THE EFFECT OF FINANCING SOURCES ON REAL ESTATE
DEVELOPMENT IN KENYA
JOSEPH KAMAU MWATHI
A RESEARCH PROJECT SUBMITTED IN PARTIAL
FULFILMENT OF THE REQUIREMENTS FOR THE DEGREE OF
MASTER OF SCIENCE IN FINANCE OF THE UNIVERSITY OF
NAIROBI
2013
ii
DECLARATION
This research project is my original work and has not been presented for examination in
any other University.
Signature: ________________________ Date: _______________________
Joseph Kamau Mwathi
Reg No: D63/72514/2012
This research project has been forwarded for examination with my approval as the
University supervisor.
Signature: ________________________ Date: _______________________
Mr.James M Karanja
School of Business, University of Nairobi.
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ACKNOWLEDGEMENTS
I wish to thank The Almighty God for giving me a gift of life to write this work. I wish
to express my gratitude to my supervisor Mr. James M Karanja forhis professional
guidance in research methodology and motivation that enabled me to compile this
project. I also extend gratitude to my classmates whose presence offered me the
psychological motivation and need to learn.
Finally, I thank my family for supporting me throughout my studies.I can’t express my
gratitude in words for my family, whose unconditional love has been my greatest
strength.
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DEDICATION
I dedicate this project to my wife Florence Wanjiru, children Jackie, Gideon and Esther
,friends and colleagues at my work place,the school of business and administration at
the University of Nairobi for being a strong pillar stone throughout my Msc
Financecourse.Without their love and support this project would not have been made
possible. I have been deeply humbled by the knowledge acquired and support accorded
to me during my studies at the university.
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ABSTRACT
The purpose of this study was to establish the sources of financing real estate in Kenya. In specific terms the study reviewed whether financing in the real estate originates from; mortgage financing, savings, venture capital and equity financing.This study also employed descriptive survey design since it is conducted to describe the present situation, what people currently believe, what people are doing at the moment and so forth. The population of this study wasall the real estate firms in Nairobi. This study used secondary data for five years. Data was analyzed using Statistical Package for Social Sciences (SPSS) and results were presented in frequency tables and charts. The data was then analyzed in terms of descriptive statistics like frequencies, means and percentages. The findings indicated that mortgage financing is the most used source of financing, with equity and venture capital being the least source of financing used. The findings also indicated that there is a significantly positive relationship between mortgage financing and real estate development. However the findings recommended that to increase use of equity and venture capital as a source of financing will require businesses to sell their ideas to people who have money to invest.Equity and venture capital financing can be a good source of financing but with combining them with other sources of financing. Further research should be on the effects of sources of financing in unsuitable economic conditions, political instability and a global economic crisis and internal and external factors that affect the decision on sources of financing for real estate firms in Kenya. Carrying out this study will analyze decisions on the best methods to source for finances during such times and will also analyze critical factors that managers ought to consider in order to make their decision on sources of financing yield successful results.
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TABLE OF CONTENTS
DECLARATION ........................................................................................................ ii
ACKNOWLEDGEMENTS ....................................................................................... iii
DEDICATION ........................................................................................................... iv
ABSTRACT ................................................................................................................ v
LIST OF TABLES ..................................................................................................... ix
LIST OF FIGURES .................................................................................................... x
LIST OF ABBREVIATIONS .................................................................................... xi
CHAPTER ONE ......................................................................................................... 1
INTRODUCTION ...................................................................................................... 1
1.1 Background of the Study ................................................................................. 1
1.2 Research Problem ........................................................................................... 8
1.3 Research Objective ........................................................................................10
1.4 Value of the Study .........................................................................................10
CHAPTER TWO .......................................................................................................12
LITERATURE REVIEW ..........................................................................................12
2.1 Introduction ...................................................................................................12
2.2 Theoretical Review ........................................................................................12
2.3 Empirical Review ..........................................................................................14
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2.4 Summary .......................................................................................................24
CHAPTER THREE ...................................................................................................26
RESEARCH METHODOLOGY ..............................................................................26
3.1 Introduction ...................................................................................................26
3.2 Research Design ............................................................................................26
3.3 Population .....................................................................................................27
3.4 Sample ...........................................................................................................27
3.5 Data Collection ..............................................................................................28
3.6 Data Processing .............................................................................................28
CHAPTER FOUR......................................................................................................31
DATA ANALYSIS, RESULSTS AND DISCUSSION ..............................................31
4.1 Introduction ...................................................................................................31
4.2 Descriptive Results ........................................................................................31
4.3 Model Results ................................................................................................34
4.4 Summary and Interpretation of Findings ........................................................36
CHAPTER FIVE .......................................................................................................39
SUMMARY , CONCLUSION AND RECOMMENDATIONS ...............................39
5.1 Summary .......................................................................................................39
5.2 Conclusions ...................................................................................................40
5.3 Policy Recommendations ...............................................................................42
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5.4 Limitations of the study .................................................................................43
5.5 Suggestions for Further Research ...................................................................43
REFERENCES ..........................................................................................................45
APPENDICES ............................................................................................................52
Appendix I: Secondary Data Collection Template ....................................................52
Appendix II: List of Real Estate Firms .....................................................................55
Appendix III: Data ...................................................................................................58
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LIST OF TABLES
Table 4.1: Descriptive Statistics for Real Estate Financing ...........................................32
Table 4.2: Model Fitness ..............................................................................................35
Table 4.3: Analysis of variance (ANOVA) ...................................................................35
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LIST OF FIGURES
Figure 4. 1: Trend analysis in financing .......................................................................33
Figure 4. 2: Trend analysis in Units developed by Real Estate Firms ............................34
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LIST OF ABBREVIATIONS
ABS Australian Bureau of Statistics
CBK Central Bank Supervision
CMBS Commercial Mortgage-Based securities
KPDA Kenya Property Developers Association
REIT Real Estate Investment Trusts
RMBS Residential Mortgage Backed Securitization
SSA Sub- Saharan Africa
ULI Urban Lands Interest
ULT United Learning Trust
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CHAPTER ONE
INTRODUCTION
1.1 Background of the Study
The development of the housing sector is widely recognized as an integral part of
economic development. In addition to the large share that the housing sector occupies in
the economy, its importance also arises from the positive externalities and spillover
effects, and its impact on the social and political climate, issues of particular importance
in developing countries. In most countries, and increasingly so in emerging economies,
housing represents a large proportion of a household’s expenditure and takes up a
substantial part of lifetime income. Usually, it is the largest asset owned by households.
The backward and forward linkages to land markets, durable goods manufacturing and
development of labor markets with depth and mobility further underscore the
significance of this sector, particularly in the process of economic transition (Bardhan&
Edelstein, 2007).
According to Zhu (2006) it is also widely understood that the provision of housing
services depends upon a well functioning housing finance system. Indeed, without a
properly functioning housing finance system that operates in an allocationally and
operationally efficient manner, the “real” housing market would be sub-optimal.
Moreover, similarly to the housing markets, the housing finance system has beneficial
spillover effects on the entire financial system with far-reaching consequences for
2
economic development. Increasing emphasis is therefore being placed in developing and
transitioning countries on the reform of real estate finance and mortgage markets.
1.1.1 Financing sources
Mortgage is a loansecured by real property through the use of a mortgage note which
evidences the existence of the loan and the encumbrance of that realty through the
granting of a mortgage which secures the loan. A mortgage market is important for the
process of capital accumulation in a developing economy, and is critical to enhancing
the depth and reach of the financial markets. Since housing is the primary tangible asset
of a developing or transitioning economy, it can then also be used as collateral to borrow
funds in order to carry out productive capital investment. Mortgage debt accounts for a
large proportion of household debt and, through secondary markets and securitization,
supports the efficient functioning of financial markets. Housing finance, as well as other
real estate finance, are vital elements both in the development of a dynamic housing
sector as well as a growing and deepening financial sector. In addition to creation of
more lending channels, more investment channels are opened up as well for both
institutional and individual investors, leading to more complete and efficient markets
(Goodhart, 2003).
Sources of financing corporate real estate and the utilization, techniques and motivations
involved in leasing real estate by manufacturing and service corporations have been
investigated by Redman and Tanner. These researchers found out that significant
sources of funds to acquire real assets for production and distribution were operating
cash flows rather than external sources. Leasing was a common technique to finance and
3
acquire assets, allowing for managerial flexibility and tax-sheltering benefits and
creating off-balance sheet financing (Redman and Tanner, 1989).
Funds for real estate development in Ghana are acquired through diverse sources. Some
are obtained through the debt finance with some relatively few banks in the country
giving financial support to real estate developers provided all requirements are fulfilled.
Surveys throughout the country also indicate the persistence of informal financing
methods such as the use of homeowners’ own sweat equity, barter arrangements and
remittances from abroad , (Debrahet al., 2002 and Erguden, 2002). The loans acquired
are given on short, medium and long terms repayment period with interest rates charged
on them. There are various forms of funding that can be considered by real estate firms
in Ghana. Some of these are bonds, mortgage facilities stocks investment trusts,
merchant and commercial banks and mortgage companies. Moreover, there are other
forms of financial relieve that are being enjoyed by real estate developers. Trade
crediting involves the delay of payment of creditors beyond the normal period, high
purchasing system enables a company to enjoy a full use of goods or equipment but
avoids initial full sum payment.
1.1.2 RealEstate Development
Direct new expenditures in the construction industry or in other real estate related
industries stimulate the economy and generate jobs. Since a substantial portion of
generated income is plowed back into the economy, there is an additional multiplier
effect. This is true of any industry. However, since the real estate industrial sector
cluster is largely a non-tradable industry (i.e. most of the output and inputs associated
4
with the industry stay, and are from within the confines of the domestic economy), there
is little leakage out of the country. The localized and domestic nature of real estate
therefore leads to a much larger multiplier effect than would be expected for more
tradable sectors. While construction, home maintenance and repairs, power and
transportation directly affect the economy, the extensive nature of downstream and
upstream linkages of real estate, from the finance sector to the furniture/consumer goods
sector, from infrastructure (roads, bridges, public works) to superstructure (commercial
space/retail, industrial, etc.) further impact the national economy. A given amount of
expenditure in the real estate industry (vis-à-vis other sectors) tends to support larger
numbers of jobs in the economy (Jaffee and Levonian, 2008).
Though real estate is considered a “local” business activity, the national residential and
nonresidential/ commercial real estate markets are essential for the development of
nationally integrated economic markets in general. A national economic market implies
a free flow of capital, labor and resources within the borders of a nation-state, and the
development of a national market for housing and other real estate resources is critical in
facilitating national markets in goods, services and factors. The experience of several
countries shows that regional disparities and distorted development are the norm if real
estate markets are regionally segregated and segmented. Whether firms respond to
investment opportunities in various parts of the country or whether people follow jobs, a
rapidly responsive market in commercial construction and support services, in the
development of hotels, rental housing and homes for sale, can lead to a more efficient
and geographically mobile labor market (Bardhan& Edelstein, 2007).
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1.1.3 Effects of Financing Sources on Real Estate Development in Kenya
In some countries the purchase of an entry-level home, often subsidized in some form,
has served as a stepping stone for upward social and economic mobility. As observed by
Bardhan, Datta, Edelstein and Kim (2003), the Singapore housing market, for example,
is characterized by the coexistence of a dominant public sector and a small, growing
private sector with relatively higher quality housing. While accounting for the impact of
the former on the latter, they find that an increase in the rate of change of public housing
resale prices has an important and significant positive impact on the sales of private
residential units. The underlying mechanism for this effect is that occupants of the
subsidized public sector flats are allowed to sell their flats after a certain period, subject
to some restrictions, and capital gains from the sale proceeds provide a substantial
portion of the down payment in the purchase of new, more expensive, private
apartments. This tandem of private-public activity lends a helping hand to upwardly
mobile households, and the larger social and economic value created far outweighs the
resources expended in the public sector housing subsidies (Bardhan, Datta, Edelstein
and Kim, 2003).
Laibson (1998) developed simulation theory and examined the extent to which markets
enable the provision of housing finance across a wide range of countries. Housing is a
major purchase requiring long-term financing, and the factors that are associated with
well-functioning housing finance systems are those that enable the provision of long-
term finance. The theory stated that countries with stronger legal rights for borrowers
6
and lenders (through collateral and bankruptcy laws), deeper credit information systems,
and a more stable macroeconomic environment have deeper housing finance systems.
Pottow (2007) in structural- form theory documented the evolution of mortgage finance
in SSA (Sub- Saharan Africa) to determine what steps need to be taken to extend it to
the middle-class, to enable them to address their housing needs to the extent of their
affordability. The theory revealed that there have been a number of problems when it
came to the delivery of formal housing finance amongst most, if not all the countries.
1.1.4 Real Estate Sector in Kenya
According to KIM journal (Nov-Dec 2007) vision 2030, it is estimated that over 80% of
Kenyan population will have migrated from rural areas, meaning that that shelter is one
of their basic needs. Presently, slum dwellers are1/3 of the urban dwellers population
whereby Kenya’s Kibera slum is one of the largest dwelling in Africa yet only
approximately three million people are urban dwellers. Hence as more rural urban
migration occurs more houses, well constructed must be built to combat slum uprising
problem.
The real estate industry must be supported and it will have to grow at a faster pace that it
currently does. The Kenya industry is benefiting from economic growth of the country
and the inflow of foreign aid is being regarded as a very promising venture. The
government is also heavily investing in this industry in various ways such as the
inclusion of the ministry of housing in the government body, availing of funds to the
7
housing ministry; enforcement of laws to do urban planning, regulatory laws in license
permits (Homes Expo Kenya, 2012)
Nairobi is a prime market in a major way especially because of infrastructural
development and market interest. Investors are being attracted by the city’s potential to
offer high returns on the property market. There is also a notable high demand
especially in the high-end market, which is expected to grow even more as interest rates
come down. To give you a clearer picture, the City Council of Nairobi approve an
estimated 12,000 residential and commercial building plans each month. But with the
formation of county governments, there’s bound to be more keen interest in real estate
development in other towns (Homes Expo Kenya, 2012).
It is also worthy to note that in some segments such as luxury real estate it has been
observed by analysts that the cities of Nairobi and Mombasa are global trailblazers.In
terms of growth, Kenya’s real estate market is still superior in comparison to her peers
in the region. Although the rest of East Africa is also making considerable headway with
much improved infrastructure and renewed interest by developers to build and sell more
in trying meet the growing demand in both residential and commercial property
segments. Growth drivers are quite similar across the region with factors such as rapid
urbanization, modern household formations, regional economic growth, improved
government policies among others (Kamau, 2011).
Kenya has a well-developed construction and building industry with readily available
quality engineering, building and architectural design services. The industry is currently
on an upward trend, due to the implementation of programmes such as the Urban
8
Transport Infrastructure plan. The increase in population and rural to urban migration
has presented numerous opportunities for investors, especially in the housing sector.It is
projected that Kenya will have a population of over 60 million people by the year 2030
and more than 50% of them were living in urban areas, creating a huge demand for new
housing units. It is estimated Nairobi alone requires approximately 150,000 new housing
units per year against a maximum construction of about 10,000 units per year (Mbugua,
2004).
1.2 Research Problem
In recent years the population of Kenya has steadily increased, resulting to the urban
population in Nairobi to a record of 3 million, whereby all these people need shelter,
hence the real estate industry is doing well and contributing to the economy (Nuri,
Erbas& Frank Nothaft, 2002). Despite recent indication that the real estate business in
Kenya is performing well, there is evidence that certain challenges still persist. These
include amongst others, social, economic, cultural, legal and personal factors. This has
led to stalled projects and unoccupied complete properties. This being an important
industry that makes enormous contribution to the Kenyan economy, there are some gaps
in the literature that ought to be filled, these includes: the available literature has not
indicated ways in which real estate enterprises can be empowered to compete on equal
levels with established businesses and also where the booming housing development is
the city has been sourcing its financing (Mwangi, 2002)
A studies conducted byLustigand Nieuwerburgh (2005) and Kamau (2011) indicate
thatthere is growing competition for funding of real estate development due to
9
competing needs for using the same funds to finance other productive sectors of the
economy. The studies indicate the existence of shortage of long term funds which are
mainly required to finance housing projects due to banks preferring short term
financing. The Central Bank Supervision report of 2012 indicates long term funding
mismatch which further complicates the funding mechanisms of long term projects in
the real estate sector (CBK, 2012).
Michuki (2010) did a study on the existence of Real Estate Investment Trusts (REITS)
needs by institutional investors at the Nairobi Securities Exchangeand concluded that
investors would invest in REITs if they were to be introduced at the exchange and
therefore confirming that REITs needs do exist among institutional investors at the NSE.
Wahome (2010) conducted a study to establish the effects of mortgage financing on
performance of the firms and concluded that mortgage financing is influenced by market
and financial factors which includes increase investment and improve profitability of the
firm, improvement of risk management, attraction' of more customers ,promotion of
innovations, market penetration, diversification of investment and encountering
competitions in the market lowering of interest on Treasury bond, Kenya financial laws
require bank to have less cash in reserve and high interest from mortgage, creating of
wealth and Improving savings. The objective of the study was to establish the
relationship between factor influencing mortgage financing and performance of
mortgage institutions in Kenya. This has left limited finance for long term projects and
hence the need to investigate the financing source of the current growth of real estate in
Kenya. Based on this well informed research gap, this study, therefore, examines the
sources of real estate financing in Kenya.
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1.3 Research Objective
The key objective of this study was to establish the source of financing real estate in
Kenya. In specific terms the study reviewed whether financing in the real estate
originates from; mortgage financing, savings, venture capital and equity financing.
1.4 Value of the Study
The findings of the study will be useful to the stakeholders and players in real estate
industry. The study was expected to reveal the key sources of financing real estate
developments and the findings will be key pointers to potential investors on where and
how to raise funds from.
The government will be able to appreciate the limitations that face real estate financiers
and developers. Such appreciation will inform policy change for the improvement of the
sector with an objective of making it more productive and hence creating more
employment and contribute meaningfully to the national economy. The Government
will also understand the incentives that are required in order to direct more funding by
banks to the real estate sector.
Future researchers will have a reference point from the information gathered that will
contribute to understanding the financing sources for the real estate sector. It forms a
basis for and stimulates research in order to develop a better understanding of factors
influencing investment finance in the real estate industry.
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Venture capitalists and equity capitalists will appreciate the financing gaps in the real
estate sector in Kenya. Based on the findings of the study it is able to target particular
projects and segments within the sector for their maximum returns on their investments.
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CHAPTER TWO
LITERATURE REVIEW
2.1 Introduction
This chapter discussed theories relevant to the study. Literature related to the study is
also reviewed with the aim of identifying literature gaps.
2.2 Theoretical Review
This section contains review of theories relevant to the study.
2.2.1 Simulation theory
The theory was developed by Laibson (1998) and examines the extent to which markets
enable the provision of housing finance across a wide range of countries. Housing is a
major purchase requiring long-term financing, and the factors that are associated with
well-functioning housing finance systems are those that enable the provision of long-
term finance.
The theory further states that countries with stronger legal rights for borrowers and
lenders (through collateral and bankruptcy laws), deeper credit information systems, and
a more stable macroeconomic environment have deeper housing finance systems. These
same factors also help explain the variation in housing finance across emerging market
economies such as Kenya. Across developed countries, which tend to have low
13
macroeconomic volatility and relatively extensive credit information systems, variation
in the strength of legal rights helps explain the extent of housing finance.
To a certain extent, a statistical comparison of the loan-to-value and loan-to-income
ratios can provide a good indication of the risks that owner-occupiers run in financing
their own home. At the same time, this kind of comparison ignores the causes of the
risks, namely the volatility or uncertainty of future interest rates, house prices and
changes in income. It also disregards the main mortgage characteristics, the cost of
taking out a mortgage, and the direct and indirect subsidies, including interest
deductibility, factors that have a big influence on the real costs and risks for
homeowners.
2.2.2 Structural Form theory
This theory was formulated by Pottow (2007). It documents the evolution of mortgage
finance in SSA (Sub- Saharan Africa) to determine what steps need to be taken to
extend it to the middle-class, to enable them to address their housing needs to the extent
of their affordability. The theory revealed that that there have been a number of
problems when it came to the delivery of formal housing finance amongst most, if not
all the countries,
These problems are a record of macroeconomic instability, an adverse institutional, legal
and regulatory environment which has resulted in inefficient, collateralization of
housing assets, a poor record of public sector housing banks, building societies and
other specialist housing lenders in that most have been destroyed due to poor
14
management and a lack of funds and limited availability of long-term funding sources to
carry out intermediation that would spread the cost of a house over a relatively long
period of time.
Arising out of this dismal history is a move to revive and introduce mortgage lending
into a number of countries. Moreover, as part of the move to straighten out financial
markets, a number of consultants have been sent into SSA countries to begin
documenting the specific problems of each country as well as to make recommendations
on how to address them. Development agents, in particular, are also putting forth
recommendations on what is required to ensure financial market development and
capital market investment necessary to entice the private sector into the delivery of
housing finance.
2.3 Empirical Review
Housing is for many households around the world both the largest expense and the most
important asset. For all householdit is an important determinant of quality of life. For the
majority in developed countries, and for some in emergingmarket economies, housing is
adequate. But a significant proportion of the world’s population does not have access to
adequateand affordable housing. According to UN-Habitat (2005), roughly one billion
people, or one-third of the world’s urbanpopulation, live in slums. And a well-
functioning housing market influences not only shelter concerns. At a basic level,
acountry’s housing sector can improve public health (by reducing the likelihood of
outbreaks of disease), stimulate economicgrowth (through its own job creation, but also
15
as workplaces for home-based entrepreneurs), and have important social con sequences
(by influencing crime reduction and citizenship).The best housing sectors should enable
the adequate provision ofshelter across all segments of the population.
While there are many aspects to the housing market (discussed below), it can be argued
that the provision of housing finance is a binding constraint that must be addressed
before the market can sustainably provide adequate housing. Even in the best of
environments, housing is a major purchase—average home prices typically ranging
from 4 times annual income in developed countries to 8 times annual income in
emerging economies (Ball, 2003)—that is affordable only when payments can be spread
out over time. Absent a well-functioning housing finance system, for manythe market-
based provision of formal housing will be neither adequate nor affordable. Other
housing or housing financesolutions are possible—such as subsidies and the outright
provision of public housing—but these can be unsustainable (Quigley,2006)
While housing finance is a vital component of a well-functioning housing system, to
date there has not been a systematicanalysis of the depth of housing finance across a
broad set of countries.In fact, as far as we know, no formal cross-countrystudy of the
size of the housing finance market exists. Existing international housing finance studies
tend to be descriptive andhighly informative, but lack any formal empirical analysis and
often focus on one or more country case studies. Diamond and Lea (2002) evaluate the
housing financesystems of five countries. Chiquier et al. (2004) include case studies of
eight emerging market economies. Low et al. (2003),the Mercer Oliver Wyman study,
focus on eight countries in Europe. Hegedus and Struyk (2005) present case studies on
16
seventransition economies and Germany and tabulate housing finance statistics. Chiuri
and Jappelli (2003) analyze 14 developed countries (with an emphasis on loan-to-value
ratios). Allen et al. (2004) include a short section on mortgage markets in 17developed
countries. Renaud (2005) includes a presentation of data on 45 countries, the broadest
set of countries available. All of these studies are important, but none formally studies
why some countries have larger mortgage markets thanothers and none includes formal
empirical analysis.
Chinese commercial real estate financing meet the same problem as that of real estate, but
the problem is more complicated. As commercial real estate differentiates real estate in the
characteristics that commercial real estate needs long development period, large investment,
long payback time, high- stake and high-return, the financing of commercial real estate is
much more difficult. Nowadays, the primary options of commercial real estate financing are
bank loans and self-financing only takes a small share in contrast. However, based on risk
consideration, banks stipulate strict rules of loans both in amount and time to commercial
real estate developers. According to some relevant statistics, it shows that 70%-80% capital
of Chinese commercial real estate developers comes from bank loans, and in some cities it
even reaches 90% (Han,2007). According to an investigation of China business association
in 2006, more than 80% of the investment capital of shopping mall of all whole countries
comes from banks. Therefore, in development of commercial real estate, the financing
channels are limited, which meanwhile results in substantial risk on banks.
In the 1940s, there was already commercial real estate in America. With several
decades’ development, American commercial real estate has become mature in the
whole process like inviting investment, financing and operating. In America, the
17
developers of commercial property not only consider the sale of the properties, but also
the operation of the properties, they would have detailed plan about the development,
operation, management and so on. Most developers would choose to possess the
properties after they develop them, which can reduce the risk of investors because the
developers of commercial real estate would not only consider development of these
properties, but also the operation (Jiang,2007). This is different from China’s
commercial real estate. In China, the developers usually develop to sell, not to possess
because to develop commercial real estate needs large amount of money and the current
financing system of China cannot let developers possess the properties too long, their
70%-80% capital come from banks and these loans are usually short-term, they need to
get the funds back as soon as possible. In America, 10% of the capital for developing
commercial real estate comes from banks, 90% of the capital comes from the
developers’ own fund and other funds from investors. The low proportion of bank
financing and high proportion of other funds financing reduce the risk of developers
(Jiang,2007).
The financing of US commercial property market is different from that of real estate
market in aspects of participants, financing structure, securitization ratio or the quality
of bank loans. According to Moody, up to 2007, the market value of American
commercial real estate was 5.3 trillion US Dollars; the proportion of market value of
commercial properties is 36.6% for offices, 24% for apartments, 22.1% for retail, 15.3%
for industrial properties, 2% for hotels and so on. According to Deloitte, the financing
structure of American commercial real estate is 50% for bank loans, 25% for CMBS
18
(commercial mortgaged-based securities) issuing, 10% of loans from insurance
companies and 15% from other sources.
Compared to real estate financing, American commercial real estate financing has the
following characteristics. Firstly, the main participants are institutional investors, the
main source of capital comes from the institutional investors like banks, insurance
companies, pension funds, and the borrowers are developers, builders and investors.
However, for residential real estate, the borrowers are the main individuals who will buy
the houses. Secondly, the leverage is high. According to RREEF and ULT (urban lands
interest), up to the end of 2008, the whole leverage of commercial real estate was about
60%. Thirdly, the developers of commercial real estate would re-finance when the debt
becomes due. As the development and the operation of commercial real estate need a
long time, so more financing is needed to satisfy the need for capital (Ge, 2010).
In big aspects, the financing of American commercial real estate is divided into debt
financing and equity financing (Ge, 2010). For equity financing, there are private equity,
which means that individuals have the equity of the listed real estate companies; and
public equity, which is REITs. According to the estimation of ULI, up to the end of
2008, the proportion of the two equity financing is 80% and 20% separately. REITs
financing develops very well in America, so far there are more than 200 trust companies
trading in the exchanges. In America, there are 85% equity REITs, 15% mortgage
REITs and 5% hybrid REITs (Yang, 2009). In America, REITs is always in the form of
stock company, the company issue stocks to attract the money of investors and then they
19
will hire specialized institutions to manage the products and money, the institutions will
get the interest of real estate investment indirectly and the management fee of REITs.
For debt financing, according the statistics of Federal Deposit Insurance Corporation, up
to the end of 2009, the total amount of debt for American commercial real estate is 3.4
trillion dollars, 50.3% for commercial banks and saving institutions, 20.7% for CMBS,
CDO, and the other for other institutional investors. The debt financing is divided into
private debt, which is bank loans, and public debt, which is CMBS. Bank loans accounts
about 50% of the debt of commercial real estate. There are some characteristics that are
different from loans for residential houses. Firstly, most loans are from regional and
community banks or institutions.
Secondly, the rate of violation is usually lower than that of residential mortgages
(Ge,2010). The CMBS financing is frequently used in the financing of commercial real
estate, the advantages of CMBS make it very popular in the commercial real estate
financing. Firstly, the complexity is lower compared to RMBS (residential mortgage
backed securitization), commercial real estate loan can always avoid the risk of
advanced repayment (It is always about 10 years.). Secondly, the securitization rate is
lower compared to residential real estate. Thirdly, the degree of scatter is lower
compared to RMBS (Ge,2010)
Since the Asia financial crisis, ABS has had great development in some Asian countries,
especially in Hong Kong. ABS can transfer the illiquid real estate to liquid securities
and then sell to investors, the investors own creditors’ rights of securities instead of
owning the right of real estate. This is very useful for real estate development as real
20
estate is an illiquid, the investment is huge, the development cycle is long, the liquidity
is poor, the securitization of real estate can change the situation, real estate securities can
exchange in the stock market. In Hong Kong, the transformation of capital and assets is
very smooth, the financial market and the real estate promote mutually (Wang & Hu,
2004).
Bank loans are the main source of real estate developers. In the whole capital chain,
bank loan account for at least 55%, some even more than 90% (Han,2008).Bank loans
almost go through every part of the development process, including land reserve, real
estate developing, selling and buying.
The mezzanine debt is senior to the original equity but junior to the bank, hence, viewed
to reside in the middle. Mezzanine financing is generally used to fill the gap between
low-risk collateralized debt obtained from traditional lenders and higher-risk equity
interests. Unlike a traditional bank loan, a mezzanine lender does not hold real assets of
a company as collateral but instead has an indirect link to the company's equity in the
case of default. In other words, mezzanine lenders most often gain an equity ownership
in real estate or the financed project, if borrowers default (Bean, 2008).
Mezzanine financing is well-developed in developed countries. It is estimated that there
are more than 100 billion dollars investing in mezzanine fund (Liu&Song, 2007). The
main investors were insurance companies in the early stage, and gradually mainly with
fund companies and commercial banks. Fund companies account for 70% and
commercial banks 20% (Sun, 2005). Many banks like Goldman, Deutsche Bank and
Bank of America Merrill Lynch have set up mezzanine investment fund. As mezzanine
21
financing products have good liquidity and low fluctuation, it has great attraction to the
institution investors like insurance companies, commercial banks, investment banks,
hedge fund and pension fund. Mezzanine financing is a mature asset class. In the
alternative assets class of institution investors, mezzanine asset accounts for 5%, and the
current interest is 12%, the total annual average return rate of investment is 18-20%, the
mortgage period is 5-7 years.
Mezzanine financing has been widely used in emerging market. FMO has been
providing mezzanine financing for small and medium companies for developing
countries such as China, Indonesia, Thailand and Brazil. Also Value Partner has
invested more than 100 small and medium enterprises in China (Liu 1&Song, 2007).
There is great potential in Asia market. The economic development, enterprises upgrade
and market reform increases the demand for venture capital, which creates a good
opportunity for the development of mezzanine financing. The main demand in
mezzanine financing focuses on infrastructure, industrial and commercial areas. The
small and medium enterprises have great demand for mezzanine capital for the
development.
There is a positive relationship between operating assets (fixed assets) and long-term
debt in Ghana. Ghanaian banks with a higher proportion of operating assets are financed
by long-term debt capital, (Amidu, 2007). This could be due to the fact that higher
proportions of banks’ operating assets denote less operating risk; therefore, the banks
may not be exposed to more risk from the use of more long-term debt capital. There is
also a negative relationship between size and long-term debt, (Amidu, 2007). This
22
suggests that smaller banks, due to their limited access to equity capital market tend to
rely on long-term debt for their financing requirements. However, long-term debt
structure is positively and statistically related to operating assets (Amidu, 2007). More
than 87 per cent of the Ghanaian banks’ assets are financed by debts, of this, short-term
debts appear to constitute more than three quarters of the capital of the banks (Amidu,
2007). This highlights the importance of short-term debt over the long-term debt in
Ghanaian banks’ financing. Empirical evidence suggests that profitability, corporate tax,
growth, asset structure and bank size are important variables that influence banks’
capital structure.
Better corporate frameworks benefit firms through greater access to financing; lower
cost of capital, better performance and more favorable treatment of all stakeholders
Claessens et al. (2002). Firms with well-established corporate governance structures are
able to gain easier access to debt financing at lower cost since such firms are able to
repay their debt on time (Abor, 2007). This suggests that the ability of the firm to access
debt capital at lower cost could be dictated to a large extent by how the market gauges
its corporate governance system. Easier access to debt capital at lower cost, ultimately
leads to improved company performance.
Countries with a developed housing finance system tend to experience lower
construction costs and the use of housing assets to support broader investment
opportunities through formal institutional frameworks (Blasko and Sinkey, 2005). The
financial market is critical to the development process for real estate developers and
investors, (Miles et al, 2000). There are suggestions that poor access to private external
23
finance relates to demand-side problems, particularly a lack of information about
available sources, rather than a lack of available credit (Fraser, 2004). Generally, there is
a gross persistence of informal financing methods throughout Ghana. Residential
property owners in Ghana as in most developing countries use their own sweat equity,
barter arrangements and remittances from abroad to build their houses (Debrahet al,
2002 and Erguden, 2002).
In Ghana, lack of access to long term capital is a major barrier to real estate delivery.
Even though the government policies recognizes the private sector’s dominant role in
housing provision, the banks have short term funding and unable to lend on medium or
long-term bases, thus crippling the real estate industry (Adjonyoh, 2007).
Kamau (2011) did a study on the factors that influence investment in the real estate
industry in Nairobi. The research design employed by the study was descriptive research
and targeted all licensed real estate enterprises in located in Nairobi. The researcher
used questionnaires to collect data and analyzed data using SPSS .The study findings
indicated that all the real estate investment firms work towards reducing the housing
deficit in the city of Nairobi which currently stands at 410 house units a day, the study
also concluded that although deregulation of this sector is a necessary condition for
revival of a healthy real estate investment sector, deregulation cannot by itself ensure
that a full range of real estate investment accommodation is provided.
24
2.4 Summary
Based on the literature reviewed, it is evident that there are various source of real estate
financing and it depends on the circumstances surrounding a project. It has also been
revealed that there is no one best or worst financing option. Project financing option also
depends on the structure and the risks associated with the project. It is therefore
important to seek to appreciate the real estate financing options available in Nairobi,
Kenya.Studies conducted byLustig and Nieuwerburgh (2005) and Kamau (2011)
indicate that there is growing competition for funding of real estate development due to
competing needs for using the same funds to finance other productive sectors of the
economy. The studies indicate the existence of shortage of long term funds which are
mainly required to finance housing projects due to banks preferring short term
financing.Several studies have been done but there is paucity in Kenya. Michuki (2010)
did a study on the existence of Real Estate Investment Trusts (REITS) needs by
institutional investors at the Nairobi Stock Exchangeand concluded that investors would
invest in REITs if they were to be introduced at the exchange and therefore confirming
that REITs needs do exist among institutional investors at the NSE. Wahome (2010)
conducted a study to establish the effects of mortgage financing on performance of the
firms and concluded that mortgage financing is influenced by market and financial
factors which includes increase investment and Improve Profitability of the firm,
improvement of risk management, attraction' of more customers ,promotion of
innovations, Market Penetration, diversification of investment and encountering
competitions in the market lowering of interest on Treasury bond, Kenya financial laws
require bank to have less cash in reserve and High interest from Mortgage, creating of
25
wealth and Improving savings. However the studies did not address the sources of real
estate financing in Kenya.
26
CHAPTER THREE
RESEARCH METHODOLOGY
3.1 Introduction
This chapter contains research design, population, sample and data analysis. The chapter
also covers the research ethical issues to be observed. Research methodology is the
architecture or the layout of the research framework. According to Polit and Hungler
(2003) methodology refers to ways of obtaining, organizing and analyzing data.
3.2 Research Design
Research design is an outline of research study which indicates what the researcher will do
from writing the hypothesis and its operational implications to the final analysis of data.
A research design is the arrangement of conditions for data collection and analysis of
data in a manner that aim to combine relevance to research purpose with economy in
research procedure (Kothari, 2004). Research design constitutes decision regarding
what, why, where, when and how concerning an inquiry or a research study (Sekaran,
2011). Research design can be thought of as thelogical master planof a research
thatthrows light on how the study is to be conducted. It shows how all of the major
partsof the research study– the samples or groups, measures, treatments or programs,
etc–work together in an attempt to address the research questions. Research design
issimilar to an architectural outline. The research design can be seen as actualization
oflogic in a set of procedures that optimizes the validity of data for a given
27
researchproblem. According to Yin (2003) the research design serves to "plan,structure
and execute" the research to maximize the "validity of the findings".
This employed descriptive survey design. Descriptive survey conducted described the
present situation, what people currently believe, what people are doing at the moment
and so forth (Baumgartner, Strong and Hensley 2002). According to Kothari (2004),
descriptive survey design includes surveys and fact finding enquiries of different kinds.
The major purpose of descriptive research design is description of the state of affairs as
it exists at present (Kothari 2004).
3.3 Population
Burns and Grove (2003) and Mugenda and Mugenda (2003) describe population as all
the elements that meet the criteria for inclusion in a study. Population is therefore the
entire group of individuals, events or objects having a common observable
characteristic. The population of this study was all the real estate firmsregistered by
Kenya Property Developers Association (KPDA). The real estate developers registered
by Kenya Property Developers Association (KPDA) are sixty nine in number.
3.4 Sample
According to Polit and Beck (2003), a sample is a proportion of population to be
researched, while Kothari (2004) defines a sample as the selected respondent
representing the population. The study sample comprised of all real estate firms
registered by Kenya Property Developers Association (KPDA). This means that a
census was employed in order to include all 69 real estate firms. The sample was drawn
28
from the offices of the 69 firms in Kenya.
3.5 Data Collection
Secondary data was utilised in this study. This means that all the study variablesutilised
quantitative data. Data for real estate development was secondary data which was
sourced from the Kenya economic survey of year 2013. This included the number of
houses built in the span of five years (2008- 2012). Data for the independent variables
was gathered from the banks’ annual report. To compile the data, a secondary data
collection template was used.
3.6 Data Processing
Data Analysis is the processing of data to make meaningful information (Sounders,
Lewis and Thornhill, 2009). Burns and Grove (2003) define data analysis as a
mechanism for reducing and organizing data to produce findings that require
interpretation by the researcher. According to Hyndman (2008) data processing involves
translating the answers on a questionnaire into a form that can be manipulated to
produce statistics. This involves coding, editing, data entry, and monitoring the whole
data processing procedure.
After data was collected, it was prepared in readiness for analysis by editing, handling
blank responses, categorizing and keying into Statistical Package for Social Sciences
(SPSS) computer software for analysis. SPSS was used to produce frequencies,
29
descriptive and inferential statistics which helped to derive conclusions and
generalizations regarding the population.
3.6.1 Analytical Model
Multiple linear regression modelwasused to analyze the data using statistical package
for the social sciences (SPSS) version 20. A linear multiple regression modelwasused to
measure the relationship between the independent variables and the dependent variable
which are explained in the model. The regression model helps to explain the magnitude
and direction of relationship between the variables of the study through the use of
coefficients like the correlation, coefficient of determination and the level of
significance. Analysis of data using regression model has been used previously by
Aduda (2011) in a studywhich investigated the relationship between executive
compensation and firm performance in the Kenyan banking sector. Also Ngugi (2001)
used a regression analysis in a study on the empirical analysis of interest rates spread in
Kenya while Khawaja and Mulesh (2007) used regression analysis to identify the
determinants of interest rates spread in Pakistan. The multiple linear regression model
that was adopted for the study is as follows:
Y= a + β1X1+ β2X2+ β3X3+ β4X4+
Where: Y = real estate development units (Units are the projects for development). X1 =
mortgage finance, X2 = savings, X3 = Venture capital and X4= equity finance. In the
model a is the constant term while the coefficient β1 to β4are used to measure the
30
sensitivity of thedependent variable (Y) to unit change in the explanatory variable (X1,
X2, X3&X4). is the error term which captures the unexplained variations in the model.
31
CHAPTER FOUR
DATA ANALYSIS, RESULSTS AND DISCUSSION
4.1 Introduction
The chapter represents the results of the data collected. Descriptive statistics and model
results were presented. The chapter also includes the results interpretation and summary
of the findings.
4.2 Descriptive Results
This section presents the descriptive results where the measures of central tendency and
trend analysis are presented.
4.2.1 Measures of Central Tendency
Results in table 4.1 indicate that the lowest number of real estate units developed by the
firms was 6 while the maximum was 29. The average number of units developed
throughout the years was 16.66. The analysis also show that the lowest percentage
amount of mortgage financing by the real estate firms was 0.30 and the highest
percentage amount of mortgage used for financing was at 0.82. On average the
percentage mortgage financing used by real estate firms through years; 2008 to 2011
was 0.63.
32
Savings incorporated for financing of real estate’s indicated a minimum percentage of
0.05 and a maximum of 0.42. The average percentage amount of savings used for
financing was at 0.186. Results indicate that 0.000 was the minimum percentage amount
of venture capital used in financing real estates and 0.20 was the maximum venture
capital used. The average presented a 0.036 use of venture capital financing.Financing
through equity capital represent a minimumpercentage amount of 0.00 equity used and a
maximum of 0.53 equity used. The firms used an average percentage amount of 0.12
equity capital financing.
Table4.1: Descriptive Statistics for Real Estate Financing
Financing Type
Minimum Maximum Mean Std.
Deviation
Real Estate
Development Units 6 29 16.66 5.436
Mortgage (Debt
Financing) 0.3 0.82 0.6382 0.09463
Savings 0.05 0.42 0.1867 0.06837
Venture Capital 0 0.2 0.0537 0.04752
Equity Capital 0 0.53 0.1238 0.07926
4.2.2 Annual Trends of the financing options
Figure 4.1 indicates that debt as a source of financing for real estate firms have
gradually increased from year 2008 to 2012. The increase may be explained by low
interest rates charged and fair terms and conditions on borrowing.
33
Results also indicate that trend in savings as a source of financing was inconsistent.
From year 2008 to 2009 there was a gradual decrease with an increase in 2010, 2011
and a slight decline in 2012. This may be as a result of real estate firms using mortgage
financing more than savings.
Trend in venture capital as a source of financing revealed a gradual decrease from year
2008 to 2012. This can be explained by interest of few venture capital firms to finance
real estates. Results in Figure 4.1 shows that there was a slight increase in equity capital
as a source of financing in year 2009, followed by a gradual drop from in the following
years.
Figure 4. 1: Trend analysis in financing
54%59%
64%70%
73%
21%17% 17% 19% 19%
9% 6% 6% 3% 2%
16% 18%13%
9%6%
0%
10%
20%
30%
40%
50%
60%
70%
80%
2008 2009 2010 2011 2012
Perc
enta
ge F
inan
cing
Time in Years
Mortgage (debt)Financing
savings
venture capital
equity capital
34
The trend in units developed by real estate firms indicates an increase throughout the
years; 2008 to 2012 .This increase can be as a result of rise in demand for housing which
is triggered by changes in income level, consumer and investors preference.
Figure 4. 2: Trend analysis in Units developed by Real Estate Firms
4.3 Model Results
This section presented the model results. Result in table 4.2 indicates that the goodness
of fit of the model was adequate. This is reported by an r squared of 0.409 which means
that 40.9% of the variation in real estate development is explained by savings, venture
capital, mortgage and equity capital are substantial to explain real estates’ sources of
financing. This further implies that 59.1% of the variation in real estate development
units is explained by other factors not captured in the model.
11.3814.19
16.1419.71
21.86
0.00
5.00
10.00
15.00
20.00
25.00
2008 2009 2010 2011 2012
Aver
age
Num
ber
of u
nits
de
velo
ped
Time in years
35
Table 4.2:Model Fitness
Indicator Coefficient
R 0.64
R Square 0.409
Adjusted R Square 0.386
Std. Error of the Estimate 4.261
An Analysis of Variance (ANOVA) results in table 4.3 indicates that the overall model
was significant. This was supported by a p value of 0.000. The ANOVA results
demonstrated that the sources of financing that is equity capital,venture capital, savings
and mortgageare good predictors of real estate units’ development.
Table 4.3: Analysis of variance (ANOVA)
Indicator Sum of Squares df Mean Square F Sig
Regression 1258.464 4 314.616 17.332 0.000
Residual 1815.193 100 18.152
Total 3073.657 104
Table 4.4 presents regression of coefficient results which indicates that is a positive
relationship between mortgage financing and real estate units’ development. The results
also indicate the relationship was significant since the reported p value 0.009 was less
36
that the critical value of 0.05. Results further indicate that all the other sources of
finance had an insignificant effect on real estate development.
Table4.4: Regression Coefficients
Variable Beta Std. Error t Sig.
Constant -26.456 21.14 -1.251 0.214
Mortgage Financing 55.98 21.108 2.652 0.009
Savings 21.195 22.311 0.95 0.344
Venture Capital 26.283 22.645 1.161 0.249
Equity Capital 16.21 21.437 0.756 0.451
4.4 Summary and Interpretation of Findings
The minimum number of units that were developed by the real estate firms were 6 while
the maximum number of units developed were 29. The overall mean number of real
estate units’ development was 16.66. The results also show that there was a positive
trend in the number of units presented. This is as a result of increase in urbanization
which results to the rise in demand of housing and commercial buildings. The rise in
demand of residential and commercial housing supports structural form theory
developed by Pottow (2007) which explains the steps to be taken by firms to address
housing needs to the extent of their affordability. Rise in urbanization results to building
of more residential and commercial facilities by real estate firms to take advantage of
37
the increasing markets. Therefore real estate companies take in account the source of
financing that will yield more units development throughout the years
Results indicate that the real estate development has a minimum of 0.30 and a maximum
of 0.82 mortgage financing. On average, the mean number mortgage financing used by
real estate firms was 0.6. Mortgage is the most used source for financing and
investment.Trends also show that mortgage as a source of financing for real estate firms
gradually increased from year 2008 to 2012. The increase may be explained by low
interest rates charged and fair terms and conditions on borrowing. In addition good
products offered such as short term construction loans, long term financing of
commercial and residential properties increased the use of mortgage source of financing.
The findings also relates to the empirical study of Hans (2007) on Chinese commercial real
estate financing where bank loans finance most real estate units development some relevant
statistics, it shows that 70%-80% capital of Chinese commercial real estate developers
comes from bank loans, and in some cities it even reaches 90%.
Savings as a source of financing was represented by a maximum percentage of 0.42 and
a mean percentage of 0.18. There was an inconsistent trend in savings as a source of
financing with high proportions in years 2010 and 2011. Savings may not be fully
substantial in setting up real estate units as the costs involved in the same are too high.
Small percentage of savings may be used together with other forms of financing such as
mortgage or equity or venture capital.This finding relates to a study done by RREEF and
ULT where most American commercial real estate financing comes from institutional
investors, banks, insurance companies, pension funds, and the borrowers are developers,
38
builders and investors. This shows that acquiring financing from other sources other
than mortgage or personal savings is relevant in real estate developments.
The minimum percentage of Venture capital was 0.00 while the maximum was 0.20
with an overall mean of 0.036 and an average risk (standard deviation of 0.04).This
means that the use of venture capital by real estate firmsdoes not deviate much from the
average. From the trends it is also evident that venture capital as a source of financing
gradually decreases throughout the years. This is because venture capital firms expect a
business to be able to return their investment not only with interest, but with a large
profit. Descriptive statistics show that the risk associated with venture capital is 0.04
which is very low for venture capitalists to have the motivation to invest.
The minimum percentage financing through equity capital was 0.00 and a maximum of
0.53. The firms used an average proportion of 0.12 equity capital as a source of
financing. Trends in equity source of financing shows that there was a slight increase in
equity capital in year 2009, followed by a gradual drop in the following years.
Financing through equity capital is almost the same as venture capital only that venture
capital is providing finance to high risk and high potential new companies.Investing
cash in business revolves around risk and reward, the higher the risk the higher the
returns. The risk represented by standard deviation was of 0.729, this means that there
was a high variance in the use of venture capital and that there was a variation in
investors being interested in buying stock or shares in such companies.
39
CHAPTER FIVE
SUMMARY , CONCLUSION AND RECOMMENDATIONS
5.1 Summary
This section summarizes the results of the study. Chapter one discussed the problem
statement and the objectives of the study. The study aimed to determine the effect of
financing sources on real estate’s development in Kenya.
Chapter two discussed the literature review, that is, the theories supporting the
study.The discussed theories were simulation theory and structural form theory with
empirical evidence of the study given. Chapter three presented the research
methodology. The chapter discussed the type of research design, population, sample,
data collection/instruments to be used and data analysis.
Chapter four presented the findings. Regression analysis was carried out to determine
the relationship between the different sources of financing to real estate developments in
Kenya.Results indicated that there is a positive relationship between mortgage financing
and real estate units development. The relationship was also significant as mortgage
financing was significant in explaining real estate development in Kenya as the reported
p value of 0.009 is lower than the critical value of 0.05.
40
Results also indicate that the goodness of fit was adequate as it reported an r squared of
0.409 which means that 40.9% of the variations in real estate development units was
explained by variables that such as savings, venture capital, mortgage and equity capital
are substantial to explain real estates’ sources of financing. An Analysis of Variance
(ANOVA) indicated that the overall model was significant. This was supported by a p
value of 0.000. The ANOVA results demonstrated that the sources of financing that is
equity capital,venture capital,savings and mortgage are good predictors of real estate
units’ development.
5.2 Conclusions
The study concluded that mortgage financing in the years 2008 to 2011 have gradually
increased. This may be explained by the variety of products that mortgage firms have
and the low interest rates associated with the loans. Housing finance in Kenya has a
variety of loans which is flexible to individuals and more especially to real estate firms.
For example from their website the project finance, offers a varietyof multi development
loans which is quite advantageous for developing real estate’s firms in Kenya.
Multi development loans include commercial properties where the loan under this
approach is tailored to development of building for sale to clients upon completion of
construction.The principal amount on the said loan is not payable during the
construction period but payable after completion.The repayment is linked to the sale of
completed developments. Another product is the build to rent residential, were the loan
is available for developers to build many units for rental income.Loan repayment is done
41
after completion of construction and occupation of the rental space over an agreed
period of time.From the various advantages listed on mortgage financing it is then
prudent to make conclusions from the study that mortgage financing is the most
preferred source by most investment firms.
It is also possible to conclude that savings contributes a smaller percentage in financing
real estate’s development. The advantage of using savings to start up or expand in
housing or commercial units for real estate firms is the ability to have control on the
business. It is relatively rare for businesses to have sufficient savings to completely
finance projects. This has to go with other sources of financing to make the projects
development a success.
Venture capitalists consist of individuals or companies with interests to invest in a
business with a strong growth potential and high risks. In reality, individuals or informal
venture capitalists may be more interested in investing in smaller businesses than
institutional venture capitals. In real estate development in Kenya, venture capital is not
extensively used as a source of financing. The trend shows that venture capital from
year 2009 to 2011 decreased gradually which may be as a result of investment firm
owners who do not want to relinquish control over their business in exchange of money
for units development. Venture capitalists also look at the risk level of the company
before making an investment in the real estate firm, which as evidenced from the
standard deviation in the results most real estate firms have a low risk. The declining
trend in equity capital as a source of financing is also explained the same way as venture
42
capital financing. The lower the risk the less attracted the investors will be, as high risks
presents high potential of a firm thus higher return.
The trend in venture capital and equity capital source of financing can also be explained
by liquidity of the investment. If a company is privately owned,selling the stock in that
company may be more difficult than selling the shares of a public firm since buyers
have to be privately sourced. In addition real estate’s that finally achieve the growth
objective tend to raise the price of their stock and take it public in order to let investors
cash out. The latter may happen if the company pays very low dividends thus
demotivating potential investors in the company.In a nutshell equity and venture capital
financing can be a good source of financing but with combining them with other sources
of financing.
5.3 Policy Recommendations
To increase use of equity and venture capital as a source of financing requires
businesses to sell their ideas to people who have money to invest. Careful planning can
help convince potential investors that the company is competent and that there is a high
potential in growth in future.
Mortgage firms should also increase more products with long term financing
incorporated. The study also recommends that owners of real investment firms should
relinquish some of their ownership rights to potential investors for them to invest. As
when an investor puts his or her money in an investment there is a hard work from their
side so as to generate more profits which later increases their dividends.Real estate firms
43
should also increase their dividends as their profits grow to increase investors
motivation and avoid the potential ones moving out of the company.
5.4 Limitations of the study
One of the limitations of the study was that the study did not consider the effects of
political crisis especially in year 2007/2008 post election violence which affected the
returns of most real estate firms especially when people were forced to move out of
areas deemed to be unsafe as a result of the violence.
The study did not analyze internal and external factors that affect real estate firms when
deciding on the various sources of financing. Perhaps, competition,performance of the
company, operating efficiency could have influenced the decision on financing.The
study also failed to look at whether corporate bonds would act as a source of financing
for real estates.
5.5 Suggestions for Further Research
Suggested areas of study should be on internal and external factors that affect the
decision on sources of financing for real estate firms in Kenya.This will analyze critical
factors that managers ought to consider in order to make their decision on sources of
financing yield successful results.
Further studies should also include the effects of sources of financing in unsuitable
economic conditions,political instability and a global economic crisis.This study will be
able to come up with decisions on the best methods to source for finances during such
44
times.Studies can also be done on corporate bonds to assess whether it is a reliable
source of financing for real estate’s or other companies in Kenya.
45
REFERENCES
Abor, J. (2007). Corporate Governance and Financing Decisions of Ghanaian Listed Firms
vol. 7 no. 1 pp. 83-92, Emerald Group Publishing Limited
Adjonyoh, K. A.(2007). Sources of finance for the Real Estate Industry in Ghana,
Unpublished thesis submitted to KNUST, 2007
Aduda, J. (2011).The relationship between executive compensation and firm
performance in the Kenyan banking sector. Journal of Accounting and Taxation
Vol. 3(6), pp. 130-139,
Allen, F., Chui, M.K.F., and Maddaloni, A.(2004).Financial systems in the USA,
Europe and Asia.Oxford Review of Economic Policy 20 (4), 490–508.
Amidu, M., (2007). Determinants of capital structure of banks in Ghana: an empirical
approach, Baltic Journal of Management Vol. 2 No. 1, 2007 pp. 67-79 Emerald
Group Publishing Limited
Ball, M. (2003). Improving Housing Market. RICS Leading Edge Series, May.
Bardhan, A., and Edelstein, R.H. (2007). Housing finance in emerging economies:
applying a benchmark from developed countries. In: Ben-Shahar, D., Ong, S.E.,
Leung, C. (Eds.), Mortgage Markets Worldwide. Blackwell
46
Bardhan, A.D., Datta, R., Edelstein, R. and Kim, L. S. (2003). A tale of two sectors:
upward mobility and private housing in Singapore, Journal of Housing
Economics, vol.12, no. 2, pp 83-105.
Bean, L. A.(2008). Mezzanine financing: is it for you? The Journal of Corporate
Accounting & Finance.10,33-35.
Burns, A. & Groove, B. (2003). The Practice of Nursing Research: Conduct, critique &
utilization. 4th edition. W. B. Saunders Company
Central Bank of Kenya (2012).Bank Supervision Annual Report 2012. Central Bank of
Kenya, Nairobi
Chiquier, L., Hassler, O. and Lea, M. (2004).Mortgage Securities in Emerging
Markets.World Bank Policy Research Working Paper 3370.
Chiuri, M., and Jappelli, T. (2003). Financial market imperfections and home
ownership: a comparative study. European Economic Review 47, 857–875
Claessens, S., Klingebiel, D. and Schmukler, S. (2007). Government bonds in domestic
and foreign currency: the role of macroeconomic and institutional factors.
Review of International Economics 15 (2), 370–413.
Creswell, J. W. (2003). Research design: Qualitative, quantitative, and mixed methods
approaches(2nd ed.). Thousand Oaks, CA: Sage.
47
Debrah, W. K., Ibrahim G., and Rufasha, K. (2002). Micro Finance for Housing for Low/
Moderate-Income Households in Ghana. Presentation at the Conference on Housing
and Urban Development for Low-income groups in Sub-Saharan Africa, 22-26,
2002
Diamond, D. and Lea, M. (2002). Housing finance in developed countries: an
international comparison of efficiency. Journal of Housing Research 3 (1), 1–
253.
Erguden, S. (2002). Housing for the Poor: Policies and Constraints in Developing Countries.
Paper presented at the Conference on .Housing and Urban Development for Low-
Income Groups in Sub-Saharan Africa, Accra, Ghana
Gay, L.R. (1981). Educational Research: Competencies for Analysis and Application.
Charles E Mairill Publishing Company, A Bell and Howell Company,
Collumbus, Toronto; london: Cited in Mugenda OM, Mugenda AG (2003).
Research Methods: Quantitative and Qualitative Approaches. Afr. Centre
Technol. Studies (ACTS) Nairobi, Kenya
Ge, Y.(2010).American commercial real estate financing and the effect on economy.
Shanghai Finance.3, 60-62.
Goodhart, C. A. E. (2003). China's Financial Development, Journal of Chinese
Economic and Business Studies, Vol. 1, No. 1, pp 137-42
48
Han, J.(2008). Study on comparison of the financing channels of real estate development
enterprise. Journal of Hebei University of Engineering(Social Science Edition).2,8-
9(in Chinese).
Hegedüs, J. and Struyk, R.J. (2005). Housing Finance: New and Old Models in Central
Europe, Russia, and Kazahkstan. Local Government and Public Service Reform
Initiative. Open Society Institute, Budapest.
Hyndman, R.J. (2008). Encouraging Replication and Reproducible Research.
International Journal of Forecasting. 26(1): 2-3
Jaffee, D., and Levonian, M. (2008). The structure of banking systems in transition
economies”, European Financial Management, Vol. 7, No. 2, pp 161-181
Jiang,B.J.(2007). American commercial real estate-All is about business. City
Development.2,64-65.
Kamau, L. W. (2011). Factors Influencing Investment in the Real Estate Industry in
Nairobi County, Kenya. Unpublished Thesis Moi University
Khawaja I. andMusleh D. (2007). Determinants of Interest Spread in Pakistan. The
Pakistan Development Review, Pakistan. Islamaba. Working Papers (22)
Kothari, C. (2004). Research Methodology: Methods & Techniques, 2nd edition. New
age International Publishers, New Delhi, India
Laibson, D. I.(1998). Comments on personal retirement saving programs and asset
49
accumulation, by James M. Porteba, Steven F. Venti and David A. Wise, in
studies in the Economics of Aging. David A. Wise, ed. Cambridge Mass NBER
and the University of Chicago Press, pp 106-24.
Liu, Z.D. and Song, B.(2007). Theory and Practice of mezzanine financing. Morden
Management Science.5, 32-109
Low, S., Sebag-Montefiore, M., and Dübel, A. (2003). Study on the Financial
Integration of European Mortgage Markets. Study Prepared for the Annual
European Mortgage Conference in November 2003. Mercer Oliver Wyman and
European Mortgage Federation, UK and Belgium.
Mbugua,A.(2004).APrimeronSecuritization http:// www.hg.org/ articles/
article_1723.htmlJournal of Real Estate Literature, 13, pp. 141 - 164.
Miles MB, and Huberman M.(2013). Qualitative Data Analysis: A Sourcebook of New
Methods. 2. Beverly Hills, CA: Sage Publications.
Mugenda, O. M. andMugenda, A. G. (2003). Research Methods: Quantitative and
Qualitative Approaches, Acts Press, Nairobi-Kenya
Mwangi, I. K. (2002). The nature of Rental Housing in Kenya, Environment and
Urbanization; Journal of Real Estate Literature, 9, pp. 91-116.
Newing, H. (2011). Conducting Research in Conservation: Social Science Methods and
Practice. New York: Routledge
50
Ngugi, R.W. (2001). An Empirical Analysis of Interest Rate Spread in Kenya. African
Economic Research Consortium, Research Paper 106
Nuri E.S and Frank E. N. (2002). The Role of Affordable Mortgages in
Improving.Living Standards and Stimulating Growth, IMF Working Paper, 5.
Polit, D. F. and Beck, C.T. (2003). In Nursing Research: Principles and Methods. (7th
Edition) (413-444). Philadelphia: Lippincott Williams & Wilkins
Pottow, J. (2007). The Nondischargeability of Student Loans in Personal Bankruptcy
Proceedings: The Search for a Theory. U of Michigan Public Law Working
Paper No. 75; U of Michigan Law & Economics, Olin Working Paper No. 07-
005; Canadian Business Law Journal, Vol. 44, 2006.
Quigley, J. (2000). A decent home: housing policy in perspective. Brookings Papers on
Urban Affairs 1 (1), 53–99.
Redman, A. L. and Tanner, J. R. (1989). The Financing of Corporate Real Estate: A Survey,
Journal of Real Estate Research, Vol. 6, No. 2, pp. 217–240
Renaud, B., (2005). Mortgage Finance in Emerging Markets: Constraints and Feasible
Development Paths. Mimeo
Saunders, M., Lewis, P. andThornhill, A. (2009). Research methods for business
students.(5th Edition). London: Prentice Hall
Sekaran, U. (2011). Research Methods for Business : A Skill Building Approach. 5th
Edition. Aggarwal printing press, Delhi, ISBN: 978-81-265-3131-8
51
Sun, J. A. (2005).Mezzanine financing-a creative financing option for enterprises. Securities
Market Herald.11,65-70
United Nations Human Settlements Programme (UN-Habitat).(2005). Financing Urban
Shelter: Global Report on Human Settlements 2005. Earthscan, USA.
Upagade, V. andShende, A. (2012). Research methodology. 2nd edition. S.Chad&
Company Ltd. Ram Nagar, New Delhi
Wang, X. J. and Hu,X.Z.(2004). Financing options of real estate in Hongkong. Shanghai
economic research.10,107-112
Yang, Y.(2009).The compare study on the financing system between Chinese and American
real estate enterprises. Unpublished Master’s thesis. University of Harbin Institute
of Technology.MA.
Yin, B. K. (2003). Reality bites—A quieter PF horizon. PFI Asia Pacific Review: News and
Comment, 1998, pp. 2–3.
Zhu, H. (2006). The structure of housing finance markets and house prices in Asia, BIS
Quarterly Review, pp 55-69
Zikmund, G.W., Babin, B.J., Carr, C.J. and Griffin, M. (2010). Business Research
Methods . 8th ed. South-Western Cengage Learning.
52
APPENDICES
Appendix I: Secondary Data Collection Template
The following statement relates to how real estate firms finance their projects. Indicate
the agreeable percentage on how you finance yourproject by placing a tick (√)
against.This would cover a period of five years.
Year 2008
No Finance Type Percent
1 Mortgage Financing
2 Savings
3 Venture Capital
4 Equity financing
Others, Please specify.......................................................................................................
Year 2009
No Finance Type Percent
1 Mortgage Financing
2 Savings
3 Venture Capital
4 Equity financing
Others, Please specify.......................................................................................................
53
Year 2010
No Finance Type Percent
1 Mortgage Financing
2 Savings
3 Venture Capital
4 Equity financing
Others, Please specify.......................................................................................................
YEAR 2011
No Finance Type Percent
1 Mortgage Financing
2 Savings
3 Venture Capital
4 Equity financing
Others, Please specify.......................................................................................................
YEAR 2012
No Finance Type Percent
1 Mortgage Financing
2 Savings
54
3 Venture Capital
4 Equity financing
Others, Please specify.......................................................................................................
55
Appendix II: List of Real Estate Firms
1. Active Homes
2. Afriland Agencies
3. Ark Consultants Lt
4. Barloworld Logistics (Kenya) Ltd
5. Betterdayz Estates
6. British American Asset Managers
7. Canaan Properties
8. Capital City Limited
9. CB Richard Ellis
10. Colburns Holdings Ltd
11. Coral Property Consultants Ltd
12. Country Homes and Properties
13. Crown Homes Management
14. Crystal Valuers Limited
15. Daykio Plantations Limited
16. Double K Information Agents
17. Dream Properties
18. Dunhlill Consulting Ltd
19. East Gate Apartments Limited
20. East Gate Apartments Limited
21. Ebony Estates Limited
22. Economic Housing Group
23. Elgeyo Gardens Limited
24. Fairway Realtors And Precision Valuers
25. FriYads Real Estate
26. Gimco Limited
27. Greenspan Housing
28. Hajar Services Limited
29. Halifax Estate Agency Ltd.
56
30. Hass Consult
31. Hewton Limited
32. Homes and lifestyles
33. Housing Finance
34. Jimly Properties Ltd
35. Jogoo Road Properties
36. Josekinyaga Enterprises Ltd
37. Josmarg Agencies
38. Karengata Property Managers
39. Kenya Prime Properties Ltd
40. Kenya Property Point
41. KilifiKonnection
42. Kiragu&Mwangi Limited
43. Kitengela Properties Limited
44. Knight Frank Limited
45. KusyombunguoLukenya
46. Land & Homes
47. Langata Link Estate Agents
48. Langata Link Ltd
49. Lantana Homes
50. Legend Management Ltd
51. Lloyd Masika Limited
52. MamukaValuers (M) Ltd
53. Mark Properties Ltd.
54. MarketPower Limited
55. Mentor Group Ltd
56. Merlik Agencies
57. Metrocosmo Ltd
58. Mombasa Beach Apartments
59. Monako Investment Ltd
60. Muigai Commercial Agencies Ltd.
57
61. Myspace Properties (K) Ltd.
62. N W Realite Ltd
63. Nairobi Real Estates
64. Neptune Shelters Ltd
65. Oldman Properties Ltd
66. Oloip Properties
67. Ounga Commercial Agencies
68. Raju Estate Agency Limited (REAL)
69. Tysons Limited
58
Appendix III: Data
Real
Estate Year
Mortgage
Financing
(debt
financing) Savings Venture Capital
Equity
Capital
Total
Financi
ng
Real Estate
units
Firm1 2008 0.49 0.15 0.16 0.2 1 12
2009 0.5 0.17 0.18 0.15 1 10
2010 0.55 0.19 0.19 0.07 1 15
2011 0.57 0.22 0.21 0 1 23
2012 0.63 0.25 0.07 0.05 1 27
Firm2 2008 0.67 0.21 0.08 0.04 1 6
2009 0.69 0.22 0.09 0 1 12
2010 0.7 0.15 0.11 0.04 1 16
2011 0.72 0.1 0.14 0.04 1 25
2012 0.73 0.15 0.12 0 1 29
Firm3 2008 0.53 0.19 0.1 0.18 1 8
2009 0.62 0.2 0.11 0.07 1 12
2010 0.65 0.21 0.12 0.02 1 17
2011 0.68 0.22 0.1 0 1 19
2012 0.67 0.21 0.1 0.02 1 28
Firm4 2008 0.55 0.21 0.07 0.17 1 10
2009 0.59 0.27 0.09 0.05 1 16
2010 0.62 0.28 0.1 0 1 20
2011 0.63 0.28 0.09 0 1 23
59
2012 0.65 0.2 0.13 0.02 1 24
Firm5 2008 0.59 0.14 0.11 0.16 1 11
2009 0.6 0.15 0.12 0.13 1 14
2010 0.65 0.16 0.13 0.06 1 16
2011 0.67 0.17 0.14 0.02 1 18
2012 0.67 0.18 0.15 0 1 19
Firm6 2008 0.52 0.21 0.12 0.15 1 6
2009 0.53 0.22 0.13 0.12 1 10
2010 0.55 0.23 0.14 0.08 1 12
2011 0.59 0.24 0.15 0.02 1 13
2012 0.6 0.25 0.15 0 1 18
Firm10 2008 0.53 0.14 0.07 0.26 1 7
2009 0.58 0.15 0.12 0.15 1 11
2010 0.66 0.18 0.16 0 1 14
2011 0.71 0.22 0.07 0 1 18
2012 0.74 0.24 0.01 0.01 1 20
Firm11 2008 0.65 0.11 0.07 0.17 1 11
2009 0.67 0.21 0.08 0.04 1 12
2010 0.69 0.22 0.09 0 1 13
2011 0.7 0.15 0.15 0 1 15
2012 0.72 0.1 0.16 0.02 1 19
Firm12 2008 0.48 0.26 0.2 0.06 1 6
2009 0.5 0.27 0.21 0.02 1 9
2010 0.54 0.15 0.25 0.06 1 10
2011 0.53 0.17 0.26 0.04 1 20
60
2012 0.55 0.18 0.27 0 1 22
Firm13 2008 0.63 0.14 0.03 0.2 1 16
2009 0.65 0.16 0.06 0.13 1 24
2010 0.67 0.19 0.08 0.06 1 20
2011 0.68 0.2 0.05 0.07 1 24
2012 0.69 0.21 0.09 0.01 1 25
Firm14 2008 0.59 0.29 0.06 0.06 1 13
2009 0.6 0.3 0.07 0.03 1 16
2010 0.65 0.12 0.08 0.15 1 18
2011 0.68 0.19 0.09 0.04 1 21
2012 0.69 0.2 0.1 0.01 1 26
Firm15 2008 0.61 0.16 0.08 0.15 1 10
2009 0.62 0.18 0.08 0.12 1 18
2010 0.63 0.19 0.11 0.07 1 19
2011 0.65 0.2 0.13 0.02 1 23
2012 0.69 0.21 0.07 0.03 1 27
Firm16 2008 0.53 0.21 0.09 0.17 1 16
2009 0.59 0.22 0.1 0.09 1 16
2010 0.6 0.23 0.11 0.06 1 17
2011 0.61 0.24 0.12 0.03 1 18
2012 0.62 0.25 0.13 0 1 22
Firm17 2008 0.48 0.24 0.14 0.14 1 14
2009 0.49 0.26 0.15 0.1 1 15
2010 0.51 0.27 0.16 0.06 1 17
2011 0.53 0.28 0.14 0.05 1 20
61
2012 0.55 0.29 0.15 0.01 1 22
Firm18 2008 0.63 0.1 0.09 0.18 1 12
2009 0.62 0.2 0.1 0.08 1 17
2010 0.64 0.21 0.13 0.02 1 19
2011 0.65 0.21 0.14 0 1 24
2012 0.66 0.22 0.12 0 1 26
Firm19 2008 0.48 0.22 0.12 0.18 1 9
2009 0.49 0.24 0.14 0.13 1 11
2010 0.5 0.28 0.15 0.07 1 13
2011 0.52 0.29 0.16 0.03 1 16
2012 0.55 0.3 0.15 0 1 22
Firm20 2008 0.58 0.1 0.1 0.22 1 19
2009 0.6 0.12 0.13 0.15 1 9
2010 0.64 0.13 0.14 0.09 1 25
2011 0.66 0.15 0.16 0.03 1 23
2012 0.67 0.16 0.17 0 1 20
Firm21 2008 0.42 0.21 0.19 0.18 1 13
2009 0.45 0.23 0.2 0.12 1 23
2010 0.5 0.24 0.21 0.05 1 8
2011 0.51 0.26 0.22 0.01 1 15
2012 0.52 0.29 0.19 0 1 15
Firm22 2008 0.63 0.1 0.09 0.18 1 16
2009 0.62 0.16 0.11 0.11 1 18
2010 0.65 0.19 0.12 0.04 1 20
2011 0.67 0.2 0.13 0 1 21
62
2012 0.68 0.18 0.14 0 1 10
Firm23 2008 0.5 0.03 0.09 0.38 1 10
2009 0.55 0.06 0.11 0.28 1 14
2010 0.65 0.08 0.13 0.14 1 16
2011 0.7 0.11 0.14 0.05 1 18
2012 0.72 0.13 0.15 0 1 20
Firm24 2008 0.45 0.14 0.06 0.35 1 14
2009 0.53 0.16 0.1 0.21 1 11
2010 0.59 0.19 0.12 0.1 1 14
2011 0.61 0.2 0.13 0.06 1 17
2012 0.61 0.22 0.16 0.01 1 18