87 0.82 Luxembourg 64.9 0.54 1.00 0.98 0.92 Estonia 61.8 0.64 0.74 0.55 0.68 Finland 59.3 0.77 0.73 0.51 0.46 Qatar 59.0 0.51 0.80 0.75 0.90

Page 41: Zoltán J. Ács László Szerb Erkko Autio

Lithuania 58.1 0.67 0.69 0.84 0.38 United Arab Emirates 57.6 0.64 0.38 1.00 0.50 Puerto Rico 56.7 0.77 0.41 0.89 0.57 Latvia 56.2 0.64 0.63 0.60 0.53

*Pillar values are the normalized pillar scores after the average pillar correction.

Entrepreneurial aspiration is early-stage entrepreneurs’ efforts to introduce new products and/or services, develop new production processes, penetrate foreign markets, substantially increase a firm’s number of employees, and finance a business with formal and/or informal venture capital. Product and process innovation, internationalization, and high growth are considered characteristics of entrepreneurship. The benchmark entrepreneurs are those whose businesses (1) produce and sell products/services considered to be new to at least some customers, (2) use a technology less than five years old, (3) have sales from foreign markets, (4) plan to employ at least ten people, and (5) have greater than 50 percent growth over the next five years. The Finance variable captures the informal venture capital potential, as well as the development of capital, venture capital, and credit markets, which is vital for innovative start-ups and high-growth firms.

Like the two other sub-indexes, the United States leads in the Entrepreneurial Aspiration Index. While showing some weakness in Internationalization, it is very strong in Risk Capital and Process Innovation. Canada is second. Taiwan is third, with a strong showing in High Growth and Product Innovation, followed by Singapore, Australia, Belgium, Israel, Denmark, the UAE, and Switzerland, which round out the top ten. The surprise is the Czech Republic, with a very strong showing in Internationalization but a weak performance in Risk Capital.

Table 2.5: Entrepreneurial Aspirations Sub-Index and Pillar Values for the First 25 Countries, 2015*

Countries ASP Product Innovation

Process Innovation

High Growth

International-ization

Risk Capital

United States 86.8 0.84 0.88 0.87 0.94 1.00 Canada 79.6 0.69 0.70 0.75 1.00 0.93 Taiwan 79.0 1.00 0.80 1.00 0.60 1.00 Singapore 78.8 0.64 0.98 1.00 1.00 0.94 Australia 73.5 0.50 0.80 0.72 0.90 0.98 Belgium 72.8 0.73 0.80 0.63 0.96 0.77 Israel 71.7 1.00 1.00 0.63 0.68 0.97 Denmark 71.6 1.00 0.80 0.74 0.58 0.91 United Arab Emirates 71.4 0.81 0.48 1.00 0.79 1.00 Switzerland 71.1 0.86 0.80 0.38 1.00 1.00 Germany 70.3 0.73 0.83 0.78 0.67 0.72 France 69.7 0.85 0.83 0.68 0.74 0.66 Iceland 69.7 0.69 0.94 0.70 0.91 0.50 Ireland 66.5 0.70 0.71 0.86 0.90 0.64 Chile 64.5 1.00 0.38 0.72 0.86 0.59 United Kingdom 64.3 0.63 0.67 0.66 0.63 0.64 Turkey 63.7 0.80 0.45 1.00 0.45 0.81 Sweden 63.5 0.72 0.97 0.41 0.66 0.64 Czech Republic 63.5 0.65 0.87 0.75 1.00 0.64 Austria 62.6 0.77 0.75 0.31 0.92 0.79 Finland 62.0 0.91 0.93 0.53 0.55 0.41 Estonia 61.7 0.61 0.84 0.61 0.84 0.40

Page 42: Zoltán J. Ács László Szerb Erkko Autio

Luxembourg 61.6 1.00 0.80 0.42 1.00 0.79 Japan 61.5 0.98 1.00 1.00 0.55 0.59 Korea 61.4 0.82 0.89 0.64 0.48 0.83

*Pillar values are the normalized pillar scores after the average pillar correction.

Summary and Conclusion

Entrepreneurship is similar to other social creatures, in that it is a multidimensional phenomenon whose exact meaning is difficult to identify. There is only one thing more difficult: how to measure such a vaguely defined creature. Over the decades, researchers have created several entrepreneurship indicators, but none of them has been able to reflect the complex nature of entrepreneurship and provide a plausible explanation of its role in development. The Global Entrepreneurship Index is the first, and presently the only, complex measure of the national-level entrepreneurship ecosystem that reflects the multifaceted nature of entrepreneurship. In this chapter, we have presented the entrepreneurial performance of 130 of the world’s countries, including country-level values for GEI—entrepreneurial attitudes, entrepreneurial abilities, and entrepreneurial aspirations—and for the 14 pillars.

While the GEI represents the contextual features of entrepreneurship, it is also possible to analyze changes in entrepreneurship and its components in terms of development. We have presented the relationship between Index values and development, as measured by per capita GDP. While previous studies have found that entrepreneurship, measured primarily in terms of activities, has a U- or L-shaped relationship with national per capita income, we noticed a linear, mildly S-shaped relationship, which indicates that entrepreneurship is higher in richer countries. This finding fits more accurately with our present knowledge of the nature of the entrepreneurial ecosystem than U- or L-shaped relationships between the variables. The final ranking, with Nordic and Anglo-Saxon countries at the top and developing countries at the bottom, also reflects what we expect development trends to look like.

In the final part of this chapter, we compared certain factors among some important countries and country groups. The pillar-level analysis provides a proper tool for showing the real differences and variations in entrepreneurship, which is found to vary substantially not only across countries with different levels of development but also among countries with similar per capita GDP. There is no doubt that the United States is the leading entrepreneurial country; despite a minimal decline in its GEI points, the U.S. is now number one not only in GEI score but also in two sub-indexes. While the leading countries have similar entrepreneurial features, individual European nations and the European Union lag behind the United States, and this gap is widening; this is especially evident in the PIIGS—Portugal, Ireland, Italy, Greece, and Spain—which lag far behind the larger EU countries and the Nordic fringe. Latin America will also need a substantial increase in entrepreneurship to reach levels comparable to those of North America. Comparing the developing countries shows that the configuration of the 14 pillars is similar in shape but at different levels across the three main parts of the world. In the following chapter we provide a detailed examination of entrepreneurship and the change in its components over the phases of development.

Page 43: Zoltán J. Ács László Szerb Erkko Autio
Page 44: Zoltán J. Ács László Szerb Erkko Autio
Page 45: Zoltán J. Ács László Szerb Erkko Autio
Page 46: Zoltán J. Ács László Szerb Erkko Autio

Chapter 3: Performance by Country and Country Group

How well one country performs relative to others in terms of entrepreneurship is a question of some importance. In this section, we address this question for different country groupings. We do it by groups because the quality and contribution of a country’s entrepreneurship vary systematically in accordance with its level of economic development. While the more developed countries tend to have better entrepreneurial processes, there still can be substantial differences between similarly developed countries’ entrepreneurial strengths and weaknesses.

We have grouped the 130 countries into six groups according to their location and level of development (Table 3.1). In the following sections, we analyze the entrepreneurial performance of the different country groups relative to the world average (i.e., the unweighted average of the 130 countries for each GEI pillar). We also take a close look at three countries in each country group: one at the top, one in the middle, and one at the bottom of the regional ranking. Table 3.1 presents the countries in each group.

Table 3.1: Country Groups Analyzed in This Chapter

Asia-Pacific Europe Middle East and

North Africa (MENA)

North America South/Central America and Caribbean

Sub-Saharan Africa

Australia Albania Algeria Canada Argentina Angola Bangladesh Austria Bahrain Mexico Barbados Benin Brunei Darussalam Belgium Egypt United States Bolivia Botswana

Cambodia Bosnia and Herzegovina Iran Brazil Burkina Faso

China Bulgaria Israel Chile Burundi Hong Kong Croatia Jordan Colombia Cameroon India Cyprus Kuwait Costa Rica Chad

Indonesia Czech Republic Lebanon Dominican Republic Côte d’Ivoire

Japan Denmark Libya Ecuador Ethiopia Kazakhstan Estonia Morocco El Salvador Gabon Korea Finland Oman Guatemala Gambia Lao PDR France Qatar Guyana Ghana Malaysia Germany Saudi Arabia Honduras Kenya Myanmar Greece Tunisia Jamaica Liberia

Pakistan Hungary United Arab Emirates Nicaragua Madagascar

Philippines Iceland Panama Malawi Singapore Ireland Paraguay Mali Sri Lanka Italy Peru Mauritania Taiwan Latvia Puerto Rico Mozambique Thailand Lithuania Suriname Namibia

Vietnam Luxembourg Trinidad & Tobago Nigeria

Macedonia Uruguay Rwanda Moldova Venezuela Senegal

Page 47: Zoltán J. Ács László Szerb Erkko Autio

Asia-Pacific Europe Middle East and

North Africa (MENA)

North America South/Central America and Caribbean

Sub-Saharan Africa

Montenegro Sierra Leone Netherlands South Africa Norway Swaziland Poland Tanzania Portugal Uganda Romania Zambia Russia Serbia Slovakia Slovenia Spain Sweden Switzerland Turkey Ukraine United Kingdom

Sub-Saharan Africa

Africa is the second largest continent by area and the largest by number of countries. The individual countries and economies of Africa exhibit considerable heterogeneity, with significant cultural and economic differences between the north and the south, and between the east and the west.

In this analysis, we focus on the sub-Saharan African countries; the North African countries are addressed as part of the Middle East and North Africa Region. As shown in Table 3.2, the sub-Saharan group includes some of the continent’s least developed countries, which is reflected in their GEI rankings and GEI scores. The leading country in this region, South Africa, has a GEI score of 40.0, which puts it 52nd in the global GEI rankings, making it the only sub-Saharan country in the top 50 percent. Uganda, with a score of 15.1, ranks next to last among GEI countries; 22 of the 29 sub-Saharan countries rank in the bottom quartile.

Even with this low level of development, there are important differences between the sub-Saharan countries’ Attitudes, Ability, and Activities. Generally speaking, the region’s most pressing bottlenecks are found in Attitudes, where the sub-index score is a little more than half of its relative strength, Ability. The Aspirations level is close to the Ability level for this region.

Page 48: Zoltán J. Ács László Szerb Erkko Autio

Table 3.2: GEI Ranking of the Sub-Saharan African Countries

GEI Rank Country ATT ABT ASP GEI 52 South Africa 33.4 38.5 48.1 40.0 66 Botswana 37.0 32.8 29.3 33.0 69 Namibia 29.3 28.2 38.1 31.9 84 Nigeria 32.0 28.0 26.6 28.9 86 Kenya 14.3 36.2 35.0 28.5 93 Gabon 18.9 33.3 30.9 27.7 96 Senegal 17.3 34.2 30.5 27.3 99 Rwanda 12.3 39.3 27.0 26.2

101 Gambia 9.2 38.0 29.6 25.6 102 Benin 13.1 34.9 28.8 25.6 103 Liberia 10.5 35.6 30.3 25.5 105 Ghana 34.9 22.3 17.2 24.8 106 Mozambique 9.8 34.1 29.2 24.3 107 Côte d’Ivoire 11.0 34.4 26.9 24.1 108 Tanzania 9.8 31.1 29.8 23.6 110 Zambia 22.0 24.9 22.2 23.0 111 Angola 21.4 18.8 27.8 22.7 113 Mali 7.7 32.6 27.2 22.5 114 Burkina Faso 9.9 30.5 25.9 22.1 115 Cameroon 15.2 26.8 24.1 22.0 116 Madagascar 7.1 34.7 24.1 22.0 117 Sierra Leone 8.3 31.7 24.8 21.6 118 Swaziland 17.4 25.3 21.6 21.4 119 Mauritania 8.1 27.4 27.9 21.1 124 Burundi 4.1 30.4 20.6 18.4 125 Ethiopia 13.7 22.4 15.6 17.2 126 Chad 5.0 23.1 21.6 16.6 128 Malawi 11.0 14.3 21.6 15.6 129 Uganda 20.8 12.1 12.3 15.1

Sub-Saharan Africa Average 16.0 29.5 26.7 24.1

Table 3.2 confirms that, despite encouraging progress in recent years, Africa remains the least developed continent. This is also reflected in the individual GEI pillars, as shown in Figure 3.1. With all African countries combined, the continent ranks below the world average for all pillars. One encouraging note is that Africa comes close to the world average in Technology Absorption capacity, a measure that combines countries’ institutional capacity to absorb technology with start-up activity in the technology sectors.

Because the regional averages combine many countries, the resulting profiles tend to be more or less round. This generally holds true for sub-Saharan Africa, with a couple of notable exceptions. First, sub-Saharan Africa seems to suffer from a bottleneck in start-up skills. On the surface, this might appear inconsistent with the fact that sub-Saharan African countries exhibit some of the highest self-employment rates in the world. However, the measure is actually indicative of a quality problem, as most African self-employment activity is of poor quality. While starting a need-driven self-employment activity is easy, building a sophisticated start-up is difficult. Moreover, an education is

Page 49: Zoltán J. Ács László Szerb Erkko Autio

generally required to conduct more sophisticated activity, which reveals Africa’s most serious handicap: its gross enrollment in tertiary education (the institutional component of the start-up skills pillar) is the lowest of all regions.

Notable weaknesses are also found in Africa in the Attitudes measure; the normalized values of Risk Acceptance, Networking, Cultural Support, and Opportunity Perception are all below 0.20, whereas the values of all other pillars are above that threshold. This points to a general African weakness in Attitudes; the continent’s relative strength is primarily in Ability.

Overall, entrepreneurship in Africa is held back by institutional factors, a pattern typical in developing countries. At 0.3, the mean score for institutional factors in Africa is the lowest of all regions. The next lowest is in South and Central America, at 0.51. Africa scores better on individual-level factors, with an overall mean score on a par with other regions. Thus, to exploit their entrepreneurial potential more effectively, African countries need to improve their institutional conditions for entrepreneurship.

Figure 3.1: Pillar Level Comparison of Africa and the World

In Figure 3.2 we compare the profiles of three African countries. South Africa is the best all-around performer in Africa in terms of entrepreneurship. Nigeria is not far behind, ranking 4th among the 28 countries analyzed, and Uganda ranks at the bottom.

The profiles of the three countries are quite different. South Africa clearly stands apart from Nigeria and Uganda on some of its Ability variables (notably, Competition and Opportunity Start-up) and many of its Aspiration variables (notably, Competition, Product Innovation, Process Innovation, High Growth, and Internationalization). This signals

Page 50: Zoltán J. Ács László Szerb Erkko Autio

that better institutional conditions should enable aspirational entrepreneurial activity to flourish. In terms of Start-up Skills, however, South Africa is on a par with Nigeria and Uganda.

Nigeria stands out in terms of Opportunity Perception and Networking, but it is held back by poor aspirations. Nigeria lags behind South Africa and even Uganda in terms of Risk Acceptance, which reflects a high level of Business Risk due to the country’s significant corruption and poor contractual enforcement.

Uganda is at the bottom of the African countries, which perhaps reflects its recent internal instability. Although it enjoys relative bright spots in Networking, Cultural Support, and Competition, Uganda has considerable work to do to improve its institutions and introduce internal stability, both of which currently hold back its entrepreneurial potential.

All three countries’ profiles are highly uneven, a pattern typical of developing economies. The uneven profiles suggest that there are bottlenecks holding back entrepreneurial performance, which is even true of the leading country in the region. However, the positive news is that, by focusing on alleviating bottlenecks, these countries could make significant progress relative to the effort expended. This differs from countries with rounder profiles, where opportunities for “quick wins” tend to be fewer.

Figure 3.2: Pillar-Level Comparison of South Africa, Nigeria, and Uganda

Middle East and North Africa (MENA)

The MENA region comprises 15 countries in the Middle East and North Africa (Table 3.3). Like Africa, this region exhibits a high degree of internal variability. On the one end of the wealth scale, the MENA region includes the oil-rich Persian Gulf economies, some of the richest countries in the world (as measured by per capita GDP). It also includes several lower-income economies, some of which continue to experience turmoil due to the “Arab Spring.” As

Page 51: Zoltán J. Ács László Szerb Erkko Autio

a group, however, the MENA region is considerably more developed than sub-Saharan Africa: its mean GEI score almost is double that of sub-Saharan Africa’s, with most countries in the top 50 percent of the global GEI ranking (Algeria, Morocco, Egypt, and Iran are the exceptions). The three sub-indexes are quite evenly balanced; the highest mean score is for Attitudes, but Aspirations and Ability are at almost the same level. The leading entrepreneurial economy in this group is the United Arab Emirates (UAE), followed closely by Israel and Qatar. Libya, Algeria, Morocco, Egypt, and Iran have the lowest GEI scores. The common feature of this bottom group of MENA countries is fairly illiberal and controlled economies in which market access is monopolized by a ruling business elite.

Table 3.3: GEI Ranking of the Middle East and North African Countries

GEI Rank Country ATT ABT ASP GEI 20 United Arab Emirates (UAE) 55.8 57.6 71.4 61.6 22 Israel 54.7 53.2 71.7 59.9 24 Qatar 52.8 59.0 56.7 56.2 31 Saudi Arabia 56.9 42.0 49.9 49.6 37 Kuwait 41.1 55.5 46.5 47.7 39 Oman 45.9 53.4 42.6 47.3 43 Bahrain 47.5 51.0 36.8 45.1 50 Lebanon 50.8 35.6 35.8 40.7 63 Tunisia 39.2 36.5 30.7 35.5 65 Jordan 41.7 23.8 34.3 33.3 73 Libya 27.1 36.8 29.0 31.0 79 Algeria 35.8 28.8 26.1 30.2 82 Morocco 39.2 21.1 28.1 29.4 91 Egypt 34.4 19.4 30.5 28.1 94 Iran 32.1 27.3 23.6 27.7

Middle East and North Africa Average 43.7 40.1 40.9 41.5

The most notable phenomenon to affect this region in recent years is the Arab Spring, the wave of popular revolutions that saw some of the region’s most enduring autocrats thrown out of power—most spectacularly in Tunisia, Libya, and Egypt. In some countries, such as Bahrain, the ruling families have successfully resisted popular uprisings, whereas the upheaval in Syria led to a violent civil conflict that threatens to undermine the stability of the entire region.

The Arab Spring phenomenon is noteworthy for our analysis because it occurred as a reaction to the ruling elites’ monopolization of opportunity in a number of countries in the MENA region. The memorable wave of upheaval that took place in 2011 was started by the suicide of a street vendor in Tunisia, who had been harassed by corrupt officials. In many countries, such as Tunisia, Libya, and Egypt, the economies had virtually become the private fiefdoms of the ruling elite, who monopolized entire economic sectors to the exclusion of the majority of the population. While much has been said about the democratic aspirations that clearly were an important motivation for the uprisings, it is useful to remember that the spark that ignited the Arab Spring had more to do with exclusion from opportunity than a deficit of democracy.

In terms of GEI pillars, the MENA region as a whole performs close to the world average (Figure 3.3). Most pillar values in the region are exactly at the world average or very close to it. The differences are found in Opportunity Perception, Networking, and Risk Capital, where the MENA countries collectively perform better than the world average.

Page 52: Zoltán J. Ács László Szerb Erkko Autio

Figure 3.3: Pillar-Level Comparison of MENA and the World

We next look at three countries that illustrate different categories within the MENA region. The oil-rich UAE is one of the world’s wealthiest countries in terms of per capita GDP. Tunisia provides an example of the Arab Spring economies, while Egypt is a bottom performer.

Figure 3.4 shows that the UAE is the top performer in the MENA region and a top performer globally for many pillars, most notably Human Capital, Risk Capital, and High Growth, where the UAE’s performance is a perfect 1. This reflects not only its monetary wealth but also its high-quality human capital. The UAE’s position as an important trading post undoubtedly contributes to its high level of High Growth and Internationalization Aspirations. Overall, the UAE exhibits a high level of Aspirations and a medium level of Attitudes and Ability. Its bottlenecks relate to Start-up Skills, Technology Absorption, and Process Innovation. Given the UAE’s uneven overall profile, this suggests that an investment in entrepreneurship training and research capacity could bring about quite substantial improvements in the country’s overall entrepreneurial performance.

Tunisia’s profile is quite different from the UAE’s. Tunisia ranks 9th among the 15 countries in the MENA region and 20th globally. Its GEI score of 35.5 is a little more than half of the UAE’s. Unlike the UAE, Tunisia’s relative strengths are found in Attitudes, whereas the monopolization of opportunity has held back development of its Ability and Aspirations pillars. The strongest aspect of Tunisia’s entrepreneurship ecosystem is Cultural Support for entrepreneurship, and it also shows relative strengths in Start-up Skills (where it outperforms the UAE) and Technology Absorption.

Egypt is a laggard in the MENA region, as evidenced by its GEI score of 28.1, which is only a notch above Iran, the bottom performer in this group. Although Egypt exhibits relative strengths in some Attitudes and Aspirations (notably, High Growth, Opportunity Perception, Cultural Support, and Process Innovation), all of its pillar values are lower than

Page 53: Zoltán J. Ács László Szerb Erkko Autio

the UAE’s. The constraining effect of Egypt’s pattern of opportunity monopolization probably contributes to its low Ability scores; market access there has been difficult, thus barring many new ventures from entry. Indeed, Egypt’s Ability score is the lowest in this group, suggesting that the country urgently needs to liberalize trade and open its markets to aspiring entrepreneurs as well as improve education. Given the continued political turmoil in the country and the reassertion of power by the former army elite, it remains to be seen whether this can be achieved. Egypt’s reasonable score for Opportunity Perception suggests that the country has the potential for a considerably higher level of entrepreneurial activity.

Figure 3.4: Pillar-Level Comparison of the United Arab Emirates, Tunisia, and Egypt

Asia-Pacific

The Asia-Pacific region offers some of the greatest potential for economic growth of the countries analyzed in this work, as it contains the behemoth developing economies of China and India, a number of emerging economies such as Malaysia, Thailand, Vietnam, and Indonesia, and well-established, mature economies such as Australia, Japan, Korea, and Singapore (Table 3.4). One the other hand, this region also includes some of the poorest countries in the world, such as Cambodia, Myanmar, Laos, and Bangladesh. The economic potential of this region stems from its large and generally young population, most notably in the developing Asian economies.

Table 3.4: GEI Ranking of the Asia-Pacific Countries

GEI Rank Country ATT ABT ASP GEI 3 Australia 77.9 81.3 73.5 77.6 8 Taiwan 60.8 67.5 79.0 69.1

10 Singapore 52.1 73.5 78.8 68.1 28 Korea 48.0 52.9 61.4 54.1

Page 54: Zoltán J. Ács László Szerb Erkko Autio

GEI Rank Country ATT ABT ASP GEI 33 Japan 31.4 55.8 61.5 49.5 40 Hong Kong 41.2 37.5 59.1 45.9 53 Malaysia 42.5 44.5 33.0 40.0 60 Brunei Darussalam 39.6 40.8 30.4 36.9 61 China 35.7 27.6 45.8 36.4 68 Thailand 32.1 36.4 27.7 32.1 71 Sri Lanka 18.7 39.6 35.0 31.1 72 Lao PDR 12.6 44.5 36.2 31.1 85 Vietnam 25.8 29.2 31.5 28.8 88 Kazakhstan 33.4 32.7 19.2 28.4 95 Philippines 34.5 25.0 23.5 27.7 98 Cambodia 9.5 37.8 31.6 26.3

104 India 25.5 26.0 24.4 25.3 109 Myanmar 11.2 27.6 30.6 23.1 120 Indonesia 29.2 22.1 11.9 21.0 123 Pakistan 15.5 19.5 25.2 20.1 130 Bangladesh 14.5 21.2 7.6 14.4

Asia-Pacific Average 32.9 40.1 39.4 37.5

When the profiles of the Asia-Pacific countries are combined, the result is a relatively round profile of pillar scores that does not differ much from the world average (Figure 3.5). However, this even pattern hides the fact that some countries in this group are global top performers while others are global laggards.

Figure 3.5: Pillar-Level Comparison of Asia and the World

Page 55: Zoltán J. Ács László Szerb Erkko Autio

The Asia-Pacific region’s striking feature is its diversity in terms of economic and entrepreneurship development. On the one hand, the region includes some of the world’s leading entrepreneurial economies, such as Australia (3rd globally), Taiwan (8th), and Singapore (10th). On the other hand, it also has global laggards such as Myanmar (109th), Indonesia (120th), Pakistan (123rd), and Bangladesh (at 130th place, it is the bottom performer in the global GEI ranking). Interestingly, Korea and Japan do not rank at the top (5th and 6th in the region, 28th and 33rd globally). This signals that the bulk of these countries’ innovative energy is channeled through large, world-leading corporations. Even though both economies exhibit strong supply chains that include an important number of small- and medium-sized businesses, perhaps too many of these enterprises (relative to the countries’ innovative potential) content themselves with servicing local supply chains instead of seeking rapid global growth outside these chains.

An interesting contrast is also observed between China and India. China’s GEI score is more than 50 percent higher than India’s, possibly suggesting that the bureaucratic red tape common in India constrains entrepreneurial activity. The bottom five countries in the Asia-Pacific group (India, Myanmar, Indonesia, Pakistan, and Bangladesh) also have this problem in common.

The Asia-Pacific region is weakest in Attitudes toward entrepreneurship, whereas Ability and Aspirations are at almost the same level with each another. However, there is great variation within the region; for example, Australia’s Attitude score is 77.9, whereas Cambodia’s is 9.5, one of the lowest in the global GEI ranking. There is similar variation across other sub-indexes; for example, Aspirations scores range from Taiwan’s high of 79.0 to Bangladesh’s low of 7.6. Given this diversity, it makes sense to take a separate look at the developing and mature Asia-Pacific economies.

The developing Asian countries represent the world’s second least developed group, after Africa. The big challenge for these countries appears to be continuing to enhance institutional and regulatory conditions for entrepreneurship. For some countries, including China, this inevitably will also mean gradual democratization to accommodate the desires of the growing middle class. For other countries, such as India and Pakistan, this will mean cutting red tape and strengthening the rule of law to enable ambitious entrepreneurship to flourish. For the emerging economies, most notably Malaysia and Thailand, this will mean strengthening the infrastructure for ambitious entrepreneurship and facilitating competitive market entry in the face of dominant industrial conglomerates. For the weakest economies, such as Cambodia, Laos, and Bangladesh, this will mean strengthening the institutional foundations for entrepreneurial activity and gradually developing human capital and physical infrastructure. Overall, there appears to be good potential for development in the region, as many developing Asian countries have stable governance structures capable of channeling the resources needed to facilitate the desired policy.

The mature Asia-Pacific countries include some of the strongest and most dynamic economies in the world, with pillar values above the world average for almost all pillars, except Competition. These countries show also relatively less strength in Opportunity Perception and Start-up Skills, both of which are close to the world average. Apart from Australia, the profiles of the mature Asia-Pacific countries are surprisingly uneven, suggesting systematic bottlenecks in Attitudes balanced against notable strengths in Aspirations. As a general rule, the mature Asia-Pacific countries (except Australia) would likely make the greatest gains by addressing this aspect of their entrepreneurship ecosystems.

We now take a closer look at three different economies in the region (Figure 3.6). Australia is a global leader that exhibits strengths across virtually all GEI pillars. China is the world’s powerhouse in production, and it continues to see impressive growth rates despite the turbulent world economy; of course there may be major structural challenges ahead for China. Bangladesh is one of the world’s poorest countries and it has major development challenges, but it also has a large population and therefore much potential human capital.

Page 56: Zoltán J. Ács László Szerb Erkko Autio

Figure 3.6: Pillar-Level Comparison of Australia, China, and Bangladesh

In Figure 3.6 we see that Australia’s entrepreneurial profile is nice and round. This explains the country’s high overall ranking and means that Australia is a strong all-around performer with a strong entrepreneurship ecosystem. Australia’s greatest strengths are found in Technology Absorption, Risk Capital, Start-up Skills, Opportunity Perception, Opportunity Start-up, and Human Capital; in fact, there are no real weaknesses in Australia’s entrepreneurship ecosystem, although it does rank behind China in Product Innovation. This suggests that, although Australia’s overall innovation performance is strong, more of it could be channeled through the entrepreneurial sectors. Another relative weakness is Networking, which suggests that, even though Australia is a top performer globally, there are still areas where it can progress further.

In contrast, Chin’s profile is very uneven. China ranks 4th in this region, after Malaysia, and Brunei. Its main strengths are in Aspirations: Product Innovation, Process Innovation, and Risk Capital. China also exhibits individual strengths in Ability and Attitudes, most notably Networking and Opportunity Perception. China’s major bottlenecks appear to be in Internationalization, Start-up Skills, and Opportunity Start-up. Thus, there is an interesting contrast in China, in that its high level of Opportunity Perception does not appear to be fully converted into Opportunity Start-up activity. Because of China’s size and great internal diversity, with a booming east coast and lagging west, general policy prescriptions are not feasible. China clearly needs to adopt an approach that includes developing a national network of regional entrepreneurship ecosystems. China’s highly uneven GEI profile suggests that it has the potential to achieve major progress by focusing its policy efforts on bottlenecked areas. The priority in China appears to be to develop its institutional business infrastructure.

Reflecting its less developed status, Bangladesh lags behind Australia and China in almost all areas, except for the Opportunity Start-up pillar, where it appears to perform better than China. However, this may be due to a blip in the data. Bangladesh’s other strength, Opportunity Perception, suggests that its economy might be in a position to increase opportunity-driven entrepreneurial activity. Unfortunately, this potential is held back by major weakness in several domains, including Product and Process Innovation, Start-up Skills, Risk Acceptance, and

Page 57: Zoltán J. Ács László Szerb Erkko Autio

Internationalization. Thus there are major bottlenecks in Bangladesh, but its high scores on Opportunity Perception and Opportunity Start-ups, combined with Cultural Support, should provide good leverage in addressing the major challenges.

Europe

Europe also is a region with notable internal divides. The entrepreneurially mature Europe consists of the “old” western and northern European countries, plus Slovenia (Table 3.5). These are some of the most developed and mature global economies, which is apparent in their GEI rankings. The United Kingdom is ranked the 4th most entrepreneurial economy globally, and five of the top ten global performers are found in Western and Northern Europe. Moreover, 13 of the top 20 entrepreneurial economies are in Western and Northern Europe, and all EU countries rank in the top 50 percent globally. These developed European economies exhibit traditional strengths in technology and innovation, and new European businesses benefit from the EU’s internal market and the high quality of its infrastructure and institutional set-up.

On the other hand, there is also a “developing” Europe that comprises the former centrally planned European economies, as well as Russia and Ukraine. Given its socialist history, developing Europe carries a legacy of an infrastructure geared toward heavy industries, a weak tradition of entrepreneurial activity, and, perhaps most importantly, a weak tradition of initiative and assumption of responsibility. While traditionally strong in human capital, developing Europe is held back by poor Attitudes and poor Aspirations. Being mostly inculcated in industrial structure and individual attitudes, the post-socialist countries may prove surprisingly resilient, but the remnants of their socialist history may ultimately be erased only through generational change.

Table 3.5: GEI Ranking of the European Countries

GEI Rank Country ATT ABT ASP GEI 4 United Kingdom 70.9 82.8 64.3 72.7 5 Sweden 77.1 74.7 63.5 71.8 6 Denmark 59.4 83.4 71.6 71.4 7 Iceland 71.5 69.9 69.7 70.4 9 Switzerland 62.8 72.0 71.1 68.6

11 Germany 59.9 72.0 70.3 67.4 12 France 62.0 70.3 69.7 67.3 13 Netherlands 71.0 68.1 60.3 66.5 14 Finland 75.8 59.3 62.0 65.7 15 Norway 72.8 75.4 48.8 65.6 16 Belgium 57.5 66.1 72.8 65.5 17 Ireland 57.9 71.5 66.5 65.3 18 Austria 65.6 66.5 62.6 64.9 21 Estonia 57.2 61.8 61.7 60.2 23 Luxembourg 45.1 64.9 61.6 57.2 25 Turkey 51.7 48.5 63.7 54.6 26 Lithuania 49.3 58.1 56.5 54.6 27 Latvia 48.6 56.2 58.6 54.5 29 Slovenia 48.6 56.0 54.8 53.1 30 Portugal 45.7 49.3 57.4 50.8 32 Spain 52.6 53.8 42.3 49.6 35 Czech Republic 40.7 42.4 63.5 48.9

Page 58: Zoltán J. Ács László Szerb Erkko Autio

GEI Rank Country ATT ABT ASP GEI 38 Poland 51.0 33.8 57.4 47.4 41 Slovakia 44.2 37.3 54.7 45.4 42 Romania 38.9 40.8 56.1 45.3 44 Bulgaria 50.1 41.2 36.8 42.7 45 Hungary 41.1 42.3 44.7 42.7 46 Cyprus 31.0 45.5 50.9 42.5 47 Greece 35.8 48.9 41.4 42.0 49 Italy 34.5 40.0 49.5 41.3 51 Croatia 35.5 36.1 50.1 40.6 54 Montenegro 42.1 31.9 43.3 39.1 57 Moldova 27.5 45.3 38.9 37.2 58 Macedonia 36.1 35.1 40.0 37.1 64 Ukraine 28.9 33.9 38.1 33.6 70 Russia 31.6 37.3 26.2 31.7 76 Albania 28.8 36.2 26.8 30.6 78 Serbia 39.6 22.6 29.5 30.6 83 Bosnia and Hercegovina 29.8 26.5 30.4 28.9

Europe Average 49.5 52.8 53.5 51.9

A closer look at the European countries offers further notable observations. The Nordic countries (Sweden, Denmark, Iceland, Finland, and Norway) all rank in the top 15 globally. France shows solid strength, thanks to its high-quality infrastructure. Estonia performs strongly and ranks ahead of Luxembourg, Portugal, and Spain. All three Baltic countries (Estonia, Lithuania, and Latvia) are closely ranked. Turkey, which we include in Europe in this analysis, performs strongly, splitting the Baltic countries. Italy’s performance, on the other hand, is alarmingly weak, ranking below Portugal, Spain, Cyprus, and Greece, a group of countries that have suffered badly throughout the global financial crisis that started in 2008. Indeed, Italy performs worse than many countries with socialist legacies, such as the Baltic countries, Slovenia, the Czech Republic, and even Romania, Bulgaria, and Hungary. This is an alarming situation, especially given that Italy’s ranking appears to be on a downward trend. Since 2007, Italy’s GEI score has evolved as follows: 2007, 55.0; 2008, 57.6; 2009, 49.4; 2010, 44.3; 2012, 40.9; 2013, 41,.3. Thus, Italy’s GEI score has dropped by over 15 points in five years, and has been a consistent trend since 2008. The bottom performers in Europe are Ukraine, Russia, Albania, Serbia, and Bosnia and Hercegovina.

Despite Europe’s heterogeneity, the region’s combined pillar performance is consistently above the world average, except for Opportunity Perception, where it is at the world average (Figure 3.7). The Opportunity Perception mean is primarily dragged down by Europe’s former centrally planned economies. The region’s greatest strengths are found in Internationalization, Networking, Technology Absorption, Process Innovation, and Risk Capital.

Page 59: Zoltán J. Ács László Szerb Erkko Autio

Figure 3.7: Pillar-Level Comparison of Europe and the World

A closer look at three European entrepreneurship ecosystems reveals notable heterogeneity among the European countries. The region’s leading entrepreneurial economy, the UK, exhibits a strong all-around entrepreneurial profile. In contrast, with their considerably more uneven profiles, Greece and Russia have a lot of catching up to do (Figure 3.8).

Page 60: Zoltán J. Ács László Szerb Erkko Autio

Figure 3.8: Pillar-Level Comparison of the United Kingdom, Greece, and Russia

The United Kingdom is a traditionally strong entrepreneurial economy, with entrepreneurial traditions extending well back to Victorian times and even earlier. This shows in its GEI profile, which is very round, suggesting a strong all-around performance. The UK’s strongest pillar is Competition, followed by Human Capital and Opportunity Start-up, suggesting that the UK’s greatest strengths are in Ability. The UK also exhibits strengths in Attitudes, whereas many of its Aspirations pillars show relative softness. Overall, therefore, the UK appears to have some catching up to do in terms of improving the ambitions and aspirations of its start-ups. The most notable aspect remains the overall evenness of the UK’s entrepreneurial profile.

In contrast, Greece appears to exhibit both outstanding strengths and notable bottlenecks. Greece’s strongest pillar is Start-up Skills, but this may be partly due to the country’s large grey economy, and its small business orientation, as it has few high-growth new businesses. Greece also exhibits reasonable strengths in Human Capital, Technology Absorption, Internationalization, and Risk Capital. On the other hand, it shows major bottlenecks in Opportunity Perception, Risk Acceptance, High Growth Aspirations, and Cultural Support. It may well be that this uneven profile has been influenced by the deep recession Greece entered in 2008, from which it is only now slowly beginning to emerge. The good news for Greece’s economy is that the downward spiral appears to have bottomed out; however, with the economy roughly one-quarter smaller than it was in 2008, the country has much catching up to do.

Perhaps the biggest problem is Greece’s notorious bureaucracy, which constitutes a real hindrance to its entrepreneurial potential. This is reflected in Greece’s low scores in High Growth and Risk Acceptance. While much has been done to address this constraint and move economic activity from the grey economy to the formal economy, Greece still has much to do in terms of harnessing its entrepreneurial potential to economic growth. Greece could draw inspiration from Iceland and Ireland, both of which were hard hit by the economic downturn but have emerged from the recession and entered a steady growth path.

Page 61: Zoltán J. Ács László Szerb Erkko Autio

Russia’s entrepreneurship profile exhibits similar unevenness. Despite its extensive natural resources, the Russian entrepreneurship ecosystem is the fourth weakest in Europe. This suggests that, instead of being a source of strength, the Russian economy’s abundant resources are actually a source of weakness, as they have caused Russia to become increasingly dependent on the price of oil for its economic wealth. Helped by the favorable rise of oil prices over the past decade, this has also allowed Russian politicians to delay introducing the political and economic reforms that are needed to facilitate innovation and diversify the Russian industrial base. In fact, rather than diversifying, the Russian industrial base has become even more reliant on energy and raw materials. These developments have resulted in an entrepreneurial profile that is highly uneven and lags behind most other post-socialist countries.

Russia’s outstanding strength is Human Capital, followed by much weaker Networking and High Growth. These relative strengths are offset by bottlenecks in Internationalization, Cultural Support, Product Innovation, Competition, Risk Acceptance, and Process Innovation. Laden with post-socialist baggage, the Russian entrepreneurship ecosystem continues to exhibit many deficiencies, and the Russian economy’s lack of diversification and dependence on energy and raw materials do not help under the prevailing governance structure. It appears that, to escape this dilemma, Russia will need to strengthen its rule of law and its economic and political institutions.

North America North America includes the NAFTA countries: the U.S., Canada, and Mexico. The U.S. and Canada are global leaders, 1st and 2nd in GEI ranking (Table 3.6). In contrast, Mexico ranks only 75th, despite some progress in recent years. Whereas the U.S. and Canada profiles show approximately equal strength for all sub-indexes, Mexico’s strength appears to be in Attitudes; its entrepreneurial performance is held back by weaknesses in Ability and Aspirations.

Table 3.6: GEI Ranking of the North American Countries

GEI Rank Country ATT ABT ASP GEI 1 United States 83.4 84.7 86.8 85.0 2 Canada 79.2 85.7 79.6 81.5

75 Mexico 40.6 27.6 23.7 30.7 North America Average 67.7 66.0 63.4 65.7

The North American region exhibits traditional strength in entrepreneurship. This is illustrated by Figure 3.9, which compares the GEI profile of the North American region to the world average. North America stands out as the strongest entrepreneurship ecosystem in the GEI analysis, with all pillars clearly above the world average. Particular strengths are exhibited in Opportunity Perception, but the region performs strongly across all pillars. The profile of this region is relatively round, dominated by the U.S. and Canada.

Page 62: Zoltán J. Ács László Szerb Erkko Autio

Figure 3.9: Pillar-Level Comparison of North America and the World

Comparing the three countries in this region (Figure 3.10), we see that the U.S. is the leading entrepreneurship ecosystem in North America, and it also ranks first globally. A traditional hotspot for entrepreneurship, the U.S. economy boasts strengths in all areas, with the possible exception of Networking. This may signal the highly individualistic U.S. culture and suggests that Networking—which is an important requirement in the knowledge economy—is an area where a concentrated policy effort could bring significant returns.

Page 63: Zoltán J. Ács László Szerb Erkko Autio

Figure 3.10: Pillar-Level Comparison of the United States, Canada, and Mexico

Canada’s entrepreneurial profile is similar to that of the U.S., which is reflected in Canada’s 2nd-place global ranking. Relative to the U.S., Canada exhibits some relative softness in Start-up Skills, Product and Process Innovation, High Growth, and Competition. Thus, it appears that Canada should invest further in entrepreneurship education and training, and in Innovation. A strength of the Canadian economy is that it is close to a large market and can tap into the strong U.S. entrepreneurship ecosystem.

Mexico’s entrepreneurship ecosystem is considerably less developed than that of the U.S. or Canada. Although it exhibits strength in Opportunity Perception and in Opportunity Start-up, Networking, and Product Innovation, the Mexican entrepreneurship ecosystem appears to suffer from clear bottlenecks in Internationalization, Human Capital, Cultural Support, and High Growth. Thus, Mexico’s strengths are mostly in Attitudes, whereas its bottlenecks are primarily concentrated in Aspirations, although some are also found in Attitudes and Ability. It appears that Mexico needs a broad-based, coordinated policy that can coherently addresses its bottlenecks without undermining its strengths.

Page 64: Zoltán J. Ács László Szerb Erkko Autio

South and Central America and the Caribbean

In this analysis, the South and Central America and Caribbean region includes all Latin American economies, except Mexico (Table 3.7). Although considerably less developed than North America, “developed” Europe, and Asia, this region offers considerable potential for entrepreneurial activity, thanks to its overall growing economy, improving governance, and young population. Many Latin American economies have recorded positive developments in recent years, although progress has been far from uniform. While some countries have instituted strong and open governance systems (e.g., Chile and Uruguay), the continent overall continues to suffer from incompetent governance that holds back its entrepreneurial potential.

Table 3.7: GEI Ranking of the South and Central American and Caribbean Countries

GEI Rank Country ATT ABT ASP GEI 19 Chile 74.7 50.4 64.5 63.2 34 Puerto Rico 50.1 56.7 39.9 48.9 36 Colombia 47.1 46.4 50.4 47.9 48 Uruguay 51.7 41.9 30.7 41.4 55 Costa Rica 49.4 35.3 28.3 37.7 56 Argentina 47.3 34.1 30.4 37.2 59 Barbados 48.9 37.9 24.4 37.1 62 Paraguay 26.1 47.3 34.5 36.0 67 Panama 41.2 35.9 19.4 32.2 74 Peru 42.7 24.8 25.1 30.9 77 Dominican Republic 40.3 26.6 24.9 30.6 80 Honduras 13.5 44.9 30.9 29.8 81 El Salvador 29.8 30.5 28.6 29.6 87 Nicaragua 12.7 42.7 29.9 28.4 89 Trinidad & Tobago 31.2 32.5 21.5 28.4 90 Ecuador 37.4 27.0 20.1 28.2 92 Bolivia 36.6 25.8 21.5 28.0 97 Jamaica 36.2 28.5 16.9 27.2

100 Brazil 41.3 25.6 10.6 25.8 112 Venezuela 38.5 17.7 11.4 22.6 121 Suriname 25.0 24.9 12.1 20.7 122 Guatemala 23.9 21.1 16.0 20.3 127 Guyana 18.8 16.2 13.5 16.2

South and Central America and Caribbean Average 37.6 33.7 26.3 32.5

The top performer in this region is Chile, which is also the only country in the region that ranks in the top 20 in the global GEI ranking. Chile, Puerto Rico, and Colombia are close to one another, followed by Uruguay, after which there is a cluster of countries with similar GEI scores: Costa Rica, Argentina, Barbados, and Paraguay. It is notable that Brazil ranks just 19th among the 23 countries in this group, trailed only by Venezuela, Suriname, Guatemala, and Guyana. Note that GEI ranking does not cover Cuba and Haiti, both of which would likely rank close to the bottom.

Collectively, the relative strengths in this group are found in Attitudes and Ability, whereas the region’s performance in Aspirations is relatively weak. The region thus faces a challenge in improving Aspirations and in instilling a more

Page 65: Zoltán J. Ács László Szerb Erkko Autio

innovative, growth-oriented international outlook among its entrepreneurial ventures. This challenge appears particularly acute in Brazil, which ranks at the bottom of the region in this regard.

As a group, the GEI profile of the South and Central American and Caribbean region is surprisingly uneven (Figure 3.11). The region beats the world average in Opportunity Perception and Start-up Skills but is equal to or behind the world average in other pillars, notably Process Innovation, Risk Capital, and Technology Absorption. Despite these challenges, the region offers great potential for entrepreneurship, conditioned by its ability to strengthen its economic institutions and governance systems.

Figure 3.11: Pillar-Level Comparison of the Latin American Region and the World

We look more closely at three countries in this region, Chile, Brazil, and Suriname (Figure 3.12). Chile boasts the strongest entrepreneurship ecosystem in this region, due perhaps to its strong, market-embracing governance systems. Chile ranks 19th in the 2015 GEI ranking, in spite of its relatively low (globally speaking) per capita GDP, which is clearly the smallest of the top 20 entrepreneurial economies in GEI ranking. (France has the second lowest GDP per capita in the top 20, which is almost double that of Chile.) This is a remarkable achievement, given that the quality of institutions, which is given considerable weight in the GEI, tends to be strongly correlated with economic wealth. Thus, Chile “punches above its weight” in entrepreneurship, an outcome that we attribute to its sound governance systems. The most important strengths of Chile’s system are Opportunity Perception, Product Innovation, and Start-up Skills, with the most significant bottlenecks found in Process Innovation, Competition, and Human Capital. Chile exhibits the greatest overall strength in Attitudes, followed by Aspirations and Ability.

Page 66: Zoltán J. Ács László Szerb Erkko Autio

Figure 3.12: Pillar-Level Comparison of Chile, Brazil, and Suriname

Brazil is among the largest economies in this region, but it only ranks 19th regionally and 100th in the global GEI ranking. Brazil exhibits considerably weaker governance systems and economic and political institutions than Chile. These handicaps appear to prevent Brazil from taking full advantage of its large consumer market, which is reflected in the country’s entrepreneurial profile. Although Brazil exhibits clear strength in Opportunity Perception, this does not fully compensate for multiple bottlenecks in Aspirations and Ability. The most important bottlenecks in the Brazilian entrepreneurship ecosystem are found in Internationalization, Process Innovation, Product Innovation, and Human Capital. Brazil thus faces a big challenge in improving its entrepreneurial Aspirations. Like many other developing economies, it seems that improving the quality of governance and economic institutions in Brazil will be key to mobilizing its entrepreneurial potential to pursue the perceived opportunities, which is underlined by the big gap between Opportunity Perception and Opportunity Start-up.

Suriname’s entrepreneurship ecosystem is the worst performing in the region and one of the most poorly performing ecosystems worldwide; it ranks 121st among the 130 countries in the 2015 GEI ranking. Like most poorly developed entrepreneurship ecosystems, Suriname also has a highly uneven GEI profile, with relative strengths in Human Capital, Networking, Competition, and Cultural Support. In this case the strengths are only relative, although Suriname does have stronger scores than Brazil in Human Capital, High Growth, and Product and Process Innovation. However, Suriname’s bottlenecks are severe, especially in Risk Capital, Technology Absorption, Process Innovation, High Growth, and Start-up Skills. These bottlenecks indicate that Suriname faces massive challenges as it strives to develop its entrepreneurial potential.

Page 67: Zoltán J. Ács László Szerb Erkko Autio

Conclusion

This analysis points out important differences between regions of the world in terms of challenges to their entrepreneurial ecosystems. Different regions face very different challenges and priorities, which suggests that there is no one optimal policy approach that will work everywhere. In this regional analysis, we have grouped countries geographically, an approach that has its both strengths and shortcomings. If we had grouped countries according to their level of economic development, for example, the suggested challenges and implied policy priorities would have been different. This would also be true if we had grouped the countries according to their institutional set-up and economic history. The important message here is that each country and region should identify its own strengths and address its own bottlenecks. A much more detailed analysis is needed to identify these in a meaningful way. It should combine hard GEI data with soft insights. In chapter 4, we lay out an approach that uses GEI methods to identify specific policy priorities and actions for individual countries.

Page 68: Zoltán J. Ács László Szerb Erkko Autio
Page 69: Zoltán J. Ács László Szerb Erkko Autio
Page 70: Zoltán J. Ács László Szerb Erkko Autio

Chapter 4: Enhancing Entrepreneurship Ecosystems. A “Systems of Entrepreneurship” Approach to Entrepreneurship Policy

An ecosystem is a community of living organisms in conjunction with the nonliving components of their environment, interacting as a system. These biotic and abiotic components are regarded as linked together through nutrient cycles and energy flows.30

Introduction

Facilitating entrepreneurship is high on many government policy agendas. Policies that support entrepreneurship have become increasingly sophisticated over time, as governments have moved from facilitating the creation of new firms toward supporting high-growth businesses. Many governments currently talk about support ecosystems that cover the entire life cycle of a new venture, from inception to early survival and growth to international expansion. However, while policy portfolios are growing, most policies still reveal a lack of understanding about what drives and constrains productive entrepreneurship in a particular economy. Although policy-makers increasingly talk about entrepreneurship ecosystems, their policies do not in fact consider and address bottlenecks that hold back the performance of these systems. As a result, entrepreneurship policy portfolios remain unfocused and thus are unable to truly change how an ecosystem functions.

The lack of academic research and theory on entrepreneurship does not help. Researchers have put little effort into defining what “entrepreneurship ecosystems” actually means and how they work. As a result, when governments and researchers talk about these ecosystems they may be referring to completely different things. This confusion undermines the design and implementation of policies that effectively support the kind of entrepreneurial activity that can bring real economic growth.

To design policies that effectively enhance entrepreneurship ecosystems, policy-makers need to take an ecosystems approach, which means that entrepreneurship is best understood at the country level not as the sum of individual efforts but as a true system. This counters the belief of many policy-makers that the more entrepreneurs there are, the greater the contribution they can make to economic growth. In fact, not all entrepreneurs are the same, and only a few ever grow their business enough to generate a meaningful number of jobs and increase the level of economic productivity. Policies that fail to consider the quality of entrepreneurial activity are therefore not likely to be effective.

Moreover, not all economies of course are the same. Different economies have different strengths and challenges, and thus the bottlenecks they encounter also differ. For example, a country’s financing policies might not be effective if the bottleneck it faces is a lack of aspiration or well-educated individuals’ decision not to choose entrepreneurship as a career. Clearly, who starts new firms is more important than how many people do so.

Finally, policy-makers must realize that entrepreneurship is not only about individuals, as context also matters. A new business may have very different growth prospects, depending on where it is created. For example, a high-tech start-up would be more likely to have an impact in Silicon Valley than in a low-income country that lacks the infrastructure to support productive entrepreneurship. It is important to understand that a country’s economic and social contexts—that is, its conditions for entrepreneurship—not only influence the success of a new venture but who starts the venture in the first place. Policies that ignore this aspect of the entrepreneurial dynamic are not likely to be effective if the individuals who have the right skills and attitudes are not those who start new firms.

Because entrepreneurship ecosystems are complex and consist of many interacting elements, they can be very difficult to change. The policy-makers must recognize this and approach the design of policies that support these systems accordingly. The more complex the system, the greater its inertia tends to be, and uncoordinated policy initiatives are not likely to recognize and target bottlenecks that hold back ecosystem performance, thus their effect

Page 71: Zoltán J. Ács László Szerb Erkko Autio

will not be long lasting. Only coordinated policies that address the bottlenecks of an entrepreneurship ecosystem are likely to bring about lasting change in the ecosystem dynamics. The GEI supports precisely this kind of approach to entrepreneurship ecosystem policy design.

What Are Systems of Entrepreneurship?

There is a dawning recognition that entrepreneurship policies focused only on the entrepreneur may be too narrow. This is why researchers, policy-makers, and practitioners alike now discuss entrepreneurship ecosystems, support ecosystems, or systems of entrepreneurship. However, these concepts can mean very different things. The following descriptions will help to clarify these definitions.

Support ecosystems are what policy-makers usually mean when they talk about entrepreneurship ecosystems, which refers to portfolios of support policies intended to address the life cycle of a new venture. For example, policies that support the early stage of a new venture may include incubation services, start-up and pre-seed financing, and training services for prospective entrepreneurs. Policies that address the consolidation and early growth stages may include science park services, accelerator services, and providing seed and early-stage venture capital. Services in the growth stage may include support for internationalization. From this perspective, “ecosystem” narrowly refers to support services, which is useful as a model to organize portfolios of support initiatives but tends to ignore where new entrepreneurs come from and what determines their ability and aspirations.

Entrepreneurship ecosystems usually refers to constellations of entrepreneurial activities and resources that contribute to a healthy entrepreneurial dynamic in a region or sometimes a nation. One example is Silicon Valley, a famous hotspot for entrepreneurial activity. What makes Silicon Valley work is not only entrepreneurship support policies but, more importantly, the availability of specialized resources, human capital, and infrastructure that support high-growth entrepreneurial activity. Most of these resources are provided not by public-sector agencies but by private-sector operators, such as experienced venture capitalists, law firms that offer specialized services, marketing agencies that specialize in new high-tech ventures, and other similar operations. Thus, the most widespread use of the term “entrepreneurship ecosystems” extends the notion from a support ecosystem to a regional constellation of specialized resources. However, although this notion works well in individual regions, it may not work as a national policy design. Furthermore, the notion of entrepreneurship ecosystems tends to focus on the provision of resources and gives less attention to how the demand for these resources and services is created.

National and regional systems of entrepreneurship offer perhaps the widest perspective on entrepreneurial processes within their specific contexts. This relatively recent term is related to the concept and underlying theory of national systems of innovation (NSI),31 which has been widely used as a platform to guide innovation policy design. The concept also underpins the European Union’s current regional policy emphasis on smart specialization strategies. From an entrepreneurship perspective, the greatest shortcoming of the NSI theory is that it tends to emphasize structure and institutions but ignores individual determinants of entrepreneurial action. According to this theory, once a structure is in place, innovation will follow almost automatically. In contrast, the systems of entrepreneurship framework emphasizes that individuals’ actions are critical to innovation and entrepreneurship. Simply put, building science parks will not be effective if they are not filled with high-quality activity, which requires individuals who act. Therefore, the entrepreneurship systems framework emphasizes the effects of institutions and infrastructure combined with individual-level attitudes, ability, and aspirations.

The GEI draws heavily on the systems of entrepreneurship theory and therefore provides an ideal platform for the design of policies that address entire entrepreneurship ecosystems at both the national and regional level. To explain how and why the GEI methodology is ideally suited to support an ecosystems approach to entrepreneurship policy, we review current indicators of entrepreneurial activity in various countries. There are three essential indicators for measuring country-level entrepreneurship: input, output, and framework. While each has its own strengths, none of them is ideally suited to support an ecosystems approach to entrepreneurship policy.

Page 72: Zoltán J. Ács László Szerb Erkko Autio

Input indicators survey public attitudes and preferences toward entrepreneurship. A good example is the European SME Observatory, which also tracks individual opinions and preferences regarding entrepreneurship. While useful indicators of the opinion climate, these measures reveal little about how and when attitudes are likely to be converted into high-quality action.

Output indicators, on the other hand, tend to count the entrepreneurial entries in a given economy. A good example is the Global Entrepreneurship Monitor, which uses population surveys to track the prevalence of nascent and new entrepreneurs in different countries. Another example is the World Bank’s Enterprise Survey, which tracks newly incorporated businesses across different countries. While useful indicators of the magnitude of the entrepreneurship phenomenon in a given country, output indicators tend to focus on quantity rather than quality, and to ignore the regulating effect a country’s institutions and infrastructure have on entrepreneurial ability and aspirations.

Framework indicators highlight how well a given country’s institutional and policy frameworks support entrepreneurship. Perhaps the best known example is the World Bank’s ease of doing business index, which tracks regulations that govern the creation and operation of certain types of new businesses across countries. Another example is OECD’s Entrepreneurship Indicators program, which also seeks to track a country’s framework conditions for entrepreneurship. However, while useful as comprehensive reviews of regulatory quality, framework indexes tell us little about entrepreneurial action and determinants thereof.

While different approaches have different merits, none of the existing approaches addresses the dynamics of entrepreneurship ecosystems. Therefore, an approach is needed that addresses all three conditions: inputs, outputs, and framework. This is because we know that institutions and individuals are both critical to entrepreneurship. If individuals do not act there will be no entrepreneurship, no matter how perfect the institutional framework is. On the other hand, individual action will not have much of an impact without an appropriate institutional framework to leverage support for the growth of new businesses.

The GEI approach is based on three important premises that provide an appropriate platform for analyzing entrepreneurship ecosystems. First, entrepreneurship is fundamentally an action undertaken and driven by individuals. Therefore, individual-level data is needed to capture the dynamics of an entrepreneurship ecosystem. Second, this individual action is regulated by a country’s institutional framework for entrepreneurship. Therefore, country-level data on entrepreneurial framework conditions are also needed to capture the dynamics of an entrepreneurship ecosystem. Third, entrepreneurship ecosystems are complex, multifaceted structures in which many elements interact to produce system performance, thus the index method needs to allow the constituent elements to interact. Therefore, the GEI defines a National System of Entrepreneurship as “the dynamic, institutionally embedded interaction between individuals’ entrepreneurial attitudes, abilities, and aspirations, which drives the allocation of resources through the creation and operation of new ventures.”

This definition implies that the GEI conceptualizes entrepreneurship as a trial-and-error process of resource allocation that is driven by individuals and regulated by context, and that drives the allocation of resources toward productive use in the economy. In short, entrepreneurs create new firms to pursue perceived opportunities. However, it is impossible to prove in advance that a perceived opportunity is real—that is, if it will develop as expected—and the only way to test it is to mobilize resources (e.g., human capital, financing). If the opportunity turns out to be real, then these resources will have been put to productive use. However, if the opportunity is not real, or if the country’s framework conditions do not support the effective conversion of opportunities into new business growth, entrepreneurs will abandon the opportunity and put the resources to other uses. Thus, the net outcome of this dynamic process is an increase in the country’s total factor productivity, a key determinant of economic growth.

The GEI approach was designed to capture the ability of a given country’s entrepreneurship ecosystem to contribute to total factor productivity and, therefore, to economic growth. This means that the GEI is fundamentally a quality index rather than a quantity index. As noted above, the most important aspect of entrepreneurship from an economic

Page 73: Zoltán J. Ács László Szerb Erkko Autio

perspective is not the quantity but the quality. The GEI is the only index of entrepreneurship that meaningfully captures the quality of countries’ entrepreneurship ecosystems—that is, their ability to drive total factor productivity.

The distinctive aspects of the GEI approach have important consequences for policy practice. Perhaps the most important arises from the “penalty of bottleneck” approach, which stems from the notion that system elements co-produce system performance and bottleneck factors therefore may hinder that performance. For example, funding policies will be effective only if financing is a bottleneck that is inhibiting the creation and growth of new, productive businesses. However, if the real bottleneck is entrepreneurial skills, providing additional money for new businesses may not improve the economy’s entrepreneurial performance. Therefore, to produce real and lasting change in the dynamics of countries’ entrepreneurship ecosystems, entrepreneurship policies need to address ecosystem bottlenecks in a coherent and coordinated way. We next discuss how the GEI methodology supports this outcome.

Systems of Entrepreneurship and Entrepreneurship Ecosystem Policy

Although the idea of systems of entrepreneurship is intuitively appealing, what might the implications of an ecosystems approach be for entrepreneurship policy? The two defining features of an ecosystem approach to entrepreneurship policy are coordination across policy domains and a focus on ecosystem constraints. The former implies a broad-based approach to entrepreneurship policy that designs, implements, and orchestrates policy measures that address different aspects of the country’s entrepreneurial ecosystem dynamic. A focus on ecosystem bottlenecks goes beyond coordination to support informed resource allocation choices across policy sectors.

At present, most entrepreneurship policy initiatives are still implemented without much coordination or with coordination that is limited to different initiatives within the same domain (e.g., alternative policies to provide funding for small and medium-sized firms). Typically, the aim of such coordination is to avoid overlap in policy initiatives that address the same need, such as financing. While such coordination helps avoid the waste of resources that stems from a duplication of effort, it also fails to create and exploit synergies that might result from the kind of dynamic, mutually reinforcing interactions that bring entrepreneurship ecosystems to life. Today, coordinated entrepreneurship policy still primarily refers to avoiding overlap, rather than to maximizing the positive feedback and synergies between complementary actions. For entrepreneurship policies to nurture and facilitate entrepreneurship ecosystems effectively, policy-makers must become more aware of how the different elements of these ecosystems interact. For example, the proliferation of government-sponsored venture capital programs has given rise to complaints in some countries that the real bottleneck is no longer scarce venture funding but the dearth of fundable management teams and innovative business concepts. If there are too few innovative, high-potential start-ups, venture capital initiatives will address the wrong bottlenecks. In an ecosystems approach to entrepreneurship policy, attention is paid to such bottlenecks and policy actions are coordinated to maximize positive synergies across complementary initiatives. This level of coordination is still lacking in entrepreneurship policy today.

The distinctive methodological features of the GEI ecosystem approach are (1) contextualizing individual-level data by weighting it with data that describes a country’s entrepreneurship framework conditions; (2) the use of 14 context-weighted measures of entrepreneurial Attitudes, Abilities, and Aspirations, which are organized into three sub-indexes; (3) a recognition that different pillars interact to co-produce system performance; and (4) the consequent recognition that national entrepreneurial performance may be held back by bottleneck factors—that is, poorly performing pillars that may constrain ecosystem performance. See chapter 5 for a detailed description of the GEI method.

Page 74: Zoltán J. Ács László Szerb Erkko Autio

Figure 2.1: Dynamic of National Systems of Entrepreneurship

The GEI is a multifaceted index that reflects the complexity of country-level entrepreneurship ecosystems. As shown in Figure 2.1, it measures 14 different aspects of entrepreneurship ecosystems that are organized into Attitudes, Abilities, and Aspirations. Positive attitudes are needed so that competent individuals choose entrepreneurship over alternative occupations. The ability aspect reflects the quality of the resulting new ventures within their national context. Aspirations reflect these ventures’ potential to achieve rapid growth and high productivity.

As explained in the methodological Chapter 5, each pillar is measured as a composite of individual-level data and data that describe relevant framework conditions for entrepreneurship. For example, Start-up Skills captures whether adult individuals think they have the necessary skills to start a new venture, weighted by a measure of the degree of tertiary education in the country. This framework variable is used because the higher a country’s level of education, the higher the quality of its entrepreneurial ventures tends to be. As another example, Networking is a combination of how many individuals in the adult population personally know people who have started new businesses, weighted by the prevalence of Internet use in the country. This measure is used because the Internet tends to amplify opportunities for networking. Thus, the GEI approach captures individual-level attitudes, ability, and aspirations; each individual variable is then weighted by a relevant framework condition that regulates a given individual-level variable’s potential to contribute to a high-quality entrepreneurial dynamic. In other words, this approach captures the notion that entrepreneurship ecosystems are brought to life by individuals, but the ultimate impact of individual-level action is regulated by entrepreneurial framework conditions.

The GEI methodology captures two other important aspects that define entrepreneurship ecosystems. First, it recognizes that the different pillars need to work together to create a high-quality ecosystem dynamic. Traditional indexes fail to capture this aspect. In traditional indexing methods, the different components (pillars) are allowed to substitute for one another. In other words, a traditional index would allow, say, Risk Capital to compensate for the Quality of Human Resources. This notion of substitutability is similar to replacing eggs with flour when baking a cake. Everyone knows that you need both eggs and flour to bake a good cake, and the GEI methodology similarly requires

Page 75: Zoltán J. Ács László Szerb Erkko Autio

that a high-quality entrepreneurial dynamic needs both Risk Capital and High-Quality Human Resources, in addition to the system’s 1 other pillars. If one or more pillars perform poorly, it is likely to hold back the performance of the entire system. Although one in reality can compensate to some degree for, say, Human Resources with Risk Capital, the entrepreneurship ecosystem is likely to ground to a halt if either element is completely absent.

The notion of bottlenecks derives directly from the notion that ecosystem elements interact to co-produce ecosystem performance. Because one cannot fully substitute individual pillars for others, poorly performing pillars can create bottlenecks that prevent the ecosystem from fully leveraging its strengths. To simulate this effect, the GEI methodology applies a “penalty for bottleneck” algorithm, which is explained in Chapter 5. This algorithm systematically penalizes ecosystem pillars according to its poorly performing pillars. To use the cake example, if we do not have enough eggs to bake a cake of a given size, we cannot use our flour effectively, even if we have enough of it. However, the penalty for bottleneck also tells us that by adding a few more eggs we can get a lot more cake, if the other ecosystem pillars are strong. A final implication, therefore, is that an ideal ecosystem is one in which the different pillars are more or less in balance, as this implies that the ecosystem is able to leverage all of its elements effectively.

These methodological innovations of the GEI provide important insights into the workings of entrepreneurship ecosystems. Essential to the bottlenecks notion is that some factors may unduly constrain system performance beyond their objective importance. With the penalty for bottleneck methodology, it is possible both to identify where bottlenecks might lurk in any given system and how much the system performance will suffer as a result. These are strengths that no other index approach can offer and that make the GEI approach ideally suited to analyzing entrepreneurship ecosystems.

Using the GEI Approach for Entrepreneurship Ecosystem Policy Analysis

To illustrate the penalty for bottleneck method, consider a comparison between the U.S., Japan, and India, as shown in Figure 2.2. The figure shows the entrepreneurship ecosystem profiles of the three countries as measured by the GEI approach.

Figure 2.2: Entrepreneurship Ecosystem Profiles of the U.S., Japan, and India

Page 76: Zoltán J. Ács László Szerb Erkko Autio

Figure 2.2 shows that the GEI profile of U.S. entrepreneurship is nice and round, with each pillar showing a strong performance. This is the hallmark of a well-balanced entrepreneurship ecosystem. The absence of major gaps in the U.S. GEI profile means that no major bottlenecks are holding back the performance of the U.S. entrepreneurship ecosystem. There is relative softness in the U.S. ecosystem in terms of Networking and Internationalization, which indicates that the U.S. is not as strong in these areas. The relative softness in Internationalization is understandable, as the large size of the U.S. domestic market makes it possible for entrepreneurs to grow without having to export their products or services.

Japan’s ecosystem profile is considerably more uneven than that of the U.S., which suggests that the Japanese entrepreneurship ecosystem suffers from real bottlenecks that hold back its performance. The biggest bottlenecks are in Start-up Skills, Opportunity Perception, Internationalization, and Competition. If Japan is seeking to improve its entrepreneurial performance, it should prioritize these areas. Addressing Start-up Skills is relatively straightforward, as it can be addressed with education policies. These policies would likely also strengthen Opportunity Perception, although this pillar also depends on the country’s general economic performance. Like the U.S., Japan’s large domestic market probably moderates its Internationalization aspirations. Addressing the Competition pillar likely requires altogether different policies.

The profile of India’s entrepreneurship ecosystem is considerably less developed and more uneven than those of the U.S. and Japan. This pattern is typical of developing economies. The biggest bottlenecks for the India’s ecosystem are observed in Opportunity Start-up, Internationalization, High Growth, Product Innovation, and Start-up Skills. The low level of Opportunity Start-ups contrasts interestingly with a relatively healthy level of Opportunity Perception, which is actually at a higher level in India than in Japan. This suggests that India’s infamous red tape perhaps inhibits the conversion of perceived opportunities into opportunity-driven businesses. The low level of Start-up Skills no doubt contributes to this imbalance. As a developing economy, India could make considerable progress simply by addressing its basic framework conditions for entrepreneurial and economic activity, such as the rule of law (i.e., equality, objectivity, and predictability in the application of laws, rules, and regulations), equal access to markets, and human capital. It is likely that all developing economies need to address such basic conditions, but the GEI analysis helps highlight specific priority areas for India.

The above examples show how the GEI method could be harnessed for use in the analysis and design of entrepreneurship ecosystem policies in different economic contexts. Merely examining the ecosystem profiles of different countries provides interesting clues about country-specific features and the determinants of the quality of a country’s entrepreneurial ecosystem. This is important, because it helps policy-makers focus on areas that appear to be constraining a country’s entrepreneurial performance. A considerably more detailed analysis can be made by focusing on individual pillar components (only pillar-level analysis was shown here) and choosing benchmarks that are at a similar level of economic development. For example, it probably does not make sense to compare India to the U.S. because the two economies are so different. Better insights could perhaps be gained by comparing India to, say, China, Pakistan, or even a more aspirational benchmark such as Malaysia.

This analysis can be taken much further. For example, because the GEI methodology allows the ecosystem pillars to interact, it is possible to conduct sensitivity analyses and simulate different policy scenarios. For example, in a recent policy analysis for the Scottish Enterprise, we analyzed where additional policy efforts should be focused in Scotland and other UK Home Nations (i.e., England, Northern Ireland, and Wales) in order to achieve a 10 percent increase in the overall GEI score. This analysis is presented in Table 2.1, which shows how the additional policy efforts should be allocated across the ecosystem pillars, assuming equal cost to increase pillar performance. The GEI methodology for Scotland, for example, suggests that 13 percent of the additional policy effort should be allocated to Opportunity Perception, 12 percent to Risk Capital, 11 percent each to Start-up Skills, Networking, and Process Innovation, and so on.

These figures were calculated by focusing policy efforts on the most pressing bottleneck until it was alleviated, then moving to the next most pressing bottleneck, and so on. While this example obviously includes a number of

Page 77: Zoltán J. Ács László Szerb Erkko Autio

simplifying assumptions (notably, equal cost to address each pillar; an equally applied bottleneck penalty for all pillars; pillars’ equal ability to be changed by policy action), it nevertheless demonstrates the GEI methodology’s ability to assess different policy scenarios. Although the scenarios should not be taken as prescriptive, the exercise nevertheless highlights priority areas that could be explored further. Another important benefit is that even this simplifying analysis suggests that there may be important differences among the UK Home Nations in terms of policy priorities in facilitating the UK’s entrepreneurial ecosystem.

Table 2.1: Ecosystem Optimization Analysis for UK Home Nations

Using the GEI Method for Entrepreneurship Ecosystem Policy Design

While the GEI provides the most innovative and powerful platform for entrepreneurship ecosystem policy analysis and design, important challenges remain. As noted above, a number of simplifying assumptions are needed to apply a penalty for bottleneck algorithm in constructing the Index. Such assumptions should be kept in mind when using the GEI approach to simulate the kind of policy scenarios illustrated in Table 2.1. As such, the choice of the ecosystem pillars themselves could be debated. For example, different framework measures might be required when developing a regional version of the GEI, as was done when a version was designed for the 125 EU regions. Importantly, the scenarios in Table 2.1 imply that there may not be one optimal ecosystem configuration for each country and each level of economic development. In fact, it is highly likely that there may be several efficient configurations for different countries at the same level of economic development, and for those at different levels of economic development. As noted earlier, entrepreneurship ecosystems are complex and there is still a great deal to learn about how they really work.

One important limitation of the GEI methodology is that it only uses hard data. Entrepreneurship ecosystems are inherently complex, and this complexity extends beyond the quantification of individual ecosystem pillars. The GEI profile indicates which elements of the entrepreneurship ecosystem are in place and in what quantity; however, much like using the same ingredients can produce very different outcomes when baking a cake, depending on how the ingredients are mixed, the GEI tells us little about how the elements should be mixed to produce the best possible

Scotland Wales N. Ireland England UKOpportunity Perception 13% 21% 24% 8% 9%Startup Skills 11% 11% 13% 8% 9%NonFear of Failure 4% 3% 6% 5% 5%Networking 11% 11% 9% 9% 9%Cultural Support 3% 0% 0% 6% 6%Opportunity Startup 4% 3% 1% 5% 5%Tech Sector 0% 6% 0% 0% 0%Quality of Human Resources 4% 3% 5% 4% 4%Competition 0% 0% 0% 3% 3%Product Innovation 9% 9% 6% 10% 10%Process Innovation 11% 11% 13% 9% 9%High Growth 9% 6% 7% 11% 10%Internationali ation 7% 6% 4% 10% 10%Risk Capital 12% 11% 12% 13% 11%

100% 100% 100% 100% 100%

Page 78: Zoltán J. Ács László Szerb Erkko Autio

outcome for any given country. These soft aspects of entrepreneurship ecosystems are hard to capture using only hard data. Therefore, to facilitate entrepreneurship policy design, it is important to blend hard and soft GEI data to understand how the different ecosystem elements could work together most effectively. For this reason, we have developed a GEI Policy Stakeholder Engagement approach, which is designed to extract the soft, experience-based data to give insights into how the entrepreneurship ecosystem really works and what specific policy actions should be made to address bottlenecks.

To extract these soft insights, it is important to engage entrepreneurship ecosystem policy stakeholders who represent different elements of the ecosystem. Because these ecosystems are large and complex, it is likely that no single stakeholder has a full understanding of how they work. Therefore, it is important to allow each stakeholder to contribute their particular insights into what the ecosystem bottlenecks are and how they really work, perhaps by organizing stakeholder workshops. We have developed a stakeholder facilitation process designed to achieve exactly this purpose with the hard GEI data, which suggests that it is possible to organize a coherent, facilitated debate of the analysis to determine which of the bottlenecks are real and how they actually function.

For example, the GEI analysis suggested that Risk Capital was one bottleneck for the Scottish ecosystem. Discussions among the Scottish stakeholders confirmed that this was so but they also noted an additional nuanced detail—that it was not the amount of funding that constrained Risk Capital but the fact that the capital tended to get stuck in portfolio companies because of limited exit opportunities. In other words, while they confirmed that Risk Capital was a bottleneck, they also learned that the real cause of this bottleneck was insufficient circulation of Risk Capital within the Scottish entrepreneurship ecosystem. This added considerable insight not easily achieved through the analysis of hard data alone, and also provided pointers for targeted policy action. By helping to extract such soft insights, the GEI Policy Stakeholder Engagement process facilitates an evidence-based, coherent understanding of how a given country’s entrepreneurship ecosystem really works, what the system-level priorities are, and how the policy actions to alleviate the bottlenecks should be designed, prioritized, and coordinated. Thus, when combined with the GEI methodology, the GEI Policy Stakeholder Engagement process provides a useful platform for designing and operationalizing entrepreneurship ecosystem policies.

The GEI Policy Stakeholder Engagement Process comprises several steps:

1. Use the GEI analysis to identify possible bottlenecks in the country’s entrepreneurship ecosystem.2. Examine each bottleneck more closely in order to understand how it really works. To do this, it is

important to engage with a group of policy stakeholders who can offer complementary insights into theinner workings of the entrepreneurship ecosystem. It is critical that the discussions be facilitatedcompetently in order to draw out balanced insights and maintain coherence.

3. Conduct a causal analysis of how a bottleneck works by drawing on different sources of qualitative andquantitative data, thereby enabling a coherent discussion on how to alleviate the bottleneck.

4. Design and implement specific, coordinated policy actions to alleviate the country’s ecosystembottlenecks, and use the GEI to help set performance improvement targets.

5. Once consensus has been achieved about what the ecosystem’s most pressing bottlenecks are and theassociated policy priorities, an action stage should follow. This stage should focus on implementingspecific, targeted policy actions collectively designed to bring about a real and tangible change in theecosystem dynamic. This last stage can (and, in most cases, should) last for several years in order toensure that it has a lasting impact.

Used this way, the GEI and the policy facilitation process can provide a powerful platform to identify and implement real, long-lasting change in how entrepreneurship ecosystems work. Our experiences in countries such as Scotland and Estonia suggest that the approach can identify both key pressure points on entrepreneurship ecosystems and ways to address them.

Page 79: Zoltán J. Ács László Szerb Erkko Autio
Page 80: Zoltán J. Ács László Szerb Erkko Autio
Page 81: Zoltán J. Ács László Szerb Erkko Autio
Page 82: Zoltán J. Ács László Szerb Erkko Autio

Chapter 5: Methodology and Data Description

Introduction

In previous publications, we have described the Global Entrepreneurship Index methodology in detail.32 In this chapter, we describe the GEI structure, the dataset used to create it, and a short summary of GEI methodology.

The Index Structure We have defined country-level entrepreneurship as “the dynamic, institutionally embedded interaction between entrepreneurial attitudes, entrepreneurial abilities, and entrepreneurial aspirations by individuals, which drives the allocation of resources through the creation and operation of new ventures.” In accordance with this definition, we propose four levels of index-building: (1) variables, (2) pillars, (3) sub-indexes, and, finally, (4) the super-index. All three sub-indexes contain several pillars, which can be interpreted as the quasi-independent building blocks of the entrepreneurship index. In this section, we describe the sub-indexes and indicators. In the following section, we describe the variables. The three sub-indexes—Attitudes, Ability, and Aspirations—constitute the entrepreneurship super-index that we call the Global Entrepreneurship Index.

While the Ability and Aspirations sub-indexes (outlined below) capture actual entrepreneurship abilities and aspirations as they relate to nascent and start-up business activities, the entrepreneurial attitude (ATT) sub-index identifies the attitudes of a country’s population as they relate to entrepreneurship. For example, the pillar known as Opportunity Perception is essential to recognizing and exploring novel business opportunities. It is also critical to have the proper start-up skills and personal networks to exploit these opportunities. Moreover, fear of failure to start a business can have a negative effect on entrepreneurial attitudes, even when opportunity recognition and start-up skills exist. Entrepreneurial attitudes are thought be influenced by the crucial institutional factors of market size, level of education, the level of risk in a given country, the population’s rate of Internet use, and culture, all of which are interaction variables of the indicator.

The entrepreneurial abilities (ABT) sub-index is principally concerned with measuring some important characteristics of the entrepreneur and the start-up with high growth potential. This potential is approached with quality measures, including opportunity motivation for start-ups in a technology-intensive sector, the entrepreneur’s level of education, and the level of competition. The country-level institutional variables include the freedom to do business, the technology adsorption capability, the extent of staff training, and the dominance of powerful business groups.

The entrepreneurial aspiration (ASP) sub-index refers to the distinctive, qualitative, strategy-related nature of entrepreneurial activity. Entrepreneurial businesses are different from regularly managed businesses, thus it is particularly important to identify the most relevant institutional and other quality-related interaction variables. The newness of a product and of a technology, internationalization, high growth ambition, and informal finance variables are included in this sub-index. The institutional variables measure the technology transfer and the R&D potential, the sophistication of a business strategy, the level of globalization, and the depth of the capital market.

By applying the penalty for bottleneck approach, GEI methodology captures the notion that systems, by definition, comprise multiple components, and that these components co-produce system performance. These are defining characteristics of any system, which simple summative indexes fail to capture. In a simple summative index, each system component contributes directly and independently to system performance. In the context of entrepreneurship, this would mean, for example, that a national measure of education would, directly and independent of other system components, contribute to national entrepreneurship, while in reality we know that education cannot contribute much to a country’s entrepreneurial performance if individuals fail to act. On the other hand, if education were absent, the economic potential of entrepreneurial entries would be severely constrained. Moreover, even if both education and

Page 83: Zoltán J. Ács László Szerb Erkko Autio

agency were present, country-level entrepreneurial performance would be constrained if, for example, growth aspirations were missing or if there were no financial resources available to feed the growth of new ventures. A simple summative index would fail to recognize such interactions, thereby overlooking crucial aspects of system-level performance.

The Individual Variables and Dataset

As mentioned previously, an entrepreneurship index should incorporate both individual and institutional/environmental variables. All individual-level variables are from the GEM survey. The institutional variables are obtained from various sources.

The full list and description of the applied GEM individual variables can be seen in Table 5.1.

Table 5.1: The Description of the Individual Variables Used in the GEI

Individual Variable Description Opportunity Recognition

The percentage of the population aged 18-64 that recognizes good conditions to start a business in the next six months in the area where he/she lives

Skill Perception The percentage of the population aged 18-64 that claims to have the required knowledge/skills to start a business

Risk The percentage of the population aged 18-64 stating that a fear of failure would not prevent them from starting a business

Know Entrepreneurs

The percentage of the population aged 18-64 that knows someone who started a business in the previous two years

Career The percentage of the population aged 18-64 saying that people consider starting a business a good career choice

Status The percentage of the population aged 18-64 that thinks people attach high status to successful entrepreneurs

Career Status The status and respect of entrepreneurs calculated as the average of career and status

Opportunity Motivation

Percentage of the TEA businesses initiated because of opportunity start-up motive

Technology Level Percentage of the TEA businesses that are active in technology sectors (high or medium) Educational Level Percentage of the TEA businesses with owner/managers who have secondary education Competitors Percentage of the TEA businesses started in markets where not many businesses offer the same

product New Product Percentage of the TEA businesses offering products that are new to at least some of the customers New Tech Percentage of the TEA businesses using new technology that is on average less thafive5 years old

(including one year) Gazelle Percentage of the TEA businesses having high average job expectations (more than 10 more

employees and 50 percent growth in five years) Export Percentage of the TEA businesses where at least some customers are outside the country (over 1

percent) Informal Investment Mean

The mean amount of three-year informal investment

Business Angel The percentage of the population aged 18-64 that provided funds for a new business in previous three years, excluding stocks and funds, on average

Informal Investment The amount of informal investment calculated as INFINVMEAN* BUSANG

For the 2015 GEI, we use 2012-2013 or earlier Global Entrepreneurship Monitor (GEM) individual data. For the individual variable calculation we include 455,191 individuals from 93 countries of the GEM Adult Population Survey. Seventy countries’ individual data are from the years 2012-2013, and 23 countries have individual data from the pre-

Page 84: Zoltán J. Ács László Szerb Erkko Autio

2010 years. We estimated the individual variables for 37 countries by using nearby and similar country GEM Adult Population Survey data.

Since the availability of the institutional data also limited selection of the countries, we could include only nations that participated in the World Economic Forum in 2012-2013 or the 2013-2014 Global Competitiveness Report (GCR) survey. Some GCR countries were left out because of a lack of similar or nearby GEM countries. The size of the sample in different years, the participating countries, and the calculation of the individual variables, including the 37 non-GEM countries, are reported in Table 5.2. All analyses of countries having data older than 2011 and based on estimates should be considered with caution.

Table 5.2: The Distribution of the Sample by Countries and the Calculation of the Individual Variables

Country/Year 2007 2008 2009 2010 2011 2012 2013 Individual Variable Way of Calculation Albania Average of Bosnia and Macedonia Algeria 4984 2497 Average of 2012-2013 Angola 2489 2049 Average of 2012-2013 Argentina 1713 1867 Average of 2012-2013 Australia 1705 1622 Average of 2010-2011 Austria 4548 2012 Bahrain Average of UAE and Saudi Arabia Bangladesh 1932 2011 data Barbados 2044 2302 Average of 2012-2013 Belgium 1546 2001 Average of 2012-2013 Benin Average of Nigeria, Ghana, and Malawi Bolivia 3524 2010 data Bosnia and Herzegovina 2001 2004 Average of 2012-2013 Botswana 2003 2204 Average of 2012-2013 Brazil 10000 10000 Average of 2012-2013 Brunei Darussalam Average of Malaysia and Singapore Bulgaria Average of Romania and Montenegro Burkina Faso Average of Ghana, Uganda, and Malawi Burundi Average of Ghana, Uganda, and Malawi Cambodia Average of Vietnam and Thailand Cameroon Average of Nigeria, Ghana, and Malawi Canada 2648 2013 Chad Average of Ghana, Uganda, and Malawi Chile 1952 5760 Average of 2012-2013 China 3684 3634 Average of 2012-2013 Colombia 6471 3400 Average of 2012-2013 Costa Rica 2041 2012 Côte d’Ivoire Average of Ghana, Uganda, and Malawi Croatia 2000 2000 Average of 2012-2013 Cyprus Same as Greece Czech Republic 5009 2013 Denmark 2015 2217 Average of 2011-2012 Dominican Republic 2007 2009 Ecuador 2003 1818 Average of 2012-2013 Egypt 2501 2012

Page 85: Zoltán J. Ács László Szerb Erkko Autio

Country/Year 2007 2008 2009 2010 2011 2012 2013 Individual Variable Way of Calculation El Salvador 1905 2012 Estonia 1721 1741 Average of 2012-2013 Ethiopia 3003 2012 Finland 2038 2005 Average of 2012-2013 France 3210 1567 Average of 2012-2013 Gabon Average of Namibia and Botswana Gambia Average of Ghana, Uganda, and Malawi Germany 4297 5995 Average of 2012-2013 Ghana 2213 2100 Average of 2012-2013 Greece 2000 2000 Average of 2012-2013 Guatemala 2138 2013 Guyana Same as Suriname Honduras Average of Guatemala and Panama Hong Kong 2000 2009 Hungary 2000 2000 Average of 2012-2013 Iceland 1684 2010 data India 3000 2013 Indonesia 4500 2013 Iran 3178 3633 Average of 2012-2013 Ireland 2000 2002 Average of 2012-2013 Israel 2005 2039 Average of 2012-2013 Italy 2000 2052 Average of 2012-2013 Jamaica 2246 2013 Japan 2010 2000 Average of 2012-2013 Jordan 2006 2009 Kazakhstan 2000 2007 Kenya Average of Ghana, Uganda, and Malawi Korea 2000 2000 Average of 2012-2013 Kuwait Same as Saudi Arabia Lao PDR Average of Vietnam and Thailand Latvia 2000 2000 Average of 2012-2013 Lebanon 2000 2009 Liberia Average of Ghana, Uganda, and Malawi Libya 2246 2013 Lithuania 2003 2000 Average of 2012-2013 Luxembourg 2005 2013 Macedonia 2003 2000 Average of 2012-2013 Madagascar Average of Ghana, Uganda, and Zambia Malawi 1847 2094 Average of 2012-2013 Malaysia 2006 2000 Average of 2012-2013 Mali Average of Ghana, Uganda, and Malawi Mauritania Average of Ghana, Uganda, and Malawi Mexico 2516 2798 Average of 2012-2013 Moldova Average of Romania and Russia Montenegro 2000 2010 Morocco 1500 2009 Mozambique Average of Ghana, Uganda, and Malawi

Page 86: Zoltán J. Ács László Szerb Erkko Autio

Country/Year 2007 2008 2009 2010 2011 2012 2013 Individual Variable Way of Calculation Myanmar Average of Vietnam and Bangladesh Namibia 1959 1938 Average of 2012-2013 Netherlands 2887 2441 Average of 2012-2013 Nicaragua Average of Guatemala and Panama Nigeria 2651 2604 Average of 2012-2013 Norway 1999 2000 Average of 2012-2013 Oman Average of Saudi Arabia and UAE Pakistan 2002 2000 Average of 2011-2012 Panama 1998 2004 Average of 2012-2013 Paraguay Average of Bolivia, Ecuador, and Peru Peru 2071 2075 Average of 2012-2013 Philippines 2499 2013 Poland 2003 2000 Average of 2012-2013 Portugal 2001 2003 Average of 2012-2013 Puerto Rico 1610 2013 Qatar Average of Saudi Arabia and UAE Romania 1710 2021 Average of 2012-2013 Russia 3541 2029 Average of 2012-2013 Rwanda Average of Ghana, Uganda, and Malawi Saudi Arabia 1957 2010 Senegal Average of Ghana, Uganda, and Malawi Serbia 1766 2009 Sierra Leone Average of Ghana, Uganda, and Malawi Singapore 2001 1998 Average of 2012-2013 Slovak Republic 2000 2007 Average of 2012-2013 Slovenia 2010 2002 Average of 2012-2013 South Africa 2655 3133 Average of 2012-2013 Spain 21900 24600 Average of 2012-2013 Sri Lanka Average of India and Pakistan Suriname 2074 2013 Swaziland Average of Namibia and Angola Sweden 1740 1820 Average of 2012-2013 Switzerland 1587 1588 Average of 2012-2013 Taiwan 2009 2007 Average of 2012-2013 Tanzania Average of Ghana, Uganda, and Malawi Thailand 3000 2362 Average of 2012-2013 Trinidad and Tobago 1802 1787 Average of 2012-2013 Tunisia 2000 2012 Turkey 2401 32945 Average of 2012-2013 Uganda 2343 2513 Average of 2012-2013 Ukraine Average of Russia and Romania United Arab Emirates 3029 2011 United Kingdom 1676 9012 Average of 2012-2013 United States 4265 4266 Average of 2012-2013 Uruguay 1627 1620 Average of 2012-2013 Venezuela 1888 2011 Vietnam 2000

Page 87: Zoltán J. Ács László Szerb Erkko Autio

Country/Year 2007 2008 2009 2010 2011 2012 2013 Individual Variable Way of Calculation Zambia 2155 2099 Average of 2012-2013 Sum 2000 0 11279 10870 12488 184143 234411 455191

The Institutional Variables and Dataset

Since the GEM lacks the institutional variables necessary for the Index, we substitute with other widely used relevant data from Transparency International (Corruption Perception Index), UNESCO (tertiary education enrollment, GERD), World Economic Forum (domestic market size, business sophistication, technology absorption and technology transfer capability, staff training, market dominance), International Telecommunication Union (Internet usage), the Heritage Foundation and World Bank (economic freedom), United Nations (urbanization index), KOF Swiss Economic Institute (economic globalization), Coface (business climate risk), and Groh et al. (depth of capital market).33

We apply the most recent institutional variables available on April 30, 2014. The full description of the institutional variables, their sources, and the year of the survey can be found in Table 5.3.

Table 5.3: The Description and Source of the Institutional Variables Used in the GEI

Institutional Variable

Description Source of Data Data Availability

Domestic Market

Domestic market size that is the sum of gross domestic product plus value of imports of goods and services, minus value of exports of goods and services, normalized on a 1–7 (best) scale data are from the World Economic Forum Competitiveness

World Economic Forum

The Global Competitiveness Report 2013-2014, p. 518

Urbanization Urbanization that is the percentage of the population living in urban areas, data are from the Population Division of the United Nations, 2011 revision

United Nations http://esa.un.org/unup/CD-ROM/Urban-Rural-

Population.htm Market Agglomeration

The size of the market: a combined measure of the domestic market size and the urbanization that later measures the potential agglomeration effect. Calculated as domestic market urbanization*

Own calculation -

Tertiary Education

Gross enrolment ratio in tertiary education, 2012 or latest available data.

UNESCO http://data.un.org/Data.aspx?d=UNESCO&f=series%3AG

ER_56 Business Risk The business climate rate “assesses the overall business environment

quality in a country…It reflects whether corporate financial information is available and reliable, whether the legal system provides fair and efficient creditor protection, and whether a country’s institutional framework is favorable to intercompany transactions” (http://www.trading-safely.com/). It is a part of the country risk rate. The alphabetical rating is turned to a 7-point Likert scale from 1 (D rating) to 7 (A1 rating). December 30, 2013 data

Coface http://www.coface.com/Economic-Studies-and-Country-

Risks/Rating-table

Internet Usage The number of Internet users in a particular country per 100 inhabitants, 2013 data

International Telecommunicati

on Union

http://www.itu.int/en/ITU-D/Statistics/Pages/stat/defaul

t.aspxCorruption The Corruption Perceptions Index (CPI) measures the perceived level

of public-sector corruption in a country. “The CPI is a ‘survey of surveys’, based on 13 different expert and business surveys.” (http://www.transparency.org/policy_research/surveys_indices/cpi/2009). Overall performance is measured on a 10-point Likert scale. Data are from 2013.

Transparency International

http://cpi.transparency.org/cpi2013/

Page 88: Zoltán J. Ács László Szerb Erkko Autio

Institutional Variable

Description Source of Data Data Availability

Economic Freedom

“Business freedom is a quantitative measure of the ability to start, operate, and close a business that represents the overall burden of regulation, as well as the efficiency of government in the regulatory process. The business freedom score for each country is a number between 0 and 100, with 100 equaling the freest business environment. The score is based on 10 factors, all weighted equally, using data from the World Bank’s Doing Business study.” (http://www.heritage.org/Index/pdf/Index09_Methodology.pdf). Data are from 2012.

Heritage Foundation/ World Bank

http://www.heritage.org/index/explore

Tech Absorption Firm-level technology absorption capability: “Companies in your country are (1 = not able to absorb new technology, 7 = aggressive in absorbing new technology)”

World Economic Forum

The Global Competitiveness Report 2013-2014, p. 511

Staff Training The extent of staff training: “To what extent do companies in your country invest in training and employee development? (1 = hardly at all; 7 = to a great extent)”

World Economic Forum

The Global Competitiveness Report 2013-2014, p. 467

Market Dominance

Extent of market dominance: “Corporate activity in your country is (1 = dominated by a few business groups, 7 = spread among many firms)”

World Economic Forum

The Global Competitiveness Report 2013-2014, p. 471

Technology Transfer

These are the innovation index points from GCI: a complex measure of innovation, including investment in research and development (R&D) by the private sector, the presence of high-quality scientific research institutions, the collaboration in research between universities and industry, and the protection of intellectual property

World Economic Forum

The Global Competitiveness Report 2013-2014, p. 22

GERD Gross domestic expenditure on R&D (GERD) as a percentage of GDP, year 2012 or latest available data; Puerto Rico, Dominican Republic, United Arab Emirates, and some African countries are estimated using regional or nearby country data.

UNESCO http://stats.uis.unesco.org/unesco/TableViewer/tableView.

aspx?ReportId=2656

Business Strategy

Refers to the ability of companies to pursue distinctive strategies, which involves differentiated positioning and innovative means of production and service delivery

World Economic Forum

The Global Competitiveness Report 2013-2014, p. 22

Globalization A part of the Globalization Index measuring the economic dimension of globalization. The variable involves the actual flows of trade, foreign direct investment, portfolio investment, and income payments to foreign nationals, as well as restrictions of hidden import barriers, mean tariff rate, taxes on international trade, and capital account restrictions. Data are from the 2013 report and based on the 2011 survey. (http://globalization.kof.ethz.ch/)

KOF Swiss Economic Institute

Dreher, Gaston, and Martens**

Depth of Capital Market

The depth of capital market is one of the six sub-indexes of the Venture Capital and Private Equity Index. This variable is a complex measure of the size and liquidity of the stock market, level of IPO, M&A, and debt and credit market activity. Note that there were some methodological changes over the 2006-2013 time period, so comparison to previous years is not perfect. The dataset is provided by Alexander Groh.* For missing data, nearby country data used. For countries having estimated individual data, DCM data are the same way as in the case of individual variables (see Table 2, last column)

EMLYON Business School,

France, and IESE Business

School, Barcelona, Spain

Groh et al.***34

*Special thanks for Alexander Groh and his team about the provision of the Depth of Capital Market data.** Axel Dreher, Noel Gaston, and Pim Martens, Measuring Globalisation: Gauging its Consequences. New York: Springer, 2008.***A. Groh, H. Liechtenstein, and K. Lieser, “The Global Venture Capital and Private Equity Country Attractiveness Index 2012 Annual,” http://blog.iese.edu/vcpeindex/about/

Page 89: Zoltán J. Ács László Szerb Erkko Autio

Missing Variables and Data Imputations

Since our basic individual data are provided by the GEM, participation in the GEM survey determines the potential list of countries and sample size. However, there is another potential limitation, the availability of institutional data. Because seven out of our fourteen institutional variables are from the GCI, it is particularly important to have these variables. While there were five additional countries in the GEM 2010 and 2013 surveys, we had to cancel out Tonga, Vanuatu, the West Bank and Gaza Strip, Yemen, and Syria because of the lack of proper institutional variables.35

A few variables are missing for some countries. Since we did not want to drop any more countries from the sample, we estimated the missing data using expert techniques, as follows: the GERD measure lacked data for Angola, Bahrain, Bangladesh, Barbados, Belize, Benin, Cambodia, Cameron, Chad, Cote d’Ivoire, the Dominican Republic, Guyana, Lebanon, Libya, Mauritania, Namibia, Oman, Qatar, Rwanda, Suriname, Swaziland, and Venezuela. In these cases, other government sources and data from similar nearby countries provided adequate estimates. KOF globalization index data for Brunei, Lebanon, Montenegro, Kazakhstan, Hong Kong, Qatar, Puerto Rico, Saudi Arabia, and United Arab Emirates are estimated similarly to GERD, by applying nearby country data points. Puerto Rico’s Business freedom dataset is the same as the U.S. All the other data are available for all countries; therefore, we believe that these rough estimates do not influence our results noticeably.36

Calculating the Global Entrepreneurship Index Scores

The GEI scores for all the countries are calculated according to the following eight points. 1. The selection of variables: We start with the variables that come directly from the original sources for each

country involved in the analysis. The variables can be at the individual level (personal or business) that arecoming from the GEM Adult Population Survey, or at the institutional/environmental level that are comingfrom various other sources. Altogether we use 16 individual and 15 institutional variables.

2. The construction of the pillars: We calculate all pillars from the variables using the interaction variablemethod; that is, by multiplying the individual variable with the proper institutional variable.

3. Normalization: pillar values were first normalized to a range from 0 to 1, according to equation 1:

(1)

for all j = 1 ... k, the number of pillars where is the normalized score value for country i and pillar j

is the original pillar value for country i and pillar j is the maximum value for pillar j

4. Capping: All index-building is based on a benchmarking principle. We selected the 95th percentile scoreadjustment, meaning that any observed value higher than the 95th percentile is lowered to the 95th

percentile. For the 130 countries in our dataset, we used the benchmark values from the full dataset thatcontains all 425 observations over the 2006-2013 time period.

5. Average pillar adjustment: The different averages of the normalized values of the indicators imply thatreaching the same indicator values requires different effort and resources. Since we want to apply the GEIfor public policy purposes, the additional resources for the same marginal improvement of the indicatorvalues should be the same for all indicators. Therefore, we need a transformation to equate the averagevalues of the components. Equation F2 shows the calculation of the average value of pillar j :

Page 90: Zoltán J. Ács László Szerb Erkko Autio

,1

n

i ji

j

xx

n1

i j,ix

x . (2)

We want to transform the ,i jx values such that the potential minimum value is 0 and the maximum value is

1:

, ,k

i j i jy x (3)

where k is the “strength of adjustment,” the k -th moment of jX is exactly the needed average,

jy . We have to find the root of the following equation for k

,1

0n

ki j j

ix ny (4)

It is easy to see, based on previous conditions and derivatives, that the function is decreasing and convex, which means it can be solved quickly using the well-known Newton-Raphson method with an initial guess of 0. After obtaining k , the computations are straightforward. Note that if

111

j j

j j

j j

x y kx y kx y k

k can be thought of as the strength (and direction) of adjustment.

The adjusted pillar values are calculated for all the 2006-2013 time period, and this value and this distribution is applied for the 130 countries in the 2015 data. It means that the average adjusted pillar values of those countries participating in the 2013 GEM cycle are exactly the same in the 2006-2013 dataset and in the 2015 GEI data. A note that, of the individual variables of the 130 countries in the 2015 GEI data, 70 are from the 2013 survey, 23 are from previous year GEM surveys, and 37 are estimates.

The distribution of the average adjusted pillars can be found in the Appendix.

6. Penalizing: After these transformations, the PFB methodology was used to create indicator-adjusted PFBvalues. We define our penalty function following as:

(5)

where is the modified, post-penalty value of pillar j in country i is the normalized value of index component j in country i is the lowest value of for country i. i = 1, 2,……n = the number of countries j = 1, 2,.……m = the number of pillars 0 ≤a, b ≤ 1 are the penalty parameters, the basic setup is a=b=1

7. The pillars are the basic building blocks of the sub-index: Entrepreneurial Attitudes, Entrepreneurial Abilities,and Entrepreneurial Aspirations. The value of a sub-index for any country is the arithmetic average of its PFB-

Page 91: Zoltán J. Ács László Szerb Erkko Autio

adjusted pillars for that sub-index multiplied by 100. The maximum value of the sub-indexes is 100 and the potential minimum is 0, both of which reflect the relative position of a country in a particular sub-index.

where is the modified, post-penalty value of pillar j in country i i = 1, 2,……n = the number of countries j = 1, 2,.……14 = the number of pillars

8. The super-index, the Global Entrepreneurship Index, is simply the average of the three sub-indexes. Since100 represents the theoretically available limit, GEI points can also be interpreted as a measure of efficiencyof the entrepreneurship resources

where i = 1, 2,……n = the number of countries

The Underlying Structure of the Data (reflect to the 2006-2013 full dataset)

While the number of composite indicators has been increasing over the last few decades, some index creators pay little attention to the interrelationship between the different variables. Although the PFB methodology provides a practical solution for how to take this interrelationship into account, it does not save us from examining the underlying structure of the data. It is particularly important to have a well-defined nested structure of the whole index. The arbitrary selection of the variables—in our case the pillars—would cause confusion, false interpretation, and, finally, a misleading policy interpretation. The OECD handbook of composite indicators suggests analyzing the dataset in two dimensions, pillars and countries.37 We have already provided detailed analyses at the country level; here we are presenting a pillar-level analysis by calculating the common (Pearson) correlation coefficients. Since we have only estimated data from 37 countries, it is better to examine not the 130 countries involved in our analysis but the full 2006-2013 dataset with 425 data points.

We report correlations between the normalized and average equated pillars, shown in Table 5.4, and the correlations between the normalized indicators after applying the PFB methodology, shown in Table 5.5. In general, significant medium to high correlations exist between the pillars in both cases. Opportunity Perception has positive and highly insignificant correlation with some other pillars (Human Capital, Process Innovation). Moreover, the correlation between Internationalization and Opportunity Perception is negative significant, but the correlation coefficient is weak, only -0.11.

The PFB pillars, as can be expected, improved the correlation, implying a closer relationship between the entrepreneurial features. The positive connection between the entrepreneurship pillars is vital for proper policy interpretation and suggestions. If the connection between the pillars were negative, it would imply that one pillar can only be improved at the cost of the other pillar. In that case, the improvement of the weakest pillar value would not necessarily improve GEI score. This is not the case.

Page 92: Zoltán J. Ács László Szerb Erkko Autio

There are other ways to check out the consistency of the dataset and the potentially strong connection between the pillars. Both the Kaiser-Meyer-Olkin measure of sampling adequacy and Bartlett’s test of sphericity reinforce the fact that the 14 pillars of the GEI are closely correlated, and it is worth looking for a single complex measure.38 The most popular test of the internal consistency of the pillars is based on the Cronbach Coefficient Alpha (c-alpha). The c-alpha value for the 14 pillars is 0.92 with the original data and 0.95 after applying the PFB methodology; both are well above the critical 0.7 threshold value.39 In sum, all of these tests support the internal consistency of the structure as described with the 14 selected pillars.

Page 93: Zoltán J. Ács László Szerb Erkko Autio

Tabl

e 5.4:

The

Cor

relat

ion

Matri

x bet

ween

the O

rigin

al In

dica

tors

(200

6-20

13 d

atas

et)

1 2

3 4

5 6

7 8

9 10

11

12

13

14

1

Oppo

rtunit

y Per

cepti

on

1 .21

4** .15

2** .15

2** .29

1** .21

8** .16

1** .07

6 .27

0** .25

8** .01

0 .13

3** -.1

05*

.154**

2 St

artup

Skil

ls 1

.231**

.398**

.315**

.324**

.373**

.221**

.205**

.127**

.175**

.177**

.286**

.327**

3 Ri

sk A

ccep

tance

1

.562**

.729**

.742**

.616**

.631**

.620**

.540**

.649**

.398**

.538**

.603**

4 Ne

twor

king

1 .64

6** .60

9** .52

5** .47

1** .48

2** .39

7** .49

1** .28

7** .54

0** .55

9** 5

Cultu

ral S

uppo

rt 1

.706**

.595**

.548**

.704**

.562**

.558**

.380**

.525**

.635**

6 Op

portu

nity S

tartup

1

.625**

.656**

.639**

.457**

.569**

.317**

.524**

.575**

7 Te

chno

logy A

bsor

ption

1

.615**

.582**

.537**

.694**

.480**

.526**

.628**

8 Hu

man C

apita

l 1

.485**

.523**

.578**

.550**

.496**

.635**

9 Co

mpeti

tion

1 .48

4** .50

3** .27

1** .49

2** .53

5** 10

Pr

oduc

t Inno

vatio

n 1

.638**

.581**

.393**

.593**

11

Proc

ess I

nnov

ation

1

.461**

.537**

.652**

12

High

Gro

wth

1 .49

6** .51

1** 13

Int

erna

tiona

lizati

on

1 .64

6** 14

Ri

sk C

apita

l 1

**. C

orre

lation

is si

gnific

ant a

t the 0

.01 l

evel

(2-ta

iled)

. *.

Corre

lation

is si

gnific

ant a

t the 0

.05 le

vel (2

-taile

d).

The n

umbe

r of o

bser

vatio

ns=

425

Page 94: Zoltán J. Ács László Szerb Erkko Autio

Tabl

e 5.5:

The

Cor

relat

ion

Matri

x bet

ween

the I

ndica

tors

, Sub

-Inde

xes a

nd th

e GEI

Sup

er-In

dex a

fter N

orm

alizin

g an

d Ap

plyin

g th

e PFB

Me

thod

(200

6-20

12 d

atas

et)

2 3

4 5

6 7

8 9

10

11

12

13

14

15

16

17

18

1 Op

portu

nity P

erce

ption

.37

0** .37

4** .34

8** .48

8** .64

1** .41

2** .37

4** .31

3** .47

1** .44

1** .44

2** .26

1** .31

3** .14

7** .37

1** .35

8** .50

0** 2

Star

tup S

kills

1 .42

0** .55

3** .49

3** .71

2** .48

6** .54

0** .42

4** .40

9** .52

8** .33

3** .38

0** .38

3** .44

6** .49

6** .48

1** .60

1** 3

Risk

Acc

eptan

ce

1 .67

4** .80

3** .84

2** .80

5** .71

2** .72

3** .72

2** .83

8** .65

1** .73

6** .52

8** .65

1** .70

4** .77

1** .86

4** 4

Netw

orkin

g 1

.742**

.844**

.709**

.650**

.615**

.618**

.734**

.548**

.623**

.458**

.647**

.669**

.696**

.799**

5 Cu

ltura

l Sup

port

1 .90

0** .78

1** .71

1** .67

7** .78

9** .83

4** .68

6** .68

7** .53

7** .64

9** .73

4** .77

6** .88

3** 6

ATTI

NDEX

1

.816**

.762**

.705**

.768**

.862**

.678**

.690**

.566**

.652**

.759**

.788**

.930**

7 Op

portu

nity S

tartup

1

.722**

.753**

.739**

.909**

.595**

.681**

.464**

.644**

.684**

.725**

.865**

8 Te

chno

logy A

bsor

ption

1

.711**

.687**

.888**

.647**

.769**

.605**

.638**

.730**

.798**

.867**

9 Hu

man C

apita

l 1

.623**

.880**

.641**

.683**

.649**

.627**

.735**

.784**

.841**

10

Comp

etitio

n 1

.854**

.615**

.636**

.443**

.617**

.656**

.701**

.820**

11

ABTI

NDEX

1

.708**

.786**

.617**

.715**

.796**

.853**

.961**

12

Prod

uct In

nova

tion

1 .71

8** .65

8** .53

8** .69

5** .84

4** .79

1** 13

Pr

oces

s Inn

ovati

on

1 .57

5** .64

2** .74

5** .86

6** .83

2** 14

Hi

gh G

rowt

h 1

.606**

.635**

.809**

.709**

15

Inter

natio

naliz

ation

1

.732**

.834**

.782**

16

Risk

Cap

ital

1 .89

9** .87

0** 17

AS

PIND

EX

1 .93

8** 18

GE

I 1

**. C

orre

lation

is si

gnific

ant a

t the 0

.01 l

evel

(2-ta

iled)

.

The n

umbe

r of o

bser

vatio

ns=

425

Page 95: Zoltán J. Ács László Szerb Erkko Autio

Summary

In this chapter, we have described the index-building methodology and the dataset. The GEI, a complex index reflecting the multidimensional nature of entrepreneurship, consists of three sub-indexes, 14 pillars, and 31 variables. While some researchers insist on simple entrepreneurship indicators, none of the previously applied measures was able to explain the role of entrepreneurship in economic development with a single indicator.

Our index-building logic differs from other widely applied indexes in three respects: it incorporates both individual and institutional variables, it equates the 14 pillar values for equalizing the marginal effects, and it takes into account the weakest link in the system. The institutional variables can also be viewed as country-specific weighting factors. Moreover, institutional variables can balance out the potential inconsistency of the GEM data collection. The weakest link refers to the decreased performance effect of the bottleneck. Practically speaking, it means that the higher pillar values are adjusted to the weakest performing pillar value. While the exact measure of the penalty is unknown, meaning that the solution is not necessarily optimal, it still provides a better solution than calculating the simple arithmetic averages. Consequently, the newly developed PFB can be applied in cases where an imperfect substitutability exists among the variables and the efficiency of the system depends on the weakest performing variable. The method is particularly useful in making policy suggestions.

The GEM survey served as a source for the individual variables, which are calculated mainly from the 2012-2013 individual dataset, except for the 23 countries that only have data from previous years. Altogether, the sample includes 455,191 individuals from 93 countries. Individual data from 37 other countries are estimated by using similar or nearby country individual data, resulting in a sample of 130 countries.

The availability of the institutional variables for all the countries has limited our selection possibilities. The proper interpretation of a particular institutional variable has been an important aspect of the selection. For example, the muddled interpretations of the effect of taxes on other entrepreneurship variables led to the exclusion of taxation. In all cases, we used the latest institutional data available as of April, 30, 2014.

We summarized the index-building steps in eight points. Further information on these steps is available upon request.

We have analyzed the underlying structure of the dataset in the variable level. The correlation coefficients, the Kaiser-Mayer-Olkin measures, and the Bartlett and c-alpha tests all suggested that the 14 pillars have a close relation to one another and that there is a place to construct a composite indicator. These tests were executed with the normalized original, as well as with the PFB adjusted variables. As expected, the PFB methodology improved the internal consistency of the dataset.

Page 96: Zoltán J. Ács László Szerb Erkko Autio

Appendix A Pillar distributions

Page 97: Zoltán J. Ács László Szerb Erkko Autio
Page 98: Zoltán J. Ács László Szerb Erkko Autio
Page 99: Zoltán J. Ács László Szerb Erkko Autio
Page 100: Zoltán J. Ács László Szerb Erkko Autio
Page 101: Zoltán J. Ács László Szerb Erkko Autio
Page 102: Zoltán J. Ács László Szerb Erkko Autio
Page 103: Zoltán J. Ács László Szerb Erkko Autio
Page 104: Zoltán J. Ács László Szerb Erkko Autio

Appendix B The Global Entrepreneurship Sub-Index Rank of Countries in alphabetical order, 2015

Countries GEI GEI rank ATT ATT

rank ABT ABT rank ASP ASP

rank Albania 30.6 76 28.8 90 36.2 66 26.8 94 Algeria 30.2 79 35.8 69 28.8 94 26.1 97 Angola 22.7 111 21.4 99 18.8 126 27.8 89 Argentina 37.2 56 47.3 39 34.1 78 30.4 73 Australia 77.6 3 77.9 3 81.3 5 73.5 5 Austria 64.9 18 65.6 11 66.5 16 62.6 20 Bahrain 45.1 43 47.5 38 51.0 33 36.8 56 Bangladesh 14.4 130 14.5 108 21.2 121 7.6 130 Barbados 37.1 59 48.9 34 37.9 58 24.4 104 Belgium 65.5 16 57.5 18 66.1 17 72.8 6 Benin 25.6 102 13.1 112 34.9 74 28.8 84 Bolivia 28.0 92 36.6 65 25.8 108 21.5 114 Bosnia 28.9 83 29.8 85 26.5 106 30.4 74 Botswana 33.0 66 37.0 64 32.8 83 29.3 81 Brazil 25.8 100 41.3 49 25.6 109 10.6 129 Brunei Darussalam 36.9 60 39.6 58 40.8 51 30.4 75 Bulgaria 42.7 44 50.1 31 41.2 50 36.8 55 Burkina Faso 22.1 114 9.9 120 30.5 90 25.9 98 Burundi 18.4 124 4.1 130 30.4 92 20.6 116 Cambodia 26.3 98 9.5 123 37.8 59 31.6 64 Cameroon 22.0 115 15.2 107 26.8 104 24.1 106 Canada 81.5 2 79.2 2 85.7 1 79.6 2 Chad 16.6 126 5.0 129 23.1 116 21.6 112 Chile 63.2 19 74.7 6 50.4 34 64.5 15 China 36.4 61 35.7 70 27.6 100 45.8 44 Colombia 47.9 36 47.1 40 46.4 39 50.4 37 Costa Rica 37.7 55 49.4 32 35.3 72 28.3 86 Côte d’Ivoire 24.1 107 11.0 118 34.4 76 26.9 93 Croatia 40.6 51 35.5 71 36.1 68 50.1 38 Cyprus 42.5 46 31.0 84 45.5 40 50.9 36 Czech Republic 48.9 35 40.7 54 42.4 46 63.5 19 Denmark 71.4 6 59.4 16 83.4 3 71.6 8 Dominican Republic 30.6 77 40.3 56 26.6 105 24.9 101 Ecuador 28.2 90 37.4 63 27.0 103 20.1 117 Egypt 28.1 91 34.4 75 19.4 124 30.5 72 El Salvador 29.6 81 29.8 86 30.5 91 28.6 85 Estonia 60.2 21 57.2 19 61.8 19 61.7 22

Page 105: Zoltán J. Ács László Szerb Erkko Autio

Countries GEI GEI rank ATT ATT

rank ABT ABT rank ASP ASP

rank Ethiopia 17.2 124 13.7 110 22.4 118 15.6 123 Finland 65.7 14 75.8 5 59.3 20 62.0 21 France 67.3 12 62.0 13 70.3 12 69.7 12 Gabon 27.7 93 18.9 101 33.3 82 30.9 66 Gambia, The 25.6 101 9.2 124 38.0 57 29.6 79 Germany 67.4 11 59.9 15 72.0 10 70.3 11 Ghana 24.8 105 34.9 72 22.3 119 17.2 120 Greece 42.0 47 35.8 68 48.9 36 41.4 49 Guatemala 20.3 122 23.9 97 21.1 123 16.0 122 Guyana 16.2 127 18.8 102 16.2 128 13.5 124 Honduras 29.8 80 13.5 111 44.9 42 30.9 67 Hong Kong 45.9 40 41.2 51 37.5 60 59.1 27 Hungary 42.7 45 41.1 53 42.3 47 44.7 45 Iceland 70.4 7 71.5 8 69.9 13 69.7 13 India 25.3 104 25.5 95 26.0 107 24.4 103 Indonesia 21.0 120 29.2 88 22.1 120 11.9 127 Iran 27.7 94 32.1 79 27.3 102 23.6 108 Ireland 65.3 17 57.9 17 71.5 11 66.5 14 Israel 59.9 22 54.7 22 53.2 31 71.7 7 Italy 41.3 49 34.5 74 40.0 53 49.5 40 Jamaica 27.2 97 36.2 66 28.5 95 16.9 121 Japan 49.5 33 31.4 82 55.8 27 61.5 24 Jordan 33.3 65 41.7 48 23.8 115 34.3 62 Kazakhstan 28.4 88 33.4 77 32.7 84 19.2 119 Kenya 28.5 86 14.3 109 36.2 67 35.0 60 Korea 54.1 28 48.0 37 52.9 32 61.4 25 Kuwait 47.7 37 41.1 52 55.5 28 46.5 43 Lao PDR 31.1 72 12.6 114 44.5 43 36.2 57 Latvia 54.5 27 48.6 35 56.2 25 58.6 28 Lebanon 40.7 50 50.8 29 35.6 70 35.8 58 Liberia 25.5 103 10.5 119 35.6 71 30.3 76 Libya 31.0 73 27.1 92 36.8 63 29.0 83 Lithuania 54.6 26 49.3 33 58.1 22 56.5 32 Luxembourg 57.2 23 45.1 43 64.9 18 61.6 23 Macedonia 37.1 58 36.1 67 35.1 73 40.0 50 Madagascar 22.0 116 7.1 128 34.7 75 24.1 105 Malawi 15.6 128 11.0 117 14.3 129 21.6 111 Malaysia 40.0 53 42.5 46 44.5 44 33.0 63 Mali 22.5 113 7.7 127 32.6 85 27.2 91 Mauritania 21.1 119 8.1 126 27.4 101 27.9 88 Mexico 30.7 75 40.6 55 27.6 98 23.7 107

Page 106: Zoltán J. Ács László Szerb Erkko Autio

Countries GEI GEI rank ATT ATT

rank ABT ABT rank ASP ASP

rank Moldova 37.2 57 27.5 91 45.3 41 38.9 52 Montenegro 39.1 54 42.1 47 31.9 87 43.3 46 Morocco 29.4 82 39.2 60 21.1 122 28.1 87 Mozambique 24.3 106 9.8 122 34.1 79 29.2 82 Myanmar 23.1 109 11.2 116 27.6 99 30.6 70 Namibia 31.9 69 29.3 87 28.2 96 38.1 53 Netherlands 66.5 13 71.0 9 68.1 14 60.3 26 Nicaragua 28.4 87 12.7 113 42.7 45 29.9 77 Nigeria 28.9 84 32.0 80 28.0 97 26.6 95 Norway 65.6 15 72.8 7 75.4 6 48.8 41 Oman 47.3 39 45.9 41 53.4 30 42.6 47 Pakistan 20.1 123 15.5 106 19.5 124 25.2 99 Panama 32.2 67 41.2 50 35.9 69 19.4 118 Paraguay 36.0 62 26.1 93 47.3 38 34.5 61 Peru 30.9 74 42.7 45 24.8 114 25.1 100 Philippines 27.7 95 34.5 73 25.0 111 23.5 109 Poland 47.4 38 51.0 28 33.8 81 57.4 30 Portugal 50.8 30 45.7 42 49.3 35 57.4 29 Puerto Rico 48.9 34 50.1 30 56.7 24 39.9 51 Qatar 56.2 24 52.8 23 59.0 21 56.7 31 Romania 45.3 42 38.9 61 40.8 52 56.1 33 Russia 31.7 70 31.6 81 37.3 61 26.2 96 Rwanda 26.2 99 12.3 115 39.3 55 27.0 92 Saudi Arabia 49.6 31 56.9 20 42.0 48 49.9 39 Senegal 27.3 96 17.3 105 34.2 77 30.5 71 Serbia 30.6 78 39.6 57 22.6 117 29.5 80 Sierra Leone 21.6 117 8.3 124 31.7 88 24.8 102 Singapore 68.1 10 52.1 25 73.5 8 78.8 4 Slovakia 45.4 41 44.2 44 37.3 62 54.7 35 Slovenia 53.1 29 48.6 36 56.0 26 54.8 34 South Africa 40.0 52 33.4 76 38.5 56 48.1 42 Spain 49.6 32 52.6 24 53.8 29 42.3 48 Sri Lanka 31.1 71 18.7 103 39.6 54 35.0 59 Suriname 20.7 121 25.0 96 24.9 112 12.1 126 Swaziland 21.4 118 17.4 104 25.3 110 21.6 113 Sweden 71.8 5 77.1 4 74.7 7 63.5 18 Switzerland 68.6 9 62.8 12 72.0 9 71.1 10 Taiwan 69.1 8 60.8 14 67.5 15 79.0 3 Tanzania 23.6 108 9.8 121 31.1 89 29.8 78 Thailand 32.1 68 32.1 78 36.4 65 27.7 90 Trinidad & Tobago 28.4 89 31.2 83 32.5 86 21.5 115

Page 107: Zoltán J. Ács László Szerb Erkko Autio

Countries GEI GEI rank ATT ATT

rank ABT ABT rank ASP ASP

rank Tunisia 35.5 63 39.2 59 36.5 64 30.7 68 Turkey 54.6 25 51.7 27 48.5 37 63.7 17 Uganda 15.1 129 20.8 100 12.1 130 12.3 124 Ukraine 33.6 64 28.9 89 33.9 80 38.1 54 United Arab Emirates 61.6 20 55.8 21 57.6 23 71.4 9 United Kingdom 72.7 4 70.9 10 82.8 4 64.3 16 United States 85.0 1 83.4 1 84.7 2 86.8 1 Uruguay 41.4 48 51.7 26 41.9 49 30.7 69 Venezuela 22.6 112 38.5 62 17.7 127 11.4 128 Vietnam 28.8 85 25.8 94 29.2 93 31.5 65 Zambia 23.0 110 22.0 98 24.9 113 22.2 110

Page 108: Zoltán J. Ács László Szerb Erkko Autio

Appendix C Entrepreneurial Attitudes Sub-Index and Pillar Values of Countries in alphabetical order, 2015

Countries ATT Opportunity Perception

Start-up Skills

Risk Acceptance

Networking Cultural Support

Albania 28.8 0.26 0.52 0.13 0.43 0.21 Algeria 35.8 0.72 0.35 0.29 0.24 0.39 Angola 21.4 0.58 0.09 0.06 0.33 0.18 Argentina 47.3 0.90 1.00 0.17 0.53 0.30 Australia 77.9 0.92 0.94 0.82 0.67 0.80 Austria 65.6 0.65 0.78 0.75 0.85 0.64 Bahrain 47.5 0.64 0.46 0.43 1.00 0.41 Bangladesh 14.5 0.37 0.05 0.03 0.07 0.29 Barbados 48.9 0.17 1.00 0.54 0.65 0.85 Belgium 57.5 0.63 0.52 0.66 0.46 0.64 Benin 13.1 0.19 0.11 0.12 0.04 0.21 Bolivia 36.6 0.50 0.62 0.17 0.48 0.27 Bosnia 29.8 0.15 0.39 0.14 0.57 0.45 Botswana 37.0 0.52 0.09 0.72 0.15 0.80 Brazil 41.3 1.00 0.38 0.38 0.49 0.52 Brunei Darussalam 39.6 0.24 0.24 0.67 0.69 0.50 Bulgaria 50.1 0.56 0.75 0.42 0.51 0.42 Burkina Faso 9.9 0.12 0.03 0.13 0.04 0.18 Burundi 4.1 0.04 0.02 0.05 0.02 0.08 Cambodia 9.5 0.12 0.15 0.05 0.05 0.10 Cameroon 15.2 0.29 0.12 0.14 0.07 0.16 Canada 79.2 1.00 0.66 0.87 0.67 0.86 Chad 5.0 0.09 0.02 0.05 0.03 0.07 Chile 74.7 1.00 0.95 0.79 0.71 0.77 China 35.7 0.52 0.17 0.27 0.59 0.39 Colombia 47.1 1.00 0.55 0.42 0.36 0.40 Costa Rica 49.4 0.45 0.64 0.52 0.53 0.56 Côte d’Ivoire 11.0 0.24 0.07 0.13 0.03 0.12 Croatia 35.5 0.17 0.58 0.44 0.42 0.32 Cyprus 31.0 0.21 0.41 0.48 0.39 0.16 Czech Republic 40.7 0.34 0.57 0.64 0.49 0.20 Denmark 59.4 0.70 0.52 0.78 0.84 0.37 Dominican Republic 40.3 0.56 0.56 0.29 0.64 0.34 Ecuador 37.4 0.67 0.62 0.27 0.35 0.35 Egypt 34.4 0.51 0.35 0.28 0.38 0.36 El Salvador 29.8 0.40 0.29 0.25 0.29 0.36 Estonia 57.2 0.40 0.65 0.57 0.80 0.57 Ethiopia 13.7 0.20 0.10 0.06 0.03 0.37

Page 109: Zoltán J. Ács László Szerb Erkko Autio

Countries ATT Opportunity Perception

Start-up Skills

Risk Acceptance

Networking Cultural Support

Finland 75.8 0.73 0.71 0.81 1.00 0.96 France 62.0 0.66 0.41 0.70 0.76 0.74 Gabon 18.9 0.41 0.08 0.15 0.10 0.27 Gambia. The 9.2 0.12 0.03 0.05 0.15 0.12 Germany 59.9 0.65 0.44 0.66 0.57 0.77 Ghana 34.9 0.61 0.20 0.36 0.28 0.60 Greece 35.8 0.17 0.99 0.19 0.41 0.33 Guatemala 23.9 0.45 0.24 0.17 0.19 0.28 Guyana 18.8 0.14 0.14 0.06 0.52 0.18 Honduras 13.5 0.22 0.11 0.13 0.17 0.07 Hong Kong 41.2 0.30 0.22 0.81 0.57 0.55 Hungary 41.1 0.20 0.49 0.55 0.55 0.44 Iceland 71.5 0.44 0.89 0.91 1.00 0.67 India 25.5 0.38 0.26 0.28 0.14 0.30 Indonesia 29.2 0.56 0.35 0.24 0.29 0.30 Iran 32.1 0.59 0.67 0.15 0.30 0.20 Ireland 57.9 0.30 0.71 0.75 0.74 0.72 Israel 54.7 0.65 0.43 0.55 0.70 0.63 Italy 34.5 0.33 0.39 0.42 0.30 0.40 Jamaica 36.2 0.33 0.43 0.29 0.59 0.42 Japan 31.4 0.20 0.12 0.68 0.34 0.43 Jordan 41.7 0.51 0.48 0.38 0.48 0.54 Kazakhstan 33.4 0.51 0.34 0.19 0.63 0.30 Kenya 14.3 0.14 0.03 0.13 0.36 0.12 Korea 48.0 0.27 0.60 0.62 0.68 0.48 Kuwait 41.1 0.68 0.19 0.40 0.78 0.30 Lao PDR 12.6 0.17 0.16 0.05 0.11 0.15 Latvia 48.6 0.31 0.67 0.51 0.64 0.42 Lebanon 50.8 0.69 0.79 0.34 0.76 0.29 Liberia 10.5 0.10 0.17 0.05 0.05 0.18 Libya 27.1 0.59 0.79 0.06 0.11 0.13 Lithuania 49.3 0.30 0.62 0.55 0.65 0.49 Luxembourg 45.1 0.46 0.15 0.52 0.90 0.68 Macedonia 36.1 0.25 0.45 0.23 0.56 0.41 Madagascar 7.1 0.14 0.03 0.05 0.03 0.12 Malawi 11.0 0.14 0.01 0.09 0.10 0.26 Malaysia 42.5 0.57 0.21 0.56 0.82 0.28 Mali 7.7 0.14 0.06 0.05 0.03 0.12 Mauritania 8.1 0.13 0.04 0.05 0.06 0.13 Mexico 40.6 0.92 0.34 0.44 0.52 0.23 Moldova 27.5 0.22 0.37 0.14 0.40 0.33 Montenegro 42.1 0.21 0.88 0.14 0.93 0.46

Page 110: Zoltán J. Ács László Szerb Erkko Autio

Countries ATT Opportunity Perception

Start-up Skills

Risk Acceptance

Networking Cultural Support

Morocco 39.2 0.53 0.24 0.51 0.71 0.43 Mozambique 9.8 0.14 0.04 0.13 0.06 0.13 Myanmar 11.2 0.27 0.14 0.05 0.01 0.14 Namibia 29.3 0.32 0.13 0.43 0.23 0.49 Netherlands 71.0 0.60 0.71 0.81 0.88 1.00 Nicaragua 12.7 0.22 0.10 0.13 0.12 0.07 Nigeria 32.0 0.81 0.17 0.08 0.70 0.22 Norway 72.8 0.91 0.53 0.92 0.87 0.90 Oman 45.9 0.68 0.20 0.43 0.94 0.40 Pakistan 15.5 0.35 0.08 0.07 0.10 0.23 Panama 41.2 0.53 0.48 0.56 0.55 0.29 Paraguay 26.1 0.43 0.40 0.15 0.25 0.17 Peru 42.7 0.86 0.59 0.32 0.49 0.37 Philippines 34.5 0.48 0.40 0.25 0.41 0.40 Poland 51.0 0.33 0.87 0.41 0.70 0.55 Portugal 45.7 0.22 0.69 0.50 0.45 0.65 Puerto Rico 50.1 0.41 1.00 1.00 0.33 0.26 Qatar 52.8 1.00 0.15 0.58 1.00 0.66 Romania 38.9 0.34 0.46 0.33 0.41 0.43 Russia 31.6 0.38 0.41 0.24 0.54 0.21 Rwanda 12.3 0.08 0.05 0.13 0.09 0.28 Saudi Arabia 56.9 1.00 0.78 0.26 0.69 0.62 Senegal 17.3 0.19 0.06 0.24 0.22 0.20 Serbia 39.6 0.28 0.84 0.18 0.66 0.34 Sierra Leone 8.3 0.14 0.01 0.13 0.02 0.13 Singapore 52.1 0.43 0.38 0.79 0.38 0.76 Slovakia 44.2 0.17 0.60 0.56 0.88 0.36 Slovenia 48.6 0.14 0.99 0.63 0.76 0.51 South Africa 33.4 0.50 0.12 0.46 0.35 0.43 Spain 52.6 0.29 0.92 0.64 0.61 0.49 Sri Lanka 18.7 0.11 0.14 0.24 0.21 0.26 Suriname 25.0 0.28 0.12 0.21 0.45 0.37 Swaziland 17.4 0.11 0.07 0.06 0.29 0.44 Sweden 77.1 1.00 0.61 0.83 1.00 0.90 Switzerland 62.8 0.55 0.47 0.94 0.73 0.70 Taiwan 60.8 0.70 0.48 0.64 0.69 0.62 Tanzania 9.8 0.15 0.03 0.13 0.05 0.15 Thailand 32.1 0.35 0.49 0.34 0.26 0.35 Trinidad & Tobago 31.2 0.10 0.17 0.55 0.63 0.39 Tunisia 39.2 0.36 0.46 0.38 0.40 0.54 Turkey 51.7 0.66 0.67 0.43 0.41 0.50 Uganda 20.8 0.20 0.15 0.22 0.28 0.28

Page 111: Zoltán J. Ács László Szerb Erkko Autio

Countries ATT Opportunity Perception

Start-up Skills

Risk Acceptance

Networking Cultural Support

Ukraine 28.9 0.46 0.79 0.05 0.38 0.10 United Arab Emirates 55.8 0.67 0.36 0.43 0.73 0.79 United Kingdom 70.9 0.69 0.60 0.81 0.71 0.79 United States 83.4 1.00 1.00 0.88 0.63 0.83 Uruguay 51.7 0.63 0.84 0.46 0.52 0.65 Venezuela 38.5 0.87 1.00 0.08 0.51 0.18 Vietnam 25.8 0.24 0.24 0.08 0.62 0.28 Zambia 22.0 0.36 0.03 0.21 0.28 0.35

Page 112: Zoltán J. Ács László Szerb Erkko Autio

Appendix D Entrepreneurial Abilities Sub-Index and Pillar Values of Countries in alphabetical order, 2015

Countries ABT Opportunity Startup

Technology Absorption

Human Capital

Competition

Albania 36.2 0.39 0.30 0.51 0.39 Algeria 28.8 0.36 0.29 0.35 0.21 Angola 18.8 0.23 0.21 0.24 0.12 Argentina 34.1 0.25 0.48 0.29 0.42 Australia 81.3 0.93 1.00 0.89 0.69 Austria 66.5 0.65 0.98 0.54 0.87 Bahrain 51.0 0.57 0.77 0.61 0.55 Bangladesh 21.2 0.47 0.17 0.09 0.23 Barbados 37.9 0.63 0.09 0.71 0.42 Belgium 66.1 0.64 0.46 0.87 0.82 Benin 34.9 0.19 1.00 0.28 0.34 Bolivia 25.8 0.35 0.14 0.21 0.38 Bosnia 26.5 0.11 0.38 0.25 0.43 Botswana 32.8 0.39 0.28 0.34 0.45 Brazil 25.6 0.27 0.34 0.15 0.45 Brunei Darussalam 40.8 0.39 0.53 0.57 0.39 Bulgaria 41.2 0.52 0.29 0.49 0.39 Burkina Faso 30.5 0.38 0.51 0.30 0.23 Burundi 30.4 0.37 0.49 0.27 0.31 Cambodia 37.8 0.17 0.64 0.57 0.48 Cameroon 26.8 0.20 0.36 0.22 0.39 Canada 85.7 0.84 0.83 0.95 0.90 Chad 23.1 0.08 0.48 0.29 0.22 Chile 50.4 0.53 0.57 0.51 0.45 China 27.6 0.20 0.23 0.37 0.34 Colombia 46.4 0.83 0.36 0.45 0.46 Costa Rica 35.3 0.46 0.32 0.23 0.46 Côte d’Ivoire 34.4 0.32 0.60 0.44 0.30 Croatia 36.1 0.28 0.54 0.27 0.47 Cyprus 45.5 0.62 0.75 0.28 0.44 Czech Republic 42.4 0.47 0.65 0.26 0.48 Denmark 83.4 1.00 0.98 1.00 1.00 Dominican Republic 26.6 0.26 0.08 0.50 0.34 Ecuador 27.0 0.22 0.17 0.27 0.57 Egypt 19.4 0.13 0.25 0.18 0.23 El Salvador 30.5 0.27 0.20 0.35 0.50 Estonia 61.8 0.64 0.74 0.55 0.68 Ethiopia 22.4 0.38 0.12 0.19 0.31

Page 113: Zoltán J. Ács László Szerb Erkko Autio

Countries ABT Opportunity Startup

Technology Absorption

Human Capital

Competition

Finland 59.3 0.77 0.73 0.51 0.46 France 70.3 0.69 0.94 0.71 0.72 Gabon 33.3 0.22 0.75 0.32 0.27 Gambia. The 38.0 0.34 0.62 0.46 0.43 Germany 72.0 0.78 0.76 0.62 0.93 Ghana 22.3 0.34 0.16 0.07 0.42 Greece 48.9 0.53 0.65 0.63 0.43 Guatemala 21.1 0.29 0.08 0.05 0.57 Guyana 16.2 0.21 0.10 0.12 0.24 Honduras 44.9 0.33 0.81 0.80 0.36 Hong Kong 37.5 0.77 0.27 0.66 0.11 Hungary 42.3 0.51 0.54 0.47 0.31 Iceland 69.9 1.00 1.00 0.53 0.53 India 26.0 0.11 0.11 0.29 0.69 Indonesia 22.1 0.31 0.22 0.14 0.33 Iran 27.3 0.26 0.37 0.38 0.19 Ireland 71.5 0.66 0.89 0.97 0.87 Israel 53.2 0.50 0.78 0.77 0.30 Italy 40.0 0.53 0.70 0.15 0.45 Jamaica 28.5 0.43 0.09 0.33 0.42 Japan 55.8 0.57 1.00 0.88 0.43 Jordan 23.8 0.26 0.11 0.26 0.37 Kazakhstan 32.7 0.45 0.22 0.69 0.20 Kenya 36.2 0.33 0.61 0.43 0.39 Korea 52.9 0.58 0.87 0.82 0.22 Kuwait 55.5 0.36 1.00 0.68 0.65 Lao PDR 44.5 0.40 0.63 0.60 0.59 Latvia 56.2 0.64 0.63 0.60 0.53 Lebanon 35.6 0.34 0.26 0.46 0.40 Liberia 35.6 0.40 0.52 0.38 0.37 Libya 36.8 0.38 0.39 0.68 0.30 Lithuania 58.1 0.67 0.69 0.84 0.38 Luxembourg 64.9 0.54 1.00 0.98 0.92 Macedonia 35.1 0.22 0.40 0.42 0.42 Madagascar 34.7 0.40 0.57 0.38 0.32 Malawi 14.3 0.11 0.08 0.03 0.44 Malaysia 44.5 0.84 0.16 0.46 0.64 Mali 32.6 0.25 0.58 0.32 0.40 Mauritania 27.4 0.17 0.56 0.26 0.28 Mexico 27.6 0.48 0.36 0.14 0.23 Moldova 45.3 0.58 0.51 0.72 0.30 Montenegro 31.9 0.42 0.27 0.33 0.35

Page 114: Zoltán J. Ács László Szerb Erkko Autio

Countries ABT Opportunity Startup

Technology Absorption

Human Capital

Competition

Morocco 21.1 0.55 0.05 0.06 0.33 Mozambique 34.1 0.43 0.57 0.34 0.28 Myanmar 27.6 0.11 0.53 0.39 0.29 Namibia 28.2 0.31 0.23 0.15 0.52 Netherlands 68.1 0.94 0.69 0.60 0.79 Nicaragua 42.7 0.30 0.71 0.78 0.36 Nigeria 28.0 0.22 0.20 0.40 0.42 Norway 75.4 1.00 0.93 0.79 0.73 Oman 53.4 0.47 0.72 0.64 0.61 Pakistan 19.5 0.20 0.20 0.10 0.33 Panama 35.9 0.58 0.13 0.50 0.46 Paraguay 47.3 0.39 0.65 0.66 0.55 Peru 24.8 0.49 0.08 0.30 0.22 Philippines 25.0 0.22 0.08 0.37 0.43 Poland 33.8 0.25 0.33 0.34 0.46 Portugal 49.3 0.67 0.45 0.52 0.52 Puerto Rico 56.7 0.77 0.41 0.89 0.57 Qatar 59.0 0.51 0.80 0.75 0.90 Romania 40.8 0.45 0.39 0.39 0.41 Russia 37.3 0.34 0.34 0.91 0.23 Rwanda 39.3 0.48 0.61 0.41 0.39 Saudi Arabia 42.0 0.62 0.26 0.58 0.35 Senegal 34.2 0.25 0.64 0.34 0.37 Serbia 22.6 0.19 0.17 0.26 0.31 Sierra Leone 31.7 0.32 0.52 0.36 0.31 Singapore 73.5 1.00 0.77 1.00 0.57 Slovakia 37.3 0.31 0.61 0.41 0.29 Slovenia 56.0 0.79 0.82 0.54 0.62 South Africa 38.5 0.45 0.30 0.24 0.82 Spain 53.8 0.51 0.79 0.44 0.65 Sri Lanka 39.6 0.46 0.45 0.40 0.47 Suriname 24.9 0.22 0.05 0.52 0.39 Swaziland 25.3 0.30 0.09 0.42 0.31 Sweden 74.7 0.94 1.00 0.71 0.67 Switzerland 72.0 0.63 0.80 0.78 1.00 Taiwan 67.5 0.84 0.73 0.85 0.45 Tanzania 31.1 0.24 0.53 0.38 0.31 Thailand 36.4 0.56 0.23 0.52 0.38 Trinidad & Tobago 32.5 0.46 0.19 0.44 0.39 Tunisia 36.5 0.42 0.45 0.33 0.37 Turkey 48.5 0.37 0.66 0.56 0.40 Uganda 12.1 0.17 0.06 0.03 0.26 Ukraine 33.9 0.37 0.57 0.38 0.27

Page 115: Zoltán J. Ács László Szerb Erkko Autio

Countries ABT Opportunity Startup

Technology Absorption

Human Capital

Competition

United Arab Emirates 57.6 0.64 0.38 1.00 0.50 United Kingdom 82.8 0.87 0.75 0.86 0.97 United States 84.7 0.73 0.86 0.94 1.00 Uruguay 41.9 0.64 0.49 0.31 0.45 Venezuela 17.7 0.19 0.18 0.22 0.17 Vietnam 29.2 0.39 0.15 0.60 0.19 Zambia 24.9 0.39 0.09 0.28 0.38

Page 116: Zoltán J. Ács László Szerb Erkko Autio

Appendix E Entrepreneurial Aspirations Sub-Index and Pillar Values of Countries in alphabetical order, 2015

Countries ASP Product Innovation

Process Innovation

High Growth

International- ization

Risk Capital

Albania 26.8 0.27 0.24 0.25 0.39 0.25 Algeria 26.1 0.22 0.14 0.18 0.25 0.62 Angola 27.8 0.31 0.06 0.20 0.38 0.69 Argentina 30.4 0.25 0.40 0.43 0.17 0.35 Australia 73.5 0.50 0.80 0.72 0.90 0.98 Austria 62.6 0.77 0.75 0.31 0.92 0.79 Bahrain 36.8 0.43 0.11 0.35 0.65 0.61 Bangladesh 7.6 0.04 0.07 0.13 0.03 0.13 Barbados 24.4 0.22 0.13 0.30 0.46 0.21 Belgium 72.8 0.73 0.80 0.63 0.96 0.77 Benin 28.8 0.37 0.18 0.63 0.33 0.18 Bolivia 21.5 0.29 0.14 0.25 0.15 0.27 Bosnia 30.4 0.21 0.08 0.51 0.51 0.44 Botswana 29.3 0.24 0.28 0.62 0.33 0.16 Brazil 10.6 0.00 0.08 0.22 0.01 0.28 Brunei Darussalam 30.4 0.31 0.10 0.52 0.24 0.54 Bulgaria 36.8 0.34 0.56 0.34 0.33 0.31 Burkina Faso 25.9 0.33 0.29 0.27 0.27 0.28 Burundi 20.6 0.25 0.22 0.26 0.21 0.20 Cambodia 31.6 0.38 0.18 0.37 0.42 0.46 Cameroon 24.1 0.33 0.21 0.32 0.23 0.19 Canada 79.6 0.69 0.70 0.75 1.00 0.93 Chad 21.6 0.26 0.20 0.26 0.24 0.23 Chile 64.5 1.00 0.38 0.72 0.86 0.59 China 45.8 0.83 0.62 0.48 0.18 0.55 Colombia 50.4 0.89 0.19 1.00 0.55 0.43 Costa Rica 28.3 0.24 0.29 0.40 0.24 0.26 Côte d’Ivoire 26.9 0.35 0.20 0.31 0.32 0.34 Croatia 50.1 0.22 0.56 0.63 0.93 0.66 Cyprus 50.9 0.54 0.39 0.61 1.00 0.50 Czech Republic 63.5 0.65 0.87 0.75 1.00 0.64 Denmark 71.6 1.00 0.80 0.74 0.58 0.91 Dominican Republic 24.9 0.28 0.13 0.45 0.40 0.11 Ecuador 20.1 0.58 0.16 0.22 0.05 0.13 Egypt 30.5 0.17 0.37 0.63 0.22 0.28 El Salvador 28.6 0.50 0.12 0.53 0.14 0.30 Estonia 61.7 0.61 0.84 0.61 0.84 0.40 Ethiopia 15.6 0.13 0.39 0.22 0.03 0.10

Page 117: Zoltán J. Ács László Szerb Erkko Autio

Countries ASP Product Innovation

Process Innovation

High Growth

International- ization

Risk Capital

Finland 62.0 0.91 0.93 0.53 0.55 0.41 France 69.7 0.85 0.83 0.68 0.74 0.66 Gabon 30.9 0.21 0.47 0.34 0.43 0.26 Gambia. The 29.6 0.39 0.23 0.36 0.32 0.41 Germany 70.3 0.73 0.83 0.78 0.67 0.72 Ghana 17.2 0.12 0.18 0.23 0.17 0.19 Greece 41.4 0.37 0.51 0.19 0.64 0.61 Guatemala 16.0 0.52 0.06 0.08 0.15 0.09 Guyana 13.5 0.30 0.09 0.12 0.07 0.13 Honduras 30.9 0.44 0.08 0.44 0.40 0.42 Hong Kong 59.1 1.00 0.49 0.85 0.76 0.78 Hungary 44.7 0.28 0.46 0.56 0.81 0.39 Iceland 69.7 0.69 0.94 0.70 0.91 0.50 India 24.4 0.38 0.64 0.11 0.12 0.12 Indonesia 11.9 0.21 0.25 0.04 0.01 0.15 Iran 23.6 0.12 0.32 0.44 0.07 0.37 Ireland 66.5 0.70 0.71 0.86 0.90 0.64 Israel 71.7 1.00 1.00 0.63 0.68 0.97 Italy 49.5 0.90 0.74 0.24 0.53 0.58 Jamaica 16.9 0.18 0.12 0.09 0.38 0.12 Japan 61.5 0.98 1.00 1.00 0.55 0.59 Jordan 34.3 0.44 0.37 0.48 0.27 0.33 Kazakhstan 19.2 0.06 0.18 0.43 0.23 0.14 Kenya 35.0 0.45 0.43 0.37 0.30 0.55 Korea 61.4 0.82 0.89 0.64 0.48 0.83 Kuwait 46.5 0.53 0.18 0.34 0.99 0.73 Lao PDR 36.2 0.41 0.11 0.37 0.60 0.72 Latvia 58.6 0.47 0.41 1.00 0.78 0.61 Lebanon 35.8 0.25 0.30 0.42 0.63 0.27 Liberia 30.3 0.33 0.48 0.33 0.20 0.41 Libya 29.0 0.26 0.15 0.52 0.34 0.38 Lithuania 56.5 0.36 0.49 0.90 0.80 0.59 Luxembourg 61.6 1.00 0.80 0.42 1.00 0.79 Macedonia 40.0 0.24 0.31 0.51 0.64 0.44 Madagascar 24.1 0.37 0.21 0.32 0.26 0.20 Malawi 21.6 0.53 0.77 0.02 0.07 0.04 Malaysia 33.0 0.41 0.65 0.20 0.25 0.28 Mali 27.2 0.35 0.33 0.32 0.29 0.25 Mauritania 27.9 0.27 0.48 0.29 0.27 0.27 Mexico 23.7 0.40 0.23 0.26 0.10 0.28 Moldova 38.9 0.28 0.48 0.55 0.56 0.31 Montenegro 43.3 0.31 0.42 0.47 0.88 0.45

Page 118: Zoltán J. Ács László Szerb Erkko Autio

Countries ASP Product Innovation

Process Innovation

High Growth

International- ization

Risk Capital

Morocco 28.1 0.10 0.46 0.32 0.72 0.11 Mozambique 29.2 0.29 0.46 0.29 0.28 0.34 Myanmar 30.6 0.27 0.18 0.24 0.51 0.69 Namibia 38.1 0.62 0.39 0.35 0.50 0.28 Netherlands 60.3 0.73 0.69 0.36 0.70 0.78 Nicaragua 29.9 0.49 0.06 0.41 0.35 0.40 Nigeria 26.6 0.25 0.24 0.35 0.34 0.25 Norway 48.8 0.36 0.62 0.36 0.43 0.76 Oman 42.6 0.50 0.20 0.37 0.58 0.69 Pakistan 25.2 0.39 0.32 0.40 0.20 0.09 Panama 19.4 0.28 0.25 0.09 0.19 0.19 Paraguay 34.5 0.30 0.12 0.36 0.68 0.49 Peru 25.1 0.28 0.20 0.23 0.29 0.35 Philippines 23.5 0.53 0.25 0.13 0.28 0.10 Poland 57.4 0.72 0.45 0.63 0.94 0.54 Portugal 57.4 0.53 0.75 0.50 1.00 0.59 Puerto Rico 39.9 0.44 0.32 0.23 0.53 0.62 Qatar 56.7 0.75 0.88 0.43 0.69 0.75 Romania 56.1 0.40 0.45 0.88 0.84 0.50 Russia 26.2 0.21 0.35 0.51 0.09 0.29 Rwanda 27.0 0.42 0.18 0.35 0.26 0.30 Saudi Arabia 49.9 0.52 0.24 0.94 0.36 0.81 Senegal 30.5 0.38 0.40 0.35 0.33 0.25 Serbia 29.5 0.32 0.58 0.27 0.15 0.26 Sierra Leone 24.8 0.28 0.20 0.30 0.23 0.39 Singapore 78.8 0.64 0.98 1.00 1.00 0.94 Slovakia 54.7 0.45 0.47 0.59 1.00 0.82 Slovenia 54.8 0.53 0.84 0.63 0.81 0.56 South Africa 48.1 0.83 0.67 0.60 0.56 0.28 Spain 42.3 0.39 0.62 0.26 0.33 0.66 Sri Lanka 35.0 0.52 0.23 0.49 0.20 0.53 Suriname 12.1 0.13 0.12 0.03 0.33 0.05 Swaziland 21.6 0.18 0.25 0.19 0.32 0.22 Sweden 63.5 0.72 0.97 0.41 0.66 0.64 Switzerland 71.1 0.86 0.80 0.38 1.00 1.00 Taiwan 79.0 1.00 0.80 1.00 0.60 1.00 Tanzania 29.8 0.36 0.44 0.32 0.24 0.37 Thailand 27.7 0.48 0.31 0.34 0.08 0.34 Trinidad & Tobago 21.5 0.11 0.07 0.47 0.30 0.23 Tunisia 30.7 0.46 0.46 0.40 0.15 0.18 Turkey 63.7 0.80 0.45 1.00 0.45 0.81 Uganda 12.3 0.09 0.25 0.07 0.12 0.13 Ukraine 38.1 0.36 0.58 0.34 0.42 0.59

Page 119: Zoltán J. Ács László Szerb Erkko Autio

Countries ASP Product Innovation

Process Innovation

High Growth

International- ization

Risk Capital

United Arab Emirates 71.4 0.81 0.48 1.00 0.79 1.00 United Kingdom 64.3 0.63 0.67 0.66 0.63 0.64 United States 86.8 0.84 0.88 0.87 0.94 1.00 Uruguay 30.7 0.47 0.35 0.40 0.28 0.14 Venezuela 11.4 0.16 0.12 0.18 0.04 0.09 Vietnam 31.5 0.46 0.20 0.41 0.21 0.49 Zambia 22.2 0.20 0.26 0.11 0.56 0.15

Page 120: Zoltán J. Ács László Szerb Erkko Autio

End Notes

1 For a review of the literature, see Z. J. Acs and N. Virgil, “Entrepreneurship and Economic Development.” Foundations and Trends in Entrepreneurship 6, no. 1 (2011): 1-68.

2 See Easterly, who identifies the slowdowns in the economies of OECD trading partners of LDCs as a possible cause of the disappointing growth performance. “The Lost Decade: Developing Countries' Stagnation in Spite of Policy Reform 1980-1998.” Journal of Economic Growth 6 (2001): 141-143.

3 J. Sachs, The End of Poverty: Economic Possibilities for Our Time. New York: Penguin Press, 2005, 22-23. 4 S. Ketkar and Z. J. Acs, “Where Angels Fear to Tread.” Journal of International Entrepreneurship 1 (2013): 201-219. 5 A. Woolridge, “Global Heroes: A Special Report on Entrepreneurship.” The Economist, March 14, 2009, 1-19. 6 W. W. Rostow, The Stages of Economic Growth: A Non-Communist Manifesto. Cambridge, England: Cambridge University Press, 1960. 7 M. Porter, J. Sachs, and J. McArthur, “Executive Summary: Competitiveness and Stages of Economic Development.” In The Global

Competitiveness Report 2001–2002, ed. M. Porter, J. Sachs, P. K. Cornelius, J. McArthur, and K. Schwab, New York: Oxford University Press, 2002, 16-25.

8 H. Leibenstein, “Entrepreneurship and Development.” American Economic Review 38, no. 2 (1968): 72-83. 9 A. V. Banerjee and E. Duflo, Poor Economics: A Radical Rethinking of the Way to Fight Global Poverty. New York: Public Affairs, 2012. 10 W. Baumol, “Entrepreneurship: Productive, Unproductive and Destructive.” Journal of Political Economy 98 (1990): 893-921. 11 Z. J. Acs, “Entrepreneurship and Economic Development: The Valley of Backwardness.” Annals of Innovation & Entrepreneurship 1 (2010):

1-18. 12 D. Acemoglu and S. Johnson, “Unbundling Institutions.” Journal of Political Economy 113 (2005): 949-995; Z. J. Acs, P. Braunerhjelm, D. B.

Audretsch, and B. Carlsson, “The Knowledge Spillover Theory of Entrepreneurship.” Small Business Economics 32, no. 1 (2009): 15-30.

13 The following identify several dimensions of entrepreneurship: W. B. Gartner, “What Are We Talking about When We Talk About Entrepreneurship?” Journal of Business Venturing 5, no. 1 (1990): 15-28; P. Davidsson, Researching Entrepreneurship. New York: Springer, 2004; S. Wennekers and R. Thurik, “Linking Entrepreneurship to Economic Growth.” Small Business Economics 13, no. 1 (1999): 27-55; K. Godin, J. Clemens, and N. Veldhuis, “Measuring Entrepreneurship Conceptual Frameworks and Empirical Indicators.” Studies in Entrepreneurship Markets 7 (2008).

14 Z. J. Acs, E. Autio, and L. Szerb, “National systems of entrepreneurship: measurement issues and policy implications.” Research Policy, 43 (3): 476-494.

15 Z. J. Acs and A. Varga, “Entrepreneurship, Agglomeration and Technological Change.” Small Business Economics, 24 (2005): 323-334. 16 S. Papagiannidis and F. Li, “Skills Brokerage: A New Model for Business Start-Ups in the Networked Economy.” European Management

Journal 23 (2005): 471-482. 17 M. Caliendo, F. M. Fossen, and A. S. Kritikos, ”Risk Attitudes of Nascent Entrepreneurs: New Evidence from an Experimentally Validated

Survey.” Small Business Economics 32 (2009): 153-167. 18 S. Shane and D. Cable, “Network Ties, Reputation, and the Financing of New Ventures.” Management Science 48 (2003): 364-381. 19 L. Guiso, P. Sapienza, and L. Zingales, “Does Culture Affect Economic Outcomes?” CEPR discussion paper no. 5505, 2006. Retrieved from

http://ssrn.com/abstract=905320. 20 R. Bhola, I. Verheul, R. Thurik, and I. Grilo, “Explaining Engagement Levels of Opportunity and Necessity Entrepreneurs,” EIM working paper

series H200610, 2006. Zoetermeer, Netherlands: EIM Business and Policy Research. 21 A. Coad and R. Rao, “Innovation and Firm Growth in ‘Complex Technology’ Sectors: A Quantile Regression Approach.” Research Policy 37

(2008): 633-648. 22 T. Bates, “Entrepreneur Human Capital Inputs and Small Business Longevity.” The Review of Economics and Statistics 72 (1990): 551-559. 23 W. Baumol, R. Litan, and C. Schramm, Good Capitalism, Bad Capitalism, and the Economics of Growth and Prosperity. New Haven, CT:

Yale University Press, 2007. 24 E. Stam and K. Wennberg, “The Roles of R&D in New Firm Growth.” Small Business Economics 33, no. 1 (2009): 77-89. 25 The Global Competitiveness Report 2013-2014, p. 22 26 Z. J. Acs, W. Parsons, and S. Tracy, “High Impact Firms: Gazelles Revisited,” Office of Advocacy working paper, U.S. Small Business

Administration, 2008. Available from http://www.sba.gov/advocacy/847/17231. 27 D. De Clercq, H. J. Sapienza, and H. Crijns, “The Internationalization of Small and Medium Firms.” Small Business Economics 24 (2005):

409-419. 28 P. Gompers and J. Lerner, The Venture Capital Cycle. Cambridge, MA: MIT Press, 2004. 29 A. Groh, H. Liechtenstein, and K. Lieser, “The Global Venture Capital and Private Equity Country Attractiveness Index, 2012.”

30 Ecosystems, https://www.google.com/?gws_rd=ssl#q=ecosystem August 4, 2014. 31 See Z. Acs, E. Autio, and L. Szerb, “National Systems of Entrepreneurship: Measurement Issues and Policy Implications.” Research Policy 43 (2014): 476-494. 32 See Z. J. Acs and L. Szerb. “The Global Entrepreneurship and Development Index (GEDINDEX).” Foundations and Trends in Entrepreneurship 5, no. 5 (2009): 341-435; Global Entrepreneurship and Development Index, Edward Elgar, 2012, p. 400; Z. J. Acs, L. Szerb,

Page 121: Zoltán J. Ács László Szerb Erkko Autio

and E. Autio. Global Entrepreneurship and Development Index, Edward Elgar, 201, p. 352; The Global Entrepreneurship and Development Index 2014. Seattle: CreateSpace Independent Publishing Platform, March 19, 2014. 33 A. Groh, H. Liechtenstein, and K. Lieser. The Global Venture Capital and Private Equity Country Attractiveness Annual Index 2012. Available at http://blog.iese.edu/vcpeindex/about/. 34 Groh et al., Global Venture Capital. 35 Some may not consider the West Bank and Gaza Strip an independent country. Tonga and Vanuatu are tiny countries, and Yemen and Syria have been engaged in civil war over the last few years. 36 In order to check potential bias, the index was calculated without these countries; however, the GEI values and the rank order of the involved countries were basically unchanged. 37 OECD, 2008. 38 The Kaiser-Meyer-Olkin measures for the original pillar values are 0.91, and 0.94 for the PFB adjusted pillars, well above the critical value of 0.50. The Bartlett test is significant at the 0.000 level, excluding the possibility that the pillars are not interrelated. 39 We have calculated the c-alpha values for each of the three sub-indexes. Using the PFB adjusted pillar values, the c-alpha scores are 0.85 (ATT pillars), 0.91 (ABT pillars), and 0.91 (ASP pillars).

Page 122: Zoltán J. Ács László Szerb Erkko Autio

Section 2: Country Pages

Page 123: Zoltán J. Ács László Szerb Erkko Autio

Country Page Guide Country name

Country flag

Country region Geographic regions are from the Index of Economic Freedom (www.heritage.org/index), which classifies all GEI areas except Puerto Rico (which we have placed in the South and Central America / Caribbean region) and Brunei Darussalam (placed in Asia-Pacific).

Regional classifications for the GEI are as follows:

World Rank lists the country’s rank in the full list of 130 countries covered by the GEI.

Regional Rank lists the country’s rank within its geographic region and includes the total number of countries in the region.

Economy type (Factor Driven, Efficiency Driven, or Innovation Driven) is based on the Global Competitiveness Index (World Economic Forum) 2014- 2015. Countries listed in the GCI as “transitioning from stage 1 to stage 2” are listed here as Factor Driven (stage 1), and “transitioning from stage 2-3”

Asia - Pacific Middle East / North Africa

South and Central America / Caribbean

Australia Bangladesh Brunei DarussalamCambodia China Hong Kong India Indonesia Japan Kazakhstan Korea Lao PDR Malaysia Myanmar Pakistan Philippines Singapore Sri Lanka Taiwan Thailand Vietnam

Algeria Bahrain Egypt Iran Israel Jordan Kuwait Lebanon Libya Morocco Oman Qatar Saudi Arabia Tunisia United Arab Emirates

Argentina Barbados Bolivia Brazil Chile Colombia Costa Rica Dominican RepublicEcuador El Salvador Guatemala Guyana Honduras Jamaica Nicaragua Panama Paraguay Peru Puerto Rico Suriname Trinidad & Tobago Uruguay Venezuela

Angola Malawi Benin Mali Botswana Mauritania Burkina Faso MozambiqueBurundi Namibia Cameroon Nigeria Chad Rwanda Côte d’Ivoire Senegal Ethiopia Sierra LeoneGabon South Africa Gambia Swaziland Ghana Tanzania Kenya Uganda Liberia Zambia Madagascar

Canada Mexico United States

Albania Luxembourg Austria Macedonia Belgium Moldova Bosnia Montenegro Bulgaria Netherlands Croatia Norway Cyprus Poland Czech Republic Portugal Denmark Romania Estonia Russia Finland Serbia France Slovakia Germany Slovenia Greece Spain Hungary Sweden Iceland Switzerland Ireland Turkey Italy Ukraine Latvia United Kingdom Lithuania

Lu

Europe Malawi

Sub-Saharan Africa

nada

North America

Page 124: Zoltán J. Ács László Szerb Erkko Autio

Overall, Individual and Institutional category scores The Overall GEI Score represents the overall entrepreneurial performance ofa country on a 0-100 point scale.The Individual Scores are calculated from the equalized pillar values for the15 individual level pillars that comprise the GEI the same way as the REDIaverage adjusted pillar scores. For calculation details see the Methodologychapter in this volume.The Institutional Scores are calculated using exactly the same method butusing the institutional pillars rather than the individual pillars.

Scatterplot shows GEI points plotted against GDP in $ per capita PPP. Each country’s geographic region appears in blue.

Spider chart shows each country’s performance on the 15 pillars that comprise the GEI, along with that country’s regional average and the global average.

The General Indicators show population, GDP per capita PPP, and the country’s rank in three other business/economic indices: the Doing Business Index (www.doingbusiness.org/reports/global-reports/doing-business-2014, 2014), the Global Competitiveness Index (www.weforum.org/reports/global-competitiveness-report-2014-2015, 2014-2015) and the Index of Economic Freedom (www.heritage.org/index, 2014).

The Pillar Score chart shows pillar scores ordered from worst to best. The right-hand column of the chart shows the percentage of new effort that the country should expend on each pillar in order to achieve a 10 point increase in GEI score (e.g. from 54.1 to 64.1).

Page 125: Zoltán J. Ács László Szerb Erkko Autio

Albania World Rank 76 of 130 EuropeRegional Rank 37 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 2.8 million GDP per capita PPP $8,123 Rank in Doing Business Index 2013 90 / 189Rank in Global Competitiveness Index 2013-2014 97 / 144Rank in Economic Freedom Index 2013 54 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

30.6 30.662.0 62.047.9 47.9

3. Risk Acceptance 0.13 0 22%5. Cultural Support 0.21 0 15%11. Process Innovation 0.24 0 13%14. Risk Capital 0.25 0 11%12. High Growth 0.25 0 11%1. Opportunity Perception 0.26 0 10%10. Product Innovation 0.27 0 10%7. Technology Absorption 0.30 0 8%13. Internationalization 0.39 0 0%6. Opportunity Startup 0.39 0 0%9. Competition 0.39 0 0%4. Networking 0.43 0 0%8. Human Capital 0.51 1 0%2. Startup Skills 0.52 1 0%

Page 126: Zoltán J. Ács László Szerb Erkko Autio

Algeria World Rank 79 of 130 Middle East / North AfricaRegional Rank 12 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 38.5 million GDP per capita PPP $7,400 Rank in Doing Business Index 2013 153 / 189 Rank in Global Competitiveness Index 2013-2014 79 / 144Rank in Economic Freedom Index 2013 146 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

30.2 30.269.5 69.540.6 40.6

11. Process Innovation 0.14 0 20%12. High Growth 0.18 0 16%9. Competition 0.21 0 13%10. Product Innovation 0.22 0 13%4. Networking 0.24 0 10%13. Internationalization 0.25 0 10%3. Risk Acceptance 0.29 0 7%7. Technology Absorption 0.29 0 7%8. Human Capital 0.35 0 2%2. Startup Skills 0.35 0 1%6. Opportunity Startup 0.36 0 1%5. Cultural Support 0.39 0 0%14. Risk Capital 0.62 1 0%1. Opportunity Perception 0.72 1 0%

Page 127: Zoltán J. Ács László Szerb Erkko Autio

Angola World Rank 111 of 130 Sub-Saharan AfricaRegional Rank 17 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 20.8 million GDP per capita PPP $5,262 Rank in Doing Business Index 2013 179 / 189 Rank in Global Competitiveness Index 2013-2014 140 / 144 Rank in Economic Freedom Index 2013 160 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

22.7 22.773.2 73.229.1 29.1

3. Risk Acceptance 0.06 0 20%11. Process Innovation 0.06 0 19%2. Startup Skills 0.09 0 17%9. Competition 0.12 0 15%5. Cultural Support 0.18 0 9%12. High Growth 0.20 0 6%7. Technology Absorption 0.21 0 6%6. Opportunity Startup 0.23 0 4%8. Human Capital 0.24 0 4%10. Product Innovation 0.31 0 0%4. Networking 0.33 0 0%13. Internationalization 0.38 0 0%1. Opportunity Perception 0.58 1 0%14. Risk Capital 0.69 1 0%

Page 128: Zoltán J. Ács László Szerb Erkko Autio

Argentina World Rank 56 of 130 South and Central

America / Caribbean Regional Rank 6 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 41.1 million GDP per capita PPP $16,425 Rank in Doing Business Index 2013 126 / 189 Rank in Global Competitiveness Index 2013-2014 104 / 144 Rank in Economic Freedom Index 2013 166 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

37.2 37.264.7 64.756.3 56.3

13. Internationalization 0.17 0 23%3. Risk Acceptance 0.17 0 22%10. Product Innovation 0.25 0 15%6. Opportunity Startup 0.25 0 14%8. Human Capital 0.29 0 11%5. Cultural Support 0.30 0 10%14. Risk Capital 0.35 0 5%11. Process Innovation 0.40 0 0%9. Competition 0.42 0 0%12. High Growth 0.43 0 0%7. Technology Absorption 0.48 0 0%4. Networking 0.53 1 0%1. Opportunity Perception 0.90 1 0%2. Startup Skills 1.00 1 0%

Page 129: Zoltán J. Ács László Szerb Erkko Autio

Australia World Rank 3 of 130 Asia-PacificRegional Rank 1 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 22.7 million GDP per capita PPP $35,608 Rank in Doing Business Index 2013 11 / 189 Rank in Global Competitiveness Index 2013-2014 22 / 144 Rank in Economic Freedom Index 2013 3 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

77.6 77.675.8 75.887.5 87.5

10. Product Innovation 0.50 1 43%4. Networking 0.67 1 21%9. Competition 0.69 1 17%12. High Growth 0.72 1 14%11. Process Innovation 0.80 1 3%5. Cultural Support 0.80 1 3%3. Risk Acceptance 0.82 1 0%8. Human Capital 0.89 1 0%13. Internationalization 0.90 1 0%1. Opportunity Perception 0.92 1 0%6. Opportunity Startup 0.93 1 0%2. Startup Skills 0.94 1 0%14. Risk Capital 0.98 1 0%7. Technology Absorption 1.00 1 0%

Page 130: Zoltán J. Ács László Szerb Erkko Autio

Austria World Rank 18 of 130 EuropeRegional Rank 13 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 8.4 million GDP per capita PPP $36,340Rank in Doing Business Index 2013 30 / 189Rank in Global Competitiveness Index 2013-2014 21 / 144Rank in Economic Freedom Index 2013 24 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

64.9 64.970.2 70.286.3 86.3

12. High Growth 0.31 0 78%8. Human Capital 0.54 1 23%5. Cultural Support 0.64 1 0%6. Opportunity Startup 0.65 1 0%1. Opportunity Perception 0.65 1 0%3. Risk Acceptance 0.75 1 0%11. Process Innovation 0.75 1 0%10. Product Innovation 0.77 1 0%2. Startup Skills 0.78 1 0%14. Risk Capital 0.79 1 0%4. Networking 0.85 1 0%9. Competition 0.87 1 0%13. Internationalization 0.92 1 0%7. Technology Absorption 0.98 1 0%

Page 131: Zoltán J. Ács László Szerb Erkko Autio

Bahrain World Rank 43 of 130 Middle East / North AfricaRegional Rank 7 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 1.3 million GDP per capita PPP $21,543Rank in Doing Business Index 2013 46 / 189Rank in Global Competitiveness Index 2013-2014 44 / 144Rank in Economic Freedom Index 2013 13 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

45.1 45.178.0 78.060.6 60.6

11. Process Innovation 0.11 0 79%12. High Growth 0.35 0 18%5. Cultural Support 0.41 0 3%3. Risk Acceptance 0.43 0 0%10. Product Innovation 0.43 0 0%2. Startup Skills 0.46 0 0%9. Competition 0.55 1 0%6. Opportunity Startup 0.57 1 0%14. Risk Capital 0.61 1 0%8. Human Capital 0.61 1 0%1. Opportunity Perception 0.64 1 0%13. Internationalization 0.65 1 0%7. Technology Absorption 0.77 1 0%4. Networking 1.00 1 0%

Page 132: Zoltán J. Ács László Szerb Erkko Autio

Bangladesh World Rank 130 of 130 Asia-PacificRegional Rank 21 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 154.7 million GDP per capita PPP $1,622 Rank in Doing Business Index 2013 130 / 189 Rank in Global Competitiveness Index 2013-2014 109 / 144 Rank in Economic Freedom Index 2013 131 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

14.4 14.444.4 44.436.9 36.9

13. Internationalization 0.03 0 14%3. Risk Acceptance 0.03 0 14%10. Product Innovation 0.04 0 13%2. Startup Skills 0.05 0 13%11. Process Innovation 0.07 0 11%4. Networking 0.07 0 11%8. Human Capital 0.09 0 9%14. Risk Capital 0.13 0 6%12. High Growth 0.13 0 5%7. Technology Absorption 0.17 0 3%9. Competition 0.23 0 0%5. Cultural Support 0.29 0 0%1. Opportunity Perception 0.37 0 0%6. Opportunity Startup 0.47 0 0%

Page 133: Zoltán J. Ács László Szerb Erkko Autio

Barbados World Rank 59 of 130 South and Central

America / Caribbean Regional Rank 7 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 0.3 million GDP per capita PPP $23,205 Rank in Doing Business Index 2013 91 / 189 Rank in Global Competitiveness Index 2013-2014 55 / 144 Rank in Economic Freedom Index 2013 45 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

37.1 37.166.5 66.558.3 58.3

7. Technology Absorption 0.09 0 31%11. Process Innovation 0.13 0 25%1. Opportunity Perception 0.17 0 18%14. Risk Capital 0.21 0 14%10. Product Innovation 0.22 0 13%12. High Growth 0.30 0 0%9. Competition 0.42 0 0%13. Internationalization 0.46 0 0%3. Risk Acceptance 0.54 1 0%6. Opportunity Startup 0.63 1 0%4. Networking 0.65 1 0%8. Human Capital 0.71 1 0%5. Cultural Support 0.85 1 0%2. Startup Skills 1.00 1 0%

Page 134: Zoltán J. Ács László Szerb Erkko Autio

Belgium World Rank 16 of 130 EuropeRegional Rank 11 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 11.1 million GDP per capita PPP $32,680Rank in Doing Business Index 2013 36 / 189Rank in Global Competitiveness Index 2013-2014 18 / 144Rank in Economic Freedom Index 2013 35 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEIscore

65.5 65.564.5 64.588.8 88.8

7. Technology Absorption 0.46 0 25%4. Networking 0.46 0 25%2. Startup Skills 0.52 1 18%12. High Growth 0.63 1 8%1. Opportunity Perception 0.63 1 7%6. Opportunity Startup 0.64 1 7%5. Cultural Support 0.64 1 6%3. Risk Acceptance 0.66 1 4%10. Product Innovation 0.73 1 0%14. Risk Capital 0.77 1 0%11. Process Innovation 0.80 1 0%9. Competition 0.82 1 0%8. Human Capital 0.87 1 0%13. Internationalization 0.96 1 0%

Page 135: Zoltán J. Ács László Szerb Erkko Autio

Benin World Rank 102 of 130 Sub-Saharan AfricaRegional Rank 10 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 10.1 million GDP per capita PPP $1,364 Rank in Doing Business Index 2013 174 / 189 Rank in Global Competitiveness Index 2013-2014 - / 144 Rank in Economic Freedom Index 2013 113 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

25.6 25.665.9 65.933.7 33.7

4. Networking 0.04 0 24%2. Startup Skills 0.11 0 17%3. Risk Acceptance 0.12 0 15%14. Risk Capital 0.18 0 10%11. Process Innovation 0.18 0 10%6. Opportunity Startup 0.19 0 9%1. Opportunity Perception 0.19 0 9%5. Cultural Support 0.21 0 7%8. Human Capital 0.28 0 0%13. Internationalization 0.33 0 0%9. Competition 0.34 0 0%10. Product Innovation 0.37 0 0%12. High Growth 0.63 1 0%7. Technology Absorption 1.00 1 0%

Page 136: Zoltán J. Ács László Szerb Erkko Autio

Bolivia World Rank 92 of 130 South and Central

America / Caribbean Regional Rank 17 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 10.5 million GDP per capita PPP $4,552 Rank in Doing Business Index 2013 162 / 189 Rank in Global Competitiveness Index 2013-2014 105 / 144 Rank in Economic Freedom Index 2013 158 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

28.0 28.061.5 61.546.2 46.2

7. Technology Absorption 0.14 0 17%11. Process Innovation 0.14 0 17%13. Internationalization 0.15 0 16%3. Risk Acceptance 0.17 0 14%8. Human Capital 0.21 0 11%12. High Growth 0.25 0 8%14. Risk Capital 0.27 0 6%5. Cultural Support 0.27 0 6%10. Product Innovation 0.29 0 5%6. Opportunity Startup 0.35 0 0%9. Competition 0.38 0 0%4. Networking 0.48 0 0%1. Opportunity Perception 0.50 1 0%2. Startup Skills 0.62 1 0%

Page 137: Zoltán J. Ács László Szerb Erkko Autio

Bosnia World Rank 83 of 130 EuropeRegional Rank 39 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 3.8 million GDP per capita PPP $7,356 Rank in Doing Business Index 2013 131 / 189 Rank in Global Competitiveness Index 2013-2014 - / 144 Rank in Economic Freedom Index 2013 101 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

28.9 28.962.0 62.048.4 48.4

11. Process Innovation 0.08 0 25%6. Opportunity Startup 0.11 0 22%3. Risk Acceptance 0.14 0 18%1. Opportunity Perception 0.15 0 18%10. Product Innovation 0.21 0 11%8. Human Capital 0.25 0 6%7. Technology Absorption 0.38 0 0%2. Startup Skills 0.39 0 0%9. Competition 0.43 0 0%14. Risk Capital 0.44 0 0%5. Cultural Support 0.45 0 0%13. Internationalization 0.51 1 0%12. High Growth 0.51 1 0%4. Networking 0.57 1 0%

Page 138: Zoltán J. Ács László Szerb Erkko Autio

Botswana World Rank 66 of 130 Sub-Saharan AfricaRegional Rank 2 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 2.0 million GDP per capita PPP $14,109 Rank in Doing Business Index 2013 56 / 189 Rank in Global Competitiveness Index 2013-2014 74 / 144 Rank in Economic Freedom Index 2013 27 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

33.0 33.070.4 70.447.8 47.8

2. Startup Skills 0.09 0 29%4. Networking 0.15 0 21%14. Risk Capital 0.16 0 21%10. Product Innovation 0.24 0 11%7. Technology Absorption 0.28 0 8%11. Process Innovation 0.28 0 7%13. Internationalization 0.33 0 2%8. Human Capital 0.34 0 1%6. Opportunity Startup 0.39 0 0%9. Competition 0.45 0 0%1. Opportunity Perception 0.52 1 0%12. High Growth 0.62 1 0%3. Risk Acceptance 0.72 1 0%5. Cultural Support 0.80 1 0%

Page 139: Zoltán J. Ács László Szerb Erkko Autio

Brazil World Rank 100 of 130 South and Central

America / Caribbean Regional Rank 19 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 198.7 million GDP per capita PPP $10,264 Rank in Doing Business Index 2013 116 / 189 Rank in Global Competitiveness Index 2013-2014 57 / 144 Rank in Economic Freedom Index 2013 114 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

25.8 25.848.2 48.264.7 64.7

10. Product Innovation 0.00 30%13. Internationalization 0.01 30%11. Process Innovation 0.08 22%8. Human Capital 0.15 13%12. High Growth 0.22 4%6. Opportunity Startup 0.27 0%14. Risk Capital 0.28 0%7. Technology Absorption 0.34 0%2. Startup Skills 0.38 0%3. Risk Acceptance 0.38 0%9. Competition 0.45 0%4. Networking 0.49 0%5. Cultural Support 0.52 0%1. Opportunity Perception 1.00 0%

Page 140: Zoltán J. Ács László Szerb Erkko Autio

Brunei Darussalam 60 of 130 Asia-Pacific

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 0.4 million GDP per capita PPP $45,979 Rank in Doing Business Index 2013 59 / 189 Rank in Global Competitiveness Index 2013-2014 - / 144 Rank in Economic Freedom Index 2013 40 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

36.9 36.962.7 62.759.4 59.4

11. Process Innovation 0.10 35%13. Internationalization 0.24 19%1. Opportunity Perception 0.24 18%2. Startup Skills 0.24 18%10. Product Innovation 0.31 10%9. Competition 0.39 0%6. Opportunity Startup 0.39 0%5. Cultural Support 0.50 0%12. High Growth 0.52 0%7. Technology Absorption 0.53 0%14. Risk Capital 0.54 0%8. Human Capital 0.57 0%3. Risk Acceptance 0.67 0%4. Networking 0.69 0%

Regional Rank 8 of 21 World Rank

Page 141: Zoltán J. Ács László Szerb Erkko Autio

Bulgaria World Rank 44 of 130 EuropeRegional Rank 26 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 7.3 million GDP per capita PPP $12,176 Rank in Doing Business Index 2013 58 / 189 Rank in Global Competitiveness Index 2013-2014 54 / 144 Rank in Economic Freedom Index 2013 61 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

42.7 42.769.5 69.556.7 56.7

7. Technology Absorption 0.29 18%14. Risk Capital 0.31 17%13. Internationalization 0.33 14%10. Product Innovation 0.34 14%12. High Growth 0.34 13%9. Competition 0.39 10%3. Risk Acceptance 0.42 7%5. Cultural Support 0.42 7%8. Human Capital 0.49 1%4. Networking 0.51 0%6. Opportunity Startup 0.52 0%11. Process Innovation 0.56 0%1. Opportunity Perception 0.56 0%2. Startup Skills 0.75 0%

Page 142: Zoltán J. Ács László Szerb Erkko Autio

Burkina Faso World Rank 114 of 130 Sub-Saharan AfricaRegional Rank 19 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 16.5 million GDP per capita PPP $1,298 Rank in Doing Business Index 2013 154 / 189 Rank in Global Competitiveness Index 2013-2014 135 / 144 Rank in Economic Freedom Index 2013 98 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

22.1 22.164.1 64.132.1 32.1

2. Startup Skills 0.03 24%4. Networking 0.04 23%1. Opportunity Perception 0.12 16%3. Risk Acceptance 0.13 15%5. Cultural Support 0.18 11%9. Competition 0.23 5%13. Internationalization 0.27 3%12. High Growth 0.27 2%14. Risk Capital 0.28 1%11. Process Innovation 0.29 1%8. Human Capital 0.30 0%10. Product Innovation 0.33 0%6. Opportunity Startup 0.38 0%7. Technology Absorption 0.51 0%

Page 143: Zoltán J. Ács László Szerb Erkko Autio

Burundi World Rank 124 of 130 Sub-Saharan AfricaRegional Rank 25 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 9.8 million GDP per capita PPP $0,483 Rank in Doing Business Index 2013 140 / 189 Rank in Global Competitiveness Index 2013-2014 139 / 144 Rank in Economic Freedom Index 2013 141 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

18.4 18.464.1 64.125.6 25.6

4. Networking 0.02 20%2. Startup Skills 0.02 20%1. Opportunity Perception 0.04 19%3. Risk Acceptance 0.05 17%5. Cultural Support 0.08 15%14. Risk Capital 0.20 4%13. Internationalization 0.21 3%11. Process Innovation 0.22 3%10. Product Innovation 0.25 0%12. High Growth 0.26 0%8. Human Capital 0.27 0%9. Competition 0.31 0%6. Opportunity Startup 0.37 0%7. Technology Absorption 0.49 0%

Page 144: Zoltán J. Ács László Szerb Erkko Autio

Cambodia World Rank 98 of 130 Asia-PacificRegional Rank 16 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 14.9 million GDP per capita PPP $2,150Rank in Doing Business Index 2013 137 / 189 Rank in Global Competitiveness Index 2013-2014 95 / 144 Rank in Economic Freedom Index 2013 108 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

26.3 26.370.1 70.136.0 36.0

4. Networking 0.05 21%3. Risk Acceptance 0.05 21%5. Cultural Support 0.10 16%1. Opportunity Perception 0.12 14%2. Startup Skills 0.15 12%6. Opportunity Startup 0.17 10%11. Process Innovation 0.18 8%12. High Growth 0.37 0%10. Product Innovation 0.38 0%13. Internationalization 0.42 0%14. Risk Capital 0.46 0%9. Competition 0.48 0%8. Human Capital 0.57 0%7. Technology Absorption 0.64 0%

Page 145: Zoltán J. Ács László Szerb Erkko Autio

Cameroon World Rank 115 of 130 Sub-Saharan AfricaRegional Rank 20 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 21.7 million GDP per capita PPP $2,025 Rank in Doing Business Index 2013 168 / 189 Rank in Global Competitiveness Index 2013-2014 116 / 144 Rank in Economic Freedom Index 2013 136 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

22.0 22.062.4 62.437.6 37.6

4. Networking 0.07 19%2. Startup Skills 0.12 16%3. Risk Acceptance 0.14 14%5. Cultural Support 0.16 11%14. Risk Capital 0.19 9%6. Opportunity Startup 0.20 9%11. Process Innovation 0.21 8%8. Human Capital 0.22 7%13. Internationalization 0.23 6%1. Opportunity Perception 0.29 1%12. High Growth 0.32 0%10. Product Innovation 0.33 0%7. Technology Absorption 0.36 0%9. Competition 0.39 0%

Page 146: Zoltán J. Ács László Szerb Erkko Autio

Canada World Rank 2 of 130 North AmericaRegional Rank 2 of 3

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 34.8 million GDP per capita PPP $36,067 Rank in Doing Business Index 2013 19 / 189 Rank in Global Competitiveness Index 2013-2014 15 / 144 Rank in Economic Freedom Index 2013 6 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

81.5 81.578.9 78.985.6 85.6

2. Startup Skills 0.66 20%4. Networking 0.67 19%10. Product Innovation 0.69 17%11. Process Innovation 0.70 16%12. High Growth 0.75 12%7. Technology Absorption 0.83 6%6. Opportunity Startup 0.84 4%5. Cultural Support 0.86 3%3. Risk Acceptance 0.87 3%9. Competition 0.90 0%14. Risk Capital 0.93 0%8. Human Capital 0.95 0%13. Internationalization 1.00 0%1. Opportunity Perception 1.00 0%

Page 147: Zoltán J. Ács László Szerb Erkko Autio

Chad World Rank 126 of 130 Sub-Saharan AfricaRegional Rank 27 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 12.4 million GDP per capita PPP $1,870 Rank in Doing Business Index 2013 189 / 189 Rank in Global Competitiveness Index 2013-2014 143 / 144 Rank in Economic Freedom Index 2013 167 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

16.6 16.664.1 64.123.4 23.4

2. Startup Skills 0.02 19%4. Networking 0.03 18%3. Risk Acceptance 0.05 16%5. Cultural Support 0.07 14%6. Opportunity Startup 0.08 13%1. Opportunity Perception 0.09 13%11. Process Innovation 0.20 3%9. Competition 0.22 2%14. Risk Capital 0.23 1%13. Internationalization 0.24 0%12. High Growth 0.26 0%10. Product Innovation 0.26 0%8. Human Capital 0.29 0%7. Technology Absorption 0.48 0%

Page 148: Zoltán J. Ács László Szerb Erkko Autio

Chile World Rank 19 of 130 South and Central

America / Caribbean Regional Rank 1 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 17.5 million GDP per capita PPP $15,848 Rank in Doing Business Index 2013 34 / 189 Rank in Global Competitiveness Index 2013-2014 33 / 144 Rank in Economic Freedom Index 2013 7 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

63.2 63.281.4 81.469.9 69.9

11. Process Innovation 0.38 33%9. Competition 0.45 24%8. Human Capital 0.51 16%6. Opportunity Startup 0.53 13%7. Technology Absorption 0.57 9%14. Risk Capital 0.59 5%4. Networking 0.71 0%12. High Growth 0.72 0%5. Cultural Support 0.77 0%3. Risk Acceptance 0.79 0%13. Internationalization 0.86 0%2. Startup Skills 0.95 0%1. Opportunity Perception 1.00 0%10. Product Innovation 1.00 0%

Page 149: Zoltán J. Ács László Szerb Erkko Autio

China World Rank 61 of 130 Asia-Pacific

9 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 1350.7 million GDP per capita PPP $7,958 Rank in Doing Business Index 2013 96 / 189 Rank in Global Competitiveness Index 2013-2014 28 / 144 Rank in Economic Freedom Index 2013 137 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

36.4 36.459.7 59.761.8 61.8

2. Startup Skills 0.17 22%13. Internationalization 0.18 21%6. Opportunity Startup 0.20 19%7. Technology Absorption 0.23 17%3. Risk Acceptance 0.27 12%9. Competition 0.34 5%8. Human Capital 0.37 2%5. Cultural Support 0.39 0%12. High Growth 0.48 0%1. Opportunity Perception 0.52 0%14. Risk Capital 0.55 0%4. Networking 0.59 0%11. Process Innovation 0.62 0%10. Product Innovation 0.83 0%

Regional Rank

Page 150: Zoltán J. Ács László Szerb Erkko Autio

Colombia World Rank 36 of 130 South and Central

America / Caribbean Regional Rank 3 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 47.7 million GDP per capita PPP $9,143 Rank in Doing Business Index 2013 43 / 189 Rank in Global Competitiveness Index 2013-2014 66 / 144 Rank in Economic Freedom Index 2013 34 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

47.9 47.978.0 78.058.4 58.4

11. Process Innovation 0.19 42%4. Networking 0.36 15%7. Technology Absorption 0.36 15%5. Cultural Support 0.40 11%3. Risk Acceptance 0.42 8%14. Risk Capital 0.43 5%8. Human Capital 0.45 3%9. Competition 0.46 2%13. Internationalization 0.55 0%2. Startup Skills 0.55 0%6. Opportunity Startup 0.83 0%10. Product Innovation 0.89 0%12. High Growth 1.00 0%1. Opportunity Perception 1.00 0%

Page 151: Zoltán J. Ács László Szerb Erkko Autio

Costa Rica World Rank 55 of 130 South and Central

America / Caribbean Regional Rank 5 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 4.8 million GDP per capita PPP $11,156 Rank in Doing Business Index 2013 102 / 189 Rank in Global Competitiveness Index 2013-2014 51 / 144 Rank in Economic Freedom Index 2013 53 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

37.7 37.760.5 60.560.8 60.8

8. Human Capital 0.23 19%13. Internationalization 0.24 18%10. Product Innovation 0.24 18%14. Risk Capital 0.26 16%11. Process Innovation 0.29 14%7. Technology Absorption 0.32 11%12. High Growth 0.40 4%1. Opportunity Perception 0.45 0%9. Competition 0.46 0%6. Opportunity Startup 0.46 0%3. Risk Acceptance 0.52 0%4. Networking 0.53 0%5. Cultural Support 0.56 0%2. Startup Skills 0.64 0%

Page 152: Zoltán J. Ács László Szerb Erkko Autio

Côte d’Ivoire World Rank 107 of 130 Sub-Saharan AfricaRegional Rank 14 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 19.8 million GDP per capita PPP $1,757 Rank in Doing Business Index 2013 167 / 189 Rank in Global Competitiveness Index 2013-2014 115 / 144 Rank in Economic Freedom Index 2013 107 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

24.1 24.164.1 64.138.1 38.1

4. Networking 0.03 27%2. Startup Skills 0.07 23%5. Cultural Support 0.12 18%3. Risk Acceptance 0.13 17%11. Process Innovation 0.20 10%1. Opportunity Perception 0.24 6%9. Competition 0.30 0%12. High Growth 0.31 0%13. Internationalization 0.32 0%6. Opportunity Startup 0.32 0%14. Risk Capital 0.34 0%10. Product Innovation 0.35 0%8. Human Capital 0.44 0%7. Technology Absorption 0.60 0%

Page 153: Zoltán J. Ács László Szerb Erkko Autio

Croatia World Rank 51 of 130 EuropeRegional Rank 31 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 4.3 million GDP per capita PPP $16,002 Rank in Doing Business Index 2013 89 / 189 Rank in Global Competitiveness Index 2013-2014 77 / 144 Rank in Economic Freedom Index 2013 87 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

40.6 40.664.3 64.358.4 58.4

1. Opportunity Perception 0.17 30%10. Product Innovation 0.22 24%8. Human Capital 0.27 18%6. Opportunity Startup 0.28 17%5. Cultural Support 0.32 12%4. Networking 0.42 0%3. Risk Acceptance 0.44 0%9. Competition 0.47 0%7. Technology Absorption 0.54 0%11. Process Innovation 0.56 0%2. Startup Skills 0.58 0%12. High Growth 0.63 0%14. Risk Capital 0.66 0%13. Internationalization 0.93 0%

Page 154: Zoltán J. Ács László Szerb Erkko Autio

Cyprus World Rank 46 of 130 EuropeRegional Rank 28 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 1.1 million GDP per capita PPP $23,452 Rank in Doing Business Index 2013 39 / 189 Rank in Global Competitiveness Index 2013-2014 58 / 144 Rank in Economic Freedom Index 2013 46 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

42.5 42.562.9 62.965.0 65.0

5. Cultural Support 0.16 35%1. Opportunity Perception 0.21 30%8. Human Capital 0.28 19%4. Networking 0.39 6%11. Process Innovation 0.39 5%2. Startup Skills 0.41 4%9. Competition 0.44 0%3. Risk Acceptance 0.48 0%14. Risk Capital 0.50 0%10. Product Innovation 0.54 0%12. High Growth 0.61 0%6. Opportunity Startup 0.62 0%7. Technology Absorption 0.75 0%13. Internationalization 1.00 0%

Page 155: Zoltán J. Ács László Szerb Erkko Autio

Czech Republic World Rank 35 of 130 EuropeRegional Rank 22 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 10.5 million GDP per capita PPP $23,824 Rank in Doing Business Index 2013 75 / 189 Rank in Global Competitiveness Index 2013-2014 37 / 144 Rank in Economic Freedom Index 2013 26 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

48.9 48.964.5 64.571.5 71.5

5. Cultural Support 0.20 44%8. Human Capital 0.26 35%1. Opportunity Perception 0.34 21%6. Opportunity Startup 0.47 0%9. Competition 0.48 0%4. Networking 0.49 0%2. Startup Skills 0.57 0%3. Risk Acceptance 0.64 0%14. Risk Capital 0.64 0%10. Product Innovation 0.65 0%7. Technology Absorption 0.65 0%12. High Growth 0.75 0%11. Process Innovation 0.87 0%13. Internationalization 1.00 0%

Page 156: Zoltán J. Ács László Szerb Erkko Autio

Denmark World Rank 6 of 130 EuropeRegional Rank 3 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 5.6 million GDP per capita PPP $32,291 Rank in Doing Business Index 2013 5 / 189 Rank in Global Competitiveness Index 2013-2014 13 / 144 Rank in Economic Freedom Index 2013 10 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

71.4 71.472.5 72.590.6 90.6

5. Cultural Support 0.37 60%2. Startup Skills 0.52 27%13. Internationalization 0.58 13%1. Opportunity Perception 0.70 0%12. High Growth 0.74 0%3. Risk Acceptance 0.78 0%11. Process Innovation 0.80 0%4. Networking 0.84 0%14. Risk Capital 0.91 0%7. Technology Absorption 0.98 0%8. Human Capital 1.00 0%6. Opportunity Startup 1.00 0%9. Competition 1.00 0%10. Product Innovation 1.00 0%

Page 157: Zoltán J. Ács László Szerb Erkko Autio

Dominican Republic World Rank 77 of 130 South and Central

America / Caribbean Regional Rank 11 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 10.3 million GDP per capita PPP $8,794 Rank in Doing Business Index 2013 117 / 189 Rank in Global Competitiveness Index 2013-2014 101 / 144 Rank in Economic Freedom Index 2013 80 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

30.6 30.667.5 67.547.5 47.5

7. Technology Absorption 0.08 29%14. Risk Capital 0.11 26%11. Process Innovation 0.13 24%6. Opportunity Startup 0.26 9%10. Product Innovation 0.28 7%3. Risk Acceptance 0.29 6%5. Cultural Support 0.34 0%9. Competition 0.34 0%13. Internationalization 0.40 0%12. High Growth 0.45 0%8. Human Capital 0.50 0%2. Startup Skills 0.56 0%1. Opportunity Perception 0.56 0%4. Networking 0.64 0%

Page 158: Zoltán J. Ács László Szerb Erkko Autio

Ecuador World Rank 90 of 130 South and Central

America / Caribbean Regional Rank 16 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 15.5 million GDP per capita PPP $8,443 Rank in Doing Business Index 2013 135 / 189 Rank in Global Competitiveness Index 2013-2014 - / 144 Rank in Economic Freedom Index 2013 159 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

28.2 28.259.7 59.750.5 50.5

13. Internationalization 0.05 27%14. Risk Capital 0.13 19%11. Process Innovation 0.16 15%7. Technology Absorption 0.17 14%12. High Growth 0.22 9%6. Opportunity Startup 0.22 9%3. Risk Acceptance 0.27 3%8. Human Capital 0.27 3%5. Cultural Support 0.35 0%4. Networking 0.35 0%9. Competition 0.57 0%10. Product Innovation 0.58 0%2. Startup Skills 0.62 0%1. Opportunity Perception 0.67 0%

Page 159: Zoltán J. Ács László Szerb Erkko Autio

Egypt World Rank 91 of 130 Middle East / North AfricaRegional Rank 14 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 80.7 million GDP per capita PPP $5,795 Rank in Doing Business Index 2013 128 / 189 Rank in Global Competitiveness Index 2013-2014 119 / 144 Rank in Economic Freedom Index 2013 135 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

28.1 28.159.3 59.349.8 49.8

6. Opportunity Startup 0.13 20%10. Product Innovation 0.17 17%8. Human Capital 0.18 16%13. Internationalization 0.22 12%9. Competition 0.23 12%7. Technology Absorption 0.25 9%3. Risk Acceptance 0.28 7%14. Risk Capital 0.28 6%2. Startup Skills 0.35 1%5. Cultural Support 0.36 0%11. Process Innovation 0.37 0%4. Networking 0.38 0%1. Opportunity Perception 0.51 0%12. High Growth 0.63 0%

Page 160: Zoltán J. Ács László Szerb Erkko Autio

El Salvador World Rank 81 of 130 South and Central

America / Caribbean Regional Rank 13 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 6.3 million GDP per capita PPP $6,125 Rank in Doing Business Index 2013 118 / 189 Rank in Global Competitiveness Index 2013-2014 84 / 144Rank in Economic Freedom Index 2013 59 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

29.6 29.662.0 62.048.2 48.2

11. Process Innovation 0.12 22%13. Internationalization 0.14 21%7. Technology Absorption 0.20 15%3. Risk Acceptance 0.25 11%6. Opportunity Startup 0.27 9%4. Networking 0.29 7%2. Startup Skills 0.29 7%14. Risk Capital 0.30 6%8. Human Capital 0.35 2%5. Cultural Support 0.36 0%1. Opportunity Perception 0.40 0%10. Product Innovation 0.50 0%9. Competition 0.50 0%12. High Growth 0.53 0%

Page 161: Zoltán J. Ács László Szerb Erkko Autio

Estonia World Rank 21 of 130 EuropeRegional Rank 14 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 1.3 million GDP per capita PPP $19,070 Rank in Doing Business Index 2013 22 / 189 Rank in Global Competitiveness Index 2013-2014 29 / 144 Rank in Economic Freedom Index 2013 11 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

60.2 60.271.3 71.371.7 71.7

14. Risk Capital 0.40 27%1. Opportunity Perception 0.40 27%8. Human Capital 0.55 12%3. Risk Acceptance 0.57 10%5. Cultural Support 0.57 9%10. Product Innovation 0.61 6%12. High Growth 0.61 5%6. Opportunity Startup 0.64 3%2. Startup Skills 0.65 2%9. Competition 0.68 0%7. Technology Absorption 0.74 0%4. Networking 0.80 0%11. Process Innovation 0.84 0%13. Internationalization 0.84 0%

Page 162: Zoltán J. Ács László Szerb Erkko Autio

Ethiopia World Rank 125 of 130 Sub-Saharan AfricaRegional Rank 26 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 91.7 million GDP per capita PPP $0,971 Rank in Doing Business Index 2013 125 / 189 Rank in Global Competitiveness Index 2013-2014 118 / 144 Rank in Economic Freedom Index 2013 151 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

17.2 17.266.2 66.230.9 30.9

4. Networking 0.03 17%13. Internationalization 0.03 17%3. Risk Acceptance 0.06 15%2. Startup Skills 0.10 12%14. Risk Capital 0.10 12%7. Technology Absorption 0.12 10%10. Product Innovation 0.13 8%8. Human Capital 0.19 4%1. Opportunity Perception 0.20 3%12. High Growth 0.22 2%9. Competition 0.31 0%5. Cultural Support 0.37 0%6. Opportunity Startup 0.38 0%11. Process Innovation 0.39 0%

Page 163: Zoltán J. Ács László Szerb Erkko Autio

Finland World Rank 14 of 130 EuropeRegional Rank 9 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 5.4 million GDP per capita PPP $31,611 Rank in Doing Business Index 2013 12 / 189 Rank in Global Competitiveness Index 2013-2014 4 / 144 Rank in Economic Freedom Index 2013 19 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

65.7 65.763.1 63.192.5 92.5

14. Risk Capital 0.41 30%9. Competition 0.46 25%8. Human Capital 0.51 19%12. High Growth 0.53 15%13. Internationalization 0.55 12%2. Startup Skills 0.71 0%1. Opportunity Perception 0.73 0%7. Technology Absorption 0.73 0%6. Opportunity Startup 0.77 0%3. Risk Acceptance 0.81 0%10. Product Innovation 0.91 0%11. Process Innovation 0.93 0%5. Cultural Support 0.96 0%4. Networking 1.00 0%

Page 164: Zoltán J. Ács László Szerb Erkko Autio

France World Rank 12 of 130 EuropeRegional Rank 7 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 65.7 million GDP per capita PPP $29,819Rank in Doing Business Index 2013 38 / 189Rank in Global Competitiveness Index 2013-2014 23 / 144Rank in Economic Freedom Index 2013 70 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

67.3 67.371.3 71.383.7 83.7

2. Startup Skills 0.41 45%1. Opportunity Perception 0.66 12%14. Risk Capital 0.66 12%12. High Growth 0.68 8%6. Opportunity Startup 0.69 8%3. Risk Acceptance 0.70 5%8. Human Capital 0.71 5%9. Competition 0.72 4%13. Internationalization 0.74 1%5. Cultural Support 0.74 0%4. Networking 0.76 0%11. Process Innovation 0.83 0%10. Product Innovation 0.85 0%7. Technology Absorption 0.94 0%

Page 165: Zoltán J. Ács László Szerb Erkko Autio

Gabon World Rank 93 of 130 Sub-Saharan AfricaRegional Rank 6 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 1.6 million GDP per capita PPP $13,811Rank in Doing Business Index 2013 163 / 189 Rank in Global Competitiveness Index 2013-2014 106 / 144 Rank in Economic Freedom Index 2013 105 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

27.7 27.766.3 66.340.3 40.3

2. Startup Skills 0.08 24%4. Networking 0.10 22%3. Risk Acceptance 0.15 17%10. Product Innovation 0.21 10%6. Opportunity Startup 0.22 10%14. Risk Capital 0.26 7%9. Competition 0.27 6%5. Cultural Support 0.27 5%8. Human Capital 0.32 0%12. High Growth 0.34 0%1. Opportunity Perception 0.41 0%13. Internationalization 0.43 0%11. Process Innovation 0.47 0%7. Technology Absorption 0.75 0%

Page 166: Zoltán J. Ács László Szerb Erkko Autio

Gambia World Rank 101 of 130 Sub-Saharan AfricaRegional Rank 9 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 1.8 million GDP per capita PPP $1,667 Rank in Doing Business Index 2013 150 / 189 Rank in Global Competitiveness Index 2013-2014 125 / 144 Rank in Economic Freedom Index 2013 92 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

25.6 25.664.1 64.141.1 41.1

2. Startup Skills 0.03 26%3. Risk Acceptance 0.05 24%5. Cultural Support 0.12 16%1. Opportunity Perception 0.12 15%4. Networking 0.15 13%11. Process Innovation 0.23 5%13. Internationalization 0.32 0%6. Opportunity Startup 0.34 0%12. High Growth 0.36 0%10. Product Innovation 0.39 0%14. Risk Capital 0.41 0%9. Competition 0.43 0%8. Human Capital 0.46 0%7. Technology Absorption 0.62 0%

Page 167: Zoltán J. Ács László Szerb Erkko Autio

Germany World Rank 11 of 130 EuropeRegional Rank 6 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 80.4 million GDP per capita PPP $35,453 Rank in Doing Business Index 2013 21 / 189 Rank in Global Competitiveness Index 2013-2014 5 / 144 Rank in Economic Freedom Index 2013 18 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

67.4 67.464.9 64.991.8 91.8

2. Startup Skills 0.44 33%4. Networking 0.57 19%8. Human Capital 0.62 13%1. Opportunity Perception 0.65 11%3. Risk Acceptance 0.66 10%13. Internationalization 0.67 9%14. Risk Capital 0.72 3%10. Product Innovation 0.73 2%7. Technology Absorption 0.76 0%5. Cultural Support 0.77 0%12. High Growth 0.78 0%6. Opportunity Startup 0.78 0%11. Process Innovation 0.83 0%9. Competition 0.93 0%

Page 168: Zoltán J. Ács László Szerb Erkko Autio

Ghana World Rank 105 of 130 Sub-Saharan AfricaRegional Rank 12 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 25.4 million GDP per capita PPP $1,764 Rank in Doing Business Index 2013 67 / 189Rank in Global Competitiveness Index 2013-2014 111 / 144 Rank in Economic Freedom Index 2013 66 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

24.8 24.862.4 62.447.0 47.0

8. Human Capital 0.07 21%10. Product Innovation 0.12 17%7. Technology Absorption 0.16 13%13. Internationalization 0.17 12%11. Process Innovation 0.18 11%14. Risk Capital 0.19 9%2. Startup Skills 0.20 8%12. High Growth 0.23 6%4. Networking 0.28 2%6. Opportunity Startup 0.34 0%3. Risk Acceptance 0.36 0%9. Competition 0.42 0%5. Cultural Support 0.60 0%1. Opportunity Perception 0.61 0%

Page 169: Zoltán J. Ács László Szerb Erkko Autio

Greece World Rank 47 of 130 EuropeRegional Rank 29 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 11.1 million GDP per capita PPP $21,275 Rank in Doing Business Index 2013 72 / 189 Rank in Global Competitiveness Index 2013-2014 81 / 144 Rank in Economic Freedom Index 2013 119 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

42.0 42.062.3 62.364.0 64.0

1. Opportunity Perception 0.17 29%3. Risk Acceptance 0.19 27%12. High Growth 0.19 27%5. Cultural Support 0.33 10%10. Product Innovation 0.37 6%4. Networking 0.41 1%9. Competition 0.43 0%11. Process Innovation 0.51 0%6. Opportunity Startup 0.53 0%14. Risk Capital 0.61 0%8. Human Capital 0.63 0%13. Internationalization 0.64 0%7. Technology Absorption 0.65 0%2. Startup Skills 0.99 0%

Page 170: Zoltán J. Ács László Szerb Erkko Autio

Guatemala World Rank 122 of 130 South and Central

America / Caribbean Regional Rank 22 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 15.1 million GDP per capita PPP $4,397 Rank in Doing Business Index 2013 79 / 189 Rank in Global Competitiveness Index 2013-2014 78 / 144 Rank in Economic Freedom Index 2013 83 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

20.3 20.356.9 56.945.2 45.2

8. Human Capital 0.05 18%11. Process Innovation 0.06 17%7. Technology Absorption 0.08 15%12. High Growth 0.08 14%14. Risk Capital 0.09 14%13. Internationalization 0.15 9%3. Risk Acceptance 0.17 7%4. Networking 0.19 5%2. Startup Skills 0.24 0%5. Cultural Support 0.28 0%6. Opportunity Startup 0.29 0%1. Opportunity Perception 0.45 0%10. Product Innovation 0.52 0%9. Competition 0.57 0%

Page 171: Zoltán J. Ács László Szerb Erkko Autio

Guyana World Rank 127 of 130 South and Central

America / Caribbean Regional Rank 23 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 0.8 million GDP per capita PPP $2,930 Rank in Doing Business Index 2013 115 / 189 Rank in Global Competitiveness Index 2013-2014 117 / 144 Rank in Economic Freedom Index 2013 121 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

16.2 16.248.6 48.641.9 41.9

3. Risk Acceptance 0.06 14%13. Internationalization 0.07 14%11. Process Innovation 0.09 12%7. Technology Absorption 0.10 11%12. High Growth 0.12 9%8. Human Capital 0.12 9%14. Risk Capital 0.13 8%1. Opportunity Perception 0.14 8%2. Startup Skills 0.14 8%5. Cultural Support 0.18 5%6. Opportunity Startup 0.21 3%9. Competition 0.24 0%10. Product Innovation 0.30 0%4. Networking 0.52 0%

Page 172: Zoltán J. Ács László Szerb Erkko Autio

Honduras World Rank 80 of 130 South and Central

America / Caribbean Regional Rank 12 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 7.9 million GDP per capita PPP $3,657 Rank in Doing Business Index 2013 127 / 189 Rank in Global Competitiveness Index 2013-2014 100 / 144 Rank in Economic Freedom Index 2013 112 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

29.8 29.864.0 64.041.1 41.1

5. Cultural Support 0.07 23%11. Process Innovation 0.08 22%2. Startup Skills 0.11 19%3. Risk Acceptance 0.13 17%4. Networking 0.17 13%1. Opportunity Perception 0.22 7%6. Opportunity Startup 0.33 0%9. Competition 0.36 0%13. Internationalization 0.40 0%14. Risk Capital 0.42 0%10. Product Innovation 0.44 0%12. High Growth 0.44 0%8. Human Capital 0.80 0%7. Technology Absorption 0.81 0%

Page 173: Zoltán J. Ács László Szerb Erkko Autio

Hong Kong World Rank 40 of 130 Asia-PacificRegional Rank 6 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 7.2 million GDP per capita PPP $44,770Rank in Doing Business Index 2013 2 / 189 Rank in Global Competitiveness Index 2013-2014 7 / 144 Rank in Economic Freedom Index 2013 1 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

45.9 45.959.2 59.285.1 85.1

9. Competition 0.11 49%2. Startup Skills 0.22 26%7. Technology Absorption 0.27 15%1. Opportunity Perception 0.30 11%11. Process Innovation 0.49 0%5. Cultural Support 0.55 0%4. Networking 0.57 0%8. Human Capital 0.66 0%13. Internationalization 0.76 0%6. Opportunity Startup 0.77 0%14. Risk Capital 0.78 0%3. Risk Acceptance 0.81 0%12. High Growth 0.85 0%10. Product Innovation 1.00 0%

Page 174: Zoltán J. Ács László Szerb Erkko Autio

Hungary World Rank 45 of 130 EuropeRegional Rank 27 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 9.9 million GDP per capita PPP $17,073 Rank in Doing Business Index 2013 54 / 189 Rank in Global Competitiveness Index 2013-2014 60 / 144 Rank in Economic Freedom Index 2013 51 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

42.7 42.758.1 58.167.1 67.1

1. Opportunity Perception 0.20 32%10. Product Innovation 0.28 23%9. Competition 0.31 20%14. Risk Capital 0.39 11%5. Cultural Support 0.44 7%11. Process Innovation 0.46 3%8. Human Capital 0.47 2%2. Startup Skills 0.49 1%6. Opportunity Startup 0.51 0%7. Technology Absorption 0.54 0%4. Networking 0.55 0%3. Risk Acceptance 0.55 0%12. High Growth 0.56 0%13. Internationalization 0.81 0%

Page 175: Zoltán J. Ács László Szerb Erkko Autio

Iceland World Rank 7 of 130 EuropeRegional Rank 4 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 0.3 million GDP per capita PPP $33,819 Rank in Doing Business Index 2013 13 / 189 Rank in Global Competitiveness Index 2013-2014 30 / 144 Rank in Economic Freedom Index 2013 23 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

70.4 70.478.7 78.777.8 77.8

1. Opportunity Perception 0.44 33%14. Risk Capital 0.50 24%8. Human Capital 0.53 20%9. Competition 0.53 20%5. Cultural Support 0.67 3%10. Product Innovation 0.69 0%12. High Growth 0.70 0%2. Startup Skills 0.89 0%3. Risk Acceptance 0.91 0%13. Internationalization 0.91 0%11. Process Innovation 0.94 0%6. Opportunity Startup 1.00 0%7. Technology Absorption 1.00 0%4. Networking 1.00 0%

Page 176: Zoltán J. Ács László Szerb Erkko Autio

India World Rank 104 of 130 Asia-PacificRegional Rank 17 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 1236.7 million GDP per capita PPP $3,390 Rank in Doing Business Index 2013 134 / 189 Rank in Global Competitiveness Index 2013-2014 71 / 144Rank in Economic Freedom Index 2013 120 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

25.3 25.356.5 56.553.6 53.6

6. Opportunity Startup 0.11 17%7. Technology Absorption 0.11 17%12. High Growth 0.11 16%14. Risk Capital 0.12 16%13. Internationalization 0.12 15%4. Networking 0.14 14%2. Startup Skills 0.26 4%3. Risk Acceptance 0.28 2%8. Human Capital 0.29 0%5. Cultural Support 0.30 0%1. Opportunity Perception 0.38 0%10. Product Innovation 0.38 0%11. Process Innovation 0.64 0%9. Competition 0.69 0%

Page 177: Zoltán J. Ács László Szerb Erkko Autio

Indonesia World Rank 120 of 130 Asia-PacificRegional Rank 19 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 246.9 million GDP per capita PPP $4,272 Rank in Doing Business Index 2013 120 / 189 Rank in Global Competitiveness Index 2013-2014 34 / 144 Rank in Economic Freedom Index 2013 100 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

21.0 21.055.1 55.154.4 54.4

13. Internationalization 0.01 28%12. High Growth 0.04 24%8. Human Capital 0.14 14%14. Risk Capital 0.15 14%10. Product Innovation 0.21 7%7. Technology Absorption 0.22 7%3. Risk Acceptance 0.24 4%11. Process Innovation 0.25 3%4. Networking 0.29 0%5. Cultural Support 0.30 0%6. Opportunity Startup 0.31 0%9. Competition 0.33 0%2. Startup Skills 0.35 0%1. Opportunity Perception 0.56 0%

Page 178: Zoltán J. Ács László Szerb Erkko Autio

Iran World Rank 94 of 130 Middle East / North AfricaRegional Rank 15 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 76.4 million GDP per capita PPP $10,754Rank in Doing Business Index 2013 152 / 189 Rank in Global Competitiveness Index 2013-2014 83 / 144Rank in Economic Freedom Index 2013 173 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEIscore

27.7 27.755.9 55.948.1 48.1

13. Internationalization 0.07 27%10. Product Innovation 0.12 20%3. Risk Acceptance 0.15 18%9. Competition 0.19 13%5. Cultural Support 0.20 13%6. Opportunity Startup 0.26 6%4. Networking 0.30 2%11. Process Innovation 0.32 0%7. Technology Absorption 0.37 0%14. Risk Capital 0.37 0%8. Human Capital 0.38 0%12. High Growth 0.44 0%1. Opportunity Perception 0.59 0%2. Startup Skills 0.67 0%

Page 179: Zoltán J. Ács László Szerb Erkko Autio

Ireland World Rank 17 of 130 EuropeRegional Rank 12 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 4.6 million GDP per capita PPP $36,102 Rank in Doing Business Index 2013 15 / 189 Rank in Global Competitiveness Index 2013-2014 25 / 144 Rank in Economic Freedom Index 2013 9 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

65.3 65.373.4 73.482.1 82.1

1. Opportunity Perception 0.30 100%14. Risk Capital 0.64 0%6. Opportunity Startup 0.66 0%10. Product Innovation 0.70 0%2. Startup Skills 0.71 0%11. Process Innovation 0.71 0%5. Cultural Support 0.72 0%4. Networking 0.74 0%3. Risk Acceptance 0.75 0%12. High Growth 0.86 0%9. Competition 0.87 0%7. Technology Absorption 0.89 0%13. Internationalization 0.90 0%8. Human Capital 0.97 0%

Page 180: Zoltán J. Ács László Szerb Erkko Autio

Israel World Rank 22 of 130 Middle East / North AfricaRegional Rank 2 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 7.9 million GDP per capita PPP $27,882 Rank in Doing Business Index 2013 35 / 189 Rank in Global Competitiveness Index 2013-2014 27 / 144 Rank in Economic Freedom Index 2013 44 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

59.9 59.971.9 71.978.9 78.9

9. Competition 0.30 52%2. Startup Skills 0.43 28%6. Opportunity Startup 0.50 15%3. Risk Acceptance 0.55 6%5. Cultural Support 0.63 0%12. High Growth 0.63 0%1. Opportunity Perception 0.65 0%13. Internationalization 0.68 0%4. Networking 0.70 0%8. Human Capital 0.77 0%7. Technology Absorption 0.78 0%14. Risk Capital 0.97 0%10. Product Innovation 1.00 0%11. Process Innovation 1.00 0%

Page 181: Zoltán J. Ács László Szerb Erkko Autio

Italy World Rank 49 of 130 EuropeRegional Rank 30 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 59.5 million GDP per capita PPP $26,920Rank in Doing Business Index 2013 65 / 189Rank in Global Competitiveness Index 2013-2014 49 / 144Rank in Economic Freedom Index 2013 86 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

41.3 41.358.5 58.570.8 70.8

8. Human Capital 0.15 38%12. High Growth 0.24 25%4. Networking 0.30 16%1. Opportunity Perception 0.33 12%2. Startup Skills 0.39 4%5. Cultural Support 0.40 4%3. Risk Acceptance 0.42 0%9. Competition 0.45 0%13. Internationalization 0.53 0%6. Opportunity Startup 0.53 0%14. Risk Capital 0.58 0%7. Technology Absorption 0.70 0%11. Process Innovation 0.74 0%10. Product Innovation 0.90 0%

Page 182: Zoltán J. Ács László Szerb Erkko Autio

Jamaica World Rank 97 of 130 South and Central

America / Caribbean Regional Rank 18 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 2.7 million GDP per capita PPP $7,528 Rank in Doing Business Index 2013 94 / 189 Rank in Global Competitiveness Index 2013-2014 86 / 144 Rank in Economic Freedom Index 2013 56 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

27.2 27.260.4 60.451.1 51.1

12. High Growth 0.09 23%7. Technology Absorption 0.09 22%14. Risk Capital 0.12 19%11. Process Innovation 0.12 19%10. Product Innovation 0.18 13%3. Risk Acceptance 0.29 3%8. Human Capital 0.33 0%1. Opportunity Perception 0.33 0%13. Internationalization 0.38 0%5. Cultural Support 0.42 0%9. Competition 0.42 0%6. Opportunity Startup 0.43 0%2. Startup Skills 0.43 0%4. Networking 0.59 0%

Page 183: Zoltán J. Ács László Szerb Erkko Autio

Japan World Rank 33 of 130 Asia-PacificRegional Rank 5 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 127.6 million GDP per capita PPP $31,429 Rank in Doing Business Index 2013 27 / 189 Rank in Global Competitiveness Index 2013-2014 6 / 144 Rank in Economic Freedom Index 2013 25 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

49.5 49.558.0 58.090.5 90.5

2. Startup Skills 0.12 56%1. Opportunity Perception 0.20 40%4. Networking 0.34 5%5. Cultural Support 0.43 0%9. Competition 0.43 0%13. Internationalization 0.55 0%6. Opportunity Startup 0.57 0%14. Risk Capital 0.59 0%3. Risk Acceptance 0.68 0%8. Human Capital 0.88 0%10. Product Innovation 0.98 0%12. High Growth 1.00 0%7. Technology Absorption 1.00 0%11. Process Innovation 1.00 0%

Page 184: Zoltán J. Ács László Szerb Erkko Autio

Jordan World Rank 65 of 130 Middle East / North AfricaRegional Rank 10 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 6.3 million GDP per capita PPP $5,289 Rank in Doing Business Index 2013 119 / 189 Rank in Global Competitiveness Index 2013-2014 64 / 144 Rank in Economic Freedom Index 2013 39 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

33.3 33.360.7 60.760.3 60.3

7. Technology Absorption 0.11 34%6. Opportunity Startup 0.26 16%8. Human Capital 0.26 16%13. Internationalization 0.27 15%14. Risk Capital 0.33 8%9. Competition 0.37 4%11. Process Innovation 0.37 4%3. Risk Acceptance 0.38 2%10. Product Innovation 0.44 0%12. High Growth 0.48 0%2. Startup Skills 0.48 0%4. Networking 0.48 0%1. Opportunity Perception 0.51 0%5. Cultural Support 0.54 0%

Page 185: Zoltán J. Ács László Szerb Erkko Autio

Kazakhstan World Rank 88 of 130 Asia-PacificRegional Rank 14 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 16.8 million GDP per capita PPP $11,978 Rank in Doing Business Index 2013 50 / 189 Rank in Global Competitiveness Index 2013-2014 50 / 144 Rank in Economic Freedom Index 2013 67 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

28.4 28.458.5 58.549.5 49.5

10. Product Innovation 0.06 27%14. Risk Capital 0.14 17%11. Process Innovation 0.18 13%3. Risk Acceptance 0.19 13%9. Competition 0.20 12%7. Technology Absorption 0.22 10%13. Internationalization 0.23 8%5. Cultural Support 0.30 1%2. Startup Skills 0.34 0%12. High Growth 0.43 0%6. Opportunity Startup 0.45 0%1. Opportunity Perception 0.51 0%4. Networking 0.63 0%8. Human Capital 0.69 0%

Page 186: Zoltán J. Ács László Szerb Erkko Autio

Kenya World Rank 86 of 130 Sub-Saharan AfricaRegional Rank 5 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 43.2 million GDP per capita PPP $1,522 Rank in Doing Business Index 2013 129 / 189 Rank in Global Competitiveness Index 2013-2014 90 / 144 Rank in Economic Freedom Index 2013 111 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

28.5 28.564.1 64.145.9 45.9

2. Startup Skills 0.03 34%5. Cultural Support 0.12 23%3. Risk Acceptance 0.13 21%1. Opportunity Perception 0.14 21%13. Internationalization 0.30 1%6. Opportunity Startup 0.33 0%4. Networking 0.36 0%12. High Growth 0.37 0%9. Competition 0.39 0%8. Human Capital 0.43 0%11. Process Innovation 0.43 0%10. Product Innovation 0.45 0%14. Risk Capital 0.55 0%7. Technology Absorption 0.61 0%

Page 187: Zoltán J. Ács László Szerb Erkko Autio

Korea World Rank 28 of 130 Asia-PacificRegional Rank 4 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 50.0 million GDP per capita PPP $27,991 Rank in Doing Business Index 2013 7 / 189 Rank in Global Competitiveness Index 2013-2014 26 / 144 Rank in Economic Freedom Index 2013 31 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

54.1 54.161.7 61.781.7 81.7

9. Competition 0.22 53%1. Opportunity Perception 0.27 43%13. Internationalization 0.48 2%5. Cultural Support 0.48 2%6. Opportunity Startup 0.58 0%2. Startup Skills 0.60 0%3. Risk Acceptance 0.62 0%12. High Growth 0.64 0%4. Networking 0.68 0%8. Human Capital 0.82 0%10. Product Innovation 0.82 0%14. Risk Capital 0.83 0%7. Technology Absorption 0.87 0%11. Process Innovation 0.89 0%

Page 188: Zoltán J. Ács László Szerb Erkko Autio

Kuwait World Rank 37 of 130 Middle East / North AfricaRegional Rank 5 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 3.3 million GDP per capita PPP $40,637 Rank in Doing Business Index 2013 104 / 189 Rank in Global Competitiveness Index 2013-2014 40 / 144 Rank in Economic Freedom Index 2013 76 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

47.7 47.777.0 77.056.1 56.1

11. Process Innovation 0.18 32%2. Startup Skills 0.19 32%5. Cultural Support 0.30 17%12. High Growth 0.34 11%6. Opportunity Startup 0.36 7%3. Risk Acceptance 0.40 1%10. Product Innovation 0.53 0%9. Competition 0.65 0%1. Opportunity Perception 0.68 0%8. Human Capital 0.68 0%14. Risk Capital 0.73 0%4. Networking 0.78 0%13. Internationalization 0.99 0%7. Technology Absorption 1.00 0%

Page 189: Zoltán J. Ács László Szerb Erkko Autio

Lao PDR World Rank 72 of 130 Asia-PacificRegional Rank 12 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 6.6 million GDP per capita PPP $2,522 Rank in Doing Business Index 2013 159 / 189 Rank in Global Competitiveness Index 2013-2014 93 / 144Rank in Economic Freedom Index 2013 144 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

31.1 31.170.1 70.145.7 45.7

3. Risk Acceptance 0.05 25%11. Process Innovation 0.11 18%4. Networking 0.11 18%5. Cultural Support 0.15 15%2. Startup Skills 0.16 13%1. Opportunity Perception 0.17 11%12. High Growth 0.37 0%6. Opportunity Startup 0.40 0%10. Product Innovation 0.41 0%9. Competition 0.59 0%13. Internationalization 0.60 0%8. Human Capital 0.60 0%7. Technology Absorption 0.63 0%14. Risk Capital 0.72 0%

Page 190: Zoltán J. Ács László Szerb Erkko Autio

Latvia World Rank 27 of 130 EuropeRegional Rank 18 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 2.0 million GDP per capita PPP $15,757 Rank in Doing Business Index 2013 24 / 189 Rank in Global Competitiveness Index 2013-2014 42 / 144 Rank in Economic Freedom Index 2013 42 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

54.5 54.571.8 71.863.7 63.7

1. Opportunity Perception 0.31 30%11. Process Innovation 0.41 20%5. Cultural Support 0.42 18%10. Product Innovation 0.47 14%3. Risk Acceptance 0.51 10%9. Competition 0.53 8%8. Human Capital 0.60 0%14. Risk Capital 0.61 0%7. Technology Absorption 0.63 0%6. Opportunity Startup 0.64 0%4. Networking 0.64 0%2. Startup Skills 0.67 0%13. Internationalization 0.78 0%12. High Growth 1.00 0%

Page 191: Zoltán J. Ács László Szerb Erkko Autio

Lebanon World Rank 50 of 130 Middle East / North AfricaRegional Rank 8 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 4.4 million GDP per capita PPP $12,592 Rank in Doing Business Index 2013 111 / 189 Rank in Global Competitiveness Index 2013-2014 113 / 144 Rank in Economic Freedom Index 2013 96 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

40.7 40.773.5 73.553.1 53.1

10. Product Innovation 0.25 17%7. Technology Absorption 0.26 16%14. Risk Capital 0.27 15%5. Cultural Support 0.29 14%11. Process Innovation 0.30 13%6. Opportunity Startup 0.34 10%3. Risk Acceptance 0.34 9%9. Competition 0.40 4%12. High Growth 0.42 2%8. Human Capital 0.46 0%13. Internationalization 0.63 0%1. Opportunity Perception 0.69 0%4. Networking 0.76 0%2. Startup Skills 0.79 0%

Page 192: Zoltán J. Ács László Szerb Erkko Autio

Liberia World Rank 103 of 130 Sub-Saharan AfricaRegional Rank 11 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 4.2 million GDP per capita PPP $0,560 Rank in Doing Business Index 2013 144 / 189 Rank in Global Competitiveness Index 2013-2014 - / 144 Rank in Economic Freedom Index 2013 138 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

25.5 25.564.1 64.137.5 37.5

4. Networking 0.05 25%3. Risk Acceptance 0.05 24%1. Opportunity Perception 0.10 19%2. Startup Skills 0.17 13%5. Cultural Support 0.18 11%13. Internationalization 0.20 10%12. High Growth 0.33 0%10. Product Innovation 0.33 0%9. Competition 0.37 0%8. Human Capital 0.38 0%6. Opportunity Startup 0.40 0%14. Risk Capital 0.41 0%11. Process Innovation 0.48 0%7. Technology Absorption 0.52 0%

Page 193: Zoltán J. Ács László Szerb Erkko Autio

Libya 73 of 130 Middle East / North Africa

Regional Rank 11 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 6.2 million GDP per capita PPP $10,073 Rank in Doing Business Index 2013 187 / 189 Rank in Global Competitiveness Index 2013-2014 126 / 144 Rank in Economic Freedom Index 2013 - / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

31.0 31.078.4 78.438.0 38.0

3. Risk Acceptance 0.06 29%4. Networking 0.11 23%5. Cultural Support 0.13 21%11. Process Innovation 0.15 18%10. Product Innovation 0.26 7%9. Competition 0.30 2%13. Internationalization 0.34 0%14. Risk Capital 0.38 0%6. Opportunity Startup 0.38 0%7. Technology Absorption 0.39 0%12. High Growth 0.52 0%1. Opportunity Perception 0.59 0%8. Human Capital 0.68 0%2. Startup Skills 0.79 0%

World Rank

Page 194: Zoltán J. Ács László Szerb Erkko Autio

Lithuania World Rank 26 of 130 EuropeRegional Rank 17 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 3.0 millionGDP per capita PPP $18,785 Rank in Doing Business Index 2013 17 / 189 Rank in Global Competitiveness Index 2013-2014 41 / 144 Rank in Economic Freedom Index 2013 21 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

54.6 54.669.0 69.069.1 69.1

1. Opportunity Perception 0.30 33%10. Product Innovation 0.36 24%9. Competition 0.38 23%5. Cultural Support 0.49 10%11. Process Innovation 0.49 8%3. Risk Acceptance 0.55 2%14. Risk Capital 0.59 0%2. Startup Skills 0.62 0%4. Networking 0.65 0%6. Opportunity Startup 0.67 0%7. Technology Absorption 0.69 0%13. Internationalization 0.80 0%8. Human Capital 0.84 0%12. High Growth 0.90 0%

Page 195: Zoltán J. Ács László Szerb Erkko Autio

Luxembourg World Rank 23 of 130 EuropeRegional Rank 15 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 0.5 million GDP per capita PPP $65,798 Rank in Doing Business Index 2013 60 / 189 Rank in Global Competitiveness Index 2013-2014 19 / 144 Rank in Economic Freedom Index 2013 16 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

57.2 57.277.0 77.076.1 76.1

2. Startup Skills 0.15 100%12. High Growth 0.42 0%1. Opportunity Perception 0.46 0%3. Risk Acceptance 0.52 0%6. Opportunity Startup 0.54 0%5. Cultural Support 0.68 0%14. Risk Capital 0.79 0%11. Process Innovation 0.80 0%4. Networking 0.90 0%9. Competition 0.92 0%8. Human Capital 0.98 0%10. Product Innovation 1.00 0%7. Technology Absorption 1.00 0%13. Internationalization 1.00 0%

Page 196: Zoltán J. Ács László Szerb Erkko Autio

Macedonia World Rank 58 of 130 EuropeRegional Rank 34 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 2.1 million GDP per capita PPP $9,323 Rank in Doing Business Index 2013 25 / 189 Rank in Global Competitiveness Index 2013-2014 63 / 144 Rank in Economic Freedom Index 2013 43 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

37.1 37.165.6 65.652.0 52.0

6. Opportunity Startup 0.22 20%3. Risk Acceptance 0.23 19%10. Product Innovation 0.24 18%1. Opportunity Perception 0.25 18%11. Process Innovation 0.31 12%7. Technology Absorption 0.40 4%5. Cultural Support 0.41 4%9. Competition 0.42 3%8. Human Capital 0.42 3%14. Risk Capital 0.44 1%2. Startup Skills 0.45 0%12. High Growth 0.51 0%4. Networking 0.56 0%13. Internationalization 0.64 0%

Page 197: Zoltán J. Ács László Szerb Erkko Autio

Madagascar World Rank 116 of 130 Sub-Saharan AfricaRegional Rank 21 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 22.3 million GDP per capita PPP $0,843 Rank in Doing Business Index 2013 148 / 189 Rank in Global Competitiveness Index 2013-2014 130 / 144 Rank in Economic Freedom Index 2013 79 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

22.0 22.064.1 64.133.4 33.4

4. Networking 0.03 22%2. Startup Skills 0.03 21%3. Risk Acceptance 0.05 19%5. Cultural Support 0.12 13%1. Opportunity Perception 0.14 12%14. Risk Capital 0.20 6%11. Process Innovation 0.21 5%13. Internationalization 0.26 1%9. Competition 0.32 0%12. High Growth 0.32 0%10. Product Innovation 0.37 0%8. Human Capital 0.38 0%6. Opportunity Startup 0.40 0%7. Technology Absorption 0.57 0%

Page 198: Zoltán J. Ács László Szerb Erkko Autio

Malawi World Rank 128 of 130 Sub-Saharan AfricaRegional Rank 28 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 15.9 million GDP per capita PPP $0,660 Rank in Doing Business Index 2013 171 / 189 Rank in Global Competitiveness Index 2013-2014 132 / 144 Rank in Economic Freedom Index 2013 124 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

15.6 15.659.5 59.533.9 33.9

2. Startup Skills 0.01 15%12. High Growth 0.02 15%8. Human Capital 0.03 13%14. Risk Capital 0.04 13%13. Internationalization 0.07 10%7. Technology Absorption 0.08 9%3. Risk Acceptance 0.09 9%4. Networking 0.10 8%6. Opportunity Startup 0.11 7%1. Opportunity Perception 0.14 3%5. Cultural Support 0.26 0%9. Competition 0.44 0%10. Product Innovation 0.53 0%11. Process Innovation 0.77 0%

Page 199: Zoltán J. Ács László Szerb Erkko Autio

Malaysia World Rank 53 of 130 Asia-PacificRegional Rank 7 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 29.2 million GDP per capita PPP $14,822 Rank in Doing Business Index 2013 6 / 189 Rank in Global Competitiveness Index 2013-2014 20 / 144 Rank in Economic Freedom Index 2013 37 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

40.0 40.056.4 56.476.5 76.5

7. Technology Absorption 0.16 24%12. High Growth 0.20 20%2. Startup Skills 0.21 19%13. Internationalization 0.25 14%14. Risk Capital 0.28 11%5. Cultural Support 0.28 11%10. Product Innovation 0.41 0%8. Human Capital 0.46 0%3. Risk Acceptance 0.56 0%1. Opportunity Perception 0.57 0%9. Competition 0.64 0%11. Process Innovation 0.65 0%4. Networking 0.82 0%6. Opportunity Startup 0.84 0%

Page 200: Zoltán J. Ács László Szerb Erkko Autio

Mali World Rank 113 of 130 Sub-Saharan AfricaRegional Rank 18 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 14.9 million GDP per capita PPP $1,055 Rank in Doing Business Index 2013 155 / 189 Rank in Global Competitiveness Index 2013-2014 128 / 144 Rank in Economic Freedom Index 2013 122 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

22.5 22.564.1 64.134.1 34.1

4. Networking 0.03 24%3. Risk Acceptance 0.05 22%2. Startup Skills 0.06 21%5. Cultural Support 0.12 15%1. Opportunity Perception 0.14 13%6. Opportunity Startup 0.25 3%14. Risk Capital 0.25 2%13. Internationalization 0.29 0%8. Human Capital 0.32 0%12. High Growth 0.32 0%11. Process Innovation 0.33 0%10. Product Innovation 0.35 0%9. Competition 0.40 0%7. Technology Absorption 0.58 0%

Page 201: Zoltán J. Ács László Szerb Erkko Autio

Mauritania World Rank 119 of 130 Sub-Saharan AfricaRegional Rank 24 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 3.8 million GDP per capita PPP $2,244 Rank in Doing Business Index 2013 173 / 189 Rank in Global Competitiveness Index 2013-2014 141 / 144 Rank in Economic Freedom Index 2013 134 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

21.1 21.164.1 64.130.5 30.5

2. Startup Skills 0.04 21%3. Risk Acceptance 0.05 21%4. Networking 0.06 19%1. Opportunity Perception 0.13 13%5. Cultural Support 0.13 13%6. Opportunity Startup 0.17 10%8. Human Capital 0.26 2%13. Internationalization 0.27 1%14. Risk Capital 0.27 1%10. Product Innovation 0.27 0%9. Competition 0.28 0%12. High Growth 0.29 0%11. Process Innovation 0.48 0%7. Technology Absorption 0.56 0%

Page 202: Zoltán J. Ács László Szerb Erkko Autio

Mexico World Rank 75 of 130 North AmericaRegional Rank 3 of 3

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 120.8 million GDP per capita PPP $13,067 Rank in Doing Business Index 2013 53 / 189 Rank in Global Competitiveness Index 2013-2014 61 / 144 Rank in Economic Freedom Index 2013 55 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

30.7 30.754.8 54.860.1 60.1

13. Internationalization 0.10 26%8. Human Capital 0.14 22%11. Process Innovation 0.23 12%5. Cultural Support 0.23 12%9. Competition 0.23 11%12. High Growth 0.26 9%14. Risk Capital 0.28 7%2. Startup Skills 0.34 0%7. Technology Absorption 0.36 0%10. Product Innovation 0.40 0%3. Risk Acceptance 0.44 0%6. Opportunity Startup 0.48 0%4. Networking 0.52 0%1. Opportunity Perception 0.92 0%

Page 203: Zoltán J. Ács László Szerb Erkko Autio

Moldova World Rank 57 of 130 EuropeRegional Rank 33 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 3.6 million GDP per capita PPP $2,951 Rank in Doing Business Index 2013 78 / 189 Rank in Global Competitiveness Index 2013-2014 82 / 144 Rank in Economic Freedom Index 2013 110 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

37.2 37.274.7 74.744.4 44.4

3. Risk Acceptance 0.14 30%1. Opportunity Perception 0.22 21%10. Product Innovation 0.28 14%9. Competition 0.30 11%14. Risk Capital 0.31 11%5. Cultural Support 0.33 8%2. Startup Skills 0.37 4%4. Networking 0.40 1%11. Process Innovation 0.48 0%7. Technology Absorption 0.51 0%12. High Growth 0.55 0%13. Internationalization 0.56 0%6. Opportunity Startup 0.58 0%8. Human Capital 0.72 0%

Page 204: Zoltán J. Ács László Szerb Erkko Autio

Montenegro World Rank 54 of 130 EuropeRegional Rank 32 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 0.6 million GDP per capita PPP $10,602 Rank in Doing Business Index 2013 44 / 189 Rank in Global Competitiveness Index 2013-2014 67 / 144 Rank in Economic Freedom Index 2013 68 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

39.1 39.171.0 71.053.7 53.7

3. Risk Acceptance 0.14 33%1. Opportunity Perception 0.21 24%7. Technology Absorption 0.27 16%10. Product Innovation 0.31 11%8. Human Capital 0.33 10%9. Competition 0.35 6%6. Opportunity Startup 0.42 0%11. Process Innovation 0.42 0%14. Risk Capital 0.45 0%5. Cultural Support 0.46 0%12. High Growth 0.47 0%2. Startup Skills 0.88 0%13. Internationalization 0.88 0%4. Networking 0.93 0%

Page 205: Zoltán J. Ács László Szerb Erkko Autio

Morocco World Rank 82 of 130 Middle East / North AfricaRegional Rank 13 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 32.5 million GDP per capita PPP $4,573 Rank in Doing Business Index 2013 87 / 189 Rank in Global Competitiveness Index 2013-2014 72 / 144 Rank in Economic Freedom Index 2013 103 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

29.4 29.462.6 62.655.0 55.0

7. Technology Absorption 0.05 28%8. Human Capital 0.06 27%10. Product Innovation 0.10 22%14. Risk Capital 0.11 20%2. Startup Skills 0.24 4%12. High Growth 0.32 0%9. Competition 0.33 0%5. Cultural Support 0.43 0%11. Process Innovation 0.46 0%3. Risk Acceptance 0.51 0%1. Opportunity Perception 0.53 0%6. Opportunity Startup 0.55 0%4. Networking 0.71 0%13. Internationalization 0.72 0%

Page 206: Zoltán J. Ács László Szerb Erkko Autio

Mozambique World Rank 106 of 130 Sub-Saharan AfricaRegional Rank 13 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 25.2 million GDP per capita PPP $0,882 Rank in Doing Business Index 2013 139 / 189 Rank in Global Competitiveness Index 2013-2014 133 / 144 Rank in Economic Freedom Index 2013 128 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

24.3 24.364.1 64.135.9 35.9

2. Startup Skills 0.04 25%4. Networking 0.06 24%5. Cultural Support 0.13 17%3. Risk Acceptance 0.13 16%1. Opportunity Perception 0.14 15%13. Internationalization 0.28 2%9. Competition 0.28 2%12. High Growth 0.29 0%10. Product Innovation 0.29 0%14. Risk Capital 0.34 0%8. Human Capital 0.34 0%6. Opportunity Startup 0.43 0%11. Process Innovation 0.46 0%7. Technology Absorption 0.57 0%

Page 207: Zoltán J. Ács László Szerb Erkko Autio

Myanmar World Rank 109 of 130 Asia-PacificRegional Rank 18 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 52.8 million GDP per capita PPP $6,677 Rank in Doing Business Index 2013 182 / 189 Rank in Global Competitiveness Index 2013-2014 134 / 144 Rank in Economic Freedom Index 2013 162 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

23.1 23.173.2 73.229.2 29.2

4. Networking 0.01 26%3. Risk Acceptance 0.05 22%6. Opportunity Startup 0.11 16%5. Cultural Support 0.14 14%2. Startup Skills 0.14 13%11. Process Innovation 0.18 8%12. High Growth 0.24 2%1. Opportunity Perception 0.27 0%10. Product Innovation 0.27 0%9. Competition 0.29 0%8. Human Capital 0.39 0%13. Internationalization 0.51 0%7. Technology Absorption 0.53 0%14. Risk Capital 0.69 0%

Page 208: Zoltán J. Ács László Szerb Erkko Autio

Namibia World Rank 69 of 130 Sub-Saharan AfricaRegional Rank 3 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 2.3 million GDP per capita PPP $6,520 Rank in Doing Business Index 2013 98 / 189Rank in Global Competitiveness Index 2013-2014 88 / 144Rank in Economic Freedom Index 2013 94 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEIscore

31.9 31.974.6 74.646.2 46.2

2. Startup Skills 0.13 25%8. Human Capital 0.15 22%4. Networking 0.23 15%7. Technology Absorption 0.23 14%14. Risk Capital 0.28 10%6. Opportunity Startup 0.31 6%1. Opportunity Perception 0.32 6%12. High Growth 0.35 2%11. Process Innovation 0.39 0%3. Risk Acceptance 0.43 0%5. Cultural Support 0.49 0%13. Internationalization 0.50 0%9. Competition 0.52 0%10. Product Innovation 0.62 0%

Page 209: Zoltán J. Ács László Szerb Erkko Autio

Netherlands World Rank 13 of 130 EuropeRegional Rank 8 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 16.8 million GDP per capita PPP $36,466 Rank in Doing Business Index 2013 28 / 189 Rank in Global Competitiveness Index 2013-2014 8 / 144 Rank in Economic Freedom Index 2013 15 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

66.5 66.567.9 67.991.7 91.7

12. High Growth 0.36 64%8. Human Capital 0.60 19%1. Opportunity Perception 0.60 17%7. Technology Absorption 0.69 0%11. Process Innovation 0.69 0%13. Internationalization 0.70 0%2. Startup Skills 0.71 0%10. Product Innovation 0.73 0%14. Risk Capital 0.78 0%9. Competition 0.79 0%3. Risk Acceptance 0.81 0%4. Networking 0.88 0%6. Opportunity Startup 0.94 0%5. Cultural Support 1.00 0%

Page 210: Zoltán J. Ács László Szerb Erkko Autio

Nicaragua World Rank 87 of 130 South and Central

America / Caribbean Regional Rank 14 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 6.0 million GDP per capita PPP $3,510 Rank in Doing Business Index 2013 124 / 189 Rank in Global Competitiveness Index 2013-2014 99 / 144 Rank in Economic Freedom Index 2013 102 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

28.4 28.464.0 64.037.9 37.9

11. Process Innovation 0.06 22%5. Cultural Support 0.07 21%2. Startup Skills 0.10 19%4. Networking 0.12 16%3. Risk Acceptance 0.13 15%1. Opportunity Perception 0.22 6%6. Opportunity Startup 0.30 0%13. Internationalization 0.35 0%9. Competition 0.36 0%14. Risk Capital 0.40 0%12. High Growth 0.41 0%10. Product Innovation 0.49 0%7. Technology Absorption 0.71 0%8. Human Capital 0.78 0%

Page 211: Zoltán J. Ács László Szerb Erkko Autio

Nigeria World Rank 84 of 130 Sub-Saharan AfricaRegional Rank 4 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 168.8 million GDP per capita PPP $2,295Rank in Doing Business Index 2013 147 / 189 Rank in Global Competitiveness Index 2013-2014 127 / 144 Rank in Economic Freedom Index 2013 129 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

28.9 28.970.7 70.746.0 46.0

3. Risk Acceptance 0.08 25%2. Startup Skills 0.17 15%7. Technology Absorption 0.20 13%5. Cultural Support 0.22 11%6. Opportunity Startup 0.22 11%11. Process Innovation 0.24 8%10. Product Innovation 0.25 8%14. Risk Capital 0.25 8%13. Internationalization 0.34 0%12. High Growth 0.35 0%8. Human Capital 0.40 0%9. Competition 0.42 0%4. Networking 0.70 0%1. Opportunity Perception 0.81 0%

Page 212: Zoltán J. Ács László Szerb Erkko Autio

Norway World Rank 15 of 130 EuropeRegional Rank 10 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 5.0 million GDP per capita PPP $47,517Rank in Doing Business Index 2013 9 / 189 Rank in Global Competitiveness Index 2013-2014 11 / 144Rank in Economic Freedom Index 2013 32 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

65.6 65.668.7 68.789.0 89.0

10. Product Innovation 0.36 33%12. High Growth 0.36 33%13. Internationalization 0.43 24%2. Startup Skills 0.53 10%11. Process Innovation 0.62 0%9. Competition 0.73 0%14. Risk Capital 0.76 0%8. Human Capital 0.79 0%4. Networking 0.87 0%5. Cultural Support 0.90 0%1. Opportunity Perception 0.91 0%3. Risk Acceptance 0.92 0%7. Technology Absorption 0.93 0%6. Opportunity Startup 1.00 0%

Page 213: Zoltán J. Ács László Szerb Erkko Autio

Oman World Rank 39 of 130 Middle East / North AfricaRegional Rank 6 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 3.3 million GDP per capita PPP $39,665 Rank in Doing Business Index 2013 47 / 189 Rank in Global Competitiveness Index 2013-2014 46 / 144 Rank in Economic Freedom Index 2013 48 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

47.3 47.378.0 78.058.9 58.9

2. Startup Skills 0.20 36%11. Process Innovation 0.20 36%12. High Growth 0.37 13%5. Cultural Support 0.40 9%3. Risk Acceptance 0.43 7%6. Opportunity Startup 0.47 0%10. Product Innovation 0.50 0%13. Internationalization 0.58 0%9. Competition 0.61 0%8. Human Capital 0.64 0%1. Opportunity Perception 0.68 0%14. Risk Capital 0.69 0%7. Technology Absorption 0.72 0%4. Networking 0.94 0%

Page 214: Zoltán J. Ács László Szerb Erkko Autio

Pakistan World Rank 123 of 130 Asia-PacificRegional Rank 20 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 179.2 million GDP per capita PPP $2,402 Rank in Doing Business Index 2013 110 / 189 Rank in Global Competitiveness Index 2013-2014 129 / 144 Rank in Economic Freedom Index 2013 126 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

20.1 20.154.8 54.843.0 43.0

3. Risk Acceptance 0.07 17%2. Startup Skills 0.08 17%14. Risk Capital 0.09 15%4. Networking 0.10 14%8. Human Capital 0.10 14%7. Technology Absorption 0.20 7%6. Opportunity Startup 0.20 7%13. Internationalization 0.20 7%5. Cultural Support 0.23 3%11. Process Innovation 0.32 0%9. Competition 0.33 0%1. Opportunity Perception 0.35 0%10. Product Innovation 0.39 0%12. High Growth 0.40 0%

Page 215: Zoltán J. Ács László Szerb Erkko Autio

Panama World Rank 67 of 130 South and Central

America / Caribbean Regional Rank 9 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 3.8 million GDP per capita PPP $14,320Rank in Doing Business Index 2013 55 / 189Rank in Global Competitiveness Index 2013-2014 48 / 144Rank in Economic Freedom Index 2013 71 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

32.2 32.262.1 62.159.0 59.0

12. High Growth 0.09 27%7. Technology Absorption 0.13 22%13. Internationalization 0.19 16%14. Risk Capital 0.19 16%11. Process Innovation 0.25 9%10. Product Innovation 0.28 6%5. Cultural Support 0.29 6%9. Competition 0.46 0%2. Startup Skills 0.48 0%8. Human Capital 0.50 0%1. Opportunity Perception 0.53 0%4. Networking 0.55 0%3. Risk Acceptance 0.56 0%6. Opportunity Startup 0.58 0%

Page 216: Zoltán J. Ács László Szerb Erkko Autio

Paraguay World Rank 62 of 130 South and Central

America / Caribbean Regional Rank 8 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 6.7 millionGDP per capita PPP $5,290 Rank in Doing Business Index 2013 109 / 189 Rank in Global Competitiveness Index 2013-2014 120 / 144 Rank in Economic Freedom Index 2013 78 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEIscore

36.0 36.076.0 76.042.5 42.5

11. Process Innovation 0.12 29%3. Risk Acceptance 0.15 24%5. Cultural Support 0.17 23%4. Networking 0.25 14%10. Product Innovation 0.30 8%12. High Growth 0.36 1%6. Opportunity Startup 0.39 0%2. Startup Skills 0.40 0%1. Opportunity Perception 0.43 0%14. Risk Capital 0.49 0%9. Competition 0.55 0%7. Technology Absorption 0.65 0%8. Human Capital 0.66 0%13. Internationalization 0.68 0%

Page 217: Zoltán J. Ács László Szerb Erkko Autio

Peru World Rank 74 of 130 South and Central

America / Caribbean Regional Rank 10 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 30.0 million GDP per capita PPP $9,431 Rank in Doing Business Index 2013 42 / 189 Rank in Global Competitiveness Index 2013-2014 65 / 144 Rank in Economic Freedom Index 2013 47 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

30.9 30.962.3 62.355.1 55.1

7. Technology Absorption 0.08 30%11. Process Innovation 0.20 17%9. Competition 0.22 15%12. High Growth 0.23 14%10. Product Innovation 0.28 8%13. Internationalization 0.29 7%8. Human Capital 0.30 6%3. Risk Acceptance 0.32 3%14. Risk Capital 0.35 0%5. Cultural Support 0.37 0%4. Networking 0.49 0%6. Opportunity Startup 0.49 0%2. Startup Skills 0.59 0%1. Opportunity Perception 0.86 0%

Page 218: Zoltán J. Ács László Szerb Erkko Autio

Philippines World Rank 95 of 130 Asia-PacificRegional Rank 15 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 96.7 million GDP per capita PPP $3,801 Rank in Doing Business Index 2013 108 / 189Rank in Global Competitiveness Index 2013-2014 52 / 144 Rank in Economic Freedom Index 2013 89 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

27.7 27.762.5 62.554.4 54.4

7. Technology Absorption 0.08 25%14. Risk Capital 0.10 23%12. High Growth 0.13 20%6. Opportunity Startup 0.22 11%11. Process Innovation 0.25 8%3. Risk Acceptance 0.25 8%13. Internationalization 0.28 5%8. Human Capital 0.37 0%5. Cultural Support 0.40 0%2. Startup Skills 0.40 0%4. Networking 0.41 0%9. Competition 0.43 0%1. Opportunity Perception 0.48 0%10. Product Innovation 0.53 0%

Page 219: Zoltán J. Ács László Szerb Erkko Autio

Poland World Rank 38 of 130 EuropeRegional Rank 23 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 38.5 million GDP per capita PPP $18,307 Rank in Doing Business Index 2013 45 / 189 Rank in Global Competitiveness Index 2013-2014 43 / 144 Rank in Economic Freedom Index 2013 50 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

47.4 47.461.9 61.969.6 69.6

6. Opportunity Startup 0.25 29%1. Opportunity Perception 0.33 19%7. Technology Absorption 0.33 18%8. Human Capital 0.34 17%3. Risk Acceptance 0.41 10%11. Process Innovation 0.45 4%9. Competition 0.46 4%14. Risk Capital 0.54 0%5. Cultural Support 0.55 0%12. High Growth 0.63 0%4. Networking 0.70 0%10. Product Innovation 0.72 0%2. Startup Skills 0.87 0%13. Internationalization 0.94 0%

Page 220: Zoltán J. Ács László Szerb Erkko Autio

Portugal World Rank 30 of 130 EuropeRegional Rank 20 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 10.5 million GDP per capita PPP $21,056Rank in Doing Business Index 2013 31 / 189Rank in Global Competitiveness Index 2013-2014 36 / 144Rank in Economic Freedom Index 2013 69 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

50.8 50.866.8 66.873.1 73.1

1. Opportunity Perception 0.22 49%4. Networking 0.45 14%7. Technology Absorption 0.45 14%12. High Growth 0.50 8%3. Risk Acceptance 0.50 6%8. Human Capital 0.52 3%9. Competition 0.52 3%10. Product Innovation 0.53 3%14. Risk Capital 0.59 0%5. Cultural Support 0.65 0%6. Opportunity Startup 0.67 0%2. Startup Skills 0.69 0%11. Process Innovation 0.75 0%13. Internationalization 1.00 0%

Page 221: Zoltán J. Ács László Szerb Erkko Autio

Puerto Rico World Rank 34 of 130 South and Central

America / Caribbean Regional Rank 2 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 3.7 million GDP per capita PPP $30,248 Rank in Doing Business Index 2013 40 / 189 Rank in Global Competitiveness Index 2013-2014 32 / 144 Rank in Economic Freedom Index 2013 - / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

48.9 48.959.8 59.881.3 81.3

12. High Growth 0.23 28%5. Cultural Support 0.26 25%11. Process Innovation 0.32 17%4. Networking 0.33 16%7. Technology Absorption 0.41 6%1. Opportunity Perception 0.41 6%10. Product Innovation 0.44 2%13. Internationalization 0.53 0%9. Competition 0.57 0%14. Risk Capital 0.62 0%6. Opportunity Startup 0.77 0%8. Human Capital 0.89 0%3. Risk Acceptance 1.00 0%2. Startup Skills 1.00 0%

Page 222: Zoltán J. Ács László Szerb Erkko Autio

Qatar World Rank 24 of 130 Middle East / North AfricaRegional Rank 3 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 2.1 million GDP per capita PPP $71,931 Rank in Doing Business Index 2013 48 / 189 Rank in Global Competitiveness Index 2013-2014 16 / 144 Rank in Economic Freedom Index 2013 30 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

56.2 56.278.0 78.078.5 78.5

2. Startup Skills 0.15 100%12. High Growth 0.43 0%6. Opportunity Startup 0.51 0%3. Risk Acceptance 0.58 0%5. Cultural Support 0.66 0%13. Internationalization 0.69 0%8. Human Capital 0.75 0%14. Risk Capital 0.75 0%10. Product Innovation 0.75 0%7. Technology Absorption 0.80 0%11. Process Innovation 0.88 0%9. Competition 0.90 0%1. Opportunity Perception 1.00 0%4. Networking 1.00 0%

Page 223: Zoltán J. Ács László Szerb Erkko Autio

Romania 42 of 130 Europe

Regional Rank 25 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 20.1 million GDP per capita PPP $11,946 Rank in Doing Business Index 2013 73 / 189 Rank in Global Competitiveness Index 2013-2014 59 / 144 Rank in Economic Freedom Index 2013 62 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

45.3 45.370.6 70.655.3 55.3

3. Risk Acceptance 0.33 16%1. Opportunity Perception 0.34 14%8. Human Capital 0.39 11%7. Technology Absorption 0.39 10%10. Product Innovation 0.40 9%4. Networking 0.41 9%9. Competition 0.41 8%5. Cultural Support 0.43 7%11. Process Innovation 0.45 5%6. Opportunity Startup 0.45 5%2. Startup Skills 0.46 5%14. Risk Capital 0.50 2%13. Internationalization 0.84 0%12. High Growth 0.88 0%

World Rank

Page 224: Zoltán J. Ács László Szerb Erkko Autio

Russia World Rank 70 of 130 EuropeRegional Rank 36 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 143.2 million GDP per capita PPP $15,177Rank in Doing Business Index 2013 92 / 189Rank in Global Competitiveness Index 2013-2014 53 / 144Rank in Economic Freedom Index 2013 140 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

31.7 31.751.9 51.960.8 60.8

13. Internationalization 0.09 29%5. Cultural Support 0.21 16%10. Product Innovation 0.21 16%9. Competition 0.23 14%3. Risk Acceptance 0.24 13%14. Risk Capital 0.29 8%7. Technology Absorption 0.34 2%6. Opportunity Startup 0.34 1%11. Process Innovation 0.35 1%1. Opportunity Perception 0.38 0%2. Startup Skills 0.41 0%12. High Growth 0.51 0%4. Networking 0.54 0%8. Human Capital 0.91 0%

Page 225: Zoltán J. Ács László Szerb Erkko Autio

Rwanda World Rank 99 of 130 Sub-Saharan AfricaRegional Rank 8 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 11.5 million GDP per capita PPP $1,167 Rank in Doing Business Index 2013 32 / 189 Rank in Global Competitiveness Index 2013-2014 62 / 144 Rank in Economic Freedom Index 2013 65 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

26.2 26.264.1 64.140.9 40.9

2. Startup Skills 0.05 25%1. Opportunity Perception 0.08 22%4. Networking 0.09 20%3. Risk Acceptance 0.13 17%11. Process Innovation 0.18 12%13. Internationalization 0.26 4%5. Cultural Support 0.28 2%14. Risk Capital 0.30 0%12. High Growth 0.35 0%9. Competition 0.39 0%8. Human Capital 0.41 0%10. Product Innovation 0.42 0%6. Opportunity Startup 0.48 0%7. Technology Absorption 0.61 0%

Page 226: Zoltán J. Ács László Szerb Erkko Autio

Saudi Arabia World Rank 31 of 130 Middle East / North AfricaRegional Rank 4 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 28.3 million GDP per capita PPP $27,346 Rank in Doing Business Index 2013 26 / 189 Rank in Global Competitiveness Index 2013-2014 24 / 144 Rank in Economic Freedom Index 2013 77 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

49.6 49.678.1 78.165.9 65.9

11. Process Innovation 0.24 28%3. Risk Acceptance 0.26 24%7. Technology Absorption 0.26 24%9. Competition 0.35 14%13. Internationalization 0.36 11%10. Product Innovation 0.52 0%8. Human Capital 0.58 0%6. Opportunity Startup 0.62 0%5. Cultural Support 0.62 0%4. Networking 0.69 0%2. Startup Skills 0.78 0%14. Risk Capital 0.81 0%12. High Growth 0.94 0%1. Opportunity Perception 1.00 0%

Page 227: Zoltán J. Ács László Szerb Erkko Autio

Senegal World Rank 96 of 130 Sub-Saharan AfricaRegional Rank 7 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 13.7 million GDP per capita PPP $1,671 Rank in Doing Business Index 2013 178 / 189 Rank in Global Competitiveness Index 2013-2014 112 / 144 Rank in Economic Freedom Index 2013 125 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

27.3 27.364.1 64.142.6 42.6

2. Startup Skills 0.06 28%1. Opportunity Perception 0.19 15%5. Cultural Support 0.20 14%4. Networking 0.22 12%3. Risk Acceptance 0.24 11%6. Opportunity Startup 0.25 10%14. Risk Capital 0.25 9%13. Internationalization 0.33 2%8. Human Capital 0.34 0%12. High Growth 0.35 0%9. Competition 0.37 0%10. Product Innovation 0.38 0%11. Process Innovation 0.40 0%7. Technology Absorption 0.64 0%

Page 228: Zoltán J. Ács László Szerb Erkko Autio

Serbia World Rank 78 of 130 EuropeRegional Rank 38 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 7.2 million GDP per capita PPP $9,683 Rank in Doing Business Index 2013 93 / 189 Rank in Global Competitiveness Index 2013-2014 94 / 144 Rank in Economic Freedom Index 2013 95 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEIscore

30.6 30.662.6 62.647.3 47.3

13. Internationalization 0.15 18%7. Technology Absorption 0.17 16%3. Risk Acceptance 0.18 15%6. Opportunity Startup 0.19 14%8. Human Capital 0.26 8%14. Risk Capital 0.26 7%12. High Growth 0.27 7%1. Opportunity Perception 0.28 6%9. Competition 0.31 4%10. Product Innovation 0.32 3%5. Cultural Support 0.34 1%11. Process Innovation 0.58 0%4. Networking 0.66 0%2. Startup Skills 0.84 0%

Page 229: Zoltán J. Ács László Szerb Erkko Autio

Sierra Leone World Rank 117 of 130 Sub-Saharan AfricaRegional Rank 22 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 6.0 million GDP per capita PPP $1,171 Rank in Doing Business Index 2013 142 / 189 Rank in Global Competitiveness Index 2013-2014 138 / 144 Rank in Economic Freedom Index 2013 148 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

21.6 21.664.1 64.132.2 32.2

2. Startup Skills 0.01 25%4. Networking 0.02 25%5. Cultural Support 0.13 13%3. Risk Acceptance 0.13 13%1. Opportunity Perception 0.14 13%11. Process Innovation 0.20 7%13. Internationalization 0.23 4%10. Product Innovation 0.28 0%12. High Growth 0.30 0%9. Competition 0.31 0%6. Opportunity Startup 0.32 0%8. Human Capital 0.36 0%14. Risk Capital 0.39 0%7. Technology Absorption 0.52 0%

Page 230: Zoltán J. Ács László Szerb Erkko Autio

Singapore World Rank 10 of 130 Asia-PacificRegional Rank 3 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 5.3 million GDP per capita PPP $53,266 Rank in Doing Business Index 2013 1 / 189 Rank in Global Competitiveness Index 2013-2014 2 / 144 Rank in Economic Freedom Index 2013 2 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

68.1 68.170.9 70.990.7 90.7

2. Startup Skills 0.38 33%4. Networking 0.38 33%1. Opportunity Perception 0.43 26%9. Competition 0.57 7%10. Product Innovation 0.64 0%5. Cultural Support 0.76 0%7. Technology Absorption 0.77 0%3. Risk Acceptance 0.79 0%14. Risk Capital 0.94 0%11. Process Innovation 0.98 0%13. Internationalization 1.00 0%12. High Growth 1.00 0%6. Opportunity Startup 1.00 0%8. Human Capital 1.00 0%

Page 231: Zoltán J. Ács László Szerb Erkko Autio

Slovakia World Rank 41 of 130 EuropeRegional Rank 24 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 5.4 million GDP per capita PPP $21,185Rank in Doing Business Index 2013 49 / 189Rank in Global Competitiveness Index 2013-2014 75 / 144Rank in Economic Freedom Index 2013 57 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

45.4 45.466.1 66.163.8 63.8

1. Opportunity Perception 0.17 42%9. Competition 0.29 23%6. Opportunity Startup 0.31 18%5. Cultural Support 0.36 12%8. Human Capital 0.41 5%10. Product Innovation 0.45 0%11. Process Innovation 0.47 0%3. Risk Acceptance 0.56 0%12. High Growth 0.59 0%2. Startup Skills 0.60 0%7. Technology Absorption 0.61 0%14. Risk Capital 0.82 0%4. Networking 0.88 0%13. Internationalization 1.00 0%

Page 232: Zoltán J. Ács László Szerb Erkko Autio

Slovenia World Rank 29 of 130 EuropeRegional Rank 19 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 2.1 million GDP per capita PPP $24,495 Rank in Doing Business Index 2013 33 / 189 Rank in Global Competitiveness Index 2013-2014 70 / 144 Rank in Economic Freedom Index 2013 74 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

53.1 53.173.2 73.268.7 68.7

1. Opportunity Perception 0.14 100%5. Cultural Support 0.51 0%10. Product Innovation 0.53 0%8. Human Capital 0.54 0%14. Risk Capital 0.56 0%9. Competition 0.62 0%3. Risk Acceptance 0.63 0%12. High Growth 0.63 0%4. Networking 0.76 0%6. Opportunity Startup 0.79 0%13. Internationalization 0.81 0%7. Technology Absorption 0.82 0%11. Process Innovation 0.84 0%2. Startup Skills 0.99 0%

Page 233: Zoltán J. Ács László Szerb Erkko Autio

South Africa World Rank 52 of 130 Sub-Saharan AfricaRegional Rank 1 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 52.3 million GDP per capita PPP $9,655 Rank in Doing Business Index 2013 41 / 189 Rank in Global Competitiveness Index 2013-2014 56 / 144 Rank in Economic Freedom Index 2013 75 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

40.0 40.069.2 69.264.6 64.6

2. Startup Skills 0.12 41%8. Human Capital 0.24 23%14. Risk Capital 0.28 17%7. Technology Absorption 0.30 14%4. Networking 0.35 6%5. Cultural Support 0.43 0%6. Opportunity Startup 0.45 0%3. Risk Acceptance 0.46 0%1. Opportunity Perception 0.50 0%13. Internationalization 0.56 0%12. High Growth 0.60 0%11. Process Innovation 0.67 0%9. Competition 0.82 0%10. Product Innovation 0.83 0%

Page 234: Zoltán J. Ács László Szerb Erkko Autio

Spain World Rank 32 of 130 EuropeRegional Rank 21 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 46.8 million GDP per capita PPP $26,089 Rank in Doing Business Index 2013 52 / 189 Rank in Global Competitiveness Index 2013-2014 35 / 144 Rank in Economic Freedom Index 2013 49 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

49.6 49.659.8 59.877.2 77.2

12. High Growth 0.26 29%1. Opportunity Perception 0.29 25%13. Internationalization 0.33 21%10. Product Innovation 0.39 13%8. Human Capital 0.44 8%5. Cultural Support 0.49 2%6. Opportunity Startup 0.51 1%4. Networking 0.61 0%11. Process Innovation 0.62 0%3. Risk Acceptance 0.64 0%9. Competition 0.65 0%14. Risk Capital 0.66 0%7. Technology Absorption 0.79 0%2. Startup Skills 0.92 0%

Page 235: Zoltán J. Ács László Szerb Erkko Autio

Sri Lanka World Rank 71 of 130 Asia-PacificRegional Rank 11 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 20.3 million GDP per capita PPP $5,384 Rank in Doing Business Index 2013 85 / 189 Rank in Global Competitiveness Index 2013-2014 73 / 144 Rank in Economic Freedom Index 2013 90 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

31.1 31.163.3 63.351.2 51.2

1. Opportunity Perception 0.11 22%2. Startup Skills 0.14 20%13. Internationalization 0.20 14%4. Networking 0.21 13%11. Process Innovation 0.23 12%3. Risk Acceptance 0.24 10%5. Cultural Support 0.26 8%8. Human Capital 0.40 0%7. Technology Absorption 0.45 0%6. Opportunity Startup 0.46 0%9. Competition 0.47 0%12. High Growth 0.49 0%10. Product Innovation 0.52 0%14. Risk Capital 0.53 0%

Page 236: Zoltán J. Ács László Szerb Erkko Autio

Suriname World Rank 121 of 130 South and Central

America / Caribbean Regional Rank 21 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 0.5 million GDP per capita PPP $7,641 Rank in Doing Business Index 2013 161 / 189 Rank in Global Competitiveness Index 2013-2014 110 / 144 Rank in Economic Freedom Index 2013 130 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

20.7 20.763.0 63.038.9 38.9

12. High Growth 0.03 20%7. Technology Absorption 0.05 19%14. Risk Capital 0.05 19%11. Process Innovation 0.12 12%2. Startup Skills 0.12 12%10. Product Innovation 0.13 11%3. Risk Acceptance 0.21 4%6. Opportunity Startup 0.22 4%1. Opportunity Perception 0.28 0%13. Internationalization 0.33 0%5. Cultural Support 0.37 0%9. Competition 0.39 0%4. Networking 0.45 0%8. Human Capital 0.52 0%

Page 237: Zoltán J. Ács László Szerb Erkko Autio

Swaziland World Rank 118 of 130 Sub-Saharan AfricaRegional Rank 23 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 1.2 million GDP per capita PPP $4,522 Rank in Doing Business Index 2013 123 / 189 Rank in Global Competitiveness Index 2013-2014 123 / 144 Rank in Economic Freedom Index 2013 82 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

21.4 21.463.7 63.738.6 38.6

3. Risk Acceptance 0.06 19%2. Startup Skills 0.07 19%7. Technology Absorption 0.09 17%1. Opportunity Perception 0.11 16%10. Product Innovation 0.18 9%12. High Growth 0.19 9%14. Risk Capital 0.22 6%11. Process Innovation 0.25 3%4. Networking 0.29 1%6. Opportunity Startup 0.30 0%9. Competition 0.31 0%13. Internationalization 0.32 0%8. Human Capital 0.42 0%5. Cultural Support 0.44 0%

Page 238: Zoltán J. Ács László Szerb Erkko Autio

Sweden World Rank 5 of 130 EuropeRegional Rank 2 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 9.5 million GDP per capita PPP $34,926 Rank in Doing Business Index 2013 14 / 189 Rank in Global Competitiveness Index 2013-2014 10 / 144 Rank in Economic Freedom Index 2013 20 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

71.8 71.870.8 70.893.0 93.0

12. High Growth 0.41 50%2. Startup Skills 0.61 18%14. Risk Capital 0.64 13%13. Internationalization 0.66 10%9. Competition 0.67 7%8. Human Capital 0.71 2%10. Product Innovation 0.72 0%3. Risk Acceptance 0.83 0%5. Cultural Support 0.90 0%6. Opportunity Startup 0.94 0%11. Process Innovation 0.97 0%4. Networking 1.00 0%7. Technology Absorption 1.00 0%1. Opportunity Perception 1.00 0%

Page 239: Zoltán J. Ács László Szerb Erkko Autio

Switzerland World Rank 9 of 130 EuropeRegional Rank 5 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 8.0 million GDP per capita PPP $39,294 Rank in Doing Business Index 2013 29 / 189 Rank in Global Competitiveness Index 2013-2014 1 / 144 Rank in Economic Freedom Index 2013 4 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

68.6 68.670.2 70.291.3 91.3

12. High Growth 0.38 46%2. Startup Skills 0.47 31%1. Opportunity Perception 0.55 18%6. Opportunity Startup 0.63 5%5. Cultural Support 0.70 0%4. Networking 0.73 0%8. Human Capital 0.78 0%11. Process Innovation 0.80 0%7. Technology Absorption 0.80 0%10. Product Innovation 0.86 0%3. Risk Acceptance 0.94 0%9. Competition 1.00 0%14. Risk Capital 1.00 0%13. Internationalization 1.00 0%

Page 240: Zoltán J. Ács László Szerb Erkko Autio

Taiwan World Rank 8 of 130 Asia-PacificRegional Rank 2 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 23.3 million GDP per capita PPP $34,817Rank in Doing Business Index 2013 16 / 189Rank in Global Competitiveness Index 2013-2014 14 / 144Rank in Economic Freedom Index 2013 17 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

69.1 69.171.8 71.886.6 86.6

9. Competition 0.45 33%2. Startup Skills 0.48 29%13. Internationalization 0.60 14%5. Cultural Support 0.62 11%3. Risk Acceptance 0.64 8%4. Networking 0.69 2%1. Opportunity Perception 0.70 2%7. Technology Absorption 0.73 0%11. Process Innovation 0.80 0%6. Opportunity Startup 0.84 0%8. Human Capital 0.85 0%12. High Growth 1.00 0%10. Product Innovation 1.00 0%14. Risk Capital 1.00 0%

Page 241: Zoltán J. Ács László Szerb Erkko Autio

Tanzania World Rank 108 of 130 Sub-Saharan AfricaRegional Rank 15 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 47.8 million GDP per capita PPP $1,380 Rank in Doing Business Index 2013 145 / 189 Rank in Global Competitiveness Index 2013-2014 121 / 144 Rank in Economic Freedom Index 2013 106 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

23.6 23.664.1 64.135.3 35.3

2. Startup Skills 0.03 25%4. Networking 0.05 23%3. Risk Acceptance 0.13 15%5. Cultural Support 0.15 14%1. Opportunity Perception 0.15 14%13. Internationalization 0.24 5%6. Opportunity Startup 0.24 5%9. Competition 0.31 0%12. High Growth 0.32 0%10. Product Innovation 0.36 0%14. Risk Capital 0.37 0%8. Human Capital 0.38 0%11. Process Innovation 0.44 0%7. Technology Absorption 0.53 0%

Page 242: Zoltán J. Ács László Szerb Erkko Autio

Thailand World Rank 68 of 130 Asia-PacificRegional Rank 10 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 66.8 millionGDP per capita PPP $8,463 Rank in Doing Business Index 2013 18 / 189 Rank in Global Competitiveness Index 2013-2014 31 / 144 Rank in Economic Freedom Index 2013 72 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

32.1 32.160.9 60.959.3 59.3

13. Internationalization 0.08 34%7. Technology Absorption 0.23 18%4. Networking 0.26 14%11. Process Innovation 0.31 9%14. Risk Capital 0.34 6%12. High Growth 0.34 6%3. Risk Acceptance 0.34 5%5. Cultural Support 0.35 5%1. Opportunity Perception 0.35 5%9. Competition 0.38 0%10. Product Innovation 0.48 0%2. Startup Skills 0.49 0%8. Human Capital 0.52 0%6. Opportunity Startup 0.56 0%

Page 243: Zoltán J. Ács László Szerb Erkko Autio

Trinidad & Tobago World Rank 89 of 130 South and Central

America / Caribbean Regional Rank 15 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 1.3 million GDP per capita PPP $23,260 Rank in Doing Business Index 2013 66 / 189 Rank in Global Competitiveness Index 2013-2014 89 / 144 Rank in Economic Freedom Index 2013 73 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

28.4 28.467.9 67.945.9 45.9

11. Process Innovation 0.07 24%1. Opportunity Perception 0.10 21%10. Product Innovation 0.11 20%2. Startup Skills 0.17 14%7. Technology Absorption 0.19 12%14. Risk Capital 0.23 8%13. Internationalization 0.30 1%5. Cultural Support 0.39 0%9. Competition 0.39 0%8. Human Capital 0.44 0%6. Opportunity Startup 0.46 0%12. High Growth 0.47 0%3. Risk Acceptance 0.55 0%4. Networking 0.63 0%

Page 244: Zoltán J. Ács László Szerb Erkko Autio

Tunisia World Rank 63 of 130 Middle East / North AfricaRegional Rank 9 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 10.8 million GDP per capita PPP $8,442 Rank in Doing Business Index 2013 51 / 189Rank in Global Competitiveness Index 2013-2014 87 / 144Rank in Economic Freedom Index 2013 109 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

35.5 35.563.1 63.156.6 56.6

13. Internationalization 0.15 28%14. Risk Capital 0.18 25%8. Human Capital 0.33 11%1. Opportunity Perception 0.36 8%9. Competition 0.37 8%3. Risk Acceptance 0.38 7%12. High Growth 0.40 5%4. Networking 0.40 5%6. Opportunity Startup 0.42 3%7. Technology Absorption 0.45 0%10. Product Innovation 0.46 0%11. Process Innovation 0.46 0%2. Startup Skills 0.46 0%5. Cultural Support 0.54 0%

Page 245: Zoltán J. Ács László Szerb Erkko Autio

Turkey World Rank 25 of 130 EuropeRegional Rank 16 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 74.0 million GDP per capita PPP $13,737 Rank in Doing Business Index 2013 69 / 189 Rank in Global Competitiveness Index 2013-2014 45 / 144 Rank in Economic Freedom Index 2013 64 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

54.6 54.671.4 71.467.0 67.0

6. Opportunity Startup 0.37 20%9. Competition 0.40 17%4. Networking 0.41 16%3. Risk Acceptance 0.43 14%11. Process Innovation 0.45 12%13. Internationalization 0.45 11%5. Cultural Support 0.50 8%8. Human Capital 0.56 2%1. Opportunity Perception 0.66 0%7. Technology Absorption 0.66 0%2. Startup Skills 0.67 0%10. Product Innovation 0.80 0%14. Risk Capital 0.81 0%12. High Growth 1.00 0%

Page 246: Zoltán J. Ács László Szerb Erkko Autio

Uganda World Rank 129 of 130 Sub-Saharan AfricaRegional Rank 29 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 36.3 million GDP per capita PPP $1,165 Rank in Doing Business Index 2013 132 / 189 Rank in Global Competitiveness Index 2013-2014 122 / 144 Rank in Economic Freedom Index 2013 91 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

15.1 15.157.6 57.636.7 36.7

8. Human Capital 0.03 17%7. Technology Absorption 0.06 16%12. High Growth 0.07 15%10. Product Innovation 0.09 13%13. Internationalization 0.12 11%14. Risk Capital 0.13 9%2. Startup Skills 0.15 8%6. Opportunity Startup 0.17 7%1. Opportunity Perception 0.20 3%3. Risk Acceptance 0.22 2%11. Process Innovation 0.25 0%9. Competition 0.26 0%5. Cultural Support 0.28 0%4. Networking 0.28 0%

Page 247: Zoltán J. Ács László Szerb Erkko Autio

Ukraine World Rank 64 of 130 EuropeRegional Rank 35 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 45.6 million GDP per capita PPP $6,394 Rank in Doing Business Index 2013 112 / 189 Rank in Global Competitiveness Index 2013-2014 76 / 144 Rank in Economic Freedom Index 2013 155 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

33.6 33.664.1 64.152.8 52.8

3. Risk Acceptance 0.05 46%5. Cultural Support 0.10 38%9. Competition 0.27 12%12. High Growth 0.34 3%10. Product Innovation 0.36 0%6. Opportunity Startup 0.37 0%8. Human Capital 0.38 0%4. Networking 0.38 0%13. Internationalization 0.42 0%1. Opportunity Perception 0.46 0%7. Technology Absorption 0.57 0%11. Process Innovation 0.58 0%14. Risk Capital 0.59 0%2. Startup Skills 0.79 0%

Page 248: Zoltán J. Ács László Szerb Erkko Autio

United Arab Emirates World Rank 20 of 130 Middle East / North AfricaRegional Rank 1 of 15

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 9.2 million GDP per capita PPP $36,267 Rank in Doing Business Index 2013 23 / 189 Rank in Global Competitiveness Index 2013-2014 12 / 144 Rank in Economic Freedom Index 2013 28 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

61.6 61.677.4 77.476.2 76.2

2. Startup Skills 0.36 29%7. Technology Absorption 0.38 26%3. Risk Acceptance 0.43 20%11. Process Innovation 0.48 14%9. Competition 0.50 11%6. Opportunity Startup 0.64 0%1. Opportunity Perception 0.67 0%4. Networking 0.73 0%13. Internationalization 0.79 0%5. Cultural Support 0.79 0%10. Product Innovation 0.81 0%12. High Growth 1.00 0%8. Human Capital 1.00 0%14. Risk Capital 1.00 0%

Page 249: Zoltán J. Ács László Szerb Erkko Autio

United Kingdom World Rank 4 of 130 EuropeRegional Rank 1 of 39

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 63.7 millionGDP per capita PPP $32,514 Rank in Doing Business Index 2013 10 / 189 Rank in Global Competitiveness Index 2013-2014 9 / 144 Rank in Economic Freedom Index 2013 14 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

72.7 72.769.8 69.889.3 89.3

2. Startup Skills 0.60 15%10. Product Innovation 0.63 14%13. Internationalization 0.63 14%14. Risk Capital 0.64 13%12. High Growth 0.66 11%11. Process Innovation 0.67 11%1. Opportunity Perception 0.69 9%4. Networking 0.71 8%7. Technology Absorption 0.75 4%5. Cultural Support 0.79 2%3. Risk Acceptance 0.81 0%8. Human Capital 0.86 0%6. Opportunity Startup 0.87 0%9. Competition 0.97 0%

Page 250: Zoltán J. Ács László Szerb Erkko Autio

United States World Rank 1 of 130 North AmericaRegional Rank 1 of 3

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 313.9 million GDP per capita PPP $45,336 Rank in Doing Business Index 2013 4 / 189 Rank in Global Competitiveness Index 2013-2014 3 / 144 Rank in Economic Freedom Index 2013 12 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

85.0 85.077.9 77.992.1 92.1

4. Networking 0.63 33%6. Opportunity Startup 0.73 22%5. Cultural Support 0.83 11%10. Product Innovation 0.84 10%7. Technology Absorption 0.86 8%12. High Growth 0.87 7%11. Process Innovation 0.88 5%3. Risk Acceptance 0.88 5%13. Internationalization 0.94 0%8. Human Capital 0.94 0%2. Startup Skills 1.00 0%14. Risk Capital 1.00 0%1. Opportunity Perception 1.00 0%9. Competition 1.00 0%

Page 251: Zoltán J. Ács László Szerb Erkko Autio

Uruguay World Rank 48 of 130 South and Central

America / Caribbean Regional Rank 4 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 3.4 million GDP per capita PPP $13,821 Rank in Doing Business Index 2013 88 / 189 Rank in Global Competitiveness Index 2013-2014 80 / 144 Rank in Economic Freedom Index 2013 38 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

41.4 41.465.9 65.959.8 59.8

14. Risk Capital 0.14 42%13. Internationalization 0.28 22%8. Human Capital 0.31 18%11. Process Innovation 0.35 13%12. High Growth 0.40 6%9. Competition 0.45 0%3. Risk Acceptance 0.46 0%10. Product Innovation 0.47 0%7. Technology Absorption 0.49 0%4. Networking 0.52 0%1. Opportunity Perception 0.63 0%6. Opportunity Startup 0.64 0%5. Cultural Support 0.65 0%2. Startup Skills 0.84 0%

Page 252: Zoltán J. Ács László Szerb Erkko Autio

Venezuela World Rank 112 of 130 South and Central

America / Caribbean Regional Rank 20 of 23

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 30.0 million GDP per capita PPP $11,623 Rank in Doing Business Index 2013 181 / 189 Rank in Global Competitiveness Index 2013-2014 131 / 144 Rank in Economic Freedom Index 2013 175 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

22.6 22.657.1 57.144.9 44.9

13. Internationalization 0.04 18%3. Risk Acceptance 0.08 15%14. Risk Capital 0.09 14%11. Process Innovation 0.12 11%10. Product Innovation 0.16 8%9. Competition 0.17 7%12. High Growth 0.18 6%7. Technology Absorption 0.18 6%5. Cultural Support 0.18 6%6. Opportunity Startup 0.19 5%8. Human Capital 0.22 2%4. Networking 0.51 0%1. Opportunity Perception 0.87 0%2. Startup Skills 1.00 0%

Page 253: Zoltán J. Ács László Szerb Erkko Autio

Vietnam World Rank 85 of 130 Asia-PacificRegional Rank 13 of 21

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 88.8 million GDP per capita PPP $3,318 Rank in Doing Business Index 2013 99 / 189 Rank in Global Competitiveness Index 2013-2014 68 / 144 Rank in Economic Freedom Index 2013 147 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

28.8 28.863.3 63.346.5 46.5

3. Risk Acceptance 0.08 25%7. Technology Absorption 0.15 18%9. Competition 0.19 13%11. Process Innovation 0.20 12%13. Internationalization 0.21 11%2. Startup Skills 0.24 8%1. Opportunity Perception 0.24 8%5. Cultural Support 0.28 4%6. Opportunity Startup 0.39 0%12. High Growth 0.41 0%10. Product Innovation 0.46 0%14. Risk Capital 0.49 0%8. Human Capital 0.60 0%4. Networking 0.62 0%

Page 254: Zoltán J. Ács László Szerb Erkko Autio

Zambia World Rank 110 of 130 Sub-Saharan AfricaRegional Rank 16 of 29

Factor Driven Efficiency Driven Innovation Driven

Overall GEI Score Individual Indicators Institutional Indicators

General Indicators Population 14.1 million GDP per capita PPP $1,474 Rank in Doing Business Index 2013 83 / 189 Rank in Global Competitiveness Index 2013-2014 96 / 144 Rank in Economic Freedom Index 2013 88 / 178

Pillar Scores from worst to best Percentage of total new effort for a 10 point improvement in GEI score

23.0 23.064.0 64.046.2 46.2

2. Startup Skills 0.03 25%7. Technology Absorption 0.09 21%12. High Growth 0.11 18%14. Risk Capital 0.15 15%10. Product Innovation 0.20 9%3. Risk Acceptance 0.21 8%11. Process Innovation 0.26 3%8. Human Capital 0.28 1%4. Networking 0.28 1%5. Cultural Support 0.35 0%1. Opportunity Perception 0.36 0%9. Competition 0.38 0%6. Opportunity Startup 0.39 0%13. Internationalization 0.56 0%