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Capital and Performance of Microfinance Institutions in Eastern Europe and Central Asia
Knar Khachatryan, Assistant Professor
American University of Armenia, College of Business and Economics
Affiliated researcher at the KTO research group, SKEMA Business School, France
40, avenue Baghramyan – 0019 Yerevan, Armenia
Tel: (+374) 60.61.25.68
Email: kkhachatryan@aua.am
Valentina Hartarska, 1 Alumni Professor
Department of Ag Economics and Rural Sociology; Department of Finance,
Auburn University, USA
hartavm@auburn.edu
Aleksandr Grigoryan, Associate Professor
American University of Armenia, College of Business and Economics
Affiliate Fellow at CERGE-EI, Prague, Czech Republic
aleksandr@aua.am
1 Corresponding author
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Capital and Performance of Microfinance Institutions in Eastern Europe and Central Asia
Abstract
Recent trends in microfinance, such as commercialization and deposit mobilization, bring forward the importance of
investigating the link between sources of funds and Microfinance Institutions (MFIs) performance. This paper
estimates the joint impact of seven categories of capital on three dimensions of performance with seemingly
unrelated regressions (SUR) method. We use panel data from MFIs operating in Eastern Europe and Central Asia
during the period 2005- 2009.
The results suggest that performance is influenced by the interest of the stakeholders behind the capital.
Grants are associated with better depth of outreach. Concessional loans are useful in improving outreach without
affecting financial results. Soft loans from social investors are related to lower ROA but improvement in outreach to
poorer clientele. We find less clear evidence about the influence of savings on financial performance, but interpret
the results to mean that savings should be encouraged to serve the needs of the poor as well as to lower the cost of
capital.
JEL classification: G21; O16
Keywords: Microfinance; capital structure; SUR; performance; efficiency; outreach
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1. Introduction
Microfinance emerged as the provision of financial services to clients outside the mainstream financial system. It has
become visible in the past few decades and it is praised for its’ potential to be a profitable instrument for economic
development. Microfinance Institutions (MFIs) provide small-scale financial services (loans and deposits) to
marginalized clients and have the multiple objectives to be profitable and to alleviate poverty. MFI are either non-
profit or for-profit organizations. Their capital comes from stakeholders such as quasi-owners (large institutional
donors) or charities, creditors, private investors, and more recently depositors. MFIs have widened their product
range and in addition to microloans ($50 to several hundred or thousand $) now offer insurance, payment facilities as
well as to collect deposits, which add to the diversity of their sources of capital. During the study period, over 10,000
microfinance programs operated worldwide reaching well over 100 million clients (Cull, Demirgüç-Kunt and
Morduch, 2009) of which in Eastern Europe and Central Asia there were about 8 million borrowers and 10 million
savers (CGAP, 2011).i, ii
MFIs have financial and social performance goals. The financial goal, also called, sustainability, refers to the
institutions’ financial viability and capacity to self-sustain its operations and or earn profits. The social performance
goal, known as outreach, has two dimensions – depth, measured by the average size of loan amount, and breadth,
measured by the number of clients reached. The ability of MFIs to attract and use capital to maintain sustainable
operations without eroding the focus on outreach is critical to the future growth and success of the microfinance
industry. This paper studies how the capital structure of MFIs relates to their ability to meet both outreach and
sustainability goals.
The microfinance sector is considerably heterogeneous in terms of ownership structure (NGOs, NBFIs, credit
unions, microfinance banks), institutional size and targeted clientele. The capital structure of MFIs is unique because
part of the external financing is subsidized, for instance by donors, charities, socially responsible investors
(Armendariz and Morduch, 2010). Recent trends add to this complexity. Through commercialization, non-
governmental organization (NGO)-MFIs transform into (regulated) institutions, moving away from donor-dependent,
subsidized capital and attracting private investors, thus getting better access to external capital (Christen and Drake,
4
2002; Tchuigoua, 2015). MFIs transformation into deposit collecting institutions allow them to provide needed
service to more poor clients as well as to lower the costs of capital (Hartarska et al, 2011, Delgado et al 2014,
Malikov and Hartarska, 2017). Consequently, MFIs have numerous sources of capital that include funds from
institutional investments (e.g. Microfinance Investment Funds), development agencies, individuals, foundations,
NGOs, banks, international organizations, states as well as the newest group of depositors. These groups are likely to
have differential impact on the various dimensions of MFI performance. Therefore, studying how observed capital
structure is likely to affect the ability of MFIs to achieve their double bottom-line of outreach and sustainability is
timely and important.
Few previous studies estimate the impact of capital structure on MFIs’ social and financial performance. Previous
work links capital inputs to MFIs performance through production or cost function analysis suggesting significant
economies of scale and scope and thus underscores the benefits of access to capital (Cull et al., 2007; Caudill et al.,
2009 and Hartarska et al., 2013). There is work evaluating how capital structure itself (proportion of external debt
and of donations) relates to various firm characteristics. Tchuigoua (2015) finds that firm size and for-profit status
relate to higher proportion of debt relative to donations. Caudill et al. (2009) find that MFIs that became more
efficient in time relied less on subsidy and more on deposits. More profitable MFIs, and MFIs with better outreach
we found to attract more international commercial debt (Mersland and Urgeghe, 2013).
To our knowledge, only two studies evaluate directly how the capital structure (types of capital) affect MFIs’
performance. The closest to our work is Bogan (2011) who estimates the effects of capital structure on financial
performance (operational and financial self-sufficiency) for a worldwide sample of MFIs. Her focus is on the impact
of grants, which she argues may be endogenous, and thus instruments grant availability with the change in country
GDP growth. However, her instrumental variable (IV) results are not qualitative different from the direct link, which
weakens the case for endogenous selection, and suggest a direct link between capital structure on performance.
Kyereboah-Coleman (2007) links performance to the capital structure of 52 MFIs in Ghana for the 1995-2004
period, and finds that highly leveraged MFIs reach more clientele and enjoy scale economies.
5
In all previous work, however, the effect of capital structure on outreach is estimated independently from the
effect on self-sufficiency (Tchuigoua, 2015; Hartarska et al., 2013; Caudill et al., 2009; Bogan, 2011; Cull et al.,
2007; Kyereboah-Coleman, 2007). At the same time, the literature provides evidence for a trade-off between the
outreach and the sustainability dimensions of MFIs’ performance, suggesting that financial success may come at the
expense of serving fewer and less poor clients “mission drift”. Several studies confirm the existence of the “mission
drift” (Cull et al., 2007 & 2009; Augsburg and Fouillet, 2010; Nawaz, 2010, Armendariz and Szafarz, 2011; Hermes,
Lensink and Meesters, 2011, Hartarska et al., 2013), while some suggest that financial sustainability and social
outreach complement and reinforce each other (Gonzalez and Rosenberg, 2006; Schicks, 2007). Thus, we addresses
the concern by evaluating the simultaneous effect of capital structure on sustainability and two outreach dimensions
of MFIs in Central and Eastern Europe and Central Asia (ECA) during the period 2005-2009.
Our focus in on the ECA region for two reasons. First, we were able to find detailed data on various sources of
external capital only for this region and period. For example, while previous studies only use donation, in addition to
donation, we have data on two other types of subsidy – non-market interest rates loans and soft loans by social
investors. Next, we believe that the diversity of age and size of MFIs in the sector and our sample provides
opportunity to evaluate the broader impact of various sources of funds on different types of MFIs. This relates to the
different needs of an MFIs along their lifecycle – less reliance on donor grants and soft loans and more on equity
financing especially for mature and regulated MFIs seeking to improve outreach (Fehr and Hishigsuren, 2006;
Farrington and Abrams, 2002). The diversity of the level of economic development of the countries in our dataset
not an issue because Booth et al. (2001) demonstrate that the capital structure choices are affected by the same
variables independent of the level of country economic development.
In particular, we estimate the marginal impact of several sources of funds - subsidized loans, bank loans and
loans by social investors, as well as deposits, grants and own funding on three dimensions of performance by
employing a panel seemingly unrelated regression (SUR). We use new data from MFIs operating in 24 countries of
the ECA region obtained from a grass-root network Microfinance Centre for Central & Eastern Europe and the New
Independent States and covering the five-year period between 2005 and 2009.
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The main findings are as follows: MFIs’ performance is influenced by the interest of the stakeholders behind the
capital. Grants are associated with better depth of outreach and better financial performance. Loans at below market
interest rate (concessional loans) and soft loans by microfinance investment funds are associated with better outreach
to poorer clients without affecting financial results. Relative to the use of own equity, current level of deposits do not
affect performance but previous year savings are associated with higher ROA. We interpret this to mean that savings
should be encouraged to serve the needs of the poor and possibly as a way to lower the cost of capital.
The rest of the paper is organized as follows. Section two develops the empirical framework, section three
describes the empirical model; section four describes the data, section five discusses the results, and the last section
concludes.
2. Conceptual Framework
Microfinance institutions are similar to banks but also to NGOs. The literature linking banks’ (financial or risk)
performance to capital structure is different from that for firms because lending institutions differ significantly from
corporate firms in their revenue generation mechanism, leverage ratio as well as the fact that they are regulated.
Further, their specific risk management objectives also influence the capital structure and, in turn, the financial
results of lending institutions (Cebenoyan and Strahan, 2004). At the same time, little can be learned from the NGO
literature because NGOs are not lending institutions. Therefore, to study the joint impact of capital structure on MFI
performance we develop several hypothesis based on the finding of the microfinance literature which describe
various aspects of MFI capital structure and performance.
The earlier microfinance literature focused on the role of subsidies in observing that MFIs used various types
of implicit or explicit subsidies (typically grants and in-kind payments for personnel and physical infrastructure).
There was a longstanding focus on subsidy dependence, defined as the inverse of self-sustainability, which is
achieved when the return on equity, net of any subsidy received, equals or exceeds the opportunity cost of the equity
funds (Yaron, 1992). MFIs were working toward financial sustainability by ensuring that clients repay their loans on
7
time, generate enough interest revenue as well as by controlling costs to guarantee efficient use of resources
(Crombrugghe, Tenikue and Sureda, 2008).iii
There is somewhat mixed evidence one the impact of subsidies and donor funds on MFI performance because
different aspects of performance are evaluated, with datasets capture from various regions and for various time
period during which MFIs have moved away from relying on direct subsidies into relying on investment funds. The
literature follows these trends. Hudon and Traca (2006) find that subsidy intensity is associated with a lower
financial sustainability because MFIs receiving more subsidies tend to focus on the poorest and serving this segment
of the population is more expensive. Hartarska and Mersland (2012) found that donors’ service on the MFIs’ board
presumably to defend their social investment was not associated with more outreach efficient institutions. Mori and
Mersland (2014) find that donors’ representation is associated with better results. It is possible that these differences
come from a possible trade-of between various dimensions of MFI performance. Hartarska (2005) shows that donors
in general prefer better outreach to better sustainability. D'Espallier, Hudon, and Szafarz (2013) find that lack of
subsidy worsened social performance and MFIs in different regions deal differently with the lack of subsidies. For
example, unsubsidized MFIs in ECA chose to target less poor clients. In a study similar to objectives of the present
study Bogan (2011) utilizes panel data on MFIs in Africa, East Asia, Eastern Europe, Latin America, the Middle East
and South Asia for the years 2003 and 2006 and finds that increased use of grants, rather than own capital by large
MFIs decreases operational self-sufficiency in larger firms. The hypothesis that we test is that both outreach and
sustainability are affected by the MFIs use of donor funds or grants.
The literature also suggest tradeoff between subsidies (grants) use and the use of savings. Caudill et al 2009
and 2013 find that more efficient MFIs rely less on grants and are more likely to offer savings. Cozarenco, Hudon,
and Szafarz (2016) also found tradeoff between savings and donation in that credit only MFIs received more
subsidies than savings and loan MFIs and suggested that subsidies may crowd out micro savings. Evaluating the
impact on outreach, Hartarska and Nadolnyak (2007) found that better breadth of outreach (measured by the number
of borrowers) is associated with higher levels of deposits. Thus, another hypothesis that we test is whether the
proportion of savings affects outreach and sustainability.
8
The microfinance literature has less information on how capital raised through commercial loans affect
performance. Hartarska and Mersland (2012) found that higher proportion of creditors representing their
organizations on the MFI boards is associated with more efficient MFIs, while Mori and Mersland (2014) found that
creditors on the board are associated with better outreach. Evaluating the link between capita structure and
performance of a group of Ghanian MFIs for 10 year period, Kyereboah-Coleman (2007) finds that highly leveraged
MFIs reach more clientele and enjoy scale economies. Thus, we test the hypothesis that higher leverage affects
sustainability and outreach of MFIs.
To evaluate how MFIs’ use of various sources of capital affects their ability to serve the poor and cover their
costs we develop an empirical specification and make several assumptions. We assume that, at least in short run,
capital structure is exogenous, and focus on the fact that MFIs use available funds to achieve their objectives by
offering a choice of products and services designed to serve the target clientele using funds from various sources.
Since some of the capital may come with special preferences from the lender (investor), owner, etc., it is likely that
the use of that source may come at the expense of one dimension of performance, as variety of microfinance studies
suggest. The use of own capital may give MFIs freedom to maximize both dimensions of performance, while use of
borrowed capital and quasi-ownership investments may direct the performance toward different aspects.
Empirical Specification
Unlike previous work evaluating the impact of capital structure on performance with a single or IV regression, we
use the seemingly unrelated regressions method along the line of work on efficiency in MFI and capital structure
(Hartarska et al., 2012; Hartarska et al., 2013, Tchuigoua, 2015). SUR allows estimation of the simultaneous impact
of capital structure on several dependent variables measuring multiple aspects of MFI performance. Previous work
specifies one performance measure as a function of the same or similar independent variables (for instance, Bogan,
2011). These studies assume that the three dimensions of performance measures and the regressions’ errors are
9
uncorrelated, so we can infer impact on the multiple objectives of the MFIs (e.g. depth and breadth of outreach as
well as financial sustainability) by examining these independent regression results. This work assumes, that as MFIs
strive to reach many poor clients, improvements in breadth of outreach (number of clients served) is unrelated to the
depth of outreach (the poverty level of clients) and to MFI’s financial sustainability – ability to cover costs. These are
strong assumptions and because serving more and poorer borrowers is costly and there is evidence on tradeoff
between outreach and sustainability (Cull et al., 2009; Hermes, Lensink and Meesters, 2011). Thus we use SUR
method to study the simultaneous impact of capital structure on the three dimensions of performance.
Within the basic linear SUR model, 𝑦𝑖𝑡 is the dependent variable, 𝑥𝑖𝑡 = (1, 𝑥𝑖𝑡,1, 𝑥𝑖𝑡,2, … , 𝑥𝑖𝑡,𝐾𝑖−1)′, is a 𝐾𝑖-
vector of explanatory variables for observational unit of 𝑖 and 𝜀𝑖𝑡 is an unobservable error term, where the double
index 𝑖𝑡 denotes the 𝑡𝑡ℎ observation of the 𝑖𝑡ℎ equation in the system.2 A SUR model is a system of linear regression
equations:
𝑦1𝑡 = 1′ 𝑥1𝑡 + 𝜀1𝑡
.
.
𝑦𝑁𝑡 = N′ 𝑥𝑁𝑡 + 𝜀𝑁𝑡
where 𝑖 = 1, … , 𝑁 and 𝑡 = 1, … , 𝑇. If we denote 𝐿 = 𝐾1 + ⋯ + 𝐾𝑁 and stack each observation 𝑡, we obtain 𝑌𝑡 =
[𝑦1𝑡, … , 𝑦𝑁𝑡]′, �̃�𝑡 = 𝑑𝑖𝑎𝑔(𝑥1𝑡, 𝑥2𝑡 , … , 𝑥𝑁𝑡), a block-diagonal matrix with 𝑥1𝑡 , … , 𝑥𝑁𝑡 on its diagonal, 𝐸𝑡 =
[𝜀1𝑡, … , 𝜀𝑁𝑡]′, = [1′ , … ,
N′ ]
′. Then,
(1) 𝑌𝑡 = �̃�t′𝑏 + 𝐸𝑡.
The joint SUR estimator is a generalized best linear unbiased estimators and with a normality assumption for the
error terms, maximum likelihood and “diffuse prior” Bayesian estimators (e.g., Geweke, 2003; Greene, 2003; Judge
et al., 1985; Meng and Rubin, 1996).
In equation (1), 𝑌 is the profitability and outreach indicator for the 𝑖𝑡ℎ MFIs, 𝑋 is a matrix of exogenous
MFI-level and country-level control variables, and 𝐸𝑖 is the error term.
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The dependent variables capture all aspects of MFI performance - financial sustainability (how profitable is the MFI)
and outreach itself with two dimensions – depth of outreach or how poor the clients are relative to the general
population, and the number of poor clients (breadth). Specifically, we estimate:
(2) 𝐹𝑖𝑛𝑎𝑛𝑐𝑖𝑎𝑙 𝑝𝑒𝑟𝑓𝑜𝑟𝑚𝑎𝑛𝑐𝑒 𝑖 = 𝑎0 + ∑ 𝑎𝑗𝑋𝑗
𝑗
+ ∑ 𝑎𝑘𝑀𝐹𝐼𝑘
𝑘
+ ∑ 𝑎𝑙𝑀𝑙
𝑙
+ 𝑖
(3) 𝐵𝑟𝑒𝑎𝑑𝑡ℎ 𝑜𝑓 𝑜𝑢𝑡𝑟𝑒𝑎𝑐ℎ 𝑖 = 0
+ ∑𝑗𝑋𝑗
𝑗
+ ∑𝑘
𝑀𝐹𝐼𝑘
𝑘
+ ∑𝑙𝑀𝑙
𝑙
+ 𝑖
(4) 𝐷𝑒𝑝𝑡ℎ 𝑜𝑓 𝑜𝑢𝑡𝑟𝑒𝑎𝑐ℎ𝑖 = 𝛾0 + ∑ 𝛾𝑗𝑋𝑗
𝑗
+ ∑ 𝛾𝑘𝑀𝐹𝐼𝑘
𝑘
+ ∑ 𝛾𝑙𝑀𝑙
𝑙
+ 𝜐𝑖
where X represents capital structure variables, MFI represents firm characteristic variables, and M represents
country-level macroeconomic indicators. A detailed description of all of the variables used can be found in Appendix
A.
Financial performance is measured by the return-on-assets ratio (ROA)3. We account for the breadth of outreach,
or how many clients (borrowers) the MFIs reach by the natural logarithm of the total number of active borrowers
(lnab).5 We account for the poverty level of clients by using a measure of the depth of outreach. It shows whether a
MFI addresses the needs of the poorest or targets better-off clients (see Quayes, 2012). Since MFIs are expected to
lend to poor borrowers, their ability to reach more poor people is measured by depth of outreach. It is the use the
ratio of the total average loan balance per borrower to the GNI per capita (abb). Adjusting the average loan size by
GNI per capita normalizes the variable for different income levels found in different countries, thereby controlling
for cross-country differences.
The vector of capital structure variables in X is of most interest in our analysis. We measure capital structure by
the percentage of capital (scaled by total assets) coming from each specific source of funds, which are represented as
percentage of total assets in our study. We have categories of equity, grants, deposits, retained earnings, and debt
where loans are further disaggregated into concessional loans, bank loans, and other commercial funding ( that is
both private and institutional social investor funding in the region such as BlueOrchard, Oikocredit, IFC etc.).6
11
The vector of MFI variables control related to MFI specific internal characteristics, such as organizational types,
age, gender focus and risk characteristics. Controlling for age, for example, captures the fact that older, more
experienced MFIs are more efficient (e.g., see Caudill et al., 2009). Gonzalez-Vega et al. (1996) point out several
possible benefits of the passage of time on microfinance performance increase: improved lending technology,
accumulated information on clientele, acquired reputation and connections with international networks, which will
ease access to capital funding. We use New, Young and Mature dummies age dummies and expect that age is
positively linked to MFI profitability, and use Mature as the base category.
Total assets and gross loan portfolio, both adjusted for inflation, are used as measures of MFI size and focus on
lending respectively. The size effect may be an indicator of larger MFIs being more cost-effective. The empirical
evidence shows that the larger size leads to a possible cost savings due to the advantages afforded by potential
economies of scale, as well as potential scope economies between deposits and loans (Hartarska, Shen and Mersland,
2013).
We also control for MFIs focus on gender by including the percentage of female borrowers since lending to
women is associated with lending to poorer borrowers. For example, women may be riskier borrowers because of
their limited repayment capacity (Hermes et al., 2011; D’Espallier, et al., 2011). On the other hand, since women
living in developing regions often face restricted opportunities for accessing financial services they will be more
inclined to exhibit higher repayment rates in order to continue to be further financed (Hartarska, Nadolnyak and
Shen, 2012; Hartarska, Nadolnyak and Mersland, 2014, Van Tassel, 2004). We control for asset quality and risk
taking with the standard non-performing loan ratio of loans overdue more than 30 days. Lower asset quality (e.g.
higher nonperforming loan ratio) requires more resources to manage the higher risk (Hartarska, Nadolnyak and Shen,
2012) and makes outreach and sustainability harder to achieve.
The last group of independent variables represented by the vector of M variables includes country-level
macroeconomic indicators. Existing empirical evidence shows that external factors related to a country’s
macroeconomic environment, level of financial development, population density, etc. affect significantly the MFIs
efficiency, and need to be controlled for. For instance, lending to rural borrowers, which in the ECA region are
12
borrowers without permanent employment and regular income or liquid assets, might be associated with higher risk
to MFIs (see Sheremenko, Escalante, and Florkowski, 2012). This aspect is controlled for by including the
percentage of rural population to total population. Similarly, we include the level of unemployment in the country
because an increase in the unemployment level could lead to a further increase of the risk associated with the loan
default in a country where the MFI is located. A measure of the agricultural value added as percentage of GDP is
also added to control for the fact that borrowers engaged in agricultural production may be more reliable since they
have fewer alternative sources of funds and have history of employment, income, and marketable asset ownership.
GDP per capita and GDP growth are other important indicators of a country’s macroeconomic context, which could
affect borrowers’ purchasing power and could be associated with their risk of default. Finally, the private credit
bureaus coverage is important in terms of credit evaluation and portfolio management by MFIs. The existence of
credit registers can reduce the extent of asymmetric information by making a borrower’s credit history available to
MFIs. The higher coverage can be associated with decrease in lending to high risk individuals, with poor repayment
histories, defaults or bankruptcies.
In order to test if the errors across equations in the SUR model are contemporaneously correlated, we run the
Breusch-Pagan specification test of independent errors typically used for SUR models.iv The null hypothesis is no
contemporaneous correlation of the error term. Thus, a rejection of the null will indicate that SUR is the more
appropriate method to study the impact of capital structure on performance in MFIs. For a robustness check we also
offer alternative specification where we lag the independent variables one period to avoid contemporaneous
correlation between sources of funds and our dependent variables.
Data
The data comes from a grass-root network called the Microfinance Centre for Central & Eastern Europe and the New
Independent States (MFC for CEE and NIS). The data covers MFIs from 24 countries from the ECA region and
during the five-year period from 2005 to 2009.7, 8 The time period and the number of observations are limited
because the data collection was discontinued in 2010. The special characteristic of our data is that it contains
13
information for several dimensions of the subsidized funding and not only grants, which is what previous research
has used. While we have data on grants we also have data on loans at below market interest rates (subsidized loans),
loans from social investors (another type of subsidy which way have both interest rate as well as term adjustments)
that are offered with preferential terms relative to the standard commercial loans.
The capital structure data are merged with additional financial statement data self-reported by individual
MFIs to the Microfinance Information Exchange (MIX, online 2012). Credit unions (CUs) which are the largest
group of MFIs in the region (about 8,000 according to the Micro banking Bulletin, 2011) are not included in the
sample because of smaller sizes and tendency to lend to members and to larger businesses. Consequently, the
countries, which have only CUs functioning as MFIs, are eliminated from the sample.9 The data on country specific
socio-economic characteristics come from World Development Indicators (WDI). All dollar-value figures in the
dataset are 2010 dollar based on U.S. CPI.
Summary statistics are presented in Table 1. It shows the average values of the performance measurements,
capital structure, MFIs’ characteristics and macro-environment factors used to estimate the model. The data reveal
that for the 310 annual observations of MFIs, the average ROA is about 3 percent. The average number of active
borrowers is 11,188 per MFI and varies from only 31 in the smallest to 108,103 for the largest MFI. For the MFIs in
the sample, the average loan balance per borrower/GNI per capita is 85.34 percent and it varies from 3.15 to more
than 889.44.
The capital components as percent of total assets in general range from 0 to 100 percent. For example, equity
funding as percent of total assets is on average about 36.37 percent. Grants as percent of total assets are on average
8.09 percent and range from 0 to 78 percent (due to the rounding error). Savings as percent of total assets, as
compared to other capital structure components in the sample, are the smallest with on average of 2.09 percent.
Among 310 MFIs, only 40 have positive savings, which is fewer but still in line with the number for MFIs
worldwide, and the average share for those with deposits is 16.22 percent. The average of retained earnings as
percent of total assets is 9.97 percent and it varies from 0 percent to 75.19 percent.
14
The average of long-term debt (all three subgroups of loans together) as a percent of total assets equals to
46.06 percent, which is the largest average as compared to the other components of capital and ranges from 0 to 100
percent. Using subgroups, the average of concessional loans makes is 6.65 percent, the average of funding from
commercial bank loans as percent of total assets is 4.65. The largest category of debt is that to “social investors” at
about 34.76 percent on average, and ranges from 0 to 97 percent. This last group of soft debt is typically not
accounted for previous capital structure studies nor is the value of concessional loans.
----------
Insert Table 1
----------
3. Results
First, the results of the Breusch-Pagan test show that the null for independent errors of the regressions is rejected in
favor of the alternative, confirming that need to use SUR, rather than independent regressions. Thus, the SUR model
results reinforce the view that capital structure components affect differentially various aspects of MFIs’
performance.
We run the SUR model as a type of a “fixed effects” model. In order to identify the model as such within the
SUR, which does not separate the fixed-effects component, we directly embed firm dummies in the SUR structure.
The least square dummy variable (LSDV) estimator is identical to the fixed effects estimator after we control for firm
fixed effects in the SUR model.
The capital structure elements are grouped into five categories: a) Shareholder equity; b) Grants, c) Retained
earnings d) Deposits; e) Loans. The loans/debt category is disaggregated into several subcategories because some of
the loans are given at subsidized interest rates and previous work has missed these details. These loans categories are
loans at subsidized interest rates or Concessional loans; standard Bank loans, social investment loans (which refer to
socially responsible “investment”). The base group against which the categories will be compared is equity. We
provide estimates from two specifications – one with loans as one category, and second with loans disaggregated by
type of credit to see what the impact of subsidized interest rate and of social lenders might be. These groups
15
represent an indirect subsidy that is typically not included in the donation and subsidy categories in previous capital
structure studies. We specify a model with contemporaneous explanatory variables assuming that cap structure as
well as a model with lagged explanatory variables to alleviate possible contemporaneous endogeneity issue.
However, when we use lagged independent variables we lose about 1/3 of the observations and end up with only 200
observations, so we only use these results to support our main conclusions.
Table 2 (Model 1a) and Table 3 (Model 1b) show main results10. We find that relative to the use of equity
ratio, one percent point increase in the ratio of grants to total assets is associated with almost 0.05 point higher ROA
and equivalent improvement in the depth of outreach in our two specifications, and statistically significant at the 10
percent level only. Thus, we partially reject the hypothesis on the link of grants to financial sustainability. We do
seem to observe a tradeoff between the link of grants to financial sustainability and depth of outreach. The results
show that higher level of grants is associated with reaching poorer borrowers (negative and significant at the 5
percent level coefficient) suggesting that grants helped MFIs to serve poorer borrowers consistent with the dual
mission of microfinance. Previous studies’ results that grants are less used by MFIs in the ECA region and MFIs
without grants have chosen to target less poor borrowers are consistent with our finding (Cozarenco, Hudon, and
Szfaraz 2016).
The positive relation of grants to financial sustainability is not consistent with Bogan (2011) who found a
negative link for large MFIs. We also examine the additional variables measuring (the indirect) subsidy impact on
financial sustainability through the categories of loans (at subsidized interest and loans by social investors). The
estimates show that the loans are negatively related to financial sustainability, and positively related to the depth of
outreach. One percent change is associated with 0.04 percent point decrease in profitability of MFIs and 0.7 percent
increase in reaching more and poorer clients (column 1 in Table 2). Since most of the loans are by socially oriented
investors or offered at concessional interest rate, we could argue that we also find that indirect subsidies are
associated with worse off financial results.
Table 3 presents the disaggregate impact of loans. It shows that relative to a unit of equity to assets, a unit
increase in soft loans by social investors to assets is associated with 0.045 lower ROA and 0.71 improvement in the
16
depth of outreach measure (negative statistically significant coefficient). The results suggest that poorer clients
benefit from a different indirect type of subsidy related to soft loans. In addition, a percent increase in loans at
subsidized interest rate is associated with 0.96 improvement (negative coefficient means poorer borrowers are
reached) in the depth of outreach measure. These result are in line with Hudon and Traca (2006) and Caudill et al
(2009) suggesting that if social lenders are helping MFIs to reach target clientele, it may be at the expense of
financial sustainability. Therefore, our results seem to support the idea for a mission drift or at least tradeoff between
outreach and sustainability. The results show no impact of direct subsidy – grants - and of indirect subsidy – soft
loans – on the breadth of outreach of MFIs.
Loans from commercial banks have been an important source of capital for MFIs since the industry opened
up to the commercial loan market. Our results show that one unit increase in the use of funding from commercial
banks as compared to the equity leads to a decrease in the breadth of outreach or about 1 percent decrease in the
number of borrowers reached without affecting MFI profitability and depth of outreach (Column 2, Table 3). This
result partially supports the hypothesis that commercial lending may negatively affect MFIs’ outreach confirming
that commercial lenders focus on the financial bottom line. It is in line with Hoque et al. (2011), who state that
increased use of commercial sources of capital tends to decrease outreach.
Compared to equity to total assets, retained earnings to total assets have a positive association with
profitability (0.3 point) without affecting the social performance dimensions. This result may be explained by the fact
that current-period retained earnings are strongly correlated with ROA as they are used to reconcile financial
statements. Better insight on the role of retained earnings may come from our specifications with lagged independent
variables (but only 2/3 of the sample observations). Similarly, current period deposits relative to equity are not
associated with change in any aspects of the performance of MFIs.
The impact of other controls is largely as expected. We find that size matters and a percent increase in total
assets is associated with 7 percent higher ROA and 40 percent more borrowers. Higher focus on lending, measured
by MFI’s gross loan portfolio affects performance differently. An additional percent increase in gross loan portfolio
entails 0.27 percent lower ROA and about 0.50 percent increase in the number of borrowers. These results are
17
consistent with results showing scale economies in terms of outreach in ECA region e,g, Hartarska et al., (2013).
Similarly, consistent with the results in the same paper, finding that the quality of portfolio affects financial results,
we find that a percentage increase in the portfolio at risk is associated with 0.3 percent lower profitability of MFIs
and is linked to more outreach to poorer borrowers.
The results also show no differences in performance among MFIs of different age at least compared to the
base group of mature MFIs or those established for more than eight years. Focus on women as measured by the
percentage of women clients is associated with better profitability and outreach indicators. One percent increase in
the number of female borrowers is associated with 0.07 points increase in the ROA and with 2 percent increase in the
clients reached.
Most of the macroeconomic variables do not seem to be associated with performance with a few exceptions.
More rural countries have MFIs with better outreach to poorer customers because one percent increase in rural
population is associated with 0.33 points decrease in the average loan balance per borrower/GNI per capita.
Similarly, higher GDP per capita is associated with better depth of outreach as the change in magnitude of the annual
GDP per capita growth is close to its average value. This means that a country with one percent higher growth rate
ceteris paribus has MFIs sector reaching significantly more poor clients, with 68 percent decrease in the mean value
of the average loan balance per borrower.
----------
Insert Table 2
----------
----------
Insert Table 3
----------
18
Robustness Checks
Other contemporaneous regressions results
In addition to the specifications in Tables 2 and 3, we run the SUR model with retained earnings as the omitted
category. Compared to the retained earnings, a unit increase in all four capital shares is associated with lower ROA,
without affecting the social performance dimensions. The only funding is that more bank loans to total assets is
associated with a decrease in the number of borrowers (lower breadth of outreach) but the economic impact is
relatively small; in particular, one percent increase in the ratio of bank loans to total assets is associated with about 2
percent decrease in the number of borrowers served.
Next, we estimate how the use of various categories of capital structure compares to the use of deposits and
re-estimating the model where deposits are the omitted base category. We do that because there is an ongoing debate
whether the MFIs should and could mobilize deposits, and whether country regulations should be in favor of this
transformation. In our sample of 310 MFIs there are about 1/5 deposits takers, which is a little less that other
datasets utilized in the microfinance studies worldwide. The results indicate that relative to a unit of deposits, a unit
increase in own retained earnings to assets ratio leads to 0.3 higher ROA without affecting on social outreach.
We also evaluate if there may be differences in capital use in MFIs taking deposits. We do that by interacting
deposits with all capital structure variables. The objective of this test is to see if there is a difference between the
impact of the capital structure on performance in deposit taking MFIs versus lending-only MFIs. This is essentially
an alternative to running separate regressions by deposit taking and loans only MFIs. We estimate specifications with
added deposits times each capital structure variables. We first keeping equity as the base we add deposits times
retained earnings (when equity is the base), deposits times grants, deposits times loans (and similarly interact with
each of the loan categories for the second subset of specification). Next, keeping retained earnings as the base we add
deposits times equity, deposits times grants, deposits times loans (and in a second set of specs its subgroups). The
results (available on request) demonstrate that there is no difference in deposit taking versus lending only MFIs. This
means that the current volume of deposits is not related to MFI financial and social performance (in line with Rossel-
Cambier, 2012).
19
Lagged independent variables
To address concerns about endogeneity of capital structure and performance we estimate the same models as in
Table 2 and 3 but with lagged explanatory variables. This approach has shortcomings and tradeoffs that is why we
are using it only as robustness check. The main issue comes from the fact that MFIs products and services are
typically short term, thus the impact of a lending decision as well as the target of the lending should be seen
immediately in the current period outcome. Thus, except for the category of retained earnings, we should not have
contemporaneous correlations of performance and the explanatory variables including capital structure. It is also
important to note that lagging the explanatory variables significantly decreases the sample size to about 200 annual
observations.
Nevertheless, we find and discuss several suggestive results. First, we observe that higher proportion of
previous year retained earnings is associated with better breadth of outreach with one percent increase of this ratio
associated with 2.6 percent increase in the number of borrowers served and no impact on the other dimensions of
performance (column 2 in Tables 4 and in Table 5). Consistent with the results from Table 3 Column 3, we find that
the indirect subsidy imbedded in loans at concessional interest rate is associated with improvement of the depth of
outreach allowing MFIs to reach poorer borrower.
The most interesting result from this specification is that previous year deposit is associated with significant
improvement in ROA with one percent higher deposits raising ROA with 0.4 percent. This is in line with studies
showing economies of scope from collecting savings as opposed to lending-only MFIs (Hartarska et al 2010, 2011,
Delgado 201, Malikov and Hartarska, 2017)
Conclusions
Recent developments in the microfinance industry, such as commercialization and deposit taking, bring attention to
institutions’ use of capital and the link to MFIs performance. The debate on whether there are tradeoffs between MFI
outreach and profitability and “a mission drift” away from reaching many and poorer borrowers as MFIs are
20
becoming more commercially oriented is on-going and empirical results are mixed. The empirical literature about the
capital structure of microfinance institutions is scare and growing.
We contribute to the literature by focusing on the link between several dimensions of MFI performance
(financial sustainability, depth and breadth of outreach) and several sources of capital. We use new panel data from
MFIs operating in the ECA region during the 2005 -2009 period. Rather than using a single equation regression
analysis, we use a system of equations approach – the seemingly unrelated regressions method - to estimate the joint
impact of seven different types of capital on the three aspects of performance. Moreover, we take advantage of data
uniqueness where for the first time loans offered at a subsidized rate are separated from other subsidies such as
donation so that we can see how subsidizing credit to MFIs themselves affects their outreach and sustainability.
Previous work only uses one category of loans and does not account for subsidized interest rates to the MFIs, nor
does it evaluate the role of other soft loans provided by social investors. This is important because our data shows
that such loans amount to about 90 percent of all loans.
The results suggest that in most cases the type of capital used is associated with the performance preferences
of the stakeholder it represents, consistent with previous literature (Hartarska and Mersland, 2012). Relative to
equity, use of grants allows MFIs to improve efficiency and depth of outreach. However, with increased
commercialization, the role for grants is becoming limited, and grant funding is already a very small share in the
capital structure of MFIs in ECA. Subsidized loans (both concessional and socially oriented microfinance
investment), on the other hand, remain a very important source of capital. Concessional loans are positively
associated with MFI’s outreach without affecting financial results. Thus, we can argue that concessional loans allow
poorer clients to be served, consistent with Hudon and Traca (2006). Relative to a unit of equity, a unit increase in
social investors loans (another type of “soft” loan) entails decrease in MFI profitability but improved social
performance. Our finding is also consistent with the literature on commercial loans being associated with a mission
drift, because use of more commercial banks loans is associated with fewer borrowers served without affecting MFI
profitability and depth of outreach.
21
Results are less clear about the role of deposits as a source of capital. While current level of deposits are not
linked to performance, previous year deposits are associated with better financial results. The result seems to
supports the idea that savings can be a way to serve the poor and possibly lower the cost of capital. Since the data is
for the study period includes the financial crisis of 2008 and a year later, future work should analyze larger dataset
and longer period dataset, perhaps with more regions included, to evaluate how the capital structure affects the
multiple dimensions of MFI performance.
22
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25
Table 1. MFI Summary Statistics
Variable Obs Mean Std. Dev. Min Max
Dependent variables
ROA (%)
310 2.80 7.67 -50.81 22.67
Number of active borrowers
310 11,188 18,637 31 108,103
Average loan balance per borrower (%)
310 85.34 112.6 3.15 889.44
Independent variables
Capital structure
Equity (as percent of total assets)
310 36.37 24.7 0.02 100
Grants (as percent of total assets)
310
8.09 13.44 0 77.99
Deposits (as percent of total assets)
310 2.09 8.52 0 61.8
Retained earnings (as percent of total assets)
310 9.97 12.98 0 75.19
Loans (as percent of total assets)
310 46.06 29.22 0 99.67
Loan subgroups:
a. Concessional loans (as percent of
total assets)
310 6.65 14.55 0 96.32
b. Bank loans (as percent of total
assets)
310 4.65 13.08 0 90.83
c. Social investor loans (as percent
of total assets)
310 34.76 28.16 0 96.65
Other MFI characteristics
Total assets (million USD CPI adjusted) 310 26.8 48.5 0.05 420
Portfolio at risk > 30days (%) 310 4.3 6.49 0 42.66
GLP (million USD CPI adjusted) 310 21.8 37.9 0.03 305
Percent of women borrowers (%) 310 49.05 23.58 2.94 100
MFI age
New (share)
310 0.17 0.37 0 1
Young (share)
310 0.29 0.45 0 1
Mature (share)
310 0.54 0.5 0 1
Macro indicators
Rural population (%)
310 45.9 10.66 27.1 64.2
Unemployment level (%) 310 13.01 9.08 3.3 36
Agriculture value added as % of GDP 310 11.3 7.46 3.65 32.77
GDP per capita (USD CPI adjusted) 310 4,790 2,937 530.66 14,477
GDP annual growth (%) 310 7.47 8.18 -14.8 34.5
Private credit bureau coverage (%) 310 15.37 22.42 0 94.2
26
Table 2. Results of the SUR regressions of 3 MFI performance indicators on capital structure (Model 1a)
(1) (2) (3)
VARIABLES Return-on assets
(%)
Number of
active
borrowers (in
log)
Average loan
balance per
borrower (%)
Capital Structure Variables1
Grants
0.054†
0.002
-1.000*
(0.031) (0.006) (0.497)
Retained earnings 0.332*** 0.004 -1.213
(0.048) (0.009) (0.778)
Deposits 0.069 0.013 1.359
(0.119) (0.022) (1.912)
Loans -0.039* -0.003 -0.753*
Controls
(0.018) (0.003) (0.296)
Total assets (in log)
7.359***
0.328
-0.869
(1.186) (0.217) (19.026)
GLP (in log) -2.919** 0.544** 5.805
(0.929) (0.170) (14.906)
Portfolio at risk (>30days) (%) -0.277*** 0.014 -1.989*
(0.054) (0.010) (0.865)
New 2.299 0.224 30.585
(1.671) (0.306) (26.817)
Young -0.526 0.235 17.491
(1.015) (0.186) (16.292)
Women borrowers (%) 0.070* 0.015** -0.593
(0.030) (0.006) (0.488)
Rural population (%) 1.203 -0.184 -33.396†
(1.160) (0.212) (18.610)
Unemployment level (%) 0.107 0.019 -1.457
(0.202) (0.037) (3.247)
Agriculture value added as % of GDP 0.079 0.012 1.437
(0.170) (0.031) (2.732)
GDP per capita (in log) -5.675† 0.150 -88.949†
(3.099) (0.568) (49.725)
GDP annual growth (%) 0.123† 0.010 -1.149
(0.071) (0.013) (1.140)
Private credit bureau coverage 0.010 -0.002 -0.363
(0.037) (0.007) (0.586)
MFI dummies yes yes yes
Year dummies yes yes yes
Constant -121.493 3.240 2,819.371*
(79.212) (14.505) (1,270.911)
Observations 310 310 310
R-squared 0.805 0.884 0.767 1The base variable is equity
Standard errors in parentheses
*** p<0.001, ** p<0.01, * p<0.05, † p<0.1
27
Table 3. Results of the SUR regressions of 3 MFI performance indicators on capital structure (Model 1b)
(1) (2) (3)
VARIABLES Return-on assets
(%)
Number of
active
borrowers
(in log)
Average loan
balance per
borrower (%)
Capital Structure Variables1
Grants 0.053† 0.003 -1.002*
(0.031) (0.006) (0.496)
Retained earnings 0.331*** 0.001 -1.124
(0.049) (0.009) (0.783)
Deposits 0.052 0.013 1.413
(0.119) (0.022) (1.916)
Loan categories
Concessional loans -0.011 0.001 -0.960*
(0.028) (0.005) (0.452)
Social investor loans -0.045* -0.003 -0.713*
(0.019) (0.003) (0.304)
Bank loans -0.008 -0.014** -0.489
(0.028) (0.005) (0.456)
Controls
Total assets (in log)
7.229***
0.404†
-2.930
(1.186) (0.216) (19.153)
GLP (in log) -2.747** 0.494** 6.832
(0.928) (0.169) (14.974)
Portfolio at risk (>30days) (%) -0.272*** 0.011 -1.928*
(0.054) (0.010) (0.867)
New 2.383 0.369 25.480
(1.700) (0.309) (27.440)
Young -0.439 0.278 15.734
(1.017) (0.185) (16.421)
Women borrowers (%) 0.064* 0.015** -0.583
(0.030) (0.006) (0.490)
Rural population (%) 1.228 -0.220 -32.293†
(1.154) (0.210) (18.628)
Unemployment level (%) 0.084 0.030 -1.733
(0.202) (0.037) (3.260)
Agriculture value added as % of GDP 0.107 0.005 1.552
(0.170) (0.031) (2.738)
GDP per capita (in log) -4.824 0.052 -88.841†
(3.102) (0.565) (50.081)
GDP annual growth (%) 0.137† 0.007 -1.087
(0.071) (0.013) (1.145)
Private credit bureau coverage 0.009 0.000 -0.430
(0.037) (0.007) (0.590)
MFI dummies yes yes yes
Year dummies yes yes yes
Constant -130.322† 5.623 2,773.045*
(78.778) (14.339) (1,271.711)
Observations 310 310 310
R-squared 0.807 0.887 0.767 1The base variable is equity
Standard errors in parentheses
*** p<0.001, ** p<0.01, * p<0.05, † p<0.1
28
Table 4. Results of the SUR regressions of 3 MFI performance indicators on capital structure (Model 1a, lagged
independent variables) (1) (2) (3)
VARIABLES Return-on assets
(%)
Number of
active
borrowers (in
log)
Average loan
balance per
borrower (%)
Capital Structure Variables1
Grants
-0.075
0.001
-0.286
(0.058) (0.01) (0.363)
Retained earnings 0.011 0.026† -0.08
(0.081) (0.014) (0.511)
Deposits 0.422** -0.004 0.059
(0.159) (0.027) (1.003)
Loans -0.03 -0.001 -0.372†
Controls (0.034) (0.006) (0.217)
Total assets (in log) -0.19 0.46 -11.905
(1.809) (0.303) (11.395)
GLP (in log) 0.94 0.209 0.566
(1.124) (0.188) (7.084)
Portfolio at risk (>30days) (%) -0.411** 0.049* -2.535**
(0.13) (0.022) (0.818)
New -4.286† -0.418 8.462
(2.309) (0.386) (14.547)
Young -0.996 -0.055 7.557
(1.378) (0.231) (8.683)
Women borrowers (%) -0.027 0.015† -0.700*
(0.051) (0.009) (0.321)
Rural population (%) 1.171 -0.262 -32.055**
(1.929) (0.323) (12.153)
Unemployment level (%) 0.458 -0.159** -1.873
(0.303) (0.051) (1.912)
Agriculture value added as % of GDP -0.016 -0.143* -1.176
(0.36) (0.06) (2.266)
GDP per capita (in log) 4.815 -1.760* -90.814**
(4.951) (0.829) (31.192)
GDP annual growth (%) 0.046 0 -2.461***
(0.099) (0.017) (0.622)
Private credit bureau coverage 0.066 -0.030*** -0.402
(0.05) (0.008) (0.313)
MFI dummies yes yes yes
Year dummies yes yes yes
Constant -121.493 3.240 2,819.371*
(79.212) (14.505) (1,270.911)
Observations 203 203 203
Parms 103 103 103
R-squared 0.727 0.893 0.889 1The base variable is equity
Standard errors in parentheses
*** p<0.001, ** p<0.01, * p<0.05, † p<0.1
29
Table 5. Results of the SUR regressions of 3 MFI performance indicators on capital structure (Model 1b,
lagged independent variables) (1) (2) (3)
VARIABLES Return-on assets
(%)
Number of
active
borrowers
(in log)
Average loan
balance per
borrower (%)
Capital Structure Variables1
Grants -0.072 0.001 -0.194
(0.058) (0.01) (0.357)
Retained earnings 0.026 0.024† 0.287
(0.083) (0.014) (0.516)
Deposits 0.403* -0.005 0.043
(0.16) (0.027) (0.986)
Loan categories
Concessional loans -0.023 0.002 -0.850**
(0.046) (0.008) (0.281)
Social investor loans -0.036 -0.001 -0.3
(0.035) (0.006) (0.218)
Bank loans 0.004 -0.002 0.136
(0.049) (0.008) (0.303)
Controls
Total assets (in log)
-0.218
0.481
lagg
(1.82) (0.305) (11.25)
GLP (in log) 1.042 0.2 3.255
(1.131) (0.19) (6.989)
Portfolio at risk (>30days) (%) -0.397** 0.048* -2.355**
(0.13) (0.022) (0.805)
New -4.381† -0.391 2.125
(2.327) (0.39) (14.381)
Young -1.168 -0.042 3.522
(1.393) (0.234) (8.611)
Women borrowers (%) -0.029 0.015† -0.760*
(0.051) (0.009) (0.315)
Rural population (%) 1.12 -0.263 -32.157**
(1.923) (0.323) (11.889)
Unemployment level (%) 0.418 -0.158** -2.382
(0.305) (0.051) (1.885)
Agriculture value added as % of GDP -0.015 -0.140* -1.752
(0.36) (0.06) (2.226)
GDP per capita (in log) 5.246 -1.746* -90.903**
(4.952) (0.831) (30.61)
GDP annual growth (%) 0.051 0 -2.498***
(0.099) (0.017) (0.609)
Private credit bureau coverage 0.056 -0.029*** -0.535†
(0.051) (0.008) (0.312)
MFI dummies yes yes yes
Year dummies yes yes yes
Constant -130.322† 5.623 2,773.045*
(78.778) (14.339) (1,271.711)
Observations 203 203 203
Parms 105 105 105
R-squared 0.729 0.893 0.894 1The base variable is equity
Standard errors in parentheses
*** p<0.001, ** p<0.01, * p<0.05, † p<0.1
30
i These numbers do not always include credit unions and their clients as these are larger local and do not report to major organizations collecting MFIs financial and performance information. ii This figure excludes credit unions. iii Another focus of the early literature was on measuring performance with indicators such as portfolio-at-risk
(PAR), operational self-sufficiency (OSS) and cost per borrower (Armendariz and Morduch, 2005). Portfolio quality
(loan repayment rate) was important, for example, because it high delinquency makes financial sustainability less
attainable to Rosenberg (2009).
iv Results available on request.
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