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Master Thesis
The impact of foreign ownership on the Chinese market
Abstract
This study investigates the impact of foreign ownership on the Chinese consumer electronics industry.
The analysis includes a comparison on performance between foreign owned firms and domestic firms
within this industry. Additionally, the effect of foreign owner location on foreign owned firms in
China is explored. The data includes 1211 Chinese firms with observations ranging from 2005 – 2010.
The main findings contradict with existing literature as outcomes show that Chinese domestic firms
outperform their foreign owned counterparts on two out of three tested performance measurements.
Furthermore, an analysis of foreign owned firms only, finds that; western located foreign owners
enhance performance of their owned firms more in terms of ROA as compared to non-western located
foreign owners.
Erasmus School of Economics
Diederik van den Assem
Student number: 348246
Supervisor: Dr. A.S. Bhaskarabhatla
Co-reader: Dr. A.G.B. de Vries
Table of content
1. Introduction 2
2. Literature review 4
2.1 Management perspective 5
2.2 Economical perspective 8
2.3 Main research question and hypotheses 16
3. Data 20
3.1 Data construction 20
3.2 Descriptive analysis 21
3.3 Variable explanation 24
4. Methodology 28
4.1 Modeling issues 28
4.2 Econometric models 29
5. Results 31
6. Discussion 36
7. References 40
8. Appendices 42
2
1. IntroductionOver the past few decades international trade has increased, resulting in more globally
operating markets and firms. Even though there is still a huge discrepancy between the
openness of different countries towards international trade, many have embraced the global
economy. With a constant stream of new countries (mostly emerging) joining, international
markets keep developing, making it an interesting topic among academics. However,
international trade is a complex matter, which can hardly be looked at as a whole. In order to
understand and create better insights on specific mechanisms that contribute to international
trade, additional research on a smaller scale is needed. Ownership structures and their
implications is one of those fields that give better insights into how and why firms operate
internationally. This field made its first appearance in 1960’s and has developed ever since.
In the early days, ownership was easier to grasp with more often than not, single owners who
showed direct involvement usually within a domestic market. With the evolution of
international trade, so did ownership structures. Nowadays, owners of for example Dutch
firms can be numerous and located virtually anywhere. Once could suggest that this has a
negative impact on a firm’s performance as it loses its control to foreign owners.
Consequently, direct leadership and a firm’s identity are also affected.
The contrary is true according to existing literature. Foreign ownership is in many cases a
driver of superior performance of a foreign owned firm, especially compared to firms that are
not foreign owned. Academics mention many possible explanations in order to clarify these
differences. However, an often used theory concerns intangible assets. Intangible assets are
best described as non-physical assets that help generate turnover. A brand name, the number
of patents possessed or the amount of firm-specific knowledge can all be qualified as
intangible assets. It is thought, that when a firm is foreign owned, it shares in these assets,
resulting in better performance. As mentioned before, these assets are not likely to be the
only explanation for better performance. A more likely scenario would be that intangible
assets, together with tangible assets such as equity, are responsible for performance
enhancement. Besides these positive implications, also negative factors of foreign ownership
can be mentioned. For example, distance between a foreign owner and its owned firm for is
considered to be a cost driver. Moreover, differences in terms of culture and politics can also
function as barriers. Academics capture these effects in one sentence as the “liability of
foreignness” (Charles P. Kindleberger, 1969). In short, it is a collection of additional costs
Diederik van den Assem Erasmus University Rotterdam
3
that arise with foreign activity. In order to overcome these additional costs, a way to
circumvent or overcome them needs to be found.
The complexity of these ideas and possibilities triggered academics to test the mechanisms
behind foreign ownership over the last 50 years. This study will continue the exploration of
foreign ownership and its implications. This is established by creating a research design in
which the implications of foreign ownership on a foreign owned firm are assessed. In this
research design, the implications of foreign ownership will be specified as the effect of
foreign ownership on a foreign owned firm’s performance measures. In addition, the location
of foreign owners will be further investigated. The main objective is to find proof that
location differences between foreign owners result in differences in a foreign owned firm’s
performance. In short, does a foreign owner, located in country A, enhance performance of
the owned firm more than a foreign owner located in country B.
The above-mentioned questions will be answered by using a dataset containing roughly 1400
firms, operating in China’s industry for the manufacturing of consumer electronics (hereafter
consumer electronics industry). The dataset includes both foreign owned firms and Chinese
domestic firms, creating the possibility of comparing these two sets of firms. Furthermore,
foreign owner locations are included, allowing the second question to be answered. Based on
the existing literature, research targeting the Chinese market is scarce. Even scarcer is
research on the effect of a foreign owner’s location on performance. The combination of
these two relatively unexplored areas makes the contribution to existing literature of this
study important.
The remainder of this study will be structured as followed: section 2 will discuss this topic’s
most important papers and their accomplishments. The 3th section will provide a better
understanding of the data and the information it contains. In section 4 the modeling issues
and methodology will be further explained. The results of this paper will be displayed in
section 5 followed by conclusions and their main implications in section 6.
Diederik van den Assem Erasmus University Rotterdam
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2. Literature review
The following sections will discuss a variety of research papers that investigate ownership
and its relation with performance. However, beforehand it is important to clarify the
terminology that is used in this field of study. Currently, the term foreign owned is used to
define a firm that is owned by another firm, located in a different country. What needs to be
absolutely clear is that this definition treats all foreign owned firms equally, no matter how
big or small their foreign share is. In other word, no distinction is made between firms that
are party or wholly foreign owned. Nonetheless, some papers that will be discussed do use
this distinction, thereby treating foreign owned firms differently based on their share of
foreignness. This share is usually determined in percentages and in these papers defined as
the degree of foreign ownership. Another commonly used term is subsidiary, defined as a
firm which is more than half owned by another firm, meaning that the owner is in control as
it has more than half the shares and their voting rights. Note that subsidiaries are not
necessarily foreign owned, as subsidiary and owning firm can be located in the same country.
Nevertheless, papers discussed in this section will use the term subsidiary in a foreign sense
only. Furthermore, foreign direct investment (hereafter FDI) is used in some papers.
Generally, FDI is used to gain control in a foreign environment. One way of doing that is by
investing in a foreign firm, thereby seizing control and thus ownership. Additionally, most
papers that will be discussed use the term performance. A clarification for performance is
given in section 2.3. For now it should suffice to say that performance is being measured by
the use of performance measurements and that, depending on a paper’s topic and research
design, different measurements can be chosen. However, for the purpose of this study there is
no necessity to clarify all measurements. Lastly, literature mentions developing and
developed economies, a distinction that is also used in this paper. The classification of a
country’s development level depends on the used criteria. In general, gross domestic product
(GDP) or per capita income is used as a financial criterion. In addition, non-financial criteria
such as life expectancy or a country’s level of industrialization are used. Countries with high
ratings on both financial and non-financial criteria are qualified as developed. Consequently,
developing countries have low ratings on these criteria.
The rest of this section will discuss the most important literature in this field of expertise.
Section 2.1 will shortly discuss this topic from a management perspective. Although this
perspective will not be pursued in the rest of this study, it gives valuable insights in how
foreign ownership and its implication on performance are analyzed from a different angle.
Diederik van den Assem Erasmus University Rotterdam
5
Section 2.2 will form the theoretical backbone of this research by discussing existing
literature from the economical perspective. The last section will form the research design by
the formulation of a research question and underlying hypotheses.
2.1 Management perspective
When looking at the managerial perspective, its interest lies in how foreign subsidiaries of
multinational corporations (MNCs) perform, and how this performance can be enhanced. In
their eagerness to find answers, academics investigated the combination of knowledge
transfer and absorptive capacity. This combination is often used to explain superior
performance of subsidiaries. Christopher A. Bartlett and Sumantra Ghoshal (1989), as well as
Bruce Kogut and Udo Zander (1993), conclude that a MNCs ability to create and transfer
knowledge from headquarters to subsidiaries is essential for their success. This ability is
needed to overcome the “liability of foreignness” which was first mentioned by Kindleberger
(1969) and elaborated on by Stephen Herbert Hymer (1976) and Srilata Zaheer (1995). This
liability of foreignness can be best described as disadvantages that arise in the form of
additional costs of doing business abroad, created by unfamiliarity with environmental
circumstances as cultural, political and economic differences (Kindleberger, 1969).
Kindleberger suggests that this liability varies across countries but always exists to some
extent, making it harder for subsidiaries to be successful abroad. This implies that the
creation of subsidiaries coexists with certain disadvantages which need to be overcome in
order to outperform local firms in host countries.
The process of knowledge transfer is discussed in many papers and often includes the relation
with expatriates. Sheng Wang, Tony W. Tong, Guoli Chen and Hyondong Kim (2009) find
that the characteristics of expatriates determine the success of knowledge transfer. Their
results show that utilizing expatriates who possess motivation and adaptability directly
enhance FDI performance. Furthermore, Ingmar Bjorkman, Wilhelm Barner-Rasmussen and
Li Li (2004) find that MNCs can use certain organizational mechanisms to enhance
knowledge transfer. The findings of Bjorkman et al. (2004) are based on a combination of
knowledge transfer, agency theory and socialization theory. Agency theory makes use of a
principle- agent relationship and tries to resolve two problems; conflicting desires or goals
between the two parties, and difficulty to verify performance of the agent by the principle.
The aim of socialization theory is to establish a shared set of values, objectives, and beliefs
across MNC units (Sumantra Ghosal and Nitin Nohria, 1994). “The underlying rationale is
Diederik van den Assem Erasmus University Rotterdam
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that the more different units share long-term visions and goals, the more likely they are to
transfer resources and exchange complementary knowledge” (Bjorkman et al., 2004).
As stated before, absorptive capacity -the ability to recognize the value of external
knowledge, assimilate it, and apply it to subsidiary operations (Wesley M. Cohen and Daniel
A. Levinthal, 1990)- is also used to explain subsidiary performance. Yi-Yang Chang, Yaping
Gong and Mike W. Peng (2012) conclude that subsidiaries that have a higher absorptive
capacity, receive more knowledge through expatriates, ceteris paribus. This effect is even
stronger if expatriates possess the right competencies to transfer this knowledge. They
identified three dimensions -ability, motivation and opportunity seeking- which are equally
important in enhancing knowledge transfer.
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Table 1 Management approach on multinational-subsidiary relations and subsidiary performance
Author (Year) Findings Empirical setting
Kogut and
Zander (1993)
The combination of creating new knowledge and then successfully transfer it from multinational to subsidiary is essential for a subsidiaries success.
Questionnaire data on 35 innovations which have been transferred between two parties 82 times.
Zaheer (1996) Subsidiary firms operating internationally, face a “liability of foreignness” which can be overcome by either imitating local domestic firms or by using firm-specific advantages made available by the multinational. Mixed results for both methods results in no clear preference for either method.
A questionnaire among 28 trading rooms and 12 international operating banks.
Wang et al. (2009)
Subsidiary performance can be enhanced by knowledge transfer, conducted by expatriates that are motivated and possess adaptability, rather than superior technological skill.
A questionnaire among 62 foreign-invested firms in China, during 1999 and 2000.
Bjorkman et al. (2004)
MNCs can influence knowledge transfer by streamlining long-term vision and goals among subsidiaries and themselves. By achieving this, transfer of resources and knowledge is more likely to affect performance.
Interviews with top managers resulting in 134 observations among Finnish and Chinese subsidiary firms.
Chang et al. (2012)
Performance of subsidiaries is positively affected by certain expatriate competencies as well as the subsidiary’ absorptive capacity. A distinction on competencies is made between ability, motivation and opportunity. Separately, both mechanisms contribute to better performance but combining the two results in far superior performance.
Time-lagged data on 162 British subsidiaries of Taiwanese MNCs
Note: The table above should be read with care while only findings that contribute to the topic of this paper are
included. Many of these papers show results far more extensive than included in the table above. Furthermore,
not all mentioned sources are included in this table, as some of them are books and lack specific findings that
contribute to this field of expertise.
Even though results and implications might be similar for both management and economic
research, the foundation for their results differs greatly. While the first focuses more on the
relationship between multinational and subsidiary in terms of knowledge transfer, human
capital and firm characteristics, the latter focuses more on the implications of ownership
structures on performance, as will be discussed in the next section.
Diederik van den Assem Erasmus University Rotterdam
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2.2 Economical perspective
The majority of the literature used in this study will be discussed in the following paragraphs.
For a long period of time, economists have taken an interest in the difference in performance
between firms that operate in a similar environment. Ownership structures and their
implications on firm performance are one of many streams in economic research trying to
explain this phenomenon. In the following paragraphs, different directions within this
research field will be mentioned. The first paragraph will investigate foreign ownership in
developed economies. The second will discuss foreign ownership in developing economies.
Lastly, the reversal of foreign ownership will be explained in the last paragraph.
The effect of ownership structures and foreign interference in developed economies
Economists have taken on vastly different approaches in explaining performance differences
between subsidiaries and domestic firms. Edward A. Safarian (1966) is among the first to
mention the influence of ownership structures on firm performance. His research focused on
a sample of Canadian firms, who at that time were often part of US-based multinationals. The
results answer various implications of ownerships structures on firm performance, but the
overall conclusion is that differences in ownership structures have a significant influence on
firm performance. With his conclusion, Safarian built a foundation for further research in this
field of study. Richard E. Caves (1982) contributed to the subject with his book
‘Multinational enterprise and economic analysis’. His interest lies in the benefits created by
FDI in manufacturing sectors. Case studies for the U.K., Canada and Australia found
conclusive results for the hypothesis that “firms with a higher share of foreign ownership will
on average outperform domestic firms” (Caves, 1982). Steven Globerman, Jonh C. Ries and
Ilan Vertinsky (1994), like Safarian and Caves, studied Canadian data to answer to a certain
concern, that is, the positive or negative “externalities” imposed by foreign ownership
structures on domestic production. Their results are mixed as they find that wages and value-
added per worker is higher for subsidiaries, mostly because these firms are more capital
intensive and larger in size. However, when these effects are controlled for, no significance
remains. In addition they find that results do not support beneficial effects based on the
source of FDI, meaning that there are no significant results for the hypothesis that the country
of origin of a subsidiary’ MNC influences productivity of the subsidiary.
Anthony E. Boardman, Daniel M. Shapiro and Aiden R. Vining (1997), and earlier Caves
(1996), are among the first to mention firm-specific advantages (FSA’s) in combination with
Diederik van den Assem Erasmus University Rotterdam
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subsidiary performance. FSA’s are believed to create a higher productivity. Additionally,
benefits are reaped for a longer period of time because imitation by competitors is both costly
and full of risk. These factors make that FSA’s are important in firm performance
enhancement as subsidiaries receive FSA’s that have proven their worth in the country of
origin (Boardman et al., 1996). In combination with these FSA’s, Boardman et al. include
agency costs as a factor of importance. As mentioned earlier, agency costs are created by
conflicting interests of two parties, operating within one firm or holding. This explains that
these costs, for the larger part, arise with hierarchy and are therefore applicable in a
multinational–subsidiary setting. They hypothesize that higher ownership concentration -and
thus lower agency costs- of subsidiary firms explain superior performance of these
subsidiaries as opposed to domestic firms. Their results, to some extent, prove their
hypothesis as they find that differences in domestic and foreign agency costs, created by
difference in ownership concentration, partially explain superior subsidiary performance.
However, they find that these agency costs tend to diminish over time and that FSA’s, for the
larger part, explain superior performance by subsidiaries. Nonetheless they have proven that
overall, subsidiary firms perform better than domestic firms.
A more recent paper by Makoto Nakano and Pascal Nguyen (2013) tries to determine the
effect of foreign ownership on firm performance in the Japanese electronics industry. Their
results are particularly interesting because the target industry is identical to the one chosen in
this study. Their conclusions are based on a sample of firms listed on the Tokyo Stock
Exchange, and observations range from 1998 to 2011. Final results prove a significant,
positive effect for foreign ownership, as a 10% increase in foreign ownership results in a
0.9% increase in return on assets (ROA). A similar pattern for the performance measure
Tobin’s Q can be seen. Noteworthy is that their data includes the 2008 financial crisis, which
has a strong influence on their results. They address this issue by dividing their data into pre-
and-post periods. For both periods, results differ, but the overall mentioned statistic holds.
Overall, Nakano and Nguyen (2013) undeniably prove at least two points, namely that an
increase in foreign ownership is associated with significant increases in performance and
market value. For the latter, authors state that this is in line with their assumption that
suboptimal behavior such as tendencies to build excessive cash balances, are constrained,
leading to a higher market value.
Diederik van den Assem Erasmus University Rotterdam
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Sourafel Girma, Steve Thompson and Peter W. Wright (2006), used a different approach.
Their main aim is to discover the impact of foreign acquisition on domestic firm performance
with the assumption that spillovers will lead to a positive effect on all domestic firms. The
data sample is based on United Kingdom (hereafter U.K.) located firms in technology
importing industries and their findings are both positive and significant, meaning that foreign
acquisition has a positive effect on domestic firms and their productivity. Unlike other
mentioned papers, Girma et al. do not mention performance differences between domestic
firms and foreign owned firms. Instead, they state that all firms, both domestic and foreign
owned, benefit from foreign ownership due to spillover effects.
Earlier, the same authors, joined by Martin J. Conyon (Conyon et al, 2002), showed interest
in the U.K. market. In this paper they looked at the influence of foreign acquisition on wages
and firm productivity. The foundation for their research lies in theory that dictates that MNCs
bring intangible assets in the form of technological knowledge and organizational
capabilities. The use of these intangible assets should be reflected in the measured
performance of subsidiaries, and consequently wages. Firstly, their results show significant
labor productivity differential between domestic and foreign owned firms. Furthermore,
differences in wage levels are proven as well, as foreign owned companies show higher wage
levels as compared to domestic firms. The contrary can be seen among domestically acquired
firms, where wages tend to significantly decrease.
So far, research has proven that foreign owned firms show superior performance compared to
domestic firms. Natalia Barbosa and Helen Louri (2005) challenge this statement with their
comparative research on Greece and Portugal. Their aim is to prove whether or not ownership
matters. The outcomes are somewhat surprising, as they do not find results for their
hypothesis that MNCs perform better than domestic firms in both Portugal and Greece. The
only resemblance with other papers is found in the Greek market. When gross profits as a
performance measure are included, results show a significant difference in performance
between domestic firms and subsidiaries. However, this significant effect is only found for
firms with relative high gross profits. A limitation is that their results are based on a one-
dimension dataset, meaning that their sample is taken for only one year (1992 for Portugal
and 1997 for Greece).
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Table 2 Implications of foreign ownership on firm performance in developed economies
Author (Year) Findings Empirical setting
R.E. Caves (1982)
Firms with a higher share of foreign ownership, operating in a manufacturing industry in Canada, the U.K. or Australia, on average, outperform domestic firms.
Sample of the Canadian, U.K. and Australian manufacturing industries.
Globerman et al. (1994)
Foreign owned firms show higher wages as well as value-added per worker, as compared to domestic firms. However, these results vanish once they control for factors such as size and capital intensity. Furthermore, no evidence is found for effects on performance based on the country of origin of the foreign owned firm’s owner.
A sample Canadian firms, categorized based on their owners location (Canadian, Japanese, U.S., and European-owned)
Boardman et al. (1997)
Ownership concentration of a multinational positively affects agency costs and target-firm performance but the majority of superior performance is explained by positive and significant effects inflicted by the use of FSA’s by MNCs.
Two Canadian samples (1986 and 1991) including domestic and subsidiary firms.
Nakano and Nguyen (2013)
Results show that foreign ownership in the Japanese electronics industry has a positive, significant effect on a firm’s performance, based on ROA and Tobins Q as performance measures.
All companies listed on the Tokyo Stock Exchange from 1998-2011 are included.
Girma et al. (2009)
Findings prove that overall, firms increasingly benefit from foreign ownership due to the effect of spillovers. This differs from earlier work as he makes no distinction on performance between domestic and foreign owned firms.
A sample of 542 U.K. firms operating in the technology importing industry for the period 1989-1996.
Conyon et al. (2002)
The effect of foreign acquisition on a firm’s productivity and, consequently, wages is proven as productivity and wages significantly differ between domestic and acquired firms.
A sample of 460 U.K. firms operating in manufacturing industries for the period 1987-1996.
Barbosa and Louri (2005)
MNCs operating through subsidiaries in Portugal and Greece show no signs of superior performance compared to domestic firms. Only when firms with high gross profits are compared, a difference between performances can be seen.
A sample of 532 firms in Portugal (1992) and 2651 firms in Greece (1997) operating in the manufacturing industry
Note: The table above should be read with care since only findings that contribute to the topic of this paper are
included. Many of these papers show results far more extensive than included in the table above.
Diederik van den Assem Erasmus University Rotterdam
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Overall, there is little doubt that ownership structures, in developed economies, positively
affect firm performance. A common explanation is that foreign owners support subsidiaries
with both tangible and intangible assets, enhancing their performance. Few papers show
evidence that support the contrary, which can probably be explained by simple reasoning,
namely; foreign acquirers are most likely to target foreign firms that at least perform on
average. When this reasoning is combined with the assumption that both tangible and
intangible assets are transferred in case of foreign ownership, a valid ground for the observed
results is found.
The effect of ownership structures and foreign interference in developing economies
All previous papers are based on western data. With the entry of developing economies into
the global economy, interest grew among academics about how these newcomers are
welcomed and more importantly, how they perform. Larry N. Willmore (1986) tried to
discover the same implications of ownership structures in a Brazilian setting, shifting
research from developed towards developing economies. Comparing local firms with foreign
owned firms, he found specific differences in both structure and performance. Significant
results are found for foreign owned firms operating fewer plants, having higher ratios of
value-added to output, higher advertising expenditures, greater exports, higher wages, higher
labor productivity and are more capital intensive. This makes his final conclusion simple,
foreign ownership does enhance foreign owned firm’s performance.
Pradeep K. Chhibber and Sumit K. Majumdar (1999) seem to find more proof for the
influence of foreign ownership in the Indian market. They divide ownership in different
categories based on the amount of control that can be exercised. These categories are formed
on 25% and 40% thresholds, pre 1991, and 25% and 51% thresholds, post 1991. This
distinguishes three groups that are then compared based on return on sales (ROS) and ROA
as performance measurements. However, it gets more complex as these groups are allowed
only a certain amount of foreign ownership. For example, if a firm owned by others for 47%,
only a certain amount of that 47% is allowed to be foreign. Comparing the group that allows
the highest amount of foreign ownership with the two remaining groups that do not allow for
high amounts of foreign ownership, results in a performance enhancement for firms that are
allowed most foreign ownership. In short, categories that allow relatively high levels of
foreign ownership reap profitability benefits that are not available at “lower control
categories”. Yupana Wiwattanakantang (2001) performed a research on the Thai market that
Diederik van den Assem Erasmus University Rotterdam
13
shows resemblance to that of Chhibber and Manjumar. Similar results are found (namely, that
subsidiary firms show better performance as opposed to domestic firms), even though his
study emphasizes on ownership structures and the differences in management styles this
creates.
Similar to Chhibbber and Majumdar (1999), Ali Osman Gurbuz and Asli Aybars (2010) look
into foreign ownership and the implications on firm performance in Turkey. In addition, they
add another dimension in the form of the degree of foreign ownership. They assume that
foreign ownership indeed will positively affect firm performance but will vary with different
degrees of ownership. In order to test their hypothesis, they make a distinction between
minority foreign owned firms (MIN), majority foreign owned firms (MAJ) and domestic-
owned firms (DOM). Their results are surprising as they do find differences in performance
based on these groups. They find that, based on ROA, MIN firms perform significantly better
than both MAJ and DOM firms. In addition, they find that DOM firms perform significantly
better than MAJ firms, implying that relatively high levels of foreign ownership affect
performance negatively to levels where they are outperformed by domestic firms. Earlier
papers never incorporated this theory making it an important contribution to existing
literature.
Lastly, David Greenaway, Alessandra Guariglia and Zhihong Yu (2012) conduct research,
almost identical to Gurbuz and Aybars (2010), namely the impact of different degrees of
foreign ownership on subsidiary performance. The main difference is that this paper looks at
the Chinese, rather than the Turkish market. Also, rather than using pre-defined groups, the
authors chose for percentages as a measure of degree of foreign ownership, making it
possible to draw more detailed conclusions. The final results are similar to those of Gurbuz
and Aybars (2010) but as expected, more detailed. It shows that foreign ownership indeed
does lead to better firm performance, based on return to assets and return on sales, but is
limited to certain degrees of ownership. In numbers, they find that performance of target-
firms rise as long as the degree of ownership lies between 47% and 61%, depending on the
performance measure that is used. After this threshold of ownership degree, performance
starts to decline. This implies that there is an optimum of ownership percentage.
Diederik van den Assem Erasmus University Rotterdam
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Table 3 Implications of foreign ownership on firm performance in developing economies
Author (Year) Findings Empirical setting
Willmore (1986) Significant differences between foreign owned firms and domestic firms on for example exports and productivity are identified in favor of foreign owned firms.
A total of 206 “matched pairs” are used in Brazils manufacturing market.
Chhibber and Majumdar (1999)
Foreign ownership is categorized by the amount of control that can be exercised. They find that, with control levels that match ownership of 51%, comes superior performance, compared to domestic firms.
Firm-level data on over a 1000 Indian firms that are listed on the Bombay Stock Exchange.
Gurbuz and Aybars (2010)
They find that performance is enhanced by foreign ownership but depends on its level. It is shown that minority-owned firms perform better as opposed to domestic and majority-owned firms. More importantly, majority-owned firms perform less than domestic firms, indicating that high levels of foreign ownership affect performance negatively.
205 non-financial listed Turkish companies monitored from 2005-2007, making it a panel dataset.
Greenaway et al. (2012)
Findings imply that optimal levels of foreign ownership exists, and that with high levels of foreign ownership, not necessarily come high levels of performance. Ideally foreign ownership must lie between 47% and 61%.
Data extracted from the ORIANA database. 23.000 Chinese Companies and their financial information is included.
Note: The table above should be read with car since only findings that contribute to the topic of this paper are
included. Many of these papers show results far more extensive than can be seen above.
Like earlier findings for developed economies, performance enhancement due to foreign
ownership in developing economies is similarly proven significant. Addition to existing
literature is made because optimal foreign ownership levels, for which performance is
enhanced most, are determined. Findings show that more is not always better, as optimum
levels of foreign ownership lie between 47% and 61% according to Greenaway et al. (2012).
The reversal of foreign investments
Anusha Chari, Wenjie Chen and Kathryn M. E. Dominguez (2012) investigate a relatively
new phenomenon in the global economy, namely the rise of foreign acquisitions of
developing countries in the United States (hereafter U.S.) and other developed economies.
Diederik van den Assem Erasmus University Rotterdam
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They argue that this contradicts with neoclassical theory, stating that capital tends to flow
from capital-abundant countries towards capital-scarce countries. This implies that the U.S.
market is subject to foreign interference, by which developing economies reverse capital
flows that have been flowing for years. Their results show that emerging countries acquire
public U.S. targets that are characterized by high levels of sales, employment and total assets.
In the years following the acquisition (five-year period), sales and employment decreases
while profitability rises with 16%, on average. The most important conclusion is that
developing economies are equally capable of conducting foreign investments through
multinationals, compared to developed economies.
Following the above-mentioned implications, Wenjie Chen (2011) performed research to
discover the importance of the acquiring firm’s country of origin. She states that existing
literature indeed proves superior performance of subsidiaries as opposed to local firms, but
there is little knowledge of the impact of where the acquiring firm is located. In her paper
she uses a sample of U.S. based firms and distinguishes the location of the acquiring firm into
three categories, namely developing economy, non-U.S. industrial country (developed
economy) and U.S. based acquirers. The results obtained by comparing these groups are
interesting because she finds significant differences between them. Compared to U.S.
acquirers, acquirers from developing economies boost performance by 8% but lead to lower
employment and sales levels. Comparing U.S. acquirers with acquirers from non- U.S.
industrial firms, results show that the latter boost performance of the acquired firm by 10%
and lead to an increase in sales. In general, both categories of foreign ownership result in a
higher performance of the target firm compared to domestic firms. Moreover, foreign
ownership by firms located in developed economies leads to better performance compared to
foreign ownership by firms located in developing economies. An important conclusion is that
these findings contradict with earlier results found by Globerman et al. (1994) who stated that
no significant results for location differences and their effect on firm performance were
found.
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Table 4 Implications of the reversal of foreign investment
Author (Year) Findings Empirical setting
Chari et al. (2012) Reverse of capital flows from developing to developed economies result in foreign ownership of U.S. firms. The effect of foreign ownership on performance is positive and significant with a 16% rise (on average) in ROA up to five years after an acquisition.
A final sample of 259 completed mergers and acquisitions (M&A) transactions from a firm located in a developing economy, to a U.S. target. Data is gathered from 1980 up to 2006.
Chen (2011) The effect of foreign ownership on firm performance is greatest when acquiring and acquired firm are both form developed economies, resulting in a 10% increase in performance and higher sales levels. A same pattern can be seen for acquiring firms from developing economies and U.S. based acquired firms although the effect on performance is lower (as high as 8%)
Data includes all public M&A of U.S. target firms between 1979 and 2007.
This new phenomenon of reversed capital flows is relatively new and largely unexplored.
Chari et al. (2012) and Chen (2011) are among the few who investigated this area and have
proven that foreign owners form developing economies are equally capable in performance
enhancement. However, Chen concludes that foreign ownership in developed economies
leads to higher performance if the foreign owner is from a developed economy as well.
2.3 Main research question and hypotheses
The main purpose of this study is to investigate the impact of foreign ownership on firms
operating in the Chinese consumer electronics industry. This is executed by comparing
domestic firms with foreign owned firms, in terms of performance. The described theoretical
framework will now be followed by the formulation of a main research question and
underlying hypotheses. This together will create a solid research foundation for the remainder
of this study.
Main research question
As mentioned above, investigating the impact of foreign ownership is acknowledged to be the
most important purpose of this study. However, specification of this statement is needed in
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order to create clarity in what exactly is tested. While “Impact of foreign ownership on firms”
sounds interesting enough, problems arise if one were to statistically test this “impact”.
Therefore, measurements of impact need to be determined in order to create a testable
empirical framework. In the existing literature, impact is often defined as performance, a
description that is much more tangible. Consequently, performance will also be used as a
parameter of impact in this study. This results in the following research question:
Research question: “To what extent does foreign ownership affect firm performance
in the Chinese electronic industry”?
Hypotheses
The majority of research that is done in this field of expertise has found conclusive results for
a positive effect of foreign ownership on foreign owned firms. This raises the question, not if
performance is enhanced, but to what extent. Nonetheless, it would be ignorant to simply
assume the above. A good starting point would therefore be to answer the question if such a
pattern exists for the Chinese electronics market. In order to answer this question, the right
measures of performance need to be chosen. These performance measures will then be used
to prove the above assumption namely, that there is a positive effect of foreign ownership on
foreign owned firms and their performance.
So far performance has been treated as if it were a tangible definition. However, what make it
tangible are the underlying performance measurements. Existing literature uses a broad
variety of measurements, based on different characteristic of a paper. The importance of the
right performance measure should therefore not be underestimated. However, one
measurement turns up more often than others, namely: return on assets (ROA). In short, it
indicates how profitable a company is relative to its total assets. This is a particularly good
measurement for a variety of reasons. Firstly, it being a ratio makes it ideal to compare
different companies with one another. Secondly, it includes net income, probably one of the
best ways to quantify performance. Lastly, to some extent, it controls for differences in size
by dividing with a firm’s total assets.
For the same reasons, return on equity (ROE) is a strong performance measure. Not
surprisingly, it is very similar to ROA, apart from total assets being replaced by total equity.
In existing literature ROE is not often used, which could be the consequence of it being
similar to ROA. Nonetheless, no strong argument is raised against its use, and is therefore
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included in this paper. Additionally, ROE before tax is included as a performance measure. A
clarification for all performance measures will be given in section 3. Based on the above, the
following hypotheses are formulated:
Hypothesis 1a: “Performance based on ROA is higher for foreign owned firms as
opposed to domestic firms”
Hypothesis 1b: “Performance based ROE is higher for foreign owned firms as
opposed to domestic firms”
Hypothesis 1c: “Performance on ROE (before tax) is higher for foreign owned firms
as opposed to domestic firms”
Assuming that performance of firms is enhanced by foreign ownership, it is interesting to
know what effect the location of a foreign owner has on the owned firm’s performance. We
have seen conflicting results in this area. Globerman et al. (1994) for example, did not find
significant results concerning differences in a firm’s performance, based on the location of
their owner. This contradicts with the findings of Chen (2011) who concludes that differences
in firm performance can vary depending on the location of its owner. In this research, the
effect of location differences will be explored by only looking at firms that are foreign
owned. When domestic firms are excluded, a clear sight on the relationship between a foreign
owner’s location and the foreign owned firm’s performance is created. There are only a few
papers that mention the effect of location in this way, making it an important contribution to
existing literature. However, because it is a relatively unexplored area, the effect of an
owner’s location on a owned firm’s performance is hard to predict.
Another issue that requires special attention involves the way location is determined.
Globerman et al. (1994) categorized foreign owners into three groups, European, Japanese
and United States- based firms. Chen (2011) makes a separation between developing and
industrialized economies. It shows that there is no definitive way in categorizing locations
and that much depends on the availability of suitable data. In this study, a separation between
western and non-western economies is made (a list of countries and their categorization can
be found in the appendix). The reason for this is choice is somewhat intuitive. Although
China today is more western than ever before, there is still a huge political, economic and
cultural difference between China and western economies. It is likely that these differences
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create a stronger liability of foreignness for western economies as it does for non-western
economies. This reasoning leads to the following hypotheses:
Hypothesis 2a: “Foreign owners located in western economies have a significant,
negative effect on ROA performance of their foreign owned subsidiary, as opposed to
subsidiaries that are owned by firms that are located in non-western economies”
Hypothesis 2b: “Foreign owners located in western economies have a significant,
negative effect on ROE performance of their foreign owned subsidiary, as opposed to
subsidiaries that are owned by firms that are located in non-western economies”
Hypothesis 2c: “Foreign owners located in western economies have a significant,
negative effect on ROE (before tax) performance of their foreign owned subsidiary, as
opposed to subsidiaries that are owned by firms that are located in non-western
economies”
With these six hypotheses, a testable framework is created. In short, the first step will be to
discover performance differences between foreign owned firms and domestic firms in
China’s electronic industry. This will then be followed by the exploration of the effect of
foreign owner location on firm performance. In the sections that follow, above-mentioned
assumptions and hypotheses will be tested.
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3. Data
This part presents a description of the dataset and how it is constructed. To test the
formulated hypotheses, it is important to identify the different groups and their performance.
Section 3.1 will discuss the process of data construction and its final product. In section 3.2,
the dataset will be looked at more closely. Descriptive statistics will help get a better
understanding of the dataset and its content. Lastly, section 3.3 will cover the nature and
purpose of all included variables (that is, dependent, independent and control variables).
3.1 Data construction
The dataset used in this study is obtained from the Orbis database, gathered by Bureau van
Dijk. This database contains “comprehensive information on companies worldwide, with an
emphasis on private company information”1. Furthermore, they gather industry-specific
information, key financials and keep track of M&A deals and rumors. In total, information
for more than 120 million private companies is included. With this information, a detailed
comparison on performance for a significant amount of companies is possible, making this
database an ideal fit for this research.
The finalized dataset contains financial information and ownership data for Chinese
companies that are active in the manufacturing of consumer electronics. This industry
includes a variety of products, from televisions to mobile phones, but can be best described as
electronic equipment intended for everyday use. The choice for China’s electronics industry
is simple; China is one of the top FDI recipients globally (Greenaway et al., 2012), increasing
the chance of a large number of foreign owned firms. Since observing foreign ownership is
essential for the success of this paper, China seems a suitable choice. Furthermore, the
electronics industry creates a workable subset where the number of companies is great
enough to perform solid empirical research but is not too detailed to lose validity when
econometric models are estimated. The data itself includes financial information that allows
for a firm’s performance to be measured and creates the possibility to compare firms with one
another. Global ultimate ownership (GUO) data is included to distinguish domestic firms
from foreign owned firms. Lastly, non-financial firm information is gathered to serve as
control variables in the estimated models.
1 Bureau van Dijk, Company information and business intelligence. http://www.bvdinfo.com cited March 14th 2014.
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Per company, information is gathered for the last ten available years, resulting in
observations starting in 1997 and ending in 2012. This is explained by the fact that the range
of observations per company differs, both in starting point and length. This means that
observations are staggered over time, resulting in a severe amount of missing values. Missing
values are problematic because they often lead to an unbalanced dataset. A balanced dataset
is characterized by a complete set of observations for both dimensions (i.e. the observed firms
and time). Naturally, an unbalanced dataset has missing values, often within time periods,
thereby affecting future outcomes. To address this issue, the range of observations is altered
to a five year time-span, starting in 2005 and ending in 2010. This way, missing values were
reduced significantly, making the dataset more balanced. This altered time span in
combination with the Chinese consumer electronics industry creates a sample of 1211 unique
companies.
3.2 Descriptive statistics
In this section descriptive statistics are provided. The goal is to better understand the used
data and show its possibilities.
Essential for the first hypothesis, is the distribution of domestic firms versus foreign owned
firms. To distinct one from the other, GUO data is exploited. This variable allows foreign
owned firms to be identified as their owner is being named. Reversed, the same applies;
unobserved GUO data implies no owner and thus a domestic firm. By creating a dummy
variable (MNE), the two groups are separated. The dummy is coded as 0 for a domestic firm
and 1 for a foreign owned firm. This results in 112 subsidiaries against 1099 domestic firms
as can be seen in table 5.
Table 5: Distribution of domestic and foreign owned firms
MNE Frequency Percent
Domestic firms 1,099 90.75Foreign owned firms 112 9.25
Total 1,211 100.00
Besides differences in volume, it is interesting to see how observations per type of firm are
spread over the years. Ideally these observations follow the same 91/9 distribution as seen in
table 5. This would mean that, on average, both a domestic and a foreign owned firm have an
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equal amount of observations over all years. Table 6 shows the exact observations per type of
firm across all observed years.
Table 6: Distribution of observations between domestic and foreign owned firms
Year2005 2006 2007 2008 2009 2010 Total Percen
t
Domestic firm 3 578 614 874 827 446 3,342 88.55Foreign owned firms 2 67 86 100 95 82 432 11.45Total 5 645 700 974 922 528 3,774 100.00
Comparing both tables gives that, neither domestic nor foreign owned firms are
overestimated in terms of observations because they roughly follow the same distribution
(91/9 against 89/11) Furthermore, the total number of observations across all variables is
given as 3342. Lastly, the observations are rather smoothly distributed over all years except
for 2005.
The next descriptive contributes to a better understanding of the dataset as it gives
observations per variable together with important statistical data. These numbers tell
something about how outcomes are spread and whether or not this dataset is balanced. As
mentioned earlier, whether or not a dataset is balanced has serious implications on future
outcomes. Unfortunately, in this case the dataset is unbalanced due to missing values
observed under different variables. Observing table 7, the maximum number of observations
that a variable can reach is 3774. Only the variables year, MNE, listed and patents reach this
maximum. All other variables do not reach their maximum and thus have missing values.
Table 7: Observations and statistics of all variables
Variable Observations Mean Std. Dev. Min Max
ROA 3719 4.234734 13.32791 -88.675 99.98ROE 3563 13.56119 70.04109 -661.075 932.114ROE (BT) 3058 24.17973 99.61147 -775.484 933.847Year 3774 2007.993 1.298208 2005 2010MNE 3774 .1144674 .3184203 0 1Log Employees 3530 5.396564 1.248811 1.098612 9.928571Log Sales 3765 8.909966 1.577434 4.010388 15.30877Listed 3774 .0135135 .1154748 0 1Activity 2604 1.123656 .47938 1 3Patents 3774 4.442501 48.99725 0 938Western Economies 432 .4675926 .4995271 0 1
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Furthermore, minimum and maximum outcomes of all variables are given. For the variables
ROA, ROE and ROE (BT), highly negative and positive outcomes are observed. This
indicates that performance varies rather strong in the dataset, making performance differences
more likely. In addition, a number of variables are categorical, meaning that their outcomes
represent certain categories. These variables are recognized by their minimum and maximum
values lying between 0 and 3. This dataset contains the categorical variables MNE, listed,
activity and western economies, with outcomes corresponding to the following categories:
Table 8: Categorical variables
Category MNE (Dummy) Listed Activity Western Economies (Dummy)
0 Domestic firm Not Listed Non existent Non-western Economies1 Foreign owned firm Listed Manufacturing Western Economies2 Non existent Non existent Services Non existent3 Non existent Non existent Wholesale Non existent
Lastly, mean differences between the variables ROA, ROE and ROE (BT) are rather big.
This is an indication that there are serious differences between the three, supporting the fact
that three separate models are being estimated.
The last descriptive is the location of the global ultimate owner (GUO) of a foreign owned
firm. This is particularly interesting for hypothesis 2, when the location of a foreign owner is
introduced as an independent variable, possibly affecting firm performance. Table 9 shows an
overview of all countries in which a global ultimate owner is located. In addition, the number
of observations per country is given.
What stands out in table 9 is the lack of diversity in ownership location. In total, only 16
different countries are observed, of which 3 are believed to be tax havens (Belize, Mauritius
and the Virgin Islands). Luckily, these countries together are only observed 6 times.
Consequently no action has been taken to correct for the small effect of these countries.
Furthermore, two countries stand out, Hong Kong and Switzerland. More than half of all
observations can be assigned to these two countries.
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Table 9: Global ultimate owner descriptive data
Country Frequency Percent Cum.
Belize 1 0.89 0.89Canada 1 0.89 1.79France 1 0.89 2.68Hong Kong 31 27.68 30.36Indonesia 1 0.89 31.25Japan 9 8.04 39.29Korea 3 2.68 41.96Malaysia 1 0.89 42.86Mauritius 4 3.57 46.43Singapore 2 1.79 48.21Sweden 2 1.79 50.00Switzerland 41 36.61 86.61Taiwan 6 5.36 91.96United Kingdom 2 1.79 93.75United States 6 5.36 99.11Virgin Islands (U.K.) 1 0.89 100.00
Total 112 100.00
In addition, a dummy variable is created which categorizes these 16 observed countries into
western and non-western economies (A table showing how countries are exactly categorized
can be found in the appendix). This dummy is coded as 0 for non-western economies and 1
for western economies. This variable is essential to test hypothesis 2 as it categorizes the
locations of foreign owners.
Table 10: Distribution of western and non-western economies
Western Economy Frequency Percent
Non-Western Economy 58 51.79Western Economy 54 48.21Total 112 100.00
Table 10 shows that the location of foreign owners is almost evenly distributed between
western and non-western economies. In total 112 foreign owners and their locations are
identified, a number that corresponds with the observations in table 5.
3.3. Variable explanation
In the following paragraphs, all included variables will be discussed. First an explanation of
the dependent variables will be provided. Second, this research’s main independent variables
will be discussed. Lastly, the control variables will be named and elaborated.
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Dependent variables
The empirical models in this study are estimated on three different performance ratios,
namely; return on assets (ROA), return on equity before tax (ROE BT) and return on equity
after tax (ROE). These ratios are used for both hypotheses and are, apart from ROE (BT),
among the most commonly used measures of performance. Especially ROA is often used in
other papers, making it the most important measure of performance in this research. Another
important reason for choosing these ratios as dependent variables is their availability. In
general, financial information almost always includes these ratios making them ideal for
quantitative research. In this case, the Orbis database made the extraction of an additional
performance ratio, ROE (BT), possible. That is why a total of three dependent variables are
used to empirically test both hypotheses. The main difference between these ratios is the
financial information they are based on:
ROA is constructed as; ROE as; and ROE (BT) as:
Net income / Total assets Net income / Equity Gross income/ Equity
Ideally, Tobins Q would have been included as well. This is a ratio that divides a firm’s total
market value with total assets, which tells something about whether or not a firm is under- or-
overvalued. However, both time and data was limited making the construction of Tobins Q
costly. It was therefore decided not to include Tobins Q at the cost of losing additional
explanatory power.
Independent variables
The independent variables that are used in this research are the MNE and Western Economy
dummy variables. Both variables are used to create two groups within the data (as mentioned
in section 3.2). This distinction is important as the relationship between these groups and the
dependent variables ultimately tests both hypotheses.
Control variables
In order to improve a models explanatory power, control variables need to be included. These
variables are important since they have the tendency to affect the relationship between the
dependent and independent variable. By including them in a model, their effect is isolated
and the relationship between dependent and independent variables is unaffected. To capture
these unwanted effects, a total of five control variables are included.
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The number of employees undoubtedly affects firm performance in some way. However, it is
impossible to state that an increase in employees leads to a certain increase in performance,
making its effect indirect. Nevertheless, isolating its effect into a control variable is
commonly done in existing literature. Boardman et al. (1997), Girma et al. (2009) and Chen
(2011) are among many to use employment to control for a relationship between foreign
ownership and firm performance. For reasons explained in section 4, the employee variable is
log transformed.
The second included control variable categorizes a firm’s activity in the electronics industry.
Even though the consumer electronics industry is a specific definition, firms operating in this
industry can still pursue different activities. This creates differences between firms, even
when operating in the same industry. It is likely that these differences in activities alter
performance. It is not uncommon to observe differences in activities as Chhibber and
Majumdar (1999) found a similar pattern in their paper. It is thought that this effect can either
be positive or negative but nonetheless exists. A variable that accounts for these activities and
their impact on firm performance is therefore included.
A third variable that is likely to affect a firm’s performance, is the number of patents it
possesses. The ongoing patent war between Apple and Samsung is a perfect example of the
importance of patents and their implications on firm performance. It is likely that an
increasing number of patents leads to an increase in performance, and thus has a positive
effect. This is supported by the idea that patents represent innovation that is protected from
outside use. Firms that excel in this respect are likely to perform better as they have a
monopoly on using their knowledge creating additional profit. Controlling for this effect is
therefore needed to increase the explanatory power of the model as a whole.
The fact whether or not a firm is listed is likely to affect its performance. A company is listed
when her shares are tradable at the stock exchange. This is often the case for relatively large
companies and thus listed indirectly tells something about the size of a firm. Size of a firm is
commonly used as a control variable in other literature (Sarkar and Sarkar, 2000;
Wiwattanakantang, 2001). Originally, size was included in the dataset but due to high
correlation (as will be explained in section 4.1) this was later excluded. Nonetheless, its effect
is partially accounted for by including the listed variable. Differences in performance
between non-listed and listed firms are a real threat to future outcomes and are therefore
controlled for.
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Lastly, total sales of a firm are included as a control variable. Unlike earlier variables, sales
are a financial measure, and thereby similar to the dependent variables. This creates the
problem of correlation, something that will be explained in section 4.1. Here it would suffice
to say that despite possible correlation, sales are thought to have an important effect on firm
performance, one that needs to be controlled for. This is supported by other literature that
also includes sales as control variable (Boardman et al., 1997)
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4. Methodology
In this section, an explanation for the chosen econometric models will be given. This choice
of models is essential to successfully answer the main research question and test the
underlying hypotheses. Section 4.1 discusses modeling issues that first needed to be resolved
in order to further enhance the dataset and its future outcomes. Section 4.2 gives an
explanation for the chosen econometric models and their respective equations.
4.1 Modeling issues
The dataset used for this research can be qualified as a multidimensional dataset with two
dimensions, time and observed firms. These two dimensions create a panel dataset, which
limits possible models. Before proceeding to the actual models, a couple of data-related,
statistical, precautions need to be taken in order to “clean” the dataset to a point where
regressions can be properly executed.
The first problem that needs care is that of skewed variables. A normal distribution is a vital
assumption in statistical modeling and violation has serious implications on results. Therefore
all included variables are tested for a normal distribution, and are log-transformed when they
do not meet this criterion. This resulted in log-transformation for the variables sales,
employees and TotalAssets.
The second problem that could arise is that of multicollinearity. This problem is a real threat
when multiple variables correlate with one another, affecting final results of the estimated
models. This does not necessarily affect the model as a whole but can influence effects of
individual variables, meaning that their sign and significance cannot be interpreted with
certainty. To avoid this problem, a correlation matrix is estimated on all included variables (a
correlation matrix is included in the appendix). Outcomes show whether or not variables with
each other and to what extent. Correlation outcomes above 0.5 are considered severe and
need to be properly addressed before proceeding. In this dataset, a number of variables
exceed the 0.5 mark of correlation and thus need to be treated. This resulted in the removal of
variables “number of subsidiaries”, shareholders, size and logTotalAssets”. LogSales is
included despite its high correlation with other variables. The reason for this choice is that
final results improved when LogSales were included. This implies that LogSales has an
important effect in the model that can better be included.
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As mentioned earlier, panel datasets limit the number of models that are applicable. Models
that do fit panel data well are fixed effects and random effects models. These models, to some
extent, are similar but differ in their way of estimating time-invariant variables. A fixed
effects model is used to estimate the impact of variables that vary over time. All time-
invariant variables are excluded and will not be estimated. This differs from a random effects
model as this model does estimate time-variant variables. The underlying assumption here is
that a fixed effects model assumes time-invariant factors to be fixed and correlated with the
independent variables while a random effects model assumes these time-invariant variables to
be random and uncorrelated with the independent variables. This assumption of non-
correlation will often be violated and thus a fixed effects model will often have the
preference. In the next section separate models for each hypothesis will be chosen and
elaborated.
Lastly, final results will be clustered meaning that their outcomes are robust. This procedure
will result in more reliable models as it addresses outliers and potential heteroskedasticity.
This method will thus be used for all estimated models.
4.2 Econometric models
This research contains two main hypotheses for which each three models will be estimated.
The used methods per hypothesis differ and will therefore be explained separately. Lastly, all
models and their corresponding equations will be given.
Hypothesis 1
For the first hypothesis, panel OLS models are estimated. These models are modified by
including year fixed effects, firm-level clustered outcomes and random effects. Year fixed
effects are included to capture all year-specific effects that are not captured by the included
control variables, and corrects this for all firms. Furthermore, random effects are estimated to
avoid omitted, time-invariant variables in the model. These choices resulted in the following
equations:
ROA=β0+β1 MNE+β2 LogEmployees+β3 LogSales+β4 Listed+β5 Activity+β6 Patents+β7 i . Year+ε
ROE=β0+ β1 MNE+β2 LogEmployees+ β3 LogSales+β 4 Listed +β5 Activity+β6 Patents+ β7 i .Year+ε
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ROE(BT )=β0+β1 MNE+β2 LogEmployees+β3 LogSales+β4 Listed+ β5 Activity+β6 Patents+ β7 i . Year+ε
Hypothesis 2
The second hypothesis is tested on a subsample that only includes firms who are foreign
owned. This way the effect of foreign owner location on a foreign owned firm’s performance
is best discovered. The final model includes year fixed effects, clustered outcomes and
random effects. Similar to hypothesis 1, year fixed effects account for year-specific events,
random effects account for time-invariant variables and clusters result in more robust
outcomes. This results in the following equations:
ROA=β0+β1i .GUOCountry+β2 LogEmployees+β3 LogSales+ β4 Listed +β5 Activity+β6 Patents+β7i .Year+ε
ROE=β0+ β1 i . GUOCountr+ β2 LogSales+ β3 Listed+β4 Activity+β5 Patents+β6i .Year +ε
ROE(BT )=β0+β1 i . GUOCountry+β2 LogSales+β3 Listed+β4 Activity+β5 Patent+β6i . Year+ε
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5. Results
In this section results for all models and their respective hypotheses will be displayed. Tables
are constructed to fit multiple models, meaning that results for hypotheses 1a, 1b, and 1c are
incorporated into one table. A similar table is constructed for hypothesis 2. Results will now
be discussed per hypothesis.
Results hypothesis 1
The first hypothesis tests the relationship between foreign ownership and a firm’s
performance. This relationship is believed to affect performance positively. In total, three
separate models are included in table 11, each representing one of the performance measures.
Furthermore, observations per model vary. This is explained by fluctuations in observations
per dependent variable. In short, ROE (BT) has fewer observations as has ROA and ROE.
Lastly, the total number of included companies per model is given. Across all models, the
number of companies remains practically constant.
Table 11 shows that foreign ownership has a negative effect on firm performance across all
performance measures. This negative effect is strongest for performance measured on ROE
(BT). On average, a foreign owned firm will suffer a decrease of 11.764 in its ROE (BT)
ratio. A same pattern can be seen for ROE where the negative effect of foreign ownership
results in a decrease of 11.639 in a firm’s ROE ratio. The effect is not as strong when looked
at ROA as a performance measure. Here, the negative effect on performance results in a
2.191 decrease in a firm’s ROA ratio. An important remark is that for results based on ROE
(BT), no significance at any significance level can be seen. This means that hypothesis 1c can
neither be rejected nor confirmed, simply because results are not reliable. Outcomes for ROE
are significant at the 10% significance level while outcomes based on ROA are significant at
the 5% significance level. These outcomes contradict with existing literature and the
formulated hypotheses, meaning that firms who are foreign owned perform less as opposed to
domestic firms.
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Table 11: Results Hypothesis 1
Variables Model 1 Model 2 Model 3
Dependent variable ROA ROE ROE (BT)
MNE -2.191** -11.639* -11.764(0.921) (6.252) (8.389)
logEmployees -2.300***(0.499)
logSales 3.099*** 5.977*** 6.921***(0.353) (1.422) (2.024)
Listed 2.398 -0.647 -11.010(2.542) (5.694) (7.556)
Activity -0.042 -5.931 -9.596**(0.627) (3.877) (4.781)
Patents -0.012*** -0.023** -0.061***(0.004) (0.010) (0.020)
Year_2006 4.787 2.152 4.803(5.669) (9.720) (12.061)
Year_2007 4.176 0.506 3.771(5.689) (9.932) (12.351)
Year_2008 3.855 -3.238 -9.973(5.693) (9.741) (11.882)
Year_2009 4.708 5.697 -1.410(5.701) (9.838) (11.948)
Year_2010 4.566 0.584 10.079(5.708) (9.896) (15.381)
Constant -15.808*** -37.917** -29.159(6.100) (16.165) (21.531)
Observations 2,427 2,481 2,088Number of Companies 761 751 749RE YES YES YESYear FE YES YES YESCluster (CompanyID) YES YES YESP value 0.000 0.000 0.000Chi2 113.9 31.47 38.24Notes – Robust standard errors are shown in brackets; significance is shown as *** p<0.01, ** p<0.05, * p<0.1. This table includes outcomes for the first hypothesis, estimated on three different dependent variables. The independent variable is MNE followed by all included control variables. Year fixed effects are shown separately in the table. Observations for each model are given and show a decreasing pattern. This is due to differences in observations among the dependent variables. The P value shows that all models are highly significant.
Furthermore, three out of five control variables show significant results in model 1. In terms
of their effect, the number of employees affects firm performance negatively. More
specifically, a 1% increase in employment results in a 2.3% decrease in a firm’s ROA. What
this tells is that firms that have relatively high numbers of employees, on average perform
less as opposed to firms that have fewer employees. A same pattern can be seen for the
number of patents a firm possesses, although the effect in terms of magnitude is virtually
Diederik van den Assem Erasmus University Rotterdam
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non-existent. A positive effect can be seen for sales generated by a firm. An increase of 1% in
a firm’s sales will lead to a 3.099% increase in its ROA ratio.
While estimating model 2 and 3, the control variable for employees was dropped. This
resulted in more significant outcomes for the main independent variable. This means only 4
control variables were included. For both models Sales and Patents show similar positive,
significant effects as seen in model 1. However, the effect of Sales is stronger in these two
models. The effect of Patents in terms of magnitude remains minimal. Additionally, a
significant, negative effect for Activity is found in model 3.
Overall, a positive effect of foreign ownership on firm performance can be rejected seeing
that instead, negative effects for ROA and ROE are observed. This means hypotheses 1a and
1b need to be rejected. Hypotheses 1c, based on these results, can neither be rejected nor
confirmed because of non-significant outcomes. Lastly, the appendix contains a table
estimating the same models including all control variables. It can there be seen that excluding
employees has a positive effect on the results of model 2 and 3.
Results hypothesis 2
Hypothesis 2 tests for the effect of location on firm performance. It does so by categorizing
the location of foreign owners into western and non-western economies. It is believed that,
based on these location differences, a firm’s performance is affected differently. More
specific, foreign owners based in western economies are believed to have a greater liability of
foreignness, resulting in a negative effect on firm performance as opposed to non-western
owned firms. Similar to the models estimated in table 11, observations decrease with every
subsequent model. The same explanation can be given, namely: fluctuations in observations
per dependent variable. Lastly, the number of included companies is practically constant
across all models (model 3 excludes one company compared to model 1 and 2).
Table 12 shows that the main independent variable is only significant for the first model. In
addition, mixed results in terms of effect are observed across all models. The first two models
show a positive effect of western located foreign owners on firm performance, while the last
model shows an opposite effect. Focusing on the first two models, foreign owners located in
western economies affect firm performance positively, resulting in a 3.216 increase in ROA
and a 2.535 increase in ROE. For model 3, an opposite effect is observed. Here foreign
owners located in western economies have a negative effect on a foreign owned firm’s
Diederik van den Assem Erasmus University Rotterdam
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performance. In numbers, western-owned firms suffer a 17.170 decrease in their ROE (BT)
ratio. As mentioned before, no significance for the independent variable is found in models 2
and 3, meaning that hypothesis 2b and 2c can neither be rejected nor confirmed.
Table 12: Results hypothesis 2
Variables Model 1 Model 2 Model 3
Variables ROA ROE ROE (BT)
WesternEconomies 3.216** 2.535 -17.170(1.625) (10.082) (15.981)
logEmployees -2.790*** -10.398* -19.517*(1.008) (5.858) (10.443)
logSales 2.781*** 11.344*** 15.219**(0.595) (3.940) (6.342)
Listed 7.084 14.408 26.741(4.804) (12.211) (18.792)
Activity 2.553 0.638 0.519(2.045) (4.859) (7.166)
Patents -0.012** -0.037*** -0.070***(0.005) (0.012) (0.020)
Year_2006 -1.206 -3.545 -3.264(1.571) (5.324) (10.830)
Year_2007 -0.820 2.483 5.755(1.697) (9.885) (15.650)
Year_2008 -1.516 -7.931 -1.956(1.710) (8.059) (10.001)
Year_2009 0.312 -11.406 -22.773(1.702) (10.405) (13.973)
Year_2010 -1.328 -12.524 -23.945*(1.597) (7.639) (13.572)
Constant -10.709** -38.606 -3.277(5.225) (40.317) (65.113)
Observations 367 361 314Number of Companies 101 101 100RE YES YES YESYear FE YES YES YESCluster (CompanyID) YES YES YESP value 0.000 0.000 0.000Chi2 52.59 35.49 32.39Notes – Robust standard errors are shown in brackets; significance is shown as *** p<0.01, ** p<0.05, * p<0.1. This table includes outcomes for the first hypothesis, estimated on three different dependent variables. The independent variable is WesternEconomies followed by all included control variables and separate year dummies. Observations for each model are given and show a decreasing pattern. This is due to differences in observations among the dependent variables.
Similar to table 11, three out of five control variables show significant results. Here, models 2
and 3 are estimated including logEmployees since results showed no improvement when this
variable was excluded. Outcomes show that the number of employees has a negative,
Diederik van den Assem Erasmus University Rotterdam
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significant effect on firm performance across all models. This effect is strongest for model 3
and weakest in model 1. The effect implies that firms who employ a larger number of
employees, on average, perform less as opposed to firms that have fewer employees.
Secondly, the number of patents a company possesses has a significant effect across all
models but again is virtually non-existent in terms of magnitude. Lastly, Sales is found to be
significant in all models. More importantly is its positive effect, meaning that an increase in
sales lead to an increase in performance.
Overall, hypotheses 2b and 2c can neither be confirmed nor rejected due to insignificant
results. Based on these outcomes, hypothesis 2a needs to be rejected. Proof for a negative
effect of foreign owners, located in western economies, on ROA cannot be supported.
Instead, a positive effect is observed, meaning that foreign owners located in western
economies have a positive effect on a firm’s ROA.
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6. Discussion
This section provides a summarization of the main results and their implications. In addition,
limitations of this study will be discussed. Finally, possible future research directions will be
named.
Main results and implications
The main aim of this study was to explore the effect of foreign ownership in the Chinese
consumer electronics industry. It did so by comparing domestic firms with foreign owned
firms in terms of performance. In addition, the effect of foreign owner location on firm
performance is explored.
The first three hypotheses tried to prove an increase in performance for foreign owned firms
as opposed to domestic firms. Performance is being measured in terms of return on asset,
return on equity (before tax) and return on equity, resulting in three separate hypotheses.
Based on the results, hypothesis 1a and 1b are rejected. The expected positive effect of
foreign ownership on a firm’ ROA and ROE was negative instead. This implies that foreign
owned firms in the Chinese consumer electronics industry, on average, perform less
compared to domestic firms. Unfortunately, hypothesis 1c can neither be confirmed, nor
rejected. The estimated model did not show significant outcomes for the main independent
variable, meaning that no interpretations could be given. Overall, outcomes for hypothesis 1
contradict with existing literature, implying that foreign ownership has an opposite effect on
the Chinese consumer electronics industry as opposed to what was hypothesized.
A possible explanation for these conflicting results is that the Chinese market differs greatly
from the markets explored in other literature. It is no secret that China is unique in terms of
its cultural and political environment as well as its different judicial system. All of these
aspects could potentially form a barrier for foreign firms who are looking to benefit from
China’s flourishing economy. Consequently, these barriers can increase costs for foreign
owners, resulting in a decrease in performances for foreign owned firms. In other words,
foreign owners have a relatively high liability of foreignness. Moreover, this liability is
higher than the accumulated benefits of operating in China.
An alternative explanation can be found by looking at the earlier mentioned papers of
Chhibber and Majumdar (1999) and Greenaway et al. (2012). Both papers proved that the
degree of foreign ownership matters when looking at a foreign owned firm and their
Diederik van den Assem Erasmus University Rotterdam
37
implications on firm performance. Overall, both papers concluded that more, in terms of
foreign ownership, is certainly not better. Greenaway et al. (2012) even finds optimum levels
of foreign ownership to lie between 47% and 61%. Furthermore, Chhibber and Majumdar
(1999) find that foreign owned firms that have relatively high degrees of foreign ownership
perform even less compared to domestic firms. This last statement is important because it
explains the conflicting results found in this research. Originally, ownership percentages were
included in the dataset but were later excluded because of a severe amount of missing values.
As a consequence, percentages of foreign ownership cannot be investigated in this dataset.
However, based on the above-mentioned findings, it is plausible that for this dataset, foreign
ownership percentages lie, at least partly, above the optimum found by Greenaway et al.
(2012). Linking this assumption to the conclusion found by Chhibber and Majumdar (1999),
an explanation for foreign owned firms being outperformed by domestic firms is found.
Like seen for hypothesis 1, a similar pattern is seen for hypothesis 2. It tried to prove that
Chinese firms who are owned by companies located in western economies, on average,
perform less than firms who are owned by companies located in non-western economies.
Here, models 2 and 3 show no significant outcomes for the main independent variable,
meaning that hypothesis 2b and 2c could not be proven. Outcomes for hypothesis 2a show an
opposite effect as to what was expected, namely: Chinese firms who are owned by companies
located in western economies perform better as opposed to firms that are owned by
companies located in non-western economies.
Again results contradict with the hypotheses. These results might be explained by
underestimating knowledge and adaptability attributed to western located foreign owners. It
was hypothesized that cultural and political differences would create barriers leading to a
higher liability of foreignness for these western located foreign owners. This was disproven,
leaving only two possible scenarios, namely:
1. The hypothesized barriers did not exist in the first place, leading to equal chances for
both non-western and western located foreign owners. In this scenario, western
located foreign owners are confirmed to enhance performance more as opposed to
non-western located foreign owners.
2. The hypothesized barriers do exist but superiority of western located firms allowed
them, not only to overcome these barriers, but also to outperform non-western located
owners and their owned firms.
Diederik van den Assem Erasmus University Rotterdam
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This study’s main conclusion is that foreign ownership affects the Chinese consumer
electronics industry in a different way as opposed to what is found in existing literature.
Although these results are somewhat unexpected, they do answer the main research question,
namely: “To what extent does foreign ownership affect firm performance in the Chinese
consumer electronics industry”. With this conclusion it is made clear that China is a unique
country that does not follow conventional patterns in terms of foreign ownership. This
statement can be seen as the main contribution to existing literature.
Limitations
Up to this part the research and its results are discussed without acknowledging possible
limitations. Unfortunately the data that is used in this research has some limitations that
cannot be left unspoken. Firstly, the final dataset was unbalanced meaning that there are
missing observations across firms and years. Secondly, models were being estimated on
observations ranging from 2005 to 2010 although initially observations ranged from 1997 up
to 2012. This indicates that much information is lost in the process of creating a workable
dataset. Although it is impossible to predict what the outcomes would have been if not as
much data would have been lost, it would be a mistake not to mention this possible flaw.
A second limitation stems from the small subsample on which hypothesis 2 is tested. To
begin with, the total number of 112 observations is rather small. However, more concerning
is the clustering of foreign owners in terms of location. For Hong Kong alone, a total of 31
foreign owners are observed, corresponding to 28% of all observations. Even more foreign
owners are located in Switzerland. A total of 41 owners are located there, accounting for
almost 37% of all observations. Consequently, outcomes of hypothesis 2 should be
interpreted with care as not much variety in location was observed.
Lastly, the domestic firms observed in this dataset can be separated into two groups of firms.
The first group consists of Chinese domestic firms that are not owned by any other Chinese
firm. The second group consists of Chinese domestic firms that are owned by another
Chinese firm, making them domestic owned rather than foreign owned. Even though it
cannot be said with certainty, differences between these two types of domestic firms are
possibly significant and could therefore affect the results of this research. To fully unravel the
mystery of foreign ownership in the Chinese consumer electronics industry it would have
been better to separate these two types of domestic firms.
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Future research
The outcomes of this study create numerous possibilities for future research. Some can be
seen as an extension of this research while others need a whole new approach. The two most
important directions will be discussed here.
The first possible extension could be made by including a third group into the comparison.
This directly originates from the last limitation mentioned in the previous paragraph. This
third group will consist of domestic owned Chinese firms, hereby separating the group of
Chinese firms that are in this research considered domestic. This creates the possibility for a
comparison between foreign owned firms on one side and both domestic owned firms and
domestic firms on the other side.
Initially, a third aspect was to be included in this study, namely the effect of the 2006 change
in China’s takeover law. This change created an endogenous shock, which could form the
basis for a comparison of pre-and-post regulatory-change groups, thereby determining the
effect of this regulatory change. This aspect is foremost based on a paper by Hui Huang
(2008). Although his area of expertise is law rather than economics, he does observe that
takeovers in China have been growing ever since they joined the World Trade Organization
(WTO) in 2001. Along this increase of takeovers, Chinese takeover law has been altered,
creating a reversed causality problem. From an economic perspective, it is interesting to
investigate this issue as these regulatory changes undoubtedly had major implications on
takeovers in China, making it an important factor in Chinese comparative analysis.
Overall additional research on the impact of foreign ownership in the Chinese market is
needed. Especially since the outcomes of this study contradict with conventional literature. It
could be that China’s unique characteristics indeed lead to unconventional outcomes but it is
equally possible that these outcomes stand alone. Further research can rule out one or the
other, leading to an even better understanding of the impact of foreign ownership in China.
Diederik van den Assem Erasmus University Rotterdam
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7. References
1. Barbosa, Natalia and Louri, Helen. ‘Corporate performance: Does ownership matter? A comparison of foreign- and domestic-owned firms in Greece and Portugal’. Review of Industrial Organization, 2005, 27, pp. 73-102.
2. Bartlett, Christopher A. and Ghoshal, Sumantra. ‘Managing across borders: The transnational solution’. Boston: HBS Press, 1989
3. Bjorkman, Ingmar; Barner-Rasmussen, Wilhelm and Li, Li. ‘Managing knowledge transfer in MNCs: The impact of headquarters control mechanisms’. Journal of International Business Studies, July 2004, 35, pp. 443-455.
4. Boardman, Anthony E.; Shapiro, Daniel M. and Vining, Aiden R. ‘The role of agency costs in explaining the superior performance of foreign MNE subsidiaries’. International Business Review, 1996, 6, pp. 295-317.
5. Caves, Richard E. ‘Multinational enterprise and economic analysis’. Cambridge: Cambridge University Press, 1982.
6. Caves, Richard E. ‘Multinational enterprise and economic analysis’. Cambridge: Cambridge University Press, 1996, 2nd press.
7. Chang, Yi-Ying; Gong, Yaping and Peng, Mike W. ‘Expatriate knowledge transfer, subsidiary absorptive capacity, and subsidiary performance. Academy of Management Journal, 2012, 55, pp. 927-948.
8. Chari, Anusha; Chen, Wenjie and Dominguez, Kathryn M.E. ‘Foreign ownership and firm perfromance: emerging-market aqcuisitions in the United States’. International Monetary Fund Economic review, 2012, 60, pp. 1-42.
9. Chen, Wenjie. ‘The effect of investor origin on firm performance: domestic and foreign direct investment in the United States’.Journal of International Economics, 2011, 83, pp. 219-228.
10. Chhibber, Pradeep K. and Majumdar, Sumit K. ‘Foreign ownership and profitability: property rights, control, and the performance of firms in Indian industry’. Journal of Law and economics, April 1999, XLII.
11. Ghoshal, Sumantra and Nohria, Nitin. ‘Differentiated fit and shared values: Alternatives for managing headquarters-subsidiary relations’. Strategic Management Journal, January 1994, 15, pp. 491-502.
12. Cohen, Wesley M. and Levinthal, Daniel A. ‘Absorptive capacity: A new perspective on learning and innovation’. Administrative Science Quarterly, March 1990, 35, pp. 128-152.
13. Conyon, Martin, J.; Girma, Soufarel; Thompson, Steve and Wright, Peter W. ‘The productivity and wage effects of foreign acquisition in the United Kingdom’. Journal of Industrial Economics, March 2002, 50, pp. 85-102.
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14. Girma, Sourafel; Thompson, Steven; Wright, Peter W. ‘International aqcuisition, domestic competition and firm performance’. International Journal of the Economics of Business, November 2006, 13, pp. 335-349.
15. Globerman, Steven; Ries, Jonh C. and Vertinsky, Ilan. ‘The economic performance of foreign affiliates in Canada’. Canadian Journal of Economics, February 1994, 27(1), pp. 143-156.
16. Greenaway, David; Guariglia, Alessandra and Yu, Zhihong. ‘The more the better? Foreign ownership and corporate performance in China’. The European Journal of Finance, 2012, ahead-of-print, 1-22
17. Gurbuz, Ali Osman and Aybars, Asli. ‘The impact of foreign ownership on firm performance, evidence form an emerging market: Turkey’. American Journal of Economics and Business Administration, 2010, 4, pp. 350-359.
18. Huang, Hui. ‘The new takeover regulation in China: Evolution and enhancement’. Working paper, 2008.
19. Hymer, Stephen Herbert. ‘The international operations of national firms: A study of direct foreign investment’. Cambridge, Massachusetts: MIT Press, 1976.
20. Kinleberger, Charles P. ‘American business abroad’. New Haven, Connecticut: Yale University Press, 1969.
21. Kogut, Bruce and Zander, Udo. ‘Knowledge of the firm and the evolutionary theory of multinational corporation’. Journal of International business studies, June 1993, pp. 625-645.
22. Nakano, Makoto and Nguyen, Pascal. ‘Foreign ownership and firm performance: evidence from Japan’s electronics industry’. Applied Financial Economics, 2013, 23, pp.41-50
23. Safarian, A. Edward. ‘Foreign ownership of Canadian industry. Toronto: McGraw-Hill, 1966.
24. Wang, Sheng; Tong, Tony W.; Chen, Guoli and Kim, Hyondong. ‘Expatriate utilization and foreign direct investment performance: The mediating role of knowledge transfer’. Journal of Management, October 2009, 35, pp. 1181-1206.
25. Willmore, Larry N. ‘The comparative performance of foreign and domestic firms Brazil’. World development,1986, 14, pp. 489-502
26. Wiwattanakantang, Yupana. ‘An empirical study on the determinants of capital structure of Thai firms’. Pacific-Basin Finance Journal, 1999, pp 371-403.
27. Zaheer, Srilata. ‘Overcoming the liability of foreignness’. Academy of Management Journal, 1995, 38, pp. 341-363.
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8. Appendices
Table 13: List of the included countries and their categorization
Country Categorization
Belize Non-western economyCanada Western economyFrance Western economyHong Kong Non-western economyIndonesia Non-western economyJapan Non-western economyKorea Non-western economyMalaysia Non-western economyMauritius Non-western economySingapore Non-western economySweden Western economySwitzerland Western economyTaiwan Non-western economyUnited Kingdom Western economyUnited States Western economyVirgin Islands (U.K.) Western economy
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Table 14: List of variables and their explanation
Dependent variablesROA The ratio of a firm’s net income divided by its total assets.ROE The ratio of a firm’s net income divided by its total equity.ROE (BT) The ratio of a firm’s gross income divided by its total
equity.
Independent variablesMNE A dummy variable that separates firms that have a foreign
owner from the ones that have not. WesternEconomies A dummy variable that separates foreign owners that are
located in western economies form the ones that are located in non-western economies.
Control variablesLogEmployees LogEmployees is the log of the number of employees
employed by a firm. LogSales LogSales is the log of total sales generated by a firm.Listed Listed categorizes firms based on whether or not a firm’s
shares are tradable at a stock exchange.Patents Patents denote the number of patents possessed by a firm.Activity Activity categorizes firms based on what their activity is
within the electronics industry.
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Table 15: Correlation matrix
ROA ROE ROE (BT)
Year MNE Size Log Sales Log Em-ployees
Listed Patents Share holders
Western Economies
Activity Number of Subsidiarie
s
Log Total
AssetsROA 1.000
0ROE 0.604
21.0000
ROE (BT) 0.4236
0.7145 1.0000
Year 0.0526
0.0438-
0.00111.0000
MNE 0.0007
-0.0334
-0.0207
0.0231 1.0000
Size 0.0697
0.0073 0.0242 0.0144 0.2826 1.0000
Log Sales 0.1479
0.0484 0.0513 0.1104 0.3687 0.6705 1.0000
Log Employees
-0.010
2
-0.0463
-0.0417
-0.0069
0.2901 0.6343 0.7530 1.0000
Listed 0.0287
0.0018-
0.0082-
0.01350.1237 0.2445 0.1718 0.1431 1.0000
Patents -0.011
9
-0.0104
-0.0265
-0.0016
0.1664 0.1031 0.1410 0.0854 0.0567 1.0000
Shareholders 0.0082
-0.0159
-0.0291
-0.0127
0.2209 0.3287 0.3175 0.2925 0.7506 0.1223 1.0000
Activity 0.0085
-0.0303
-0.0385
-0.0037
-0.0231-
0.0096-0.0061 0.0223 0.0907
-0.0235
0.0841 1.0000
Western Economies
0.2057
0.0793 0.0069-
0.0289. 0.0311 0.0702
-0.0317
0.1084 0.0248 0.1328 -0.0849 1.0000
Number of subsidiaries
0.0240
-0.0048
-0.0160
-0.0034
0.2107 0.1999 0.1803 0.1529 0.5492 0.1666 0.4845 0.0354 0.1575 1.0000
Log Total Assets
-0.015
7
-0.0634
-0.0784
0.1073 0.3650 0.6504 0.8353 0.7247 0.2145 0.1511 0.3586 0.0122 0.1418 0.22811.0000
Diederik van den Assem Erasmus University Rotterdam
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Alternative modeling hypothesis 1
Table 16: Results hypothesis 1. Estimations exclude LogEmployees for model 1 and excludes them for model 2 and 3
Variables Model 1 Model 2 Model 3
Dependent variable ROA ROE ROE (BT)
MNE -2.494** -9.126 -10.245(0.977) (6.187) (8.566)
logEmployees -8.340*** -15.787***(2.255) (3.809)
logSales 2.049*** 9.859*** 14.364***(0.240) (1.875) (2.953)
Listed 1.634 1.657 -5.789(2.256) (6.483) (9.169)
Activity -0.045 -6.398 -9.672*(0.624) (4.028) (5.116)
Patents -0.008*** -0.037*** -0.080***(0.003) (0.011) (0.022)
Year_2006 3.772 2.718 1.675(5.255) (8.073) (9.139)
Year_2007 3.144 1.684 0.185(5.293) (8.212) (9.115)
Year_2008 3.303 -4.127 -15.468*(5.292) (8.105) (8.655)
Year_2009 4.167 2.701 -7.518(5.292) (8.142) (8.914)
Year_2010 4.016 -1.401 3.168(5.296) (8.359) (14.149)
Constant -18.548*** -24.447 -2.499(5.643) (15.656) (20.757)
Observations 2,565 2,346 1,954Number of CompanyID 764 748 740RE YES YES YESYear FE YES YES YESCluster (CompanyID) YES YES YESP value 0.000 0.000 0.000Chi2 94.91 44.12 57.63
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Alternative modeling hypothesis 2
Table 17: Results hypothesis 2. Estimations exclude LogEmployees for all models
Variables Model 1 Model 2 Model 3
Variables ROA ROE ROE (BT)
WesternEconomies 4.606*** 9.820 -0.378(1.672) (9.503) (13.870)
logSales 1.305*** 4.929* 7.257(0.416) (2.846) (5.176)
Listed 4.745 5.758 0.664(2.993) (6.784) (13.665)
Activity 2.449 1.559 -0.123(2.048) (4.491) (6.673)
Patents -0.008* -0.020* -0.054***(0.004) (0.012) (0.020)
Year_2006 1.092 6.038 6.555(1.244) (5.438) (10.934)
Year_2007 0.356 3.661 10.962(1.285) (11.458) (15.182)
Year_2008 0.119 2.085 17.316*(1.066) (4.543) (10.059)
Year_2009 1.692* -1.167 -9.972(0.969) (5.759) (9.152)
Year_2010 0.820 0.865 -4.451(1.006) (5.705) (7.910)
Constant -15.447*** -52.690 -61.162(4.719) (34.946) (55.033)
Observations 416 410 359Number of CompanyID 109 109 110RE YES YES YESYear FE YES YES YESCluster (CompanyID) YES YES YESP value 0.000 0.001 0.001Chi2 33.33 28.74 28.74
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Stata Do-file
***import Net Income from excel***import excel "D:\Uni\Thesis\Research\Orbis Export.xls", sheet("Net Income") firstrow
***Rename Variables***rename L Year1rename M Year2rename N Year3rename O Year4rename P Year5rename Q Year6rename R Year7rename S Year8rename T Year9
rename GUOTotal GUOPercentagerename GUOCountryISOcoGermany GUOCountryrename CountryISOCode Countryrename NACERev2Corecode4digits MarketCoderename Lastavailyear LastAvailYearrename BvDIndepIndic BVDCoderename A NumericVar
rename PLforperiodNetincomethUu CurrentNetIncome
***Drop empty lines***drop if NumericVar==""replace NumericVar = "2802" in 2802
***Reshaping the data***destring NumericVar, replace force
reshape long Year, i(NumericVar) j(j)
destring LastAvailYear, force replace
rename Year NetIncome
gen Year=LastAvailYear-j
destring j, replace force
replace j=-j
rename j NumericYear
duplicates drop Companyname NetIncome, force
duplicates drop Companyname Year, force
save "D:\Uni\Thesis\Research\Stata Variables files\Sub Datasets New\Net Income.dta", replace
***import Net Profit from excel***import excel "D:\Uni\Thesis\Research\Orbis_Export_1.xls", sheet("Net Profit") firstrow
***Rename Variables***rename NetProfitthUSDYear1 Year1rename NetProfitthUSDYear2 Year2rename NetProfitthUSDYear3 Year3rename NetProfitthUSDYear4 Year4rename NetProfitthUSDYear5 Year5rename NetProfitthUSDYear6 Year6rename NetProfitthUSDYear7 Year7rename NetProfitthUSDYear8 Year8rename NetProfitthUSDYear9 Year9
Diederik van den Assem Erasmus University Rotterdam
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rename GUOTotal GUOPercentagerename GUOCountryISOcoGermany GUOCountryrename CountryISOCode Countryrename NACERev2Corecode4digits MarketCoderename Lastavailyear LastAvailYearrename BvDIndepIndic BVDCoderename A NumericVar
rename NetProfitthUSDLastavailyr CurrentNetProfit
***Drop empty lines***drop if NumericVar ==""replace NumericVar = "2802" in 2802
***Reshaping the data***destring NumericVar, replace force
reshape long Year, i(NumericVar) j(j)
destring LastAvailYear, force replace
rename Year NetProfit
gen Year=LastAvailYear-j
destring j, replace force
replace j=-j
rename j NumericYear
duplicates drop Companyname NetProfit, force
duplicates drop Companyname Year, force
save "D:\Uni\Thesis\Research\Stata Variables files\Sub Datasets New\NetProfit.dta"
***import Operating Revenue from excel***import excel "D:\Uni\Thesis\Research\Orbis_Export_1.xls", sheet("Operating Revenue") firstrow
***Rename Variables***rename L Year1rename M Year2rename N Year3rename O Year4rename P Year5rename Q Year6rename R Year7rename S Year8rename T Year9
rename GUOTotal GUOPercentagerename GUOCountryISOcoGermany GUOCountryrename CountryISOCode Countryrename NACERev2Corecode4digits MarketCoderename Lastavailyear LastAvailYearrename BvDIndepIndic BVDCoderename A NumericVar
rename OperatingrevenueTurnoverthUu CurrentOperatingRev
***Drop empty lines***drop if NumericVar==""replace NumericVar = "2802" in 2802
***Reshaping the data***
Diederik van den Assem Erasmus University Rotterdam
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destring NumericVar, replace force
reshape long Year, i(NumericVar) j(j)
destring LastAvailYear, force replace
rename Year OperatingRevenue
gen Year=LastAvailYear-j
destring j, replace force
replace j=-j
rename j NumericYear
duplicates drop Companyname OperatingRevenue, force
duplicates drop Companyname Year, force
save "D:\Uni\Thesis\Research\Stata Variables files\Sub Datasets New\Operating Revenue.dta", replace
***import Enterprise Value from excel***import excel "D:\Uni\Thesis\Research\Orbis_Export_1.xls", sheet("Enterprise Value") firstrow
***Rename Variables***rename EnterpriseValuethUSDYear1 Year1rename EnterpriseValuethUSDYear2 Year2rename EnterpriseValuethUSDYear3 Year3rename EnterpriseValuethUSDYear4 Year4rename EnterpriseValuethUSDYear5 Year5rename EnterpriseValuethUSDYear6 Year6rename EnterpriseValuethUSDYear7 Year7rename EnterpriseValuethUSDYear8 Year8rename EnterpriseValuethUSDYear9 Year9
rename GUOTotal GUOPercentagerename GUOCountryISOcoGermany GUOCountryrename CountryISOCode Countryrename NACERev2Corecode4digits MarketCoderename Lastavailyear LastAvailYearrename BvDIndepIndic BVDCoderename A NumericVar
rename EnterpriseValuethUSDLastavai0 CurrentEnterpriseValue
***Drop empty lines***drop if NumericVar ==""replace NumericVar = "2802" in 2802
***Reshaping the data***destring NumericVar, replace force
reshape long Year, i(NumericVar) j(j)
destring LastAvailYear, force replace
rename Year EnterpriseValue
gen Year=LastAvailYear-j
destring j, replace force
replace j=-j
rename j NumericYear
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duplicates drop Companyname EnterpriseValue, force
duplicates drop Companyname Year, force
save "D:\Uni\Thesis\Research\Stata Variables files\Sub Datasets New\Enterprise Value.dta", replace
***import Total Assets from excel***import excel "D:\Uni\Thesis\Research\Orbis_Export_1.xls", sheet("Total Assets") firstrow
***Rename Variables***rename TotalassetsthUSDYear1 Year1rename TotalassetsthUSDYear2 Year2rename TotalassetsthUSDYear3 Year3rename TotalassetsthUSDYear4 Year4rename TotalassetsthUSDYear5 Year5rename TotalassetsthUSDYear6 Year6rename TotalassetsthUSDYear7 Year7rename TotalassetsthUSDYear8 Year8rename TotalassetsthUSDYear9 Year9
rename GUOTotal GUOPercentagerename GUOCountryISOcoGermany GUOCountryrename CountryISOCode Countryrename NACERev2Corecode4digits MarketCoderename Lastavailyear LastAvailYearrename BvDIndepIndic BVDCoderename A NumericVar
rename TotalassetsthUSDLastavaily CurrentTotalAssets
***Drop empty lines***drop if NumericVar==""replace NumericVar = "2802" in 2802
***Reshaping the data***destring NumericVar, replace force
reshape long Year, i(NumericVar) j(j)
destring LastAvailYear, force replace
rename Year TotalAssets
gen Year=LastAvailYear-j
destring j, replace force
replace j=-j
rename j NumericYear
duplicates drop Companyname TotalAssets, force
duplicates drop Companyname Year, force
save "D:\Uni\Thesis\Research\Stata Variables files\Sub Datasets New\Total Assets.dta", replace
***import Loans from excel***import excel "D:\Uni\Thesis\Research\Orbis_Export_1.xls", sheet("Loans") firstrow
***Rename Variables***rename LoansthUSDYear1 Year1rename LoansthUSDYear2 Year2rename LoansthUSDYear3 Year3rename LoansthUSDYear4 Year4rename LoansthUSDYear5 Year5
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rename LoansthUSDYear6 Year6rename LoansthUSDYear7 Year7rename LoansthUSDYear8 Year8rename LoansthUSDYear9 Year9
rename GUOTotal GUOPercentagerename GUOCountryISOcoGermany GUOCountryrename CountryISOCode Countryrename NACERev2Corecode4digits MarketCoderename Lastavailyear LastAvailYearrename BvDIndepIndic BVDCoderename A NumericVar
rename LoansthUSDLastavailyr CurrentLoans
***Drop empty lines***drop if NumericVar ==""replace NumericVar = "2802" in 2802
***Reshaping the data***destring NumericVar, replace force
reshape long Year, i(NumericVar) j(j)
destring LastAvailYear, force replace
rename Year Loans
gen Year=LastAvailYear-j
destring j, replace force
replace j=-j
rename j NumericYear
duplicates drop Companyname Loans, force
duplicates drop Companyname Year, force
save "D:\Uni\Thesis\Research\Stata Variables files\Sub Datasets New\Loans.dta", replace
***import Investments from excel***import excel "D:\Uni\Thesis\Research\Orbis_Export_1.xls", sheet("Investments") firstrow
***Rename Variables***rename InvestmentsthUSDYear1 Year1rename InvestmentsthUSDYear2 Year2rename InvestmentsthUSDYear3 Year3rename InvestmentsthUSDYear4 Year4rename InvestmentsthUSDYear5 Year5rename InvestmentsthUSDYear6 Year6rename InvestmentsthUSDYear7 Year7rename InvestmentsthUSDYear8 Year8rename InvestmentsthUSDYear9 Year9
rename GUOTotal GUOPercentagerename GUOCountryISOcoGermany GUOCountryrename CountryISOCode Countryrename NACERev2Corecode4digits MarketCoderename Lastavailyear LastAvailYearrename BvDIndepIndic BVDCoderename A NumericVar
rename InvestmentsthUSDLastavailyr CurrentInvestments
***Drop empty lines***
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drop if NumericVar ==""replace NumericVar = "2802" in 2802
***Reshaping the data***destring NumericVar, replace force
reshape long Year, i(NumericVar) j(j)
destring LastAvailYear, force replace
rename Year Investments
gen Year=LastAvailYear-j
destring j, replace force
replace j=-j
rename j NumericYear
duplicates drop Companyname Investments, force
duplicates drop Companyname Year, force
save "D:\Uni\Thesis\Research\Stata Variables files\Sub Datasets New\Investments.dta", replace
***import Gross Sales from excel***import excel "D:\Uni\Thesis\Research\Orbis_Export_1.xls", sheet("Gross Sales") firstrow
***Rename Variables***rename GrossSalesthUSDYear1 Year1rename GrossSalesthUSDYear2 Year2rename GrossSalesthUSDYear3 Year3rename GrossSalesthUSDYear4 Year4rename GrossSalesthUSDYear5 Year5rename GrossSalesthUSDYear6 Year6rename GrossSalesthUSDYear7 Year7rename GrossSalesthUSDYear8 Year8rename GrossSalesthUSDYear9 Year9
rename GUOTotal GUOPercentagerename GUOCountryISOcoGermany GUOCountryrename CountryISOCode Countryrename NACERev2Corecode4digits MarketCoderename Lastavailyear LastAvailYearrename BvDIndepIndic BVDCoderename A NumericVar
rename GrossSalesthUSDLastavailyr CurrentGrossSales
***Drop empty lines***drop if NumericVar ==""replace NumericVar = "2802" in 2802
***Reshaping the data***destring NumericVar, replace force
reshape long Year, i(NumericVar) j(j)
destring LastAvailYear, force replace
rename Year GrossSales
gen Year=LastAvailYear-j
destring j, replace force
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replace j=-j
rename j NumericYear
duplicates drop Companyname GrossSales, force
duplicates drop Companyname Year, force
save "D:\Uni\Thesis\Research\Stata Variables files\Sub Datasets New\Gross Sales.dta"
***import Sales from excel***import excel "D:\Uni\Thesis\Research\Orbis_Export_1.xls", sheet("Sales") firstrow
***Rename Variables***rename SalesthUSDYear1 Year1rename SalesthUSDYear2 Year2rename SalesthUSDYear3 Year3rename SalesthUSDYear4 Year4rename SalesthUSDYear5 Year5rename SalesthUSDYear6 Year6rename SalesthUSDYear7 Year7rename SalesthUSDYear8 Year8rename SalesthUSDYear9 Year9
rename GUOTotal GUOPercentagerename GUOCountryISOcoGermany GUOCountryrename CountryISOCode Countryrename NACERev2Corecode4digits MarketCoderename Lastavailyear LastAvailYearrename BvDIndepIndic BVDCoderename A NumericVar
rename SalesthUSDLastavailyr CurrentSales
***Drop empty lines***drop if NumericVar ==""replace NumericVar = "2802" in 2802
***Reshaping the data***destring NumericVar, replace force
reshape long Year, i(NumericVar) j(j)
destring LastAvailYear, force replace
rename Year Sales
gen Year=LastAvailYear-j
destring j, replace force
replace j=-j
rename j NumericYear
duplicates drop Companyname Sales, force
duplicates drop Companyname Year, force
save "D:\Uni\Thesis\Research\Stata Variables files\Sub Datasets New\Sales.dta"
***import Employees from excel***import excel "D:\Uni\Thesis\Research\Orbis Export.xls", sheet("Employees") firstrow
***Rename Variables***rename NumberofemployeesYear1 Year1rename NumberofemployeesYear2 Year2
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rename NumberofemployeesYear3 Year3rename NumberofemployeesYear4 Year4rename NumberofemployeesYear5 Year5rename NumberofemployeesYear6 Year6rename NumberofemployeesYear7 Year7rename NumberofemployeesYear8 Year8rename NumberofemployeesYear9 Year9
rename GUOTotal GUOPercentagerename GUOCountryISOcoGermany GUOCountryrename CountryISOCode Countryrename NACERev2Corecode4digits MarketCoderename Lastavailyear LastAvailYearrename BvDIndepIndic BVDCoderename A NumericVar
rename NumberofemployeesLastavaily CurrentEmployees
***Drop empty lines***Edit NumericVar 31810. to 2802drop if NumericVar ==""replace NumericVar = "2802" in 2802
***Reshaping the data***destring NumericVar, replace force
reshape long Year, i(NumericVar) j(j)
destring LastAvailYear, force replace
rename Year Employees
gen Year=LastAvailYear-j
destring j, replace force
replace j=-j
rename j NumericYear
duplicates drop Companyname Employees, force
duplicates drop Companyname Year, force
save "D:\Uni\Thesis\Research\Stata Variables files\Sub Datasets New\Employees.dta", replace
***import ROA from excel***import excel "D:\Uni\Thesis\Research\Orbis_Export_1.xls", sheet("ROA") f
***Rename Variables***rename ROAusingNetincomeYear1 Year1rename ROAusingNetincomeYear2 Year2rename ROAusingNetincomeYear3 Year3rename ROAusingNetincomeYear4 Year4rename ROAusingNetincomeYear5 Year5rename ROAusingNetincomeYear6 Year6rename ROAusingNetincomeYear7 Year7rename ROAusingNetincomeYear8 Year8rename ROAusingNetincomeYear9 Year9
rename GUOTotal GUOPercentagerename GUOCountryISOcoGermany GUOCountryrename CountryISOCode Countryrename NACERev2Corecode4digits MarketCoderename Lastavailyear LastAvailYearrename BvDIndepIndic BVDCoderename A NumericVar
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rename ROAusingNetincomeLastavail CurrentROA
***Drop empty lines***drop if NumericVar ==""replace NumericVar = "2802" in 2802
***Reshaping the data***destring NumericVar, replace force
reshape long Year, i(NumericVar) j(j)
destring LastAvailYear, force replace
rename Year ROA
gen Year=LastAvailYear-j
destring j, replace force
replace j=-j
rename j NumericYear
duplicates drop Companyname ROA, force
duplicates drop Companyname Year, force
save "D:\Uni\Thesis\Research\Stata Variables files\Sub Datasets New\ROA.dta"
***import ROE from excel***import excel "D:\Uni\Thesis\Research\Orbis_Export_1.xls", sheet("ROE") firstrow
***Rename Variables***rename ROEusingNetincomeYear1 Year1rename ROEusingNetincomeYear2 Year2rename ROEusingNetincomeYear3 Year3rename ROEusingNetincomeYear4 Year4rename ROEusingNetincomeYear5 Year5rename ROEusingNetincomeYear6 Year6rename ROEusingNetincomeYear7 Year7rename ROEusingNetincomeYear8 Year8rename ROEusingNetincomeYear9 Year9
rename GUOTotal GUOPercentagerename GUOCountryISOcoGermany GUOCountryrename CountryISOCode Countryrename NACERev2Corecode4digits MarketCoderename Lastavailyear LastAvailYearrename BvDIndepIndic BVDCoderename A NumericVar
rename ROEusingNetincomeLastavailG CurrentROE
***Drop empty lines***drop if NumericVar ==""replace NumericVar = "2802" in 2802
***Reshaping the data***destring NumericVar, replace force
reshape long Year, i(NumericVar) j(j)
destring LastAvailYear, force replace
rename Year ROE
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gen Year=LastAvailYear-j
destring j, replace force
replace j=-j
rename j NumericYear
duplicates drop Companyname ROE, force
duplicates drop Companyname Year, force
save "D:\Uni\Thesis\Research\Stata Variables files\Sub Datasets New\ROE.dta"
***import ROE (BT)from excel***import excel "D:\Uni\Thesis\Research\Orbis_Export_1.xls", sheet("ROE (BT)") firstrow
***Rename variables***rename ROEusingPLbeforetaxYear Year1rename M Year2rename N Year3rename O Year4rename P Year5rename Q Year6rename R Year7rename S Year8rename T Year9
rename GUOTotal GUOPercentagerename GUOCountryISOcoGermany GUOCountryrename CountryISOCode Countryrename NACERev2Corecode4digits MarketCoderename Lastavailyear LastAvailYearrename BvDIndepIndic BVDCoderename A NumericVar
rename ROEusingPLbeforetaxLasta CurrentROE_BT
***Drop empty lines***drop if NumericVar==""replace NumericVar = "2802" in 2802
***Reshaping the data***destring NumericVar, replace force
reshape long Year, i(NumericVar) j(j)
destring LastAvailYear, force replace
rename Year ROE_BT
gen Year=LastAvailYear-j
destring j, replace force
replace j=-j
rename j NumericYear
duplicates drop Companyname ROE_BT, force
duplicates drop Companyname Year, force
save "D:\Uni\Thesis\Research\Stata Variables files\Sub Datasets New\ROE(BT).dta", replace
***Merging all data***use "D:\Uni\Thesis\Research\Stata Variables files\Trial\Net Income.dta"
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merge 1:1 Companyname Year using "D:\Uni\Thesis\Research\Stata Variables files\Trial\Net Profit.dta"drop _merge
merge 1:1 Companyname Year using "D:\Uni\Thesis\Research\Stata Variables files\Trial\Operating Revenue.dta"drop _merge
merge 1:1 Companyname Year using "D:\Uni\Thesis\Research\Stata Variables files\Trial\Enterprise Value.dta"drop _merge
merge 1:1 Companyname Year using "D:\Uni\Thesis\Research\Stata Variables files\Trial\Total Assets.dta"drop _merge
merge 1:1 Companyname Year using "D:\Uni\Thesis\Research\Stata Variables files\Trial\Loans.dta"drop _merge
merge 1:1 Companyname Year using "D:\Uni\Thesis\Research\Stata Variables files\Trial\Investments.dta"drop _merge
merge 1:1 Companyname Year using "D:\Uni\Thesis\Research\Stata Variables files\Trial\Gross Sales.dta"drop _merge
merge 1:1 Companyname Year using "D:\Uni\Thesis\Research\Stata Variables files\Trial\Sales.dta"drop _merge
merge 1:1 Companyname Year using "D:\Uni\Thesis\Research\Stata Variables files\Trial\Employees.dta"drop _merge
merge 1:1 Companyname Year using "D:\Uni\Thesis\Research\Stata Variables files\Trial\ROA.dta"drop _merge
merge 1:1 Companyname Year using "D:\Uni\Thesis\Research\Stata Variables files\Trial\ROE.dta"drop _merge
merge 1:1 Companyname Year using "D:\Uni\Thesis\Research\Stata Variables files\Trial\ROE(BT).dta"drop _merge
save "D:\Uni\Thesis\Research\Stata Variables files\Trial\Complete.dta"
*** Dropping data and Generating MNE dummy***use "D:\Uni\Thesis\Research\Stata Variables files\Trial\Complete.dta"
drop NumericYear CurrentNetIncome CurrentNetProfit CurrentOperatingRev CurrentEnterpriseValue CurrentTotalAssets CurrentLoans CurrentInvestments CurrentGrossSales CurrentSales CurrentEmployees CurrentROA CurrentROE CurrentROE_BT
sort NumericVar Year
gen MNE = 1
replace MNE =0 if missing(GUOName)
replace MNE =0 if GUOCountry== "China"
destring NetIncome NetProfit OperatingRevenue EnterpriseValue TotalAssets Loans Investments GrossSales Sales Employees ROA ROE ROE_BT, replace force
codebook Yeardrop if Year<2006drop if Year>2010drop if Year==.
drop if Marketcapitalisation =="n.a." & NetIncome==. & NetProfit==. & OperatingRevenue==. & EnterpriseValue==. & TotalAssets==. & Loans==. & Investments==. & GrossSales==. & Sales==. & Employees==. & ROA==. & ROE==. & ROE_BT==.
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*** Creating New Dataset ***import excel "D:\Uni\Thesis\Research\orbis export extra data.xls", sheet("Results") firstrowdrop CountryISOCode NACERev2Corecode4digits Conscode Lastavailyear BvDIndepIndic GUOName Numberoftrademarks Mainproductsandservices Noofrecordedbranchlocations Sizeestimate
rename A NumericVar
rename Categoryofthecompany Size
rename Noofrecordedshareholders Shareholders
rename ListedDelistedUnlisted Listing
rename CurrentmarketcapitalisationthN Marketcapitalisation
rename Numberofpatents Patents
rename Noofrecordedsubsidiaries NumberOfSubsidiaries
rename Mainactivity MainActivity
gen SizeCompany =.
replace SizeCompany = 1 if Size =="Small company"
replace SizeCompany = 2 if Size =="Medium sized company"
replace SizeCompany = 3 if Size =="Large company"
replace SizeCompany = 4 if Size =="Very large company"
drop Size
rename SizeCompany Size
gen Activity =.
replace Activity = 1 if MainActivity =="Manufacturing"
replace Activity = 2 if MainActivity =="Manufacturing; Services"
replace Activity = 2 if MainActivity =="Services"
replace Activity = 2 if MainActivity =="Services; Manufacturing"
replace Activity = 3 if MainActivity =="Wholesale"
replace Activity = 3 if MainActivity =="Wholesale; Retail"
replace Activity = 3 if MainActivity =="Manufacturing; Wholesale"
replace Activity = 3 if MainActivity =="Manufacturing; Wholesale; Services"
drop MainActivity
destring NumericVar, replace
merge m:m Companyname using "E:\Uni\Thesis\Research\Stata Variables files\Complete.dta"
Save "D:\Uni\Thesis\Research\Stata Variables files\Trial\Final Dataset.dta"
***Editing New Dataset***drop if Year==.
drop _merge
drop LastAvailYear
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drop MarketCode
drop Conscode
drop BVDCode
drop GUOPercentage
gen Listed=.
replace Listed = 0 if Listing =="Unlisted"
replace Listed = 1 if Listing =="Listed"
drop Listing
gen WesternEconomies=.
replace WesternEconomies=1 if GUOCountry=="Canada"
replace WesternEconomies=1 if GUOCountry=="France"
replace WesternEconomies=1 if GUOCountry=="Sweden"
replace WesternEconomies=1 if GUOCountry=="Switzerland"
replace WesternEconomies=1 if GUOCountry=="United Kingdom"
replace WesternEconomies=1 if GUOCountry=="United States"
replace WesternEconomies=1 if GUOCountry=="Virgin Islands (UK)"
replace WesternEconomies=0 if GUOCountry=="Belize"
replace WesternEconomies=0 if GUOCountry=="Hong Kong"
replace WesternEconomies=0 if GUOCountry=="Indonesia"
replace WesternEconomies=0 if GUOCountry=="Japan"
replace WesternEconomies=0 if GUOCountry=="Korea"
replace WesternEconomies=0 if GUOCountry=="Malaysia"
replace WesternEconomies=0 if GUOCountry=="Mauritius"
replace WesternEconomies=0 if GUOCountry=="Singapore"
replace WesternEconomies=0 if GUOCountry=="Taiwan"
egen CompanyID=group(Companyname)xtset CompanyID Year
Save "D:\Uni\Thesis\Research\Stata Variables files\Trial\Final Dataset.dta"
*** Descriptives ***xtset
pwcorr ROA ROE ROE_BT Year MNE Size logSales logEmployees Listed Patents Shareholders Activity WesternEconomies NumberOfSubsidiaries Marketcapitalisation logTotalAssets
duplicates drop NumericVar, force
tab MNE
tab MNE Year
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sum ROA ROE ROE_BT Year MNE logEmployees logSales Listed Activity Patents WesternEconomies
Save "D:\Uni\Thesis\Research\Stata Variables files\Trial\Subsample descriptives 1"
drop if GUOCountry=="China"
tab GUOCountry
tab WesternEconomies
Save "D:\Uni\Thesis\Research\Stata Variables files\Trial\Subsample descriptives 2"
*** Hypothesis 1 testing ***use "D:\Uni\Thesis\Research\Stata Variables files\Trial\Final Dataset.dta"
gen logEmployees=log(1+Employees)
gen logSales=log(1+Sales)
gen logTotalAssets=log(1+TotalAssets)
gen logOperatingRevenue=log(1+OperatingRevenue)
xi: xtreg ROE MNE i.Year, vce(cluster CompanyID)
xi: xtreg ROE MNE Size i.Year, vce(cluster CompanyID)
xi: xtreg ROE MNE logEmployees i.Year, vce(cluster CompanyID)
xi: xtreg ROE MNE logEmployees Listed i.Year, vce(cluster CompanyID)
xi: xtreg ROEN MNE logEmployees Listed Size i.Year, vce(cluster CompanyID)
xi: xtreg ROE MNE logEmployees Listed Size NumberOfSubsidiaries i.Year, vce(cluster CompanyID)
xi: xtreg ROE MNE logEmployees Listed Size NumberOfSubsidiaries Shareholders Activity Patents i.Year, vce(cluster CompanyID)
xi: xtreg ROE MNE logEmployees logSales Listed Size NumberOfSubsidiaries Shareholders Activity Patents i.Year, vce(cluster CompanyID)
xi: xtreg ROE MNE logEmployees Listed Size NumberOfSubsidiaries Shareholders Activity Patents i.Year, vce(cluster CompanyID)
xi: xtreg ROA MNE logEmployees Listed Size NumberOfSubsidiaries Shareholders Activity Patents i.Year, vce(cluster CompanyID)
***Final results***xi: xtreg ROA MNE logEmployees logSales Listed Activity Patents i.Year, vce(cluster CompanyID) reoutreg2 using D:\Uni\Thesis, se nolabel bdec (3) rdec (3) addstat (P value, `e(p)', Chi2, `e(chi2)') addtext (RE, YES, Year FE, YES, Cluster (CompanyID), YES)
xi: xtreg ROE MNE logSales Listed Activity Patents i.Year, vce(cluster CompanyID) reoutreg2 using D:\Uni\Thesis, se nolabel bdec (3) rdec (3) addstat (P value, `e(p)', Chi2, `e(chi2)') addtext (RE, YES, Year FE, YES, Cluster (CompanyID), YES) append
xi: xtreg ROE_BT logSales Listed Activity Patents i.Year, vce(cluster CompanyID) reoutreg2 using D:\Uni\Thesis, se nolabel bdec (3) rdec (3) addstat (P value, `e(p)', Chi2, `e(chi2)') addtext (RE, YES, Year FE, YES, Cluster (CompanyID), YES) append
*** Appendixes ***xi: xtreg ROA MNE logSales Listed Activity Patents i.Year, vce(cluster CompanyID) reoutreg2 using D:\Uni\Thesis, se nolabel bdec (3) rdec (3) addstat (P value, `e(p)', Chi2, `e(chi2)') addtext (RE, YES, Year FE, YES, Cluster (CompanyID), YES)
xi: xtreg ROE MNE logEmployees logSales Listed Activity Patents i.Year, vce(cluster CompanyID) re
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outreg2 using D:\Uni\Thesis, se nolabel bdec (3) rdec (3) addstat (P value, `e(p)', Chi2, `e(chi2)') addtext (RE, YES, Year FE, YES, Cluster (CompanyID), YES) append
xi: xtreg ROE_BT MNE logEmployees logSales Listed Activity Patents i.Year, vce(cluster CompanyID) reoutreg2 using D:\Uni\Thesis, se nolabel bdec (3) rdec (3) addstat (P value, `e(p)', Chi2, `e(chi2)') addtext (RE, YES, Year FE, YES, Cluster (CompanyID), YES) append
*** Hypothesis 2 testing: creating a subsample***use "D:\Uni\Thesis\Research\Stata Variables files\Trial\Final Dataset.dta"
drop if MNE==0
drop if GUOCountry=="China"
Save "D:\Uni\Thesis\Research\Stata Variables files\Trial\Subsample Hypothesis 2.dta"
*** Final Results ***xi: xtreg ROA WesternEconomies logSales Listed Activity Patents i.Year, vce(cluster CompanyID) reoutreg2 using D:\Uni\Thesis, se nolabel bdec (3) rdec (3) addstat (P value, `e(p)', Chi2, `e(chi2)') addtext (RE, YES, Year FE, YES, Cluster (CompanyID), YES)
xi: xtreg ROE WesternEconomies logSales Listed Activity Patents i.Year, vce(cluster CompanyID) reoutreg2 using D:\Uni\Thesis, se nolabel bdec (3) rdec (3) addstat (P value, `e(p)', Chi2, `e(chi2)') addtext (RE, YES, Year FE, YES, Cluster (CompanyID), YES) append
xi: xtreg ROE_BT WesternEconomies logSales Listed Activity Patents i.Year, vce(cluster CompanyID) reoutreg2 using D:\Uni\Thesis, se nolabel bdec (3) rdec (3) addstat (P value, `e(p)', Chi2, `e(chi2)') addtext (RE, YES, Year FE, YES, Cluster (CompanyID), YES) append
*** Appendixes ***xi: xtreg ROA WesternEconomies logEmployees logSales Listed Activity Patents i.Year, vce(cluster CompanyID) reoutreg2 using D:\Uni\Thesis, se nolabel bdec (3) rdec (3) addstat (P value, `e(p)', Chi2, `e(chi2)') addtext (RE, YES, Year FE, YES, Cluster (CompanyID), YES)
xi: xtreg ROE WesternEconomies logEmployees logSales Listed Activity Patents i.Year, vce(cluster CompanyID) reoutreg2 using D:\Uni\Thesis, se nolabel bdec (3) rdec (3) addstat (P value, `e(p)', Chi2, `e(chi2)') addtext (RE, YES, Year FE, YES, Cluster (CompanyID), YES) append
xi: xtreg ROE_BT WesternEconomies logEmployees logSales Listed Activity Patents i.Year, vce(cluster CompanyID) reoutreg2 using D:\Uni\Thesis, se nolabel bdec (3) rdec (3) addstat (P value, `e(p)', Chi2, `e(chi2)') addtext (RE, YES, Year FE, YES, Cluster (CompanyID), YES) append
Diederik van den Assem Erasmus University Rotterdam