WPS7019 Policy Research Working Paper 7019 The African Financial Development and Financial Inclusion Gaps Franklin Allen Elena Carletti Robert Cull Jun “Qj” Qian Lemma Senbet Patricio Valenzuela Development Research Group Finance and Private Sector Development Team September 2014 Policy Research Working Paper 7019 Abstract This paper investigates the African financial development and inclusion. The analysis finds that population density and financial inclusion gaps relative to other peer devel- is considerably more important for financial develop- oping countries. The paper uses a set of variables related ment and inclusion in Africa than elsewhere. Finally, the to financial development and inclusion. It first estimates paper shows evidence that a recent innovation in finan- the gaps between African countries and other developing cial services, mobile banking, has helped to overcome countries with similar degrees of economic development. infrastructural problems and improve financial access. Then, it explores the determinants of financial development This paper is a product of the Finance and Private Sector Development Team, Development Research Group. It is part of a larger effort by the World Bank to provide open access to its research and make a contribution to development policy discussions around the world. Policy Research Working Papers are also posted on the Web at http://econ.worldbank.org. The authors may be contacted at rcull@worldbank.org. The Policy Research Working Paper Series disseminates the findings of work in progress to encourage the exchange of ideas about development issues. An objective of the series is to get the findings out quickly, even if the presentations are less than fully polished. The papers carry the names of the authors and should be cited accordingly. The findings, interpretations, and conclusions expressed in this paper are entirely those of the authors. They do not necessarily represent the views of the International Bank for Reconstruction and Development/World Bank and its affiliated organizations, or those of the Executive Directors of the World Bank or the governments they represent. Produced by the Research Support Team The African Financial Development and Financial Inclusion Gaps FRANKLIN ALLEN, ELENA CARLETTI, ROBERT CULL, JUN “QJ” QIAN, LEMMA SENBET, AND PATRICIO VALENZUELA 1 JEL CODES: G2; O1; O16; O55. KEY WORDS: Financial development, financial inclusion, development gaps, Africa 1 Allen is from Imperial Collage London, UK, Carletti is from Bocconi University, IGIER,Milan, Italy, and CEPR, London, UK, Cull is from the World Bank, Qian is from Boston College and Shanghai Advanced Institute of Finance, Shanghai Jiao Tong University, Senbet is from University of Maryland and the African Economic Research Consortium, Nairobi, Kenya, and Valenzuela is from the Department of Industrial Engineering, University of Chile. 1. Introduction Although most Sub-Saharan African countries have undergone extensive financial sector reforms in the last two decades, their financial sectors remain under-developed, even relative to the standards of developing countries. Liquid liabilities and private credit in African financial sectors averaged below 40 and 25 percent of GDP, respectively, in 2011, substantially below the levels in other regions of the developing world (see Table 1). In terms of financial inclusion, the percentage of Sub-Saharan Africans older than 15 who had an account with or a loan from a formal financial institution were about 25 and 5 percent, respectively, in 2011 (see Table 2). Only developing countries from the Middle East and North Africa exhibited similar patterns. There is little academic research that addresses the underperformance of the financial sector reforms in Africa and how this can be improved. This paper is part of a new research agenda addressing key issues at the heart of African financial development and financial inclusion. We have three goals. First, we assess whether financial development and financial inclusion gaps exist in Africa, using other developing countries as a benchmark. Second, we identify factors that have more pronounced impact on financial development and financial inclusion in Africa than in other developing countries. Third, we document recent innovations and financial services, such as mobile banking, which can help overcome infrastructural deficiencies to improve financial access (see Table 3). We estimate both the average and country-specific financial development and financial inclusion gaps between Sub-Saharan Africa and the rest of the developing world. We expand standard models on the determinants of financial development and financial inclusion with a Sub-Saharan Africa dummy variable to test whether, on average, Sub-Saharan Africa behaves differently than peer developing regions. We find that Sub-Saharan Africa, on average, exhibits financial development and financial inclusion gaps relative to other peer developing regions. Then, we examine potential heterogeneity across countries, estimating country-specific ‘gaps’ for each Sub-Saharan African country. We first analyze the determinants of financial development and financial inclusion in other developing countries and use the regression 2 coefficients to generate predicted levels of financial development and financial inclusion for Sub-Saharan African countries. We then compare those predicted levels with the actual levels of financial development in the African countries. We find that the majority of the African countries have lower levels of financial development and financial inclusion than the one that would be predicted based on their fundamentals. Those benchmarking regressions also indicate that population density is more strongly associated with financial development and financial inclusion in Africa than in other developing countries. These results seem plausible considering that many African countries have relatively scattered populations and that frequent interactions among firms, households, and investors are a necessary condition for business transactions, and hence financial development and financial inclusion. In our analysis we focus on financial development and financial inclusion measures from 2007 to 2011. We obtain several results. First, in line with our previous findings based on a narrower dimension of African financial development for the period 1990-2006 (Allen et al., forthcoming), we find evidence of the existence of development gaps and of the importance of population density in explaining African financial underdevelopment. Second, as we broaden the dimension of African finance beyond the traditional banking sector development indicators, we provide new evidence indicating that gaps exist in financial inclusion as well relative to other peer non-African low income countries. Finally, based on surveys of users of financial services, we expand the indicators of financial development to include new measures of financial inclusion. The goal is to explore whether innovations in financial services, such as mobile banking, have helped to overcome sparse populations and infrastructural problems and improve financial access. To evaluate the use of mobile telephones in financial transactions, we run regressions on the determinants of the share of adults that use mobile phones to send money, receive money, and make payments. We find that, controlling for a large set of country-level variables, the use of mobile phones to send and receive money is significantly more prevalent in Sub- Saharan Africa than in the rest of the developing world. These results indicate that technological advances, such as mobile banking, have been an avenue to facilitate broader financial inclusion. 3 In focusing on mobile banking as an indicator of financial development, our paper contributes to an emerging literature on the usage of financial services in Africa, which pays particular attention to financial product innovations and alternative delivery channels (for standard financial products). For example, our own recent research on Kenya shows how Equity Bank’s branching expansion to underserved areas and a strategy to attract minority- speaking clients by communicating with them in their native tongue brought about substantial increases in the probability of having a bank account (5-10 percentage points relative to an initial level of 14% banked in 2006) and more modest increases in the share of Kenyans with formal loans (Allen et al., 2012). Another area where Africa has seen substantial recent progress is electronic payments. M- transfer systems facilitate financial transactions via mobile phones, allowing users to deposit and withdraw cash from an account that is accessible by mobile handset. Users can store value in the account and transfer value between users via text messages, menu commands, and personal identification numbers (Aker and Mbiti, 2010). The most famous of these systems is M-Pesa in Kenya. Launched in 2007 by the Kenyan mobile network operator, Safaricom, the mobile payments wallet had 15 million registered users by early 2012. Recent analyses show that M-Pesa use has brought about a substantial decline in the costs of sending transfers and a substantial increase in their volume (especially remittances), a greater likelihood of being formally banked, and decreased the use of informal savings mechanisms (Mbiti and Weil, 2011; Jack and Suri, 2010). Another example comes from Niger, where an M-transfer system is providing a more cost- effective means of implementing a cash transfer program to villages suffering from the effects of drought. Experimental evidence shows that the program substantially reduced the cost of distributing and obtaining the cash transfers (Aker et al., 2011). Households also used their transfers to purchase a more diverse set of goods, increased the diversity of their diets, depleted fewer assets, and grew a wider variety of crops (including marginal crops typically grown by women). Both the time savings for recipients of these M-transfers and the added security and privacy of electronic transfers are likely to be driving these effects. The remainder of the paper is organized as follows. Section 2 describes the empirical strategy and data. Section 3 reports the African financial development and financial inclusion gaps. 4 Section 4 examines the determinants of financial development and financial inclusion in non-African countries and benchmarks country-specific gaps for African countries. Section 5 explores whether the determinants of financial development and inclusion are different in Africa than in the rest of the developing world. Section 6 provides evidence on the effects of mobile banking on usage of financial services, while Section 7 concludes. 2. Empirical Strategy and Data The main objectives of this study are threefold. The first goal is to benchmark African financial development and financial inclusion relative to a set of variables that have been robustly associated with financial development, especially in low and middle income countries. The second goal is to explore whether the determinants of financial development and inclusion in Africa are the same as those in the rest of the developing world. The final goal is to examine whether financial innovations, such as mobile banking, have helped to overcome the underdevelopment of financial markets and the relative lack of financial inclusion in Africa. Below, we explain the methodology and the data that we use in our analysis. 2.1. Basic Determinants of Financial Development and Financial Inclusion We employ regression analysis to examine the level and variation of financial development and financial inclusion across countries, relying on some of the same variables that have been used to study the links between financial development and growth (Levine, 2005). 2 We include macroeconomic variables, such as GDP per capita and growth, and broad measures of institutional development. We augment our models with a Sub-Saharan Africa dummy variable that captures whether, on average, this region exhibits a gap relative to other peer developing regions. We stress from the outset that we are not necessarily estimating causal relationships. For ease of exposition, however, we refer to all explanatory variables as determinants of financial development throughout the paper. The regression model for the expanded set of explanatory variables is: 2 As in other recent papers, we use these variables, including growth, to describe financial development (Cull and Effron, 2008; Cull, Senbet, and Sorge, 2005). By contrast, in the finance and growth literature, the financial indicators are among the explanatory variables used to explain growth. 5 (1) = + 1 + 2 + 3 + 4 ℎ + 5 + 6 ℎ + 7 + 8 + 9 / + 10 ./ . + 11 − ℎ + . Where the dependent variable (yi) represents a measure of either financial development or financial inclusion. Sub-Saharan Africai is a dummy variable that takes the value 1 for Sub- Saharan African countries, and 0 otherwise. We briefly explain all our variables below. Table A.1 in the appendix reports the list of all the variables used in this study, their descriptions and sources. We average our indicators of financial development and our explanatory variables over multiple years (from 2007 to 2011), as is customary in the literature on financial development and growth so as to reduce the influence of outliers. We therefore have only one observation per country. Because our goal is to describe a general picture of the factors that are robustly linked to financial development, however, we present below only the simplest cross-country regressions in which the financial indicators and explanatory variables are contemporaneous. For financial inclusion variables, the only available year is 2011. Therefore, we can only estimate cross-country regressions. Again, to reduce the influence of outliers, all of our explanatory variables are an average of the period 2007-2011. 2.2. Financial Development Measures In our analysis we use two standard indicators of financial development, namely the ratio of liquid liabilities in the banking system to GDP and the ratio of credit to the private sector to GDP. The choice of these variables is based on the approach taken in Beck et al. (2008). Under this approach, the potential financial development indicators are ranked on the following criteria: (a) the directness of their linkages to welfare, (b) the goodness of fit of regressions that explain variation in them, (c) their coverage in terms of countries and years, and, (d) the degree to which an indicator is stable within a country from year to year, but varies substantially across countries. Moreover, these variables are robustly associated with long-run economic growth (Levine, 2005; Levine, Loayza, and Beck, 2000). Our analysis is rooted in banking indicators because banks hold the vast majority of financial sector assets 6 in Africa and other developing countries. 3 The source of these variables is the World Bank Financial Development and Structure Dataset (Beck and Demirgüç-Kunt, 2009). 2.3. Financial Inclusion Measures In this study, we employ five measures of financial inclusion. The first is the percentage of adults that have an account at a formal financial institution. The second is the percentage of adults that had a loan from a financial institution in the year prior to the survey. The last three variables are related to the use of mobile telephones in financial transactions. They are the percentage of adults using mobile telephones to send money, to receive money, and to pay bills. We use these variables to explore whether mobile banking has exhibited deeper penetration in Africa than elsewhere. All variables related to financial inclusion are taken from the World Bank Global Financial Inclusion (Global Findex) Database, which measures how people in 148 countries save, borrow, make payments, and manage risk. This database was recently released and therefore only covers the year 2011. 2.4. Explanatory Variables In the choice of the explanatory variables for financial development and financial inclusion, we rely on previous studies, in particular those on the finance-growth nexus (e.g., Levine, 2005) and from other studies that analyze the determinants of financial development (e.g., Beck et. al, 2008; Cull and Effron, 2008). These studies regress indicators of financial development on a set of variables that describe the environment in which such development takes place, but that are exogenous to that process such as population size and density, natural resources and a dummy variable for offshore financial centers. They also include per capita income as an exogenous regressor, claiming that its effect on financial development is contemporaneous while the effect of financial development on income is lagged. We expand further the set of regressors by including macroeconomic variables and broad measures of 3 For most countries of Sub-Saharan countries, stock exchanges are just a recent phenomenon. The number of stock exchanges has, in fact, proliferated to over two dozen in the last decade. While this is encouraging, the stock exchanges (except South Africa) are thin and malfunctioning, although liquidity provision has improved (Senbet and Otchere, 2008). With more robust stock market development in Ethiopia it would be worth expanding the domain of financial development to include stock markets in future analyses. 7 institutional development. Below we briefly discuss the economic intuition underlying our explanatory variables: Population: A larger population should spur financial development due to scale and networking effects that make provision of financial services more efficient in larger economies. Population density: We measure population density by the number of residents per square kilometer. It should have a positive impact on financial development and financial inclusion in part because it is easier for financial institutions to accumulate savings when a higher number of potential depositors have easy access to them. Natural Resources: An abundance of natural resources may have a negative effect on financial development and financial inclusion via the so-called “resource curse.” 4 We measure the intensity of a country’s reliance on natural resources by using a comprehensive approach that measures resource abundance based on trade indicators rather than solely on oil exports: − = � . Where k є{pretroleum, forest, tropical, animal, cereal, raw material}. The key advantage of this approach is that this measure of net exports is available for most countries and, as shown by Lederman and Maloney (2008), is more closely linked to actual natural resource reserves than other trade-based endowment measures. Given that an adequate measure of the abundance of natural resources needs to be measured with respect to other factors of production, net exports is divided by labor force. 5 Labor force is measured as people between the ages of 15-64. Offshore Centers: The financial sectors of offshore centers are typically much larger than their economies would otherwise warrant. We measure this effect with a dummy variable for 4 Sachs and Warner (1995, 2001) offer evidence that resource-rich developing countries have grown more slowly since 1960 than other developing countries. 5 In fact, as argued by Leamer (1984), the standard Heckscher-Ohlin trade theory dictates that the appropriate measure of abundance of natural resources is net exports of resources per worker. 8 offshore financial centers and we expect it to be positively related to financial development and financial inclusion. GDP Per Capita: Per capita income is expected to be positively linked to financial development and financial inclusion, because the volume and the sophistication of financial activities demanded is greater in richer countries and, on the supply side, richer economies can better exploit scale economies in the provision of financial services. Growth: The effect of real growth on financial development is ambiguous. On the one hand, countries with rapid growth may be associated with greater financial development and financial inclusion. On the other hand, countries with higher levels of development, as reflected in GDP per capita, tend to have slower growth according to ‘conditional convergence’ (Levine and Renelt, 1992; Easterly and Levine, 1997). Because financial development is highly correlated with per capita income, real growth may be negatively correlated with our measures of financial development and inclusion. Our growth measure corresponds to the five-year average growth. Consumer price inflation: On the private credit side, inflation should slow financial development if it makes loan contracting over extended periods more difficult. Inflation could also have a dampening effect on liquid liabilities, making depositors more hesitant to place their savings in the formal financial system for fear of not being able to get them back quickly enough. Therefore, we expect the coefficient for inflation to be negative in our regressions. KKM Index: We include in the regression the KKM Index, which is the measure of broad institutional development created by Kaufmann, Kraay, and Maztruzzi (2007). Institutional development has been found to foster financial development in developing countries (Cull and Effron, 2008), and thus we expect a positive coefficient for KKM in our regressions. Manufacturing/GDP: We include the share of GDP generated by the manufacturing sector. Industrial sectors that are relatively more in need of finance tend to grow faster in countries with well-developed financial sectors (Rajan and Zingales, 1998). Manufacturing encompasses a broad variety of activities that tend to rely heavily on external finance so that we expect countries with a large manufacturing sector to have well-developed 9 complementary financial institutions. We therefore expect a positive coefficient for manufacturing in our regressions. Secondary/Primary school enrollment: Finally, we want to measure the key role that education plays in financial development and financial inclusion. According to Cole, Paulson, and Shastry (forthcoming), education has not only a positive effect in financial inclusion, but also in financial management. Therefore, education is also likely to have an indirect impact on financial development through financial management as the lack of capacity in financial management may be a deterrent to financial development. The summary statistics for all variables used in this study appear in Table 4. We divide our sample between Sub-Saharan countries and middle and low income countries other than Sub-Saharan African countries. The table shows that the mean values for the financial development and financial inclusion indicators (except for mobile financial transactions) are uniformly lower in Africa than in the rest of the developing world. We also see some marked differences in the explanatory variables between Africa and the rest of the developing world (e.g., population and population density). 3. The African Financial Development and Financial Inclusion Gaps To benchmark whether Sub-Saharan Africa, on average, exhibits financial development and financial inclusion gaps, we estimate Equation (1). Table 5 presents our models for our sample of low- and lower-middle-income countries. Five out of the 45 African countries included in our sample are upper-middle-income economies (Gabon, South Africa, Mauritius, Botswana and Namibia). Given that most of these countries are not particularly reflective of the African experience, we mainly focus this analysis on low- and lower-middle- income economies and report results for upper-middle-income economies in Table A.2 in the appendix. The results using our measures of financial development as the dependent variables are presented in Columns 1 to 4 of Table 5. The negative coefficients associated with the Sub- Saharan Africa dummy variable suggest that financial development gaps exist in Africa. Most of these coefficients are statistically significant at standard levels of confidence, even after controlling for a comprehensive set of country-level determinants of financial development. 10 The results using our measures of financial inclusion as the dependent variables are presented in Columns 5 to 8. While the results in Columns 7 and 8 present evidence of an African financial inclusion gap in terms of access to credit, we do not find statistically significant evidence of a gap in terms of access to accounts at a formal financial institution. These results are consistent with the emergence of recent alternative delivery channels for basic financial products in Africa. For example, our own recent research on Kenya shows how Equity Bank’s branching expansion to underserved areas and a strategy to attract minority-speaking clients by communicating with them in their native tongue brought about substantial increases in the probability of having a bank account, but a more modest increase in the share of Kenyans with formal loans (Allen et al., 2012). Table A.2 in the appendix shows there is no evidence of average financial development and financial inclusion gaps in the five upper-middle-income African countries covered in our sample. This result is consistent with the fact that countries such as Mauritius, Namibia, and South Africa are not particularly reflective of the African experience and, therefore, tend to have levels of financial development and financial inclusion higher than (or similar to) expected levels. Given that infrastructural development is likely to reduce the costs for financial institutions to expand their services, we also consider variables of infrastructural development. However, when using these measures our sample drops drastically (around 40%-50%). Table A.3 in the appendix reports our main models including road density (i.e., km of road per 100 sq. km of land area) as an independent variable. Our main results remain qualitatively unchanged and the coefficient associated with road density is not significant. 4. Country-Specific Financial Development and Financial Inclusion Gaps in Africa To benchmark country-specific financial development and financial inclusion gaps, we estimate Equation (1) for low- and middle-income countries outside Africa, which enables us to predict what African financial development and inclusion should be based on the experience of these other countries. Specifically, we first run the regressions excluding Sub- Saharan African countries, and we derive out-of-sample predictions for African financial 11 development and inclusion. Then we compare these predictions with the actual levels of African financial development and inclusion to measure the gaps. 4.1. Determinants of Financial Development and Financial Inclusion in non-Sub- Saharan Countries Table 6 presents our models for low and middle income countries (excluding Sub-Saharan Africa). The results for Equation (1) using our measures of financial development as the dependent variables are presented in Columns 1 to 4. Columns 1 and 3 report our estimates for the specification with a limited set of regressors as a benchmark. All coefficients have the expected sign and some of them are statistically significant. GDP per capita and the Offshore Financial Center dummy variable are significantly positively associated with both indicators of financial development, and population density and natural resources are also significant in the private credit regression. When we include macroeconomic, institutional, and other explanatory variables in Columns 2 and 4, the Offshore Financial Center variable is again positively associated with both liquid liabilities and private credit (as a percentage of the GDP). Inflation is negatively linked to liquid liabilities to GDP and Natural Resources is negatively related to private credit to GDP. Our proxy for the degree of institutional development, as represented by the KKM index, is positive and highly significant in the private credit to GDP regression. This result provides support for the notion that broad institutional development helps to foster financial development. The results using measures of financial inclusion as the dependent variables are presented in Columns 5 to 8. Fewer variables are statistically significant. When we use the sample of non- African countries and the limited set of regressors as a benchmark, (see Columns 5 and 7), only GDP per capita is positively associated with the percentage of adults that have an account at a formal financial institution. The expanded regression results are presented in Columns 6 and 8. The KKM Index is positively related to the percentage of adults that have an account at a formal financial institution. And, Growth is positively related to the percentage of people having a loan from a formal financial institution. 12 4.2. Predicted Versus Actual African Financial Development and Financial Inclusion We now use the regression coefficients in Table 6 to derive predicted levels of financial development and financial inclusion for all African countries in our sample. Again, we are not claiming that the relationships we find in these tables are causal. Rather, we are asking what the level of financial development and financial inclusion would be if the same relationships held in Africa as in the rest of the developing world. To the extent that predicted and actual levels of financial development and financial inclusion are similar, one can say that African financial development and financial inclusion are about what they should be. The top panel of Figure 1 shows that only eight of forty countries have levels of liquid liabilities to GDP that are at or above their predicted levels. Of these countries, only six exceed their predicted levels. Cape Verde (abbreviated as CPV in the figure), Mauritius (MUS) and Namibia (NAM) exceed their predicted levels, but none of them is particularly reflective of the African experience. The other countries with actual levels of liquid liabilities to GDP above their predicted levels are Kenya (KEN), Gabon (GAB), and Guinea (GIN). The result on Kenya is somewhat expected as in recent years the country has witnessed a strong bank branch expansion. As noted, this expansion has coincided with the emergence of Equity Bank, a pioneering commercial bank that devised a banking service strategy targeting low income clients and traditionally under-served territories (Allen et al., 2012). Gabon and Guinea are huddled in the lower left hand corner of the figure where actual and predicted values are very low. The bottom panel of Figure 1 shows that only eight of forty countries have levels of private credit to GDP that exceed their predicted levels: Gabon, Angola (AGO), Liberia (LBR), Nigeria (NGA), Namibia, Cape Verde, South Africa (ZAF) and Mauritius. Of those countries, Gabon, Angola, and Liberia are in the lower left hand corner of the figure where actual and predicted values are very low. We note that because the predicted values are based on linear regressions, they tend to be very near zero for countries clustered in the lower left corner of the private credit panel in Figure 1. The fact that their actual levels exceed zero by some small amount is little consolation. Moreover, Cape Verde, South Africa and Mauritius are not particularly representative of the African experience. 13 In terms of financial inclusion, the evidence is more mixed. The top panel of Figure 2 shows that eighteen of thirty-five countries have percentages of adults with a bank account above their predicted values. However, it appears that access to loans remains a very important obstacle to financial inclusion. The bottom panel of Figure 2 shows that only three of thirty- five countries have a percentage of adults with a loan from a financial institution above their predicted values. Those countries are South Africa, Swaziland and Mauritius. Overall, the gap between predicted and observed African financial development is important in several countries. The levels of liquid liabilities to GDP for African countries are about 78 percent the level predicted by statistical relationships that hold elsewhere in the developing world. Private credit ratios are even a bit lower. The percentage of adults with a loan from a formal financial institution is less than half of the predicted levels for African countries, though the share of adults with a bank account is near predicted levels. In contrast to low- and lower-middle income African countries, upper-middle-income African countries such as Mauritius, Namibia, and South Africa tend to have levels of financial development and financial inclusion higher than (or similar to) expected levels. To provide additional context for interpreting these gaps, the next sections look at whether the factors in our base models relate to African financial development differently than to financial development in the rest of the world. 5. Are the Determinants of Financial Development and Financial Inclusion Different in Africa? So far we have defined under-development in African financial sectors in terms of the determinants of financial development and financial inclusion in other parts of the developing world. However, the course of African financial sector development and financial inclusion might depend on a different set of factors than those that have been important elsewhere. While we are reluctant to accept that African financial sectors have a distinct model of development, it seems plausible that some factors may be somewhat more or less important in the African context. To see whether this is indeed the case, as a first step, we estimate Equation (1) for the sample of African countries. Note that this method essentially accepts that the level of financial development and financial inclusion in Africa is lower than that in the rest of the developing world, and then tries to explain variation around 14 the African mean based on the explanatory variables in our base models. Still, the results are instructive. Table 7 reports the determinants of financial development and financial inclusion in Sub- Saharan African countries. Several coefficients are significant at standard confidence levels and all of these have the expected sign. Perhaps the most important difference between Africa and the rest of the developing world is that population density is much more strongly linked to both financial development and financial inclusion than it was elsewhere in the world. Moreover, our proxy for natural resources is strongly negatively linked to financial development and financial inclusion. GDP per capita and the KKM index are positively linked to financial development and financial inclusion for the African sample. In all, the determinants are more tightly linked to financial development and inclusion for African countries than for non-African countries. In part, this could be because the global financial crisis disrupted relationships between variables that held from 1990 to 2006 for non-African countries. 6. The Impact of Mobile Banking on Financial Development and Inclusion in Africa Having established population density as a key factor for financial development and financial inclusion in Africa we explore whether innovations and financial services, such as mobile banking, have helped to overcome the financial gaps in Africa. As noted, the development of mobile banking in Africa started in Kenya with M-Pesa, which is a mobile phone–based service that greatly facilitates money transfers and remittances by the poor. It has been used primarily to transfer money between individuals rather than as a vehicle for saving. According to the World Bank Global Financial Inclusion (Global Findex) Dataset, by 2011 67% and 60% of the adult population in Kenya used mobile telephones to receive and send money, respectively. Mobile banking spread quickly in Kenya thanks, in part, to the fact that the operator of M-PESA, Safaricom, controls two-thirds of the telecoms market in Kenya. However, as shown in Table 8, mobile banking has also taken off in other African countries such as Angola, Gabon, Republic of Congo, Nigeria, Somalia, Sudan and Uganda. 15 Table 9 explores whether mobile banking has deeper penetration in low- and lower-middle- income African countries than elsewhere. To do so, we estimate a model similar to the one presented in Equation (1). We use three different dependent variables: the percentage of adults using a mobile telephone to (a) send money, (b) receive money, and (c) to pay bills. The results suggest that the penetration of mobile telephones to receive and send money has been deeper in Sub-Saharan Africa than in the rest of the developing world. This result is robust even after controlling for our full set of country-variables. However, the penetration of mobile telephones to pay bills has not been stronger in Africa than in the rest of the developing world. Table A.4 in the appendix reports qualitatively very similar results for a sample of upper-middle income countries. In all, the regression results in this section are consistent with the notion that mobile banking has advanced more rapidly in Africa than in other parts of the developing world (though not in terms of bill payment). Time will tell whether the initial inroads in terms of sending and receiving money via mobile phones will lead to deeper forms of financial inclusion (i.e., including savings accounts, loans, and other financial services such as insurance). 7. Conclusions The available evidence provides a convincing linkage between financial development and economic development. Yet the levels of financial development and financial inclusion remain low in Africa based on standard indicators of banking development. Benchmarking based on the correlates of financial development and financial inclusion in other developing countries reveals important gaps between predicted and actual levels of African financial development and inclusion. Population density appears to be more important in Africa than elsewhere. Presumably, bank branch penetration figures remain low in Africa because of difficulties in achieving minimum viable scale in sparsely populated, low-income areas. Therefore, technological advances, such as mobile banking, that enable users of financial services to be located far away from their financial institutions, have provided a promising way to facilitate African financial development and financial inclusion outside major cities, a topic that has been studied in the 16 context of Kenya, where the mobile payments services of M-PESA are now widely used (Mbiti and Weill, 2010; Jack and Suri, 2010). At the same time, mobile banking has so far proven a success only within the context of sending and receiving money. While that could change, it seems likely that greater financial inclusion in terms of savings products, credit, and other financial services will require new approaches on the part of financial services providers. The experience of Equity Bank in Kenya provides one such example, and Equity Bank’s more recent experience with agent banking, which employs small retailers as agents that can collect deposits, issue withdrawals, and process loan payments, provides another example. In addition, though we did not examine it in this paper, microfinance institutions have substantially increased their outreach in Africa over the past decade (Jarotschkin, 2013). In short, substantial gains in African financial inclusion and development are likely to require an array of new services, delivery channels, and providers, though there are signs that that process is already taking hold. 17 Appendix: Table A.1 Variables Description Variable Description and unit Source Liquid liabilities/GDP Ratio of liquid liabilities to GDP Financial Structure Dataset (Beck and Demirgüç-Kunt, 2009) Private credit/GDP Private credit by deposit money banks to GDP Financial Structure Dataset (Beck and Demirgüç-Kunt, 2009) Account at a formal financial institution Account at a formal financial institution in the past year (% of people older than 15 year old) Global Findex Database (Demirguc-Kunt and Klapper, 2012) Loan from a financial institution Loan from a financial institution in the past year (% of people older than 15 year old) Global Findex Database (Demirguc-Kunt and Klapper, 2012) Mobile phone used to pay bills Mobile phone used to pay bills (% of people older than 15 year old) Global Findex Database (Demirguc-Kunt and Klapper, 2012) Mobile phone used to receive money Mobile phone used to receive money (% of people older than 15 year old) Global Findex Database (Demirguc-Kunt and Klapper, 2012) Mobile phone used to send money Mobile phone used to send money (% of people older than 15 year old) Global Findex Database (Demirguc-Kunt and Klapper, 2012) Population Total population / 1,000,000 World Development Indicators, World Bank Population density People per square km of land area /1,000 World Development Indicators, World Bank Natural resources Net exports in resource intensive industries as described in the text. Lederman and Maloney (2008) Offshore center Dummy variable that takes the value 1 if the country is a Offshore Center and 0 otherwise. IMF (2007) GDP per capita GDP per capita (constant 2000 US$) World Development Indicators, World Bank Growth GDP per capita GDP per capita growth (annual %) World Development Indicators, World Bank Consumer price inflation Inflation, consumer prices (annual %) World Development Indicators, World Bank Road density World Development Indicators, World Bank Km of road per 100 sq. km of land area KKM Index Measure of broad institutional development Kaufmann, Kraay, and Maztruzzi (2007) Manufacturing/GDP Manufacturing (% of GDP) World Development Indicators, World Bank Secondary/Primary school enrollment Secondary school enrollment over primary school enrollment World Development Indicators, World Bank 18 Appendix: Table A.2 Regressions on Financial Development and Financial Inclusion, Upper-Middle-Income Countries This table presents OLS regressions of liquid liabilities over GDP, private credit over GDP, the percentage of adults with an account at a formal financial institution, and the percentage of adults with a loan from a formal financial institution on the set of country-level variables listed below. This table reports the models for a sample of upper-middle-income countries. ***, **, and * indicate significance at the 1%, 5% and 10% levels, respectively. Liquid Liabilities / GDP Private Credit / GDP Account Loan (1) (2) (3) (4) (5) (6) (7) (8) Ln(Population) 0.0274 0.0060 0.0112 0.0132 0.0163 0.0154 0.0007 0.0030 (0.030) (0.045) (0.019) (0.026) (0.022) (0.025) (0.007) (0.009) Ln(Population Density) 0.1238*** 0.1020* 0.0884*** 0.0624* 0.0532 0.0570 0.0099 0.0141 (0.045) (0.060) (0.029) (0.034) (0.034) (0.035) (0.010) (0.013) Natural Resources -0.0718 -0.0667 -0.0924* -0.0629 -0.0298 0.0227 -0.0086 0.0052 (0.076) (0.096) (0.049) (0.055) (0.046) (0.052) (0.014) (0.019) Offshore Center 0.4493* 0.2919 0.4799*** 0.4058** -0.0011 0.0924 0.0178 0.0208 (0.262) (0.289) (0.169) (0.166) (0.149) (0.131) (0.043) (0.047) Ln(GDP per capita) 0.0244 0.0195 0.0012 -0.1336 0.0092 -0.0878 -0.0269 -0.0415 (0.124) (0.183) (0.080) (0.105) (0.075) (0.084) (0.022) (0.030) Growth GDP Per Capita 2.8900 -0.2626 -2.6905* 0.7114 (3.052) (1.756) (1.410) (0.509) Inflation -2.3318 -0.5345 0.7185 0.3412 (1.537) (0.884) (0.688) (0.248) KKM Index 0.0070 0.2148* 0.0618 0.0199 (0.198) (0.114) (0.089) (0.032) Manufacturing/GDP 0.6733 0.8479 1.0264* -0.0323 (1.138) (0.655) (0.552) (0.199) Sec./Prim. School Enrollment -0.1420 -0.0799 0.4396 0.0662 (0.529) (0.305) (0.296) (0.107) Sub-Saharan Africa 0.1957 0.1658 0.2029* 0.0891 0.0811 0.1041 -0.0021 0.0023 (0.183) (0.217) (0.118) (0.125) (0.118) (0.110) (0.034) (0.040) Constant 0.8527*** 0.9110* 0.6871*** 0.7637*** 0.5657*** 0.2268 0.1628*** 0.0946 (0.226) (0.463) (0.146) (0.267) (0.149) (0.249) (0.043) (0.090) Observations 42 39 42 39 36 35 36 35 Adjusted R-squared 0.1930 0.1768 0.3584 0.4442 -0.0369 0.3020 -0.0298 -0.0669 Root MSE 0.3519 0.3666 0.2272 0.2108 0.1968 0.1632 0.0573 0.0589 19 Appendix: Table A.3 Regressions on Financial Development and Financial Inclusion This table presents OLS regressions of liquid liabilities over GDP, private credit over GDP, the percentage of adults with an account at a formal financial institution, and the percentage of adults with a loan from a formal financial institution on the set of country-level variables listed below. This table reports the models for a sample of low- and lower-middle-income countries. ***, **, and * indicate significance at the 1%, 5% and 10% levels, respectively. Liquid Liabilities / GDP Private Credit / GDP Account Loan (1) (2) (3) (4) (5) (6) (7) (8) Ln(Population) 0.0687** 0.0826** 0.0443* 0.0532* 0.0104 -0.0046 -0.0134 -0.0227*** (0.027) (0.030) (0.024) (0.027) (0.025) (0.025) (0.008) (0.008) Ln(Population Density) -0.0141 0.0224 -0.0191 -0.0017 -0.0415 0.0003 0.0023 0.0135 (0.034) (0.037) (0.030) (0.033) (0.029) (0.029) (0.010) (0.009) Natural Resources -0.1336 0.0595 -0.2944 -0.1327 0.1667 0.1980 0.2647** 0.2622** (0.380) (0.405) (0.333) (0.356) (0.355) (0.334) (0.115) (0.107) Ln(GDP per capita) 0.0319 0.0304 0.0141 -0.0234 0.0453 0.0914 -0.0125 0.0081 (0.060) (0.069) (0.053) (0.061) (0.052) (0.054) (0.017) (0.017) Growth GDP Per Capita 1.3126 0.3826 3.7702** 1.4366*** (1.827) (1.604) (1.574) (0.504) Inflation -0.7141 -0.1248 0.7242 0.3467 (0.962) (0.845) (0.835) (0.267) KKM Index 0.1459 0.1487* 0.0952 0.0201 (0.090) (0.079) (0.076) (0.024) Manufacturing/GDP -0.9589 0.0335 -0.8331 -0.1631 (0.626) (0.549) (0.495) (0.158) Sec./Prim. School Enrollment 0.1745 0.2069 0.0365 -0.0633 (0.203) (0.179) (0.157) (0.050) Road Density -0.0006 -0.0017 0.0001 -0.0009 0.0025** 0.0009 0.0002 -0.0002 (0.001) (0.001) (0.001) (0.001) (0.001) (0.001) (0.000) (0.000) Sub-Saharan Africa -0.1752* -0.1488 -0.1414* -0.1163 -0.0421 0.0483 -0.0875*** -0.0654** (0.089) (0.115) (0.078) (0.101) (0.078) (0.094) (0.025) (0.030) Constant 0.2651 0.4996* 0.1412 0.1484 0.0510 0.2283 0.1586*** 0.2232*** (0.160) (0.252) (0.140) (0.221) (0.141) (0.212) (0.046) (0.068) Observations 40 40 40 40 37 37 37 37 Adjusted R-squared 0.2339 0.2613 0.1411 0.1716 0.1564 0.3412 0.3705 0.5215 Root MSE 0.1867 0.1834 0.1639 0.1610 0.1564 0.1382 0.0508 0.0443 20 Appendix: Table A.4 Regressions on Mobile Phone Penetration, Upper-Middle-Income Economies This table presents OLS regressions of percentage of people using mobile phone to make financial transactions on the set of country-level variables listed below. This table reports the models for all low and middle income countries. ***, **, and * indicate significance at the 1%, 5% and 10% levels, respectively. (1) (2) (3) (4) (5) (6) % of people using mobile phone to: send money receive money pay bills Ln(Population) -0.0101 -0.0137 -0.0096 -0.0091 -0.0052 -0.0071 (0.006) (0.009) (0.009) (0.012) (0.005) (0.007) Ln(Population Density) 0.0015 -0.0014 -0.0030 0.0003 -0.0003 0.0002 (0.010) (0.012) (0.013) (0.017) (0.008) (0.010) Natural Resources 0.0613*** 0.0491*** 0.0708*** 0.0567** 0.0054 0.0013 (0.013) (0.017) (0.018) (0.024) (0.010) (0.014) Offshore Center -0.0232 -0.0258 -0.0293 -0.0212 -0.0066 0.0030 (0.043) (0.043) (0.059) (0.059) (0.033) (0.036) Ln(GDP per capita) -0.0566** -0.0133 -0.0720** -0.0167 -0.0353** -0.0132 (0.022) (0.029) (0.030) (0.039) (0.017) (0.024) Growth GDP Per Capita -0.3268 -0.7177 -0.4375 (0.460) (0.632) (0.386) Inflation -0.6158** -0.7192** -0.2928 (0.249) (0.342) (0.209) KKM Index -0.0626** -0.0795* -0.0417 (0.030) (0.041) (0.025) Manufacturing/GDP -0.0090 -0.1797 0.0261 (0.195) (0.268) (0.164) Sec./Prim. School Enrollment 0.0179 0.0518 0.0539 (0.098) (0.135) (0.082) Sub-Saharan Africa 0.0634* 0.0849** 0.0776 0.1053** -0.0022 0.0160 (0.034) (0.036) (0.046) (0.049) (0.026) (0.030) Constant 0.1194*** 0.0998 0.1328** 0.1297 0.0867** 0.0506 (0.043) (0.082) (0.059) (0.112) (0.033) (0.069) Observations 35 34 35 34 35 34 Adjusted R-squared 0.5500 0.6090 0.4644 0.5393 -0.0110 -0.0210 Root MSE 0.0563 0.0532 0.0777 0.0731 0.0439 0.0446 21 References Aker, Jenny C., Rachid Boumnijel, Amanda McClelland, and Niall Tierney, 2011, “Zap it to Me: The Short-term Impacts of a Mobile Cash Transfer Program.” Center for Global Development Working Paper 268. Aker, Jenny C. and Isaac M. Mbiti, 2010, “Mobile Phones and Economic Development in Africa.” Journal of Economic Perspectives 24, 207-232. Allen, Franklin, Elena Carletti, Robert Cull, Jun Qian, Lemma Senbet, and Patricio Valenzuela, Forthcoming, “Resolving the African Financial Development Gap: Cross-country Comparisons and a Within-country Study of Kenya,” In NBER Volume on African Economic Successes, S. Edwards, S. Johnson, D. Weil. eds. Chicago: University of Chicago Press. Allen, Franklin, Elena Carletti, Robert Cull, Jun Qian, Lemma Senbet and Patricio Valenzuela, 2012, “Improving Access to Banking: Evidence from Kenya,” Wharton Financial Institutions Center Working Paper 12-07, University of Pennsylvania. Paper presented at the 2012 Summer Research Conference on “Recent Advances in Corporate Finance,” at the Centre for Analytical Finance, Indian School of Business in Hyderabad. Beck, Thortsen and Asli Demirgüç-Kunt, 2009, “Financial Institutions and Markets Across Countries and over Time: Data and Analysis,” World Bank Policy Research Working Paper 4943. Beck, Thorsten, Asli Demirgüç-Kunt, and Ross Levine, 2000, “A New Database on the Structure and Development of the Financial Sector,” World Bank Economic Review 14, 597-605. Beck, Thorsten, Asli Demirgüç-Kunt, and Ross Levine, 2007, “Finance, Inequality, and the Poor,” Journal of Economic Growth 12, 27-49. Beck, Thorsten, Erik Feyen, Alain Ize, and Florencia Moizeszowicz, 2008, “Benchmarking Financial Development,” World Bank Policy Research Working Paper 4638. Brune, Lasse, Xavier Giné, Jessica Goldberg, and Dean Yang, 2011, “Commitments to Save: A Field Experiment in Rural Malawi.” World Bank Policy Research Working Paper 5748. Clarke, George R.G., L. Colin Xu, and Heng-Fu Zou, 2006, “Finance and Income Inequality: What Do the Data Tell Us?,” Southern Economic Journal 72, 578-596. Cole, Shawn, Anna Paulson, and Gauri Kartini Shastry, fortcoming, “Smart Money: The Effect of Education on Financial Behavior,” Review of Financial Studies. 22 Cull, Robert and Laurie Effron, 2008, “World Bank Lending and Financial Sector Development,” World Bank Economic Review 22, 315-343. Cull Robert, Lemma W. Senbet and Marco Sorge, 2005, “Deposit Insurance and Financial Development,” Journal of Money, Credit, and Banking 37, 43-82. Devarajan, Shantayanan, and Wolfgang Fengler, 2013, “Africa’s Economic Boom.” Foreign Affairs 92, 68-81. Dupas, Pascaline, and Jonathan Robinson, 2011, “Savings Constraints and Microenterprise Development: Evidence from a Field Experiment in Kenya.” NBER Working Paper 14693. Easterly, William and Ross Levine, 1997, “Africa’s Growth Tragedy: Policies and Ethnic Divisions,” Quarterly Journal of Economics 112, 1203-1250. Honohan, Patrick and Thorsten Beck, eds., 2007, Making Finance Work for Africa, World Bank. Jack, William, and Tavneet Suri, 2010, “The Economics of M-PESA,” MIT Sloan Working Paper. Jarotschkin, Alexandra, 2013, “Microfinance in Africa.” Chapter 1 in Thorsten Beack and Samuel Munzele Maimbo, Eds., Financial sector Development in Africa: Opportunities and Challenges, Washington, DC: The World Bank. Kaufmann, Daniel, Aart Kraay, and Massimo Mastruzzi, 2007, “Governance Matters VI: Governance Indicators of 1996-2006,” World Bank Policy Research Working Paper 4280. Leamer, Edward, 1984, “Paths of Development in the 3xn General Equilibrium Model,” UCLA Working Paper 351. Lederman, Daniel, and William F. Maloney, 2008, "In Search of the Missing Resource Curse," Economía 9, 1-58. Levine, Ross, 2005, “Finance and Growth: Theory and Evidence.” In Philippe Aghion and Steven Durlauf (eds.), Handbook of Economic Growth. Amsterdam: Elsevier Science. 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Sachs, Jeffrey D. and Andrew Warner, 2001, “The Curse of Natural Resources,” European Economic Review 45, 827-838. Senbet, Lemma and Isaac Otchere, 2008, “Financial Sector Reforms in Africa: Perspectives on Issues and Policies,” World Bank Volume - Annual Bank Conference on Development Economics, eds. Francois Bourgignon and Boris Pleskovic: 81-119. 24 Table 1 Financial Development by Regions This table reports the evolution of liquid liabilities over GDP and private credit over GDP by regions. The period runs from 2000 to 2011. Only middle and low income countries are considered. Regions correspond to the World Bank classification. The data source is the World Bank Database on Financial Development and Structure (Beck and Demirgüç-Kunt, 2009). Region 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 Liquid Liabilities/GDP East Asia and Pacific 55 57 58 56 57 60 60 62 63 69 71 74 Europe and Central Asia 20 22 24 24 26 29 32 36 39 45 45 45 Latin America and the Caribbean 43 45 46 46 46 46 46 47 48 52 53 54 Middle East and North Africa 57 60 58 60 60 59 63 64 61 79 84 96 South Asia 37 39 41 43 50 50 50 47 50 54 56 58 Sub-Saharan Africa 26 26 27 28 27 27 29 29 30 33 35 37 Private Credit Extended by Deposit Money Banks/GDP East Asia and Pacific 40 40 39 38 39 42 42 44 47 51 52 55 Europe and Central Asia 11 12 13 14 17 20 25 32 42 42 40 40 Latin America and the Caribbean 36 36 36 34 32 32 33 35 38 39 40 41 Middle East and North Africa 32 33 29 29 28 29 32 33 31 35 37 47 South Asia 21 22 22 22 25 29 32 32 36 38 39 40 Sub-Saharan Africa 14 13 14 15 15 15 16 17 18 20 21 22 25 Table 2 Financial Inclusion by Regions This table reports the percentage of adult people (older than 15 years old) having an account at a formal financial institution and a loan from a financial institution by regions. The data correspond to the year 2011. Only middle and low income countries are considered. Regions correspond to the World Bank classification. The data source is the Global Financial Inclusion (Global Findex) Database. Region Account at a formal financial Loan from a financial institution institution (% age 15+) in the past year (% age 15+) East Asia and Pacific 54.9 8.6 Europe and Central Asia 44.9 7.7 Latin America and Caribbean 39.3 7.9 Middle East and North Africa 17.7 5.1 South Asia 33.0 8.7 Sub-Saharan Africa 24.0 4.8 26 Table 3 Mobile Phone Use for Financial Transactions by Regions, 2011 This table reports the percentage of adult people (older than 15 years old) that use mobile telephones to send money, receive money and pay bills. The data correspond to the year 2011. Only middle and low income countries are considered. All countries with available data in these variables are considered in this table. Regions correspond to the World Bank classification. The data source is the Global Financial Inclusion (Global Findex) Database. Region Mobile phone used to Mobile phone used to Mobile phone used to send money (% age 15+) receive money (% age 15+) pay bills (% age 15+) East Asia and Pacific 1.0 1.2 1.3 Europe and Central Asia 2.5 2.7 3.0 Latin America and Caribbean 0.8 1.9 1.8 Middle East and North Africa 1.3 2.4 1.0 South Asia 0.8 1.9 2.1 Sub-Saharan Africa 11.2 14.6 3.0 27 Table 4 Summary Statistics This table reports the mean and standard deviation of all the variables used in the regressions in this study. Middle and Low Income Countries Sub-Saharan Countries (Sub-Saharan excluded) Mean Std. Dev. Mean Std. Dev. Dependent variables Liquid liabilities/GDP 55.4% 32.7% 31.8% 16.8% Private credit/GDP 40.0% 24.7% 19.4% 16.9% Account at a formal financial institution 35.2% 21.5% 21.0% 16.3% Loan from a financial institution 10.1% 6.1% 5.2% 3.2% Mobile phone used to send money 2.3% 4.1% 8.8% 13.2% Mobile phone used to receive money 3.5% 6.1% 11.9% 15.3% Mobile phone used to pay bills 2.5% 4.4% 3.3% 5.1% Explanatory variables Population 50.6 184.1 18.3 27.1 Population density 0.131 0.179 0.090 0.123 Natural resources 0.063 0.385 0.112 0.650 Offshore center 6.5% 24.70% 0.00% 0.00% GDP per capita 2,824 2,444 865 1221 GDP 0.102 0.344 0.012 0.030 Growth GDP per capita 3.1% 2.8% 2.3% 2.2% Consumer price inflation 7.2% 4.2% 8.1% 5.0% KKM Index -0.393 0.612 -0.681 0.633 Manufacturing/GDP 14.7% 7.5% 10.2% 6.6% Secondary/Primary school enrollment 0.670 0.206 0.331 0.163 28 Table 5 Regressions on Financial Development and Financial Inclusion This table presents OLS regressions of liquid liabilities over GDP, private credit over GDP, the percentage of adults with an account at a formal financial institution, and the percentage of adults with a loan from a formal financial institution on the set of country-level variables listed below. This table reports the models for a sample of low- and lower-middle-income countries. ***, **, and * indicate significance at the 1%, 5% and 10% levels, respectively. Liquid Liabilities / GDP Private Credit / GDP Account Loan (1) (2) (3) (4) (5) (6) (7) (8) Ln(Population) 0.0164 0.0236 0.0154 0.0180 0.0116 -0.0029 -0.0057 -0.0100* (0.014) (0.015) (0.011) (0.012) (0.015) (0.014) (0.005) (0.005) Ln(Population Density) 0.0041 0.0211 0.0023 0.0099 0.0081 0.0193 0.0046 0.0039 (0.019) (0.019) (0.015) (0.015) (0.017) (0.015) (0.006) (0.006) Natural Resources -0.2733 -0.0949 -0.3050* -0.1291 0.0032 0.0223 0.0719 0.0911 (0.217) (0.219) (0.170) (0.174) (0.208) (0.183) (0.072) (0.068) Offshore Center 0.1987* 0.2544* 0.1996** 0.2581** (0.117) (0.140) (0.092) (0.111) Ln(GDP per capita) 0.0819** 0.0699* 0.0781*** 0.0420 0.0650* 0.0883*** 0.0019 0.0057 (0.035) (0.040) (0.027) (0.032) (0.033) (0.033) (0.012) (0.012) Growth GDP Per Capita 1.0658 0.4893 2.8844*** 0.8527*** (0.926) (0.736) (0.801) (0.298) Inflation -0.3532 0.1504 0.5018 0.1118 (0.617) (0.490) (0.500) (0.186) KKM Index 0.1198** 0.1208*** 0.1183*** 0.0287* (0.053) (0.042) (0.042) (0.016) Manufacturing/GDP -0.7257** -0.0628 -0.6514** -0.0334 (0.322) (0.256) (0.272) (0.101) Sec./Prim. School Enrollment 0.0347 0.1346 0.0157 -0.0490 (0.138) (0.110) (0.115) (0.043) Sub-Saharan Africa -0.1107** -0.1141* -0.0749* -0.0494 0.0140 0.0302 -0.0522*** -0.0632*** (0.052) (0.061) (0.041) (0.048) (0.050) (0.054) (0.017) (0.020) Constant 0.4562*** 0.6357*** 0.2810*** 0.2696*** 0.2244*** 0.3373*** 0.1302*** 0.1627*** (0.076) (0.120) (0.059) (0.096) (0.075) (0.106) (0.026) (0.039) Observations 75 73 75 73 64 61 64 61 Adjusted R-squared 0.3082 0.3903 0.3663 0.4191 0.0283 0.3072 0.1743 0.3315 Root MSE 0.1756 0.1668 0.1376 0.1325 0.1473 0.1239 0.0512 0.0460 29 Table 6 Regressions on Financial Development and Financial Inclusion for the Sample of Non-Sub-Saharan African Countries This table presents OLS regressions of liquid liabilities over GDP, private credit over GDP, the percentage of adults with an account at a formal financial institution, and the percentage of adults with a loan from a formal financial institution on the set of country-level variables listed below. This table reports the models for a sample of low and middle income non-Sub-Saharan African countries. ***, **, and * indicate significance at the 1%, 5% and 10% levels, respectively. Liquid Liabilities / GDP Private Credit / GDP Account Loan (1) (2) (3) (4) (5) (6) (7) (8) Ln(Population) 0.0246 0.0338 0.0129 0.0252 0.0125 0.0223 -0.0021 -0.0037 (0.020) (0.025) (0.014) (0.016) (0.018) (0.019) (0.006) (0.006) Ln(Population Density) 0.0443 0.0489 0.0375* 0.0220 -0.0021 -0.0045 0.0005 0.0003 (0.032) (0.036) (0.022) (0.023) (0.024) (0.026) (0.008) (0.008) Natural Resources -0.1571 -0.0902 -0.1569** -0.1352* -0.0095 -0.0018 -0.0009 0.0009 (0.103) (0.110) (0.072) (0.069) (0.075) (0.077) (0.024) (0.025) Offshore Center 0.3515** 0.3487** 0.3152*** 0.3423*** -0.0066 0.0060 0.0118 -0.0083 (0.150) (0.174) (0.104) (0.109) (0.147) (0.148) (0.048) (0.047) Ln(GDP per capita) 0.0823* 0.0348 0.0993*** -0.0158 0.1142*** 0.0415 -0.0078 -0.0083 (0.042) (0.062) (0.029) (0.038) (0.030) (0.040) (0.010) (0.013) Growth GDP Per Capita 2.4203 0.2869 -0.1518 0.9145** (1.542) (0.965) (1.109) (0.356) Inflation -1.7581* -0.1919 0.4664 0.2028 (1.004) (0.628) (0.636) (0.204) KKM Index 0.1118 0.2420*** 0.1319* 0.0174 (0.099) (0.062) (0.066) (0.021) Manufacturing/GDP -0.3958 0.3774 0.0793 -0.0532 (0.641) (0.401) (0.415) (0.133) Sec./Prim. School Enrollment 0.0297 0.0952 0.1996 -0.0332 (0.242) (0.151) (0.174) (0.056) Constant 0.5530*** 0.7054*** 0.3985*** 0.3659*** 0.2386** 0.1265 0.1128*** 0.1111** (0.116) (0.189) (0.081) (0.118) (0.097) (0.146) (0.031) (0.047) Observations 77 72 77 72 64 61 64 61 Adjusted R-squared 0.1246 0.1644 0.2582 0.4019 0.1571 0.1971 -0.0697 -0.0128 Root MSE 0.3065 0.3072 0.2139 0.1922 0.1953 0.1891 0.0631 0.0606 30 Table 7 Regressions on Financial Development and Financial Inclusion for the Sample of Sub-Saharan African Countries This table presents OLS regressions of liquid liabilities over GDP, private credit over GDP, the percentage of adults with an account at a formal financial institution, and the percentage of adults with a loan from a formal financial institution on the set of country-level variables listed below. This table reports the models for the sample of Sub-Saharan African countries (including and excluding South Africa). ***, **, and * indicate significance at the 1%, 5% and 10% levels, respectively. Liquid Liabilities / GDP Private Credit / GDP Account Loan (1) (2) (3) (4) (5) (6) (7) (8) Ln(Population) -0.0115 -0.0102 0.0177 0.0237 0.0211 0.0077 -0.0027 -0.0045 (0.012) (0.013) (0.013) (0.014) (0.017) (0.016) (0.004) (0.004) Ln(Population Density) 0.0481*** 0.0458*** 0.0344** 0.0286* 0.0473*** 0.0393** 0.0082** 0.0059 (0.013) (0.012) (0.013) (0.014) (0.015) (0.014) (0.003) (0.004) Natural Resources -0.0892*** -0.0709*** -0.0853*** -0.0580* -0.0488 -0.0432 -0.0152** -0.0146* (0.025) (0.026) (0.026) (0.029) (0.030) (0.030) (0.007) (0.008) Ln(GDP per capita) 0.1326*** 0.0842** 0.1519*** 0.0858** 0.1375*** 0.1208*** 0.0187*** 0.0192* (0.018) (0.031) (0.019) (0.035) (0.023) (0.036) (0.005) (0.009) Growth GDP Per Capita 1.4790* 0.8870 2.5315** 0.3587 (0.836) (0.951) (0.993) (0.259) Inflation -0.3070 -0.4902 0.1562 0.0647 (0.417) (0.474) (0.502) (0.131) KKM Index 0.0790** 0.0727* 0.0418 0.0054 (0.032) (0.037) (0.038) (0.010) Manufacturing/GDP -0.3115 0.0318 -0.0137 0.0670 (0.242) (0.275) (0.290) (0.076) Sec./Prim. School Enrollment 0.1421 0.2289 -0.0194 -0.0388 (0.138) (0.156) (0.149) (0.039) Constant 0.5984*** 0.5761*** 0.3774*** 0.2810** 0.4174*** 0.3643*** 0.1018*** 0.0939*** (0.050) (0.095) (0.052) (0.108) (0.062) (0.109) (0.014) (0.029) Observations 40 40 40 40 36 35 36 35 Adjusted R-squared 0.6686 0.7292 0.6283 0.6505 0.5420 0.6458 0.3755 0.3698 Root MSE 0.0978 0.0884 0.1036 0.1005 0.1114 0.0975 0.0249 0.0254 31 Table 8 Mobile Phone Use in Financial Transactions by Country This table reports the percentages of adult population (older than 15 years old) that use mobile phones to pay bills and receive and send money. The table only includes Sub-Saharan African countries. Mobile phone used to Mobile phone used to Mobile phone used to Country send money receive money pay bills (% age 15+) Angola 11.7 19.3 13.6 Benin 0.2 0.4 0.2 Botswana 5.1 8.0 2.2 Burkina Faso 0.2 0.6 0.3 Burundi 4.0 4.7 0.8 Cameroon 3.3 8.8 0.6 Central African Repub 0.3 1.6 0.2 Chad 5.7 15.5 2.8 Comoros 0.5 3.5 0.3 Congo, Dem. Rep. 1.5 2.0 0.1 Congo, Rep. 20.1 32.0 1.6 Gabon 41.1 46.6 4.9 Ghana 1.0 1.5 0.9 Guinea 3.5 5.7 1.1 Kenya 60.5 66.7 13.4 Lesotho 5.7 6.7 4.6 Liberia 7.3 16.6 5.2 Madagascar 0.8 0.7 0.0 Malawi 0.5 0.7 0.8 Mali 0.3 1.0 0.3 Mauritania 7.1 16.0 7.5 Mauritius 6.8 7.3 1.8 Mozambique 1.0 1.4 1.3 Niger 0.9 2.6 0.4 Nigeria 9.9 11.2 1.4 Rwanda 2.0 2.9 1.1 Senegal 0.5 0.9 0.2 Sierra Leone 1.4 1.9 0.7 Somalia 31.7 32.2 26.2 South Africa 5.4 9.4 4.4 Sudan 30.5 44.7 4.0 Swaziland 16.2 16.4 4.7 Tanzania 14.0 19.6 5.5 Togo 0.2 1.1 0.4 Uganda 20.0 25.2 3.3 Zambia 3.0 3.5 2.4 Zimbabwe 1.5 1.8 2.6 32 Table 9 Regressions on Mobile Phone Penetration This table presents OLS regressions of percentage of people using mobile phone to make financial transactions on the set of country-level variables listed below. This table reports the models for all low and middle income countries. ***, **, and * indicate significance at the 1%, 5% and 10% levels, respectively. (1) (2) (3) (4) (5) (6) % of people using mobile phone to: send money receive money pay bills Ln(Population) 0.0108 0.0092 0.0120 0.0126 0.0009 -0.0015 (0.009) (0.009) (0.011) (0.011) (0.004) (0.004) Ln(Population Density) -0.0036 -0.0043 -0.0081 -0.0101 -0.0057 -0.0071 (0.010) (0.010) (0.012) (0.012) (0.005) (0.004) Natural Resources 0.0706 0.0214 0.1147 0.0114 -0.0263 -0.0572 (0.120) (0.125) (0.148) (0.150) (0.057) (0.053) Ln(GDP per capita) 0.0445** 0.0619*** 0.0492** 0.0764*** -0.0036 0.0039 (0.019) (0.022) (0.024) (0.027) (0.009) (0.009) Growth GDP Per Capita 0.0156 0.3187 0.7780*** (0.548) (0.657) (0.230) Inflation 0.4650 0.2243 0.1129 (0.342) (0.410) (0.144) KKM Index -0.0430 -0.0847** -0.0184 (0.029) (0.035) (0.012) Manufacturing/GDP -0.0353 -0.0682 0.1177 (0.186) (0.223) (0.078) Sec./Prim. School Enrollment 0.0730 0.1091 0.0129 (0.078) (0.094) (0.033) Sub-Saharan Africa 0.0912*** 0.1250*** 0.1111*** 0.1631*** -0.0009 0.0219 (0.029) (0.037) (0.035) (0.044) (0.014) (0.015) Constant -0.0122 -0.1115 -0.0139 -0.1554* 0.0039 -0.0668** (0.044) (0.072) (0.053) (0.087) (0.021) (0.030) Observations 64 61 64 61 64 61 Adjusted R-squared 0.1171 0.1599 0.1304 0.2098 -0.0527 0.2249 Root MSE 0.0852 0.0847 0.1047 0.1015 0.0407 0.0355 33 1 MUS 0.9 CPV 0.8 0.7 Liquid Liabilities / GDP ZAF 0.6 NAM 0.5 BWA KEN GMB 0.4 TGO ETH LSO BENSEN LBR MOZ CIV NGA 0.3 MRT COM TZA SWZ AGO MLI BFA GIN BDI GNB GHA SLE MWI MDG COG ZMB GAB CMR UGA 0.2 SDN NER CAF TCD ZAR 0.1 0 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 Predicted Values MUS 0.8 ZAF 0.7 0.6 CPV Private Credit / GDP 0.5 NAM 0.4 0.3 KEN NGA MRT SEN BWA SWZ TGO BEN 0.2 MOZ CIV ETH MLI BFA LBR AGO BDI COM TZA GMB GHA ZMB NER UGA MWI LSO MDG SDN CMR 0.1 GAB CAF SLE GIN TCDGNB COG ZAR 0 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 Predicted Values Figure 1. Liquid liabilities/GDP and Private Credit/GDP in African countries, actual vs. predicted values (Notes: Negative predicted values were replaced by zero). 34 MUS 0.8 0.7 Account at a formal financial institution (% age 15+) 0.6 ZAF 0.5 KEN AGO MOZ 0.4 RWA NGA GHA BWA 0.3 SWZ COM UGA ZMB 0.2 LBR LSO GAB MRT MWI TZA SLE CMR BFA TGO BEN 0.1 BDI TCD COG MLI SDN SEN MDG CAF ZAR GIN NER 0 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 Predicted Values 0.20 Loan from a financial institution in the past year (% age 15+) 0.15 MUS SWZ 0.10 KEN MWI ZAF UGA RWA MRT AGO COM TZA LBR TCD SLE ZMB MOZ BWA GHA 0.05 CMR BEN TGO MLI SEN BFA LSO COG GABMDG GIN NGA SDN BDIZAR NER CAF 0.00 0.00 0.05 0.10 0.15 0.20 Predicted Values Figure 2. Account at a formal financial institution and loan from a financial institution, actual vs. predicted values. (Notes: Negative predicted values were replaced by zero). 35