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Discussion Papers
Foreign Ownership and Firm Performance in Africa: Evidence from Zimbabwe, Ghana and Kenya
Vijaya Ramachandran and Manju Kedia Shah
Revised January 2000
RPED Paper #81
The views and interpretations expressed in this study are solely those of the authors. They do not necessarily represent the views of the World Bank or its member countries and should not be attributed to the World Bank or its affiliated organizations
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Authors:
Vijaya Ramachandran Davidson Sommers Fellow Overseas Development Council 1875 Connecticut Avenue NW, Suite 1075 Washington, DC 20009
Tel: 202-234-8701 Fax: 202-745-0067 E-mail: [email protected]
Mal\iu Kedia Shah Consultant The World Bank 1818 H St NW Washington, DC 20433
Please contact Vijaya Ramachandran for all correspondence regarding this paper.
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Acknowledgements
We are grateful to Asad Alam, Ashish Arora, William Ascher, Tyler Biggs, Claudia
Buchmann, Richard Caves, Philip Cook, Ray Fisman, Ira Gang, Jay Hamilton, Rana
Ha~an, Bruce Kogut, Francis Lethem, Jennie Litvack, Dipak Mazumdar, Howard
Pack, Mayank Raturi, Deborah Swenson, Tilahun Temesgen and seminar participants
at the World Bank and Harvard University for helpful comments and suggestions. The
data for this study were provided by the Regional Program on Enterprise Development
at the World Bank. We thank David Albregts and Alfred Robinson for helpful research
assistance. The authors are solely responsible for all errors.
•
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ABSTRACT
This paper examines the effect of foreign ownership on value added of firms in sub
Saharan Africa, using firm-level data from the Regional Program on Enterprise
Development at the World Banle The econometric analysis shows that foreign ownership
has a significant effect on value added only when it exceeds a majority share. The results
for Africa are consistent with the existing literature on foreign investment which argues
that majority ownership creates appropriate incentives and provides greater opportunity to
raise firm-level value added.
Keywords: sub-Saharan Africa, Kenya, Ghana, Zimbabwe, FDI, MNCs
5
SECTION I: THE ROLE OF FOREIGN INVESTMENT IN AFRICAN
INDUSTRIAL DEVELOPMENT
There is probably no greater economic challenge than that of generating growth in sub
Saharan Africa. One of the key questions concerns the appropriate role for multinational
corporations. Should they be allowed in? And on what terms? To answer these questions,
we need to understand the relationship between foreign ownership and the value added in
the manufacturing sector. Some of the literature on economic development in Africa
argues that Africa does not have the initial conditions to ensure the success of foreign
firms or even large local firms in the industrial sector (Stewart et ai, 1992). In particular,
foreign firms have been criticized for not making a significant contribution to economic
development. They have also been criticized for being too capital intensive. In this
paper, we look at the critical issue of firm performance. How do foreign firms compare
with respect to their domestic counterparts?
SECTION II: FOREIGN OWNERSHIP AND VALUE ADDED
The literature on foreign ownership is extensive and presents many interesting testable
hypotheses. Amongst these is the hypothesis thatforeign ownership is positively
correlated with value added of the firm. 1 This hypothesis is based on the notion that
foreign ownership brings in new technology, more productive techniques, better
management skills, better training methodologies and various intangible benefits that
" 6
raise value added (Dunning 1970; Caves 1974; Dunning and Pearce 1977; Globerman
1979; Blomstrom 1983, 1989; Kokko 1992; Biggs, Shah and Srivastava, 1995~;
Harrison 1996).2 The argument here is that foreign firms have greater opportunity than
local firms to make investments that raise value added. Thus, the first hypothesis we
test in this paper is whether or not foreign ownership has a significant effect on value
added. We test this hypothesis with two measures of foreign ownership--share of
foreign equity in the firm, and a dummy that is set to 1 if the firm has any foreign
equity.
The second set of hypotheses focuses on incentives generated by majority versus
minority ownership. The literature in this area argues that share of ownership often
determines the degree of control over firm profits (Telesio 1979; Benvignati 1983;
Chen 1983; McMullen 1983; Davidson and McFetridge 1984; Mansfield 1984;
McFetridge 1987; Pisano 1989; Blomstrom and Zejan 1989; Lee and Mansfield 1996).
This is due to the fact that the rent-extraction potential of the foreign parent may be
directly related to how much equity it controls in the local firm.
A corollary of this literature is that a greater share of ownership means greater control
over profits which in turn implies greater incentives to invest in training, education,
and technology to raise firm profits (Ramachandran, 1993). Thus, if the parent firm has
the option to invest in partial ownership versus full ownership, it needs to consider the
net benefit of each type of ownership. If the foreign firm has partial equity holdings
7
and the fIrm is managed by a local owner, the foreign fIrm avoids the administrative
and other costs of alien ownership and receives a share of the profIts correlated with its
share of equity. However, the local manager may have. the opportunity to divert
revenues due to the fact that the foreign shareholder does not have managerial control
of the fIrm. This is particularly true when the foreign partner is the minority
shareholder. The extent of this diversion is a function of the flows of information
between the local subsidiary and its parent fIrm, the extent to which contracts between
the two are enforceable, and whether the foreign parent is able to participate in fIrm
decision making as a minority shareholder (often thousands of miles away). Thus,
revenue diversion may lead to reduced incentives for the foreign fIrm to raise value
added in fIrms which are partially foreign-owned.
We can test the hypothesis that firms with a majority share of foreign ownership will
exhibit higher value-added because there is both a greater opportunity to raise value
added and greater incentive to raise value added.3 We test this hypothesis with several
econometric specifIcations, setting the foreign ownership dummy to 1 if foreign
ownership exceeds 50 per cent, 55 per cent and 65 per cent. We also present results
that include foreign ownership as a continuous variable, to see whether foreign
ownership is correlated with value added.
The theoretical approach is straightforward. A standard Cobb-Douglas production
function is used in the analysis. While we are aware that the Cobb-Douglas production
8
function is a very special form with many limitations, it is arguably a good first
approximation. Furthermore, the use of a production function of greater complexity
makes unreasonable demands on these data. 4
The traditional Cobb-Douglas production function is specified in the following manner:
(1)
where Q is value added, K is the capital stock at replacement value, and L is the
number of workers. The factors that contribute to productivity can be included in the
A which is a parameter that measures productivity-enhancing investments.
Therefore, A= f(X), where X is a vector of firm-specific factors including
productivity-enhancing measures such whether or not the firm has a worker training
program, the education level of the general manager, and the amount of foreign equity
in the firm.
The empirical estimation arising out of the theoretical model can be described in the
following manner for firm j:
In(Qj ) = In (A) + aln (Kj ) + ~ In (Lj ) + EQj (3)
where Qj is the value added for firm j, Aj is the vector of productivity-enhancing
measures, K j is firm j's replacement value of capital, Lj is the firm j's employment level
as measured by total number of workers, and EQj is the error term in the regression.
9
SECTION III: ECONOMETRIC MODELS AND RESULTS
The results of six regression models are presented in this section, along with some
desc:riptive statistics to orient the reader to the data. Tables I-V describe various
characteristics of firms in Zimbabwe, Ghana, and Kenya broken down by ownership
category, as well as the results of the econometric estimations of firm-level value
added.s The data consist of 132 firms from Zimbabwe, 134 firms from Ghana, and
150 firms from Kenya drawn from four sectors--food processing, wood and furniture,
textiles, and metalworking. Tables I-V present descriptive statistics from the first
round of surveys in each of the above-mentioned countries.6 Table I describes value
added per worker for each of five ownership categories (wholly locally owned, firms
with 1-55 percent foreign equity, firms with greater than 55 percent foreign equity,
firms with greater.than 65 percent foreign equity and firms that are 100 percent
foreign-owned). Table I shows that value added per worker increases with the share of
foreign ownership in the firm. Firms with 100 percent foreign equity have the highest
value added in Zimbabwe and Ghana. Kenyan firms that are 100 percent foreign
owned have lower value added than those that are majority foreign-owned, but are
significantly higher value added per worker than firms that are locally owned or
minority foreign owned. These numbers are consistent with the theory that foreign
ownership is correlated positively with value added per worker. 7
Tables II shows that firms with foreign ownership are generally larger, which is not
" 10
surprising. The total number of workers in the firm is used as the best available
measure of firm size and the data indicate that there is a fairly large increase in firm
size when foreign equity exceeds 50 per cent. Table III shows that foreign firms invest
in worker training programs to a greater extent than locally owned firms, and that
worker training programs are more prevalent in firms which have majority foreign
ownership in Ghana and Zimbabwe. Kenyan firms do not show this result. Firms
with foreign ownership tend to have better trained managers, as Table IV shows,
although this difference is particularly noticeable between wholly locally-owned firms
and firms with any degree of foreign ownership. Table V shows the distribution of
firms by ownership category across the four major industry categories--food, wood and
furniture, metal and textiles. While locally owned firms are concentrated in the textile
and garment industry, firms with greater foreign equity are dispersed to a greater
extent across food, metal and textiles. Each country has a small share of foreign
ownership--30% of firms in Zimbabwe, 16.4% in Ghana, and 22 % in Kenya have
some share of foreign equity. Of the 104 foreign firms in the sample, 26% are in the
food sector, 21 % are in wood and furniture, 34% are in metal, and 19% are in textiles.
The econometric specifications tested in this analysis try to control for different factors
that may determine value added. 8 Controlling for worker training programs, industry
specific effects, education level of the general manager, and quantity of labor and
capital, we look at the correlation of foreign ownership with value added. Six
econometric models are estimated to determine what kind of foreign ownership matters
11
to fIrm-level value added.9 All models are estimated using the ordinary least squares
regression method with log value added as the dependent variable1o• In every model,
the independent variables include the two main inputs, labor and capital (measured in
log terms). The model also includes dummies to control for other variables that
determine value added--whether the general manager has a graduate degree, whether
the fIrm has a training program, and sector dummies for three of the four industry
categories that are included to pick up industry-specifIc effects. II The variables
measuring education of the general manager and worker training are included to
examine the correlation of human capital, both managerial and worker-level with value
added. 12 Foreign ownership is measured differently in each model to test the hypotheses
generated by the literature discussed in Section II. Our aim is to see if foreign
ownership is signifIcant after controlling for investment in human capital and sector
specific advantages.
In the first model described in Table VI, the foreign ownership dummy is set to 1 if the
firm has any foreign equity. After controlling for investment in training, education of
the General Manager, labor and capital inputs and sector-specifIc effects, we fInd the
foreign ownership dummy to be insignifIcant for all three countries. 13 In the second
model, foreign ownership is treated as a continuous variable. This model also tests the
fIrst hypothesis discussed in Section II, namely that there is a positive correlation
between foreign ownership and fIrm-level value added. The results of this model are
presented in Table VII. They show that labor and capital are signifIcant in determining
12
value added. The education level of the general manager is not significant in any of the
regressions. The training dummy is significant at the 1 percent level of confidence for
Zimbabwe only. The sectoral dummies indicate that there is a comparative advantage
for the food processing sector in all three countries (the coefficients are large in all
three regressions and statistically significant at the 5 percent level for Zimbabwe and
Ghana). Most interesting of all is the size and significance of the foreign ownership
variable. Although the coefficients for Zimbabwe and Ghana are statistically
significant, the size of the coefficient is very small for all three countries, indicating
that foreign ownership, measured as a continuous variable, is not highly correlated with
value added.
The third model presented in Table VIII tests the hypothesis that majority ownership is
correlated with value added. In this model, the foreign ownership variable is
transformed into two dummies that are set equal to one if foreign ownership is between
1-50 percent and greater than 50 percent respectively (zero denotes wholly local
ownership). This model tests the hypothesis that majority foreign ownership is
correlated with value added. Although the majority foreign ownership dummy is
positive and has a fairly large coefficient compared with the foreign ownership
coefficient in Tables VI and VII, the results are not overwhelming. Only the
coefficient on the Ghana regression is statistically significant. These results do not
allow us to confirm the hypothesis that a simple majority foreign ownership (as
measured by foreign equity greater than 50 per cent) is correlated with value added.
13
The fourth model presented in Table IX disaggregates ownership differently to test for
shifts in value added with different levels of foreign equity. The foreign ownership
dummies are set to one over two possible ranges of foreign equity--l to 55 percent, and
greater than 55 percent. The excluded category is local ownership. These results
reveal that a foreign ownership share of greater than 55 percent is correlated with
higher value added. The coefficients on the ownership dummy that measures foreign
equity of greater than 55 per cent is greater in magnitude than the foreign ownership
dummy in the previous regression (measuring equity of greater than 50 per cent) and is
statistically significant for all three countries at the 10 percent level of confidence. 14
The fifth model presented in Table X tests yet another specification. One of the
foreign ownership dummies is set to one if foreign equity is 65 percent or greater and
is zero otherwise. The other is set to one if foreign equity is between 1 and 65 percent
of the firm a,1d the excluded category is wholly locally-owned firms. The coefficient
on the ownership dummy measuring greater than 65 percent foreign equity is
significant at the 5 percent for all three countries, confirming that majority ownership
of greater than 65 percent is significantly correlated with value added. Thus, there is
an upward shift in value added due to the increase in share of foreign equity in the firm
beyond 65 percent. The econometric results are very robust to minor variations in
specification.
14
Table XI shows the results of the pooled regressions. Data from all three countries
were pooled with dummies for Kenya and Ghana. The results are similar to those
described in earlier tables; the coefficients on majority foreign ownership (at 55 percent
and 65 percent) are large and significant while the coefficient on minority ownership is
not. When foreign ownership is included as a continuous variable, it is significant but
very small in size (0.004). Table XI also shows that value added in the food sector for
all three countries is higher, and that the differential between Zimbabwe and the other
two countries is positive and statistically significant at the 1 per cent level of
confidence. 15
Table XII shows that a 10 percent increase in capital inputs will result in an increase in
value added of 2.7 to 4.0 percent for all firms in our sample. The increase is between
8.0 and 12.5 percent for firms with a foreign equity share of greater than 55 percent,
and between 8.5 and 16.5 percent if this share exceeds 65 percent. Similarly, an
increase in labor by 10 percent will raise value added from 6.3 to 8.6 percent for all
firms, while firms with a share of foreign equity greater than 55 percent see increases
of 10.4 to 15 percent, and firms with greater than 65 percent foreign equity show
increases of 10.9 percent to 19.3 percent. 16
SECTION IV: CONCLUSION AND POLICY IMPLICATIONS
The results presented in the previous section indicate that foreign ownership does in
15
fact affect the value added of the firm, but only beyond a certain level of ownership.
They show that a majority of foreign ownership of greater than 55 percent does raise
the value added of the firm; a lesser degree of participation is not significant in terms
of its effect on value added. Interestingly, a 50-50 split in equity between local and
foreign firm does not raise value added significantly. What seems to matter is majority
ownership by the foreign owner. Majority ownership by local owners does not
significantly contribute to the value added of the firm. 17
Why does majority foreign ownership matter? The econometric models presented in
this paper control for many of the key inputs into the production process, namely the
quantities of labor and capital in the production process, the level of education of the
manager, worker training and various industry specific effects that determine variance
in value added. Despite controlling for these factors, foreign ownership dummies
measuring foreign equity greater than 55 percent and 65 percent are significant in the
econometric specifications. There may be several explanations for this result. Foreign
ownership may bring with it many benefits that local ownership cannot provide;
examples include the "know-why" surrounding know-how, timely access to inputs,
finance, maintenance personnel, and sources of information about technology and
markets. Another explanation is that amongst these benefits are often intangible
benefits relating to differences in the quality of labor and capital between local and
foreign firms, as well as differences in the type of training received within these firms.
These differences are very difficult to measure but are often highly correlated with
16
ownership, and consequently with value added of the firm. This indicates not
unsurprisingly, that even though locally-owned firms have control over profits, they
may lack access to technology, skills and markets that would help them raise value
added. A third possible explanation of our result is that foreign firms are able to· exercise
market power that results in a higher value of sales. It could be argued that multinational
subsidiaries invest more in R&D, advertising, and other measures that raise barriers to
entry. It is likely that our results reflect some combination of the differences in
productivity and market power of foreign versus local firms. Further research needs to be
done in this area, in order to understand the nature of competition in the private sector in
Africa.
The results in this paper are consistent with the hypotheses generated by the literature
on foreign ownership. The foreign ownership variable is insignificant when included as
a dummy or as a measure of minority foreign ownership, and only weakly significant
when measured as a continuous variable. However, it is significant for all three
countries when measuring majority equity. This is an important result in that it
indicates that simply entering into minority partnerships and joint ventures may not
have much effect in raising value added. IS Rather, foreign firms which have a clear
majority in terms of ownership appear to have greater opportunity and/or to be more
motivated to transfer the sorts of skills and benefits--both tangible and intangible-
discussed above.
17
Foreign firms appear to have greater opportunity and incentive to raise value added in
the manner described by the existing literature in industrial organization. If higher
value added is in fact driven by greater investment in resources and productivity
enhancing technology, it may be beneficial to pursue "open-door" policies that allow
foreign investors to own majority shares or subsidiaries in the industrial sector in
Africa.
18
REFERENCES
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Traditional Industry," Journal oj International Business Studies, 14 (Winter), 63-75.
2. Biggs, T., M. Shah and P. Srivastava (1995a). "Technological Capabilities and
Learning in African Enterprises," World Bank Technical Paper no.288, Africa
Technical Department Series.
3. Biggs, T., M. Shah and P. Srivastava (1995b). "Training and Productivity in
African Manufacturing Services," RPED Discussion Papers.
4. Biggs, T. and P. Srivastava (1996). "Structural Aspects of Manufacturing in Sub
Saharan Africa: Findings from a Seven Country Enterprise Survey," World Bank
Discussion Paper No. 346, Africa Technical Department Series.
5. Biggs, T. And M. Raturi (1997). "Productivity and Competitiveness in African
Manufacturing," RPED Discussion Papers.
6. Blomstrom, M. (1983). "Foreign Investment, Technical Efficiency and Structural
Change: Evidence from the Mexican Manufacturing Industry," Ph.D. Dissertation,
Gothenburg University.
7. Blomstrom, M. (1989). Foreign Investment and Spillovers. London: Routledge.
8. Blomstrom, M. And M. Zejan. (1989). "Why Do Multinational Firms Seek Out
Joint Ventures? ," National Bureau of Economic Research Working Paper No. 2987.
9. Caves, R.E. (1974). "Multinational Firms, Competition, and Productivity in Host
Country Industries," Economica, 41 (May), 176-93.
19
10. Chen, E.K.Y. (1983). Multinational Companies, Technology and Employment.
New York: St. Martin's Press.
11. Dunning, J.H. (1970). Studies in International Investment. London: Allen and
Unwin.
12. Dunning, J. H. and R.D. Pearce (1977). U.S. Industry in Britain. Boulder:
Westview Press.
13. Globerman, S. (1979). "Foreign Direct Investment and 'Spillover' Efficiency
Benefits in Canadian Manufacturing," Canadian Journal ofEconomics, 12(February),
42-56.
14. Griliches, Z. and V. Ringstad (1971). Economies of Scale and the Form of the
Production Function: an econometric study of Norwegian manufacturing establishment
data. Amsterdam: North-Holland Publishing Co.
15. Harrison, A. (1996). "Determinants and Effects of Direct Foreign Investment in
Cote d'Ivoire, Morocco, and Venezuela," in M.J. Roberts and J.R. Tybout (eds.),
Industrial Evolution in Developing Countries, pp. 163-186. New York: Oxford
University Press.
16. Lee, J.Y. and E. Mansfield (1996). "Intellectual Property Protection and U.S.
Foreign Direct Investment," Review ofEconomics and Statistics, 78,181-86.
17. McMullen, K.E. (1983), "Lags in Product and Process Innovation Adoption by
Canadian Firms," in A.M. Rugman (ed.), Multinationals and Technology Transfer: The
Canadian Experience, 50-72. New York: Praeger.
18. Pisano, G. (1989). "Using Equity Participation to Support Exchange: Evidence
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from the Biotechnology Industry," Journal ojLaw, Economics, and Organization,
Vol.5, no.l, 109-126.
19. Ramachandran, V. (1993). "Technology Transfer,.Firm Ownership, and
Investment in Human Capital," Review ojEconomics and Statistics, 75 (November),
664-70.
20. Stewart, F., Lall, S., and S.M. Wangwe (1992). Alternative development
strategies in sub-Saharan Africa. Basingstoke: Macmillan.
21. Telesio, P. (1979). Technology Licensing and Multinational Enterprises. New
York: Praeger.
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Firms: A Research Methodology Applied to Efficiency in Argentine Industry. NY:
Garland.
21
Table I: Value Added Per Worker in US Dollars
imbabwe Ghana Kenya
Wholly locally-owned firms:
Firms with 1-55 percent foreign equity:
Firms with> 55 percent foreign equity:
Firms with >65 percent foreign equity:
Firms with 100 percent foreign equity:
Value Added in US Dollars*
5854.9 1417.1 (5551.6) (2278.1)
10094.0 3011.2 (6445.8) (3051.6)
14412.4 9433.1 (8893.2) (13977.3)
14362.9 16306.6 (6380.08) (18525.7)
16320.8 21573.4 (10043.9) (22802.8)
145.4 (3292.2)
3959.5 (2819.1)
5319.4 (4321.1)
5340.8 (4706.4)
4996.2 (4908.4)
* Value added is measured as total annual sales minus the cost of raw materials, rent, electricity, solid fuel, and liquid fuel. All value added figures are measured in US dollars. The exchange rate used is taken from African Development Indicators published annually by the World Bank. For Ghana, the 1991 exchange rate of 367.8 cedi/USD is used because the firm survey was carried out in 1991. The 1992 exchange rates are used for Zimbabwe and Kenya; these rates are $Z5.lIUSD and 32.2KSh/USD respectively.
22
Table II: Total Workers Per Firm
Total Workers Per Firm Zimbabwe Ghana Kenya
Wholly locally-owned firms: 184.5 34.0 108.3
Firms with 1-55 percent foreign equity: 467.7 94.9 104.0
Firms with >55 percent foreign equity: 535.9 228.2 697.0
Firms with > 65 percent foreign equity: 537.0 120.0 541.3
Firms with 100 percent foreign equity: 201.3 146.0 597.9
23
Table III: Firms with a Training Program for Workers
Wholly locally-owned firms:
Firms with 1-55 percent foreign equity:
Firms with> 55 percent foreign equity:
Firms with> 65 percent foreign equity:
Firms with 100 percent foreign equity:
Percentage with a Training Program Zimbabwe Ghana Kenya 19.4 2.6 4.6
28.6 2.6 22.2 .
50.0 16.7 9.1
60.0 33.3 11.1
40.0 50.0 12.5
Table IV: Percentage of General Managers with graduate training
24
Wholly locally-owned firms:
Firms with 1-55 percent foreign equity:
Firms with> 55 percent foreign equity:
Firms with > 65 percent foreign equity:
Firms with 100 percent foreign equity:
Zimbabwe
34.0
57.0
68.8
60.0
70.0
Ghana
41.6
70.0
100.0
100.0
100.0
Kenya
17.8
57.1
70.0
63.5
58.1
25
Table V: Percentage Distribution of Firms by Industry Type, 1992 data (number of firms in each sector is in parentheses)
Zimbabwe:
Ownership Food Wood Metal Textiles
oforeign eq 24.3(25) 16.5(17) 17.5(18) 41.7(43) 1-55 % foreign eq 50.0(7) 0(0) 21.4(3) 28.6(4) 56-100 % foreign eq 25.0(4) 6.3(1) 43.8(7) 25.0(4) 65-100% foreign eq 25.0(1) 0(0) 25.0(1) 50.0(2) 100 % foreign eq 20.0(2) 10.0(1) 50.0(5) 20.0(2) N 39 19 34 55
Ghana:
Ownership Food Wood Metal Textiles
oforeign eq 19.7(23) 35.9(42) 25.6(30) 18.8(22) 1-55 % foreign eq 25.0(3) 8.3(1) 33.3(4) 33.3(4) 56-100% foreign eq 33.3(2) 16.7(1) 50.0(3) 0(0) 65-100% foreign eq 66.7(2) 33.3(1) 0(0) 0(0) 100 % foreign eq 50.0(1) 50.0(1) 0(0) 0(0) N 31 46 37 26
Kenya:
Ownership Food Wood Metal Textiles
oforeign eq 24.4(32) 27.5(36) 21.4(28) 26.7(35) 1-55% foreign eq 22.2(2) 22.2(2) 22.2(2) 33.3(3) 56-100% foreign eq 9.1(1) 45.5(5) 36.4(4) 9.1(1) 65-100 % foreign eq 11.1(1) 55.6(5) 33.3(3) 0(0) 100% foreign eq 12.5(1) 50.0(4) 37.5(3) 0(0) N 37 52 40 39
26
Table VI: OLS with Foreign Ownership Dummy Dependent Variable is Log Value Added
Zimbabwe Ghana Kenya
Intercept 4.44*** (0.47)
3.28*** (0.41)
4.49*** (0.49)
Log (ca.pital) 0.39*** (0.06)
0.35*** (0.06)
0.27*** (0.06)
Log (labor) 0.64*** (0.09)
0.63*** (0.12)
0.86*** (0.09)
Educ (GM) 0.16 (0.14)
0.35 (0.22)
-0.06 (0.18)
Training Dummy 0.59*** (0.16)
0.79* (0.46)
0.10 (0.20)
Food 0.43* (0.17)
0.89*** (0.32)
0.34 (0.23)
Wood 0.21 (0.33)
0.31 (0.27)
-0.34 (0.21)
Metal 0.18 (0.36)
0.79*** (0.30)
-0.002 (0.23)
Foreign Dummy 0.25 (0.17)
0.48 (0.30)
0.34 (0.24)
Asian Dummy 0.48*** (0.18)
N R-squared F
132 0.86 105.3
134 0.79 66.1
150 0.87 114.1
The foreign ownership dummy is set to 1 if the finn has any foreign equity. *** denotes significance at the 1 percent level of confidence ** denotes significance at the 5 percent level of confidence * denotes significance at the 10 percent level of confidence
27
Table VII: OLS with Foreign Ownership as a Continuous Variable Dependent Variable is Log Value Added
Zimbabwe Ghana Kenya
Intercept 4.42*** 3.30*** 4.51 *** (0.46) (0.41) (0.49)
Log (capital) 0.39*** 0.35*** 0.27*** (0.06) (0.06) (0.06)
Log (labor) 0.64*** 0.62*** 0.86*** (0.09) (0.12) (0.09)
Educ (GM) 0.16 0.35 -0.06 (0.14) (0.22) (0.18)
Training Dummy 0.58*** 0.73 0.09 (0.16) (0.46) (0.20)
Food 0.43** 0.89** 0.35 (0.17) (0.32) (0.23)
Wood 0.19 0.31 -0.34 (0.21) (0.27) (0.21)
Metal 0.16 0.80** 0.00 (0.19) (0.29) (0.23)
Foreign (Cont.) 0.004* 0.01 ** 0.005 (0.0022) (0.005) (0.003)
Asian Dummy 0.48*** (0.18)
N 132 134 150 R-squared 0.86 0.79 0.87 F 106.5 66.9 116.32
*** denotes significance at the 1 percent level of confidence ** denotes significance at the 5 percent level of confidence * denotes significance at the 10 percent level of confidence
,I
28
Table VIII: OLS with Foreign Ownership Dummies Dependent Variable is Log Value Added
Zimbabwe Ghana Kenya
Intercept 4.42*** 3.28*** 4.52*** (0.47) (0.41) (0.49)
Log (capital) 0.39*** 0.35*** 0.27*** (0.06) (0.06) (0.06)
Log (labor) 0.64*** 0.62*** 0.86*** (0.09) (0.12) (0.09)
Educ (GM) 0.15 0.35 -0.06 (0.14) (0.22) (0.17)
Training Dummy 0.58*** 0.83** 0.08 (0.16) (0.46) (0.21)
Food 0.44** 0.91 ** 0.36 (0.16) (0.32) (0.23)
Wood 0.20 0.32 -0.33 (0.21) (0.28) (0.21)
Metal 0.16 0.81 ** 0.02 (0.19) (0.29) (0.23)
Foreign (1-50 % ) 0.08 0.21 0.12 (0.24) (0.37) (0.36)
Foreign (51-100%) 0.37 0.83** 0.51 (0.22) (0.42) (0.32)
Asian Dummy 0.53*** (0.19)
N 132 134 150 R-squared 0.86 0.79 0.87 F 93.8 59.13 104.06 *** denotes significance at the 1 percent level of confidence ** denotes significance at the 5 percent level of confidence * denotes significance at the 10 percent level of confidence
29
Table IX: OLS with Foreign Ownership Dummies Dependent Variable is Log Value Added
Zimbabwe Ghana Kenya Intercept 4.40*** 3.28*** 4.55***
(0.47) (0.41) (0.49)
Log (capital) 0.40*** 0.36*** 0.27>1<** (0.06) (0.06) (0.06)
Log (labor) 0.64*** 0.61 *** 0.86*** (0.09) (0.12) (0.09)
Educ (GM) 0.15 0.32 -0.07 (0.14) (0.22) (0.17)
Training Dummy 0.57*** 0.79* 0.09 (0.16) (0.46) (0.20)
Food 0.45** 0.88*** 0.36 (0.17) (0.32) (0.23)
Wood 0.19 0.31 -0.34 (0.21) (0.28) (0.21)
Metal 0.16 0.78*** 0.01 (0.19) (0.29) (0.23)
Foreign(1-55 %) 0.06 0.30 0.06 (0.24) (0.34) (0.33)
Foreign(56-100%) 0.40* 0.89* 0.62* (0.22) 0.48) (0.34)
Asian Dummy 0.57*** (0.19)
N 132 134 150 R-squared 86.4 79.6 87.2 F 94.05 58.98 103.17
*** denotes significance at the 1 percent level of confidence ** denotes significance at the 5 percent level of confidence * denotes significance at the 10 percent level of confidence
30
Table X: OLS with Foreign Ownership Majority Dummy Dependent Variable is Log Value Added
Zimbabwe Ghana Kenya
Intercept 4.37*** 3.29*** 4.52*** (0.47) (0.41) (0.49)
Log (capital) 0.40*** 0.35*** 0.27*** (0.06) (0.06) (0.06)
Log (labor) 0.64*** 0.63*** 0.86*** (0.09) (0.11) (0.09)
Educ (GM) 0.15 0.33 -0.06 (0.14) (0.22) (0.18)
Training Dummy 0.58*** 0.70 0.07 (0.16) (0.46) (0.20)
Food 0.46*** 0.86** 0.33 (0.17) (0.32) (0.22)
Wood 0.19 0.31 -0.36 (0.21) (0.27) (0.21)
Metal 0.15 0.83** -0.07 (0.19) (0.30) (0.23)
Foreign (1-65 % ) 0.03 0.33 0.08 (0.23) (0.32) (0.30)
Foreign (66-100%) 0.45** 1.30** 0.69** (0.22) (0.65) (0.35)
Asian Dummy 0.54*** (0.18)
N 132 134 150 R-squared 0.86 0.79 0.87 F 94.6 59.4 103.5 *** denotes significance at the 1 percent level of confidence ** denotes significance at the 5 percent level of confidence * denotes significance at the 10 percent level of confidence
31 •
Table XI: Pooled Estimations Dependent Variable is Log Value Added
Modell Model 2 Model 3 (Continuous) (Foreign> 55) (Foreign> 65)
Intercept 4.21 ** 4.23** 4.22** (0.26) (0.26) (0.26)
Log (capital) 0.39** 0.39** 0.39** (0.03) (0.03) (0.03)
Log (labor) 0.71 ** 0.71 ** 0.71 ** (0.06) (0.06) (0.06)
Educ (GM) 0.11 0.10 0.10 (0.11) (0.11) (0.11)
Training Dummy 0.05 0.04 0.04 (0.11) (0.11) (0.11)
Food 0.46** 0.46** 0.46** (0.13) (0.13) (0.13)
Wood -0.08 -0.08 -0.08 (0.12) (0.12) (0.12)
Metal 0.21 0.20 0.20 (0.13) (0.13) (0.13)
Foreign (min) 0.22 0.21 (0.17) (0.16)
Foreign (maj) 0.44** 0.49** (0.18) (0.19)
Foreign (cont.) 0.004* (0.002)
Ghana -1.06*** -1.06*** -1.05*** (0.12) (0.12) (0.12)
Kenya -0.56*** -0.56*** -0.55*** (0.11) (0.11) (0.12)
N 420 420 420 R-squared 0.89 0.89 0.89 F 326.59 296.97 249.96
*** denotes significance at the 1 percent level of confidence ** denotes significance at the 5 percent level of confidence * denotes significance at the 10 percent level of confidence
'I 32
Table XII: Percentage Increase in Value Added with Foreign Ownership
With a 10 percent increase in capital:
Zimbabwe Ghana Kenya
All firms 4.0 3.6 2.7
1-55 percent foreign 4.6 6.6 3.3
> 55 percent foreign 8.0 12.5 8.9
> 65 percent foreign 8.5 16.5 9.6
With a 10 percent increase in labor:
All firms 6.4 6.3 8.6
1-55 percent foreign 7.0 9.1 9.2
> 55 percent foreign 10.4 15.0 14.8
> 65 percent foreign 10.9 19.3 15.5
•
..
Value added is used instead of firm profitability because firms are much more reluctant to report profits than the value of sales and the costs of raw materials. Therefore, rather than rely on profit figures (which are missing in many cases), we construct net value added from the information provided on sales and costs of inputs.
2
The exact nature of the relationship between foreign ownership and firm profitability is very difficult to identify. Foreign ownership captures intangibles such as quality of management or worker training that can affect firm productivity. Many studies have found foreign ownership to be important in determining firm profits. One exception is the study by Vendrell-Alda (l978)--after controlling for many industrial and strategic factors affecting profitability, he finds that there is no significant residual productivity due to foreign ownership per se. Our study examines the effect of foreign ownership on value added, recognizing that value added reflects variation in both productivity and rents.
3
Presumably, local owners also have an incentive to maximize profits. However, we hypothesize that firms that are majority locally-owned generally do not have good access to technology, management skills and training in the countries under consideration, and may not be able to invest in productivity raising activities to the same extent as their foreign counterparts.
4
The Cobb-Douglas production function represents a special case of Constant Elasticity of Production (CES) Production Functions where there is unit elasticity of substitution between labor and capital. Therefore, a strong assumption is imposed on the data. However, the Cobb-Douglas production function is probably the most appropriate specification for these data. Griliches and Ringstad (1971) found there was not much to be gained from moving to a more flexible form of the CES production function. Also, due to structural adjustment and economic liberalization, market structure is relatively competitive (or at least not as heavily rent-seeking and competition-constrained as it used to be).
Earlier studies have examined the determinants of productivity in Africa. Biggs, Shah and Srivastava (l995a) contains an in-depth analysis of technical efficiency, learning effects and technological capabilities of firms in Kenya, Zimbabwe and Ghana. Biggs and Raturi (1997) examine the determinants of competitiveness, focusing on the use of technical licenses, training and acquisition ofknow-how. Biggs, Shah and
,.
Srivastava (l995b) examine the returns to worker training that takes place within African finns. All these studies show that foreign ownership (measured as a continuous variable) is significant i.e. foreign finns are more productive and they invest more in worker training than their locally owned counterparts.
6
The data for Ghana were collected in 1991. The data for Kenya and Zimbabwe were collected in 1992. (Two subsequent rounds of surveys have been completed, yielding panel data for use in future work). The original sample offinns consisted of200 finns in each of the three countries, covering the entire size distribution of finns. More than 50 per cent of the finns that were dropped from the sample were dropped because of missing values on the variable that measures capital stock. Some of the dropped finns are micro-enterprises of less than 5 workers doing "batch jobs." Other observations were dropped due to negative values ofvalue added. Finally, a few extreme outliers with improbable values of capital and labor were discarded.
7
Foreign ownership in Africa is sometimes ambiguous. We define a finn to be foreign-owned according to the nationality of the owner. However, finns owned by Africans of Caucasian descent may possess many of the characteristics ofmultinational finns in that they may have better access to overseas credit, education, and technology. We have counted these finns as being locally owned because the nationality of the owner is African. This may weaken our results slightly by making the contrast between foreign and local finns seem less sharp. In the Kenyan case however, we control for Asian ownership by using a dummy variable set to 1 if finns are Asian-owned.
8
Value added is often treated as a rough measure of finn productivity, particularly when prices and quantities cannot be separated in the data. Our hypothesis is that value added is a measure of productivity and rents, reflecting both efficiency and market power of the finn.
9
The econometric estimations report standard errors that are corrected for heteroscedasticity.
10
Value added is measured by subtracting both direct and indirect costs from sales. Indirect costs include energy and transportation costs. One issue to keep in mind is whether finns are sensitive to differential accounting practices in their response to survey questions. Specifically, locally-owned finns may report lower value added because they are taxed on their profits (correlated with value added). This may result in a downward bias in value added for local finns.
"
II
Capital is measured as the replacement cost of plant and equipment, as estimated by the firm manager. Labor is measured as the number of full-time equivalent workers in the firm.
12
Worker training is measured as a dummy variable which is set to 1 if the- firm has invested in any type ofworker training program. A more careful measure would enable us to relate worker training to the productivity ofworkers. We simply include worker training as a measure that enhances the overall productivity of the firm.
A dummy which is set to 1 for firms which are Asian-owned is included in the regressions for Kenya. Based on the existing literature and our observations from field work, it is clear that Asian-owned firms in Kenya are significantly different than nonAsian owned firms. These differences will be explored further in future work.
14
One interesting point is that foreign firms sometimes negotiate complete control over managerial decision making even if they do not have majority share in the local subsidiary. We do not have the information to isolate these cases but acknowledge that they may be present in our data.
15
Two other specifications were run with the pooled data. The first specified dummies for foreign equity that were set to 1 for foreign equity less than 49 percent, 50 percent, and greater than 50 percent. The second specified dummies for foreign equity that were set to 1 for foreign equity less than 45 percent, 45-55 percent, and greater than 55 percent. In both cases, only the majority foreign equity dummy was significant at the 5 percent level of confidence.
16
It is interesting to note that the slope of the regression does not change when ownership increases beyond 55 percent. Econometric specifications not reported in the paper that include share of foreign equity as a continuous variable and interaction terms between share of foreign equity and a dummy set to 1 if the firm has greater than 55 percent and 65 foreign equity respectively, revealed that the magnitude of the coefficient does not increase when ownership exceeds 55 or 65 percent. Rather, majority ownership causes an upward shift in value added.
17
One interesting question is why the foreign ownership dummy does not become significant at 51 percent (i.e. when foreign ownership becomes a majority share). A possible explanation is simply that the data include measurement errors that give us an
18
j'
imprecise estimate. The pooled regressions do in fact show the foreign ownership variable to be significant at 51 per cent. Another explanation is that foreign owners need a clear majority (not just a 1 percent share) to invest in raising value added.
However, it is important to keep in mind that minority foreign ownership may often be a politically palatable manner in which to open up a country to foreign investment. It may also be beneficial when it is linked to managerial control that is greaterthan that suggested by the share of equity owned by the foreign firm.
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