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Article

Financial Inclusion and Economic Growth in Sub-Saharan Africa—A Panel ARDL and Granger Non-Causality Approach

by
Meshesha Demie Jima
* and
Patricia Lindelwa Makoni
*
Department of Finance, Risk Management and Banking, University of South Africa, 1 Preller Street, New Muckleneuk, Pretoria 0002, South Africa
*
Authors to whom correspondence should be addressed.
J. Risk Financial Manag. 2023, 16(6), 299; https://doi.org/10.3390/jrfm16060299
Submission received: 1 April 2023 / Revised: 6 June 2023 / Accepted: 6 June 2023 / Published: 12 June 2023
(This article belongs to the Section Economics and Finance)

Abstract

:
Many earlier development finance studies have attempted to assess the relationship between financial inclusion and economic growth. However, the findings of these studies vary from economy to economy and region to region due to various social and economic factors. We, therefore, deemed it pertinent to examine the relationship between financial inclusion and economic growth while further identifying the direction of causality between the two variables in twenty-six (26) Sub-Saharan African (SSA) economies using annual secondary data over the 2000–2019 period. In our paper, we used the principal component analysis (PCA) technique to develop a single composite index to proxy financial inclusion while adopting panel unit root, system generalised method of moment (GMM), and ARDL cointegration tests to assess the stationarity properties, assess the factors that affect economic growth, and examine the long-run relationships between financial inclusion and economic growth, respectively. In addition, a Granger non-causality test is used to verify the direction and magnitude of causality. Our study revealed that financial inclusion and economic growth share a strong long-run relationship and that there is bi-directional causality, indicating synergy between these two variables. In order to ensure sustainable economic growth, we thus recommend that developing countries develop macroeconomic policies that will promote financial inclusion while enhancing the functioning and regulation of the domestic financial markets to ensure that all citizens are catered for in the available instruments, products, and service offerings. Within the same policy framework, efforts must be made to further support productive sectors of the economy to ensure economic growth.

1. Introduction

Contemporary economic theories advocate the importance of finance for inclusive economic growth (see McKinnon 1973; King and Levine 1993; Levine 2005). Financial inclusion is one of the key catalysts for most of the UN Sustainable Development Goals (SDGs) and the AU Agenda 2063. In addition, high-level economic growth is one of the prime objectives of most developing economies, including Sub-Saharan African countries. As a result, a large number of developing economies have prepared a financial inclusion strategy that helps to expand the sources of funding, limits informal financial services, and promotes investment and thereby economic growth (Zins and Weill 2016; Demirgüç-Kunt et al. 2018). An inclusive financial system helps financial services reach the unbanked segments of society and promotes business expansion (Beck et al. 2007; Mehrotra and Yetman 2015; Owen and Pereira 2018; Asante et al. 2023). Access to financial services is critical to mobilising financial resources, promoting investments, and thereby value creation for start-ups and small businesses, with positive spillover effects on socioeconomic development (Park and Mercado 2015; Kim 2016; Nanda and Kaur 2016). Financial inclusion raises household income and thereby improves the economic well-being of households and enhances the business activities of small enterprises (Naceur et al. 2017).
Financial services such as payments, transfers, savings, and credit facilitate business and personal transactions and thus promote economic growth. Bank accounts held in formal financial institutions—such as a commercial bank, credit union, microfinance institution (MFI), or mobile money service provider—allow households and businesses to store, send, and receive money safely and at a low cost (Demirgüç-Kunt et al. 2017; Mehrotra and Yetman 2015). It is therefore necessary to have a well-functioning financial market to achieve sustainable economic growth. Contemporary empirical evidence suggests that the structure of an economy has its own impact on the relationship between financial development and economic growth (Ibrahim and Alagidede 2018; Sohag et al. 2015). In addition, financial development complements economic growth when there are clear channels or linkages and supportive regulatory frameworks. Otchere et al. (2017) argued that financial sector reforms and policy decisions should incline towards an inclusive financial system and not only savings and capital mobilisations.
Unlike other regions, Sub-Saharan Africa has the least developed economies. It is also a region with low levels of financial inclusion, where only 43% of adults have a bank account. This indicates that a large number of adults in the SSA region do not have access to financial services, implying a high level of financial exclusion (Makoni 2014; Demirgüç-Kunt et al. 2018). Given the importance of finance for economic growth, a low level of financial inclusion is identified as one of the reasons for the high levels of poverty and inequality in the region (Park and Mercado 2015). However, the literature revealed a mixed result on the relationship between financial inclusion and economic growth. Some studies found a significant positive relationship between finance and economic growth (Kim et al. 2018; Makina and Walle 2019; Dahiya and Kumar 2020), while others found the opposite (Seven and Yetkiner 2016; van Wyk and Kapingura 2021). On the other hand, several scholars argue that finance promotes economic growth, thus supporting the supply-leading hypothesis (Patrick 1966; Revell and Goldsmith 1970; King and Levine 1993). However, others argue that it is economic growth that will create demand for finance and financial services (Robinson 1979). In addition, there are scholars who argue that there is a synergy between financial inclusion and economic growth (Sethi and Acharya 2018; Chima et al. 2021; Jima and Makoni 2023). Inconsistent findings on the causality between financial inclusion and economic growth in different contexts call for additional research in the area and supplement the few studies undertaken in SSA (An et al. 2021). It is this lack of consensus amongst academicians that has motivated this research with the aim to shed more light on the nexus between financial inclusion and economic growth in the SSA, with a specific interest in the direction of causality between the two variables.
The remainder of this paper is organised as follows: The literature review considers the theories that underpin finance and economic growth, supported by existing empirical evidence. This is followed by a brief discussion on the methodological approach adopted in addressing the burning issue under assessment herein. The results and discussion of findings are laid out in Section 4, while the paper ends with a conclusion and recommendations emanating from this study.

2. Literature Review

2.1. Theoretical Foundation—Finance and Economic Growth

In the old literature of economic theories, there were very few attempts to examine the nexus between finance and economic growth. However, several contemporary economic theories explain the relationship between finance and economic growth. Schumpeter (1911) was the first to examine the link between finance and economic growth. Some of the most common theories related to finance and economic growth include the demand-following hypothesis, the supplying-leading hypothesis, and the law and finance theory. Robinson (1979) was prominent in the demand-following hypothesis and argued that economic growth plays a critical role in realising financial inclusion through enhancing the demand for financial services. Robinson (1979) indicated that, in any case, it is the enterprise that leads finance. Expansion in economic activities leads to a new demand for financial services and an increase in the demand for financial services, which in turn enhances economic growth (Robinson 1979). Several studies tested the demand-following hypothesis and argued that this theory is more effective in developing economies than in the developed world (Naceur and Ghazouani 2007; Samargandi et al. 2014).
Patrick (1966), Revell and Goldsmith (1970), and McKinnon (1973), on the other hand, were the proponents of the supplying-leading hypothesis and advocated the importance of finance for economic growth. In line with this theory, finance promotes innovations and entrepreneurship that enhance economic growth. The financial sector plays an important role in mobilising the financial resources necessary for investment and thereby promoting economic growth. Levine and Zervos (1998) identified three main channels: the level of intermediation, efficiency, and composition, as a means through which finance influences economic growth. In this theory, financial development enhances economic growth by availing financial resources to the economic sector with resource constraints (Hsueh et al. 2013). Patrick (1966) argued that the financial system can influence economic growth in three important ways. First, the financial system stimulates changes in ownership through financial intermediation among the different asset holders. Second, financial institutions promote the transfer of funds and the efficient allocation of resources from relatively low to relatively more productive uses. Third, financial institutions contribute to the rise in the rate of capital accumulation if there exists a convenient environment for business transactions, saving, and investment, which incentivizes individuals and businesses to work, save, and invest. Against this argument, it is possible to conclude that the existence of financial institutions and services precedes realising economic growth (Beck and Levine 2004; Odhiambo 2009; Ibrahim and Alagidede 2018).
In line with the above theories, the causality between financial inclusion and economic growth can be expressed by the supply-leading or demand-following hypotheses. In addition to the above two contrasting theories, there are scholars who argue for the existence of bidirectional causality between financial inclusion and economic growth. As per the bidirectional hypothesis, there is a direct relationship between the two theories, which indicates the complementarity of the supply-leading and demand-following hypotheses (Demetriades and Hussein 1996; Greenwood and Smith 1997; Harrison et al. 1999). Still, others argue for the existence of an independent hypothesis that indicates no causality between financial inclusion and economic growth (Lucas 1988; Stern 1989). On the basis of the above theories, it is possible to conclude that the theories on the causation between finance and economic growth do not apply uniformly to all economies and regions and thus need further investigation.

2.2. Empirical Studies—Financial Inclusion and Economic Growth

Many studies have been undertaken to assess the nexus between financial inclusion and economic growth. However, the findings of the studies vary from economy to economy and region to region due to various social and economic factors. A number of scholars confirmed that a rise in the level of financial inclusion exerts a positive impact on the socioeconomic development of many developing countries (Al-Moulani and Alexiou 2017; Benczúr et al. 2019; Afonso and Blanco-Arana 2022; Asante et al. 2023). Financial inclusion promotes economic growth by enhancing the average productivity of capital, channelling investment funds to economic entities, and increasing savings. Elias and Worku (2015) analysed the causality between economic growth and domestic savings in East African countries and found a significant positive and uni-directional causality for Ethiopia and Uganda. Campos et al. (2012) identified that financial innovation has a positive long-run effect on economic growth in Argentina. Financial inclusion boosts economic growth by enhancing savings and diversifying the sources of finance (Dabla-Norris et al. 2015; Iqbal and Sami 2017; Sharma 2016).
Lenka and Sharma (2017) found a significant positive association between financial inclusion and economic growth, both in the short and long run. Gourène and Mendy (2017) used financial services penetration and use to examine the causality between financial inclusion and economic growth in the West African Economic and Monetary Union (WAEMU) and found no causality at a scale between two and four years. However, there is bi-directional causality between economic growth and financial inclusion when the scale is four to eight years. Makina and Walle (2019) indicate that an inclusive financial system promotes economic growth in Africa. Balele (2019) found a positive correlation between financial inclusion and economic growth, suggesting the need for the SSA countries to focus on financial service expansion and leveraging innovation. Ibrahim and Olasunkanmi (2019) and Nanziri (2016) argued that the sustainability of economic growth can be realised only if a large proportion of the population has access to formal financial services. Dahiya and Kumar (2020) found a significant positive relationship between finance and economic growth, promoting financial service expansion. Kim et al. (2018) found that, despite disparities in the level of financial inclusion across the Organization of Islamic Countries (OIC), financial inclusion promotes economic growth.
On the other hand, there are scholars who have found a negative relationship between financial inclusion and economic growth. Seven and Yetkiner (2016) investigated the role of financial inclusion in economic growth in low-, middle-, and high-income countries and found a significant negative relationship in high-income countries. van Wyk and Kapingura (2021) found that, in the long run, saving has a negative effect on economic growth in South Africa because of the low rate of domestic savings and the country’s greater reliance on foreign savings in the form of foreign direct investment (FDI), official development assistance (ODA), and cross-border bank flows. In addition, the Granger causality tests revealed that the relationship runs from economic growth to gross domestic savings, promoting the importance of raising investment if the country is to achieve sustainable economic growth. Kapingura et al. (2022) assessed the effect of financial sector development on macroeconomic volatility in the Southern African Development Community (SADC) region and found that banking sector indicators and capital market development have a significant negative effect on economic growth volatility, suggesting that a well-developed capital market and banking sector are important to mitigate macroeconomic volatility.
Other contemporary scholars have argued that there is a non-linear inverted U-shape relationship between finance and growth, indicating the existence of a turning point in the effect of finance on investment and consumption loans. While investment loans benefit economic growth, consumption loans impede it. Sahay et al. (2015) found a positive bell-shaped relationship between financial depth and economic growth, suggesting that there is a threshold where the returns to growth fall as financial depth increases. Cecchetti and Kharroubi (2012) identified that the turning point of growth in terms of private credit is close to 90% of GDP. Law and Singh (2014) identified that finance promotes growth until a threshold of finance to GDP ratio reached about 88%. Otherwise, the impact of finance on growth will turn negative as financial inclusion exceeds the threshold. Shahbaz et al. (2017) identified a nonlinear relationship between financial development and economic growth in India and argued that only negative shocks to finance have impacts on economic growth.
Several other researchers found a bi-directional causality between financial inclusion and economic growth in different countries and regions, indicating the complementarity of the ‘demand-following’ and ‘supply-leading’ hypotheses and encouraging regulators to follow a holistic approach while undertaking a financial reform that promotes economic developments (Chima et al. 2021; Arayssi et al. 2019; Fan et al. 2018). Sethi and Acharya (2018) indicated the existence of a bi-directional causality between financial inclusion and economic growth in both developed and developing economies. Odhiambo (2009), on the other hand, found unidirectional causality and argued that economic growth Granger causes financial development, so as to reduce poverty in South Africa. Ganti and Acharya (2017) identified that financial inclusion creates more output in the case of supply-leading than demand-following hypotheses.
The empirical evidence above suggests that there is variation in the relationship between financial inclusion and economic growth. Some of the studies support the supply-leading hypothesis, while others promote the demand-following theory. In addition, some of the studies concluded that a significant negative relationship exists between the two variables, while others support a significantly positive relationship. Other studies still indicated that financial inclusion has a positive influence on the performance of the economy up to a certain level, which also varies from economy to economy and region to region. Furthermore, there is variation in the direction of causality between financial inclusion and economic growth. It is, thus, pertinent to examine the nexus between financial inclusion and economic growth and identify policy frameworks that will help enhance investment opportunities and economic growth in developing economies.

3. Methods and Data

This research applied a quantitative approach, wherein an econometric technique was used to analyse the nexus between financial inclusion and economic growth. This study employed panel data analysis techniques on the annual secondary data of twenty-six (26) selected Sub-Saharan African (SSA) countries sourced from the databases of the World Bank (WB) and the International Monetary Fund (IMF), respectively, spanning 20 years over the 2000–2019 period. The SSA countries that are included in this study are Angola, Botswana, Burundi, Cameron, Chad, the Democratic Republic of Congo, Equatorial Guinea, Ethiopia, Gabon, Ghana, Guinea, Kenya, Malawi, Mauritius, Mozambique, Namibia, Niger, Nigeria, Rwanda, Senegal, Sierra Leone, South Africa, Tanzania, Togo, Uganda, and Zambia. Selection of these countries was made based on the geographical distributions of the countries (East, West, Central, and South regions), income categories (low and middle income), and availability of complete data for the period under review. As such, the eventual sample of 26 countries was deemed representative of the 48 economies that make up the SSA region. As a pre-diagnostic check, the data were examined for structural breaks, and we found that there was a structural change in the dataset during the year 2007, the period of the global financial crisis.
Earlier studies used several indicators to measure financial inclusion, categorised into three dimensions: accessibility, availability, and usage. The literature indicates that the application of an individual indicator may lead to partial information and misleading conclusions, hence the proposal of a composite financial inclusion index (Makina and Walle 2019; Jungo et al. 2022; Dabla-Norris et al. 2015). Accordingly, while constructing a composite index to proxy financial inclusion (FI), this study applied the variables reflected in Table 1 below.
Similarly, various economic growth indicators have been used, including GDP growth rate, GDP per capita, and real GDP per capita (Jungo et al. 2022; Evans and Adeoye 2016; Makina and Walle 2019). However, consistent with the research objective, this study applied LnGDP per capita as a proxy for economic growth (EG). In addition, several works indicated that there are various factors that affect the relationship between financial inclusion and economic growth, and hence this research considered some of these factors as control variables, which include inflation (Inf), financial stability as proxied by Z-Score (FS), technology as a factor of internet expansion (IU), exchange rate (EXR), real interest rate (RIR), and institutional quality (IQI) as the average of the six world governance indicators, namely government effectiveness, regulatory quality, the rule of law, control of corruption, voice and accountability, and political stability (Cooper and Barro 1997; Girma and Shortland 2008; Law and Habibullah 2009; Naceur et al. 2017; Makina and Walle 2019).

3.1. Composite FI Index Development—Principal Component Analysis (PCA)

A principal component analysis (PCA) is used to construct a composite index for financial inclusion to address the multidimensionality of the variable and avoid the possibility of multicollinearity. While developing the composite index, six financial inclusion indicators were selected from its three broad dimensions: accessibility (number of accounts per 1000 adults [NAC]), availability (number of ATMs [NAT] and branches [NBR] per 1000 km2 and the geographic spreads of ATMs [DAT] and branches of commercial banks [BRA] per 100,000 adults), and usage (credit to the private sector as a percentage of GDP [CPS]) (Demirgüç-Kunt et al. 2017; Dabla-Norris et al. 2015; Makina and Walle 2019; Jima and Makoni 2023). A two-stage approach is used to develop the index, with the data series being first normalised with a min–max approach with the aid of the equation below.
F i , t = K i , t M i n i , t M a x i , t M i n i , t
where Fi,t—represents the adjusted indicator i at time t, and Ki,t individual FI indicators. Maxi,t is the maximum value, and Mini,t is the minimum value of each indicator, respectively.
Secondly, we computed the Eigenvalues for the indicators and developed our composite index. In this case, this study used the equation stated below to construct the composite index to proxy financial inclusion.
F I i = W i 1 Z 1 + W i 2 Z 2 + W i 3 Z 3 + . + W i n Z n
where FIi = estimate of the ith factor of financial inclusion; Wi = weight of the score coefficient; Zi = individual variables of interest (NAC, NAT, NBR, DAT, BRA, CPS); and n = number of variables.

3.2. Econometric Model Specification

A panel unit root test is used to ascertain the stationarity of the data and avoid possible serial correlation. Subsequently, a panel ARDL cointegration test is employed to assess the short-run and long-run relationship between financial inclusion and economic growth. In addition, a Granger non-causality test is applied to examine the existence of causality and identify its direction. The tests and estimation equations of this study are presented in the next section.

3.2.1. Unit Root and Serial Correlation Tests

In empirical research, it is necessary to avert spurious outcomes. Spurious regression leads to fallacious results when the factors of regression lack constant means and variance (Gujarati 2003). Although panel unit root tests are usually undertaken to assess the stationarity properties of variables in econometrics, it has been found that a dynamic panel data approach is effective regardless of whether the variables under assessment are integrated in order zero, I(0), or order one, I(1), respectively. However, none of the variables should be in the second difference (Pesaran and Smith 1995). In order to undertake the panel unit root tests, this study employed the model specified as follows:
Y i , t = α i + δ Y i , t 1 + j = 1 n ρ i Y i , t q + z t i γ + u i , t
where Δ is the first difference factor for country i for t = 1, …, n periods. H 0 : δ i = δ = 0 is the panel unit root test null hypothesis for all i, assuming all series are stationary.

3.2.2. Relationship between Financial Inclusion and Economic Growth

A dynamic system panel generalised method of momentum (GMM) is the instrumental-variable technique used to examine the relationship between financial inclusion (FI) and economic growth (EG). In this model, selected macro and micro factors are used to capture and control their influence on the relationship between the two variables. In line with the stated model, the estimation equation is stated as shown below.
E G i , t = α + β 1 E G i , t 1 + β 2 F I i , t + β i i = 1 n X i , t + S B i , t + e i t
where EGi,t is the dependent variable; EG (lag of economic growth per capita); and FI (PCA-constructed financial inclusion composite index) for country i at time t; βi is a coefficient; Xi,t stands for the various control variables; SB is a dummy variable representing a structural break; e i t is the random error term.

3.2.3. Panel ARDL Cointegration Test

A panel ARDL cointegration test is applied to determine the presence of a long-run relationship between the key variables of financial inclusion and economic growth (FI and EG). It uses both lagged and differenced variables and provides information about the nature of the association and the speed of adjustment to equilibrium after every shock. In this model, a dummy variable (SB) is used to capture the impacts of a structural break. Consistent with the nature of the data, this study applied the Mean Group (MG) and Pooled Mean Group (PMG) estimators (Pesaran et al. 1999). Accordingly, the econometric model is specified as follows:
E G i , t = Π + Θ i [ E G i , t 1 λ 2 F I i , t 1 λ 3 S B 1 i , t 1 ] + j = 1 p 1 π i j E G i , t j + i = 0 n 1 α i l F I i , t l + i = 0 n 1 i m S B 1 i , t m + i + e i t
where Θ i = −(1 − αi) a speed adjustment coefficient; λ 2 = vector of the long-run relationships; ECT—the error correction term, indicated in [ ]; π i j ,   α i l , and i m represent the short-term coefficient; represents the first difference operator; EGi,t, is the dependent variable; EG represents economic growth per capita and FI is the PCA-constructed financial inclusion composite index for country i at time t; SB is a dummy variable representing a structural break; e i t is the random error term.

3.2.4. Granger Non-Causality Test

A Granger non-causality test assesses the magnitude and direction of causality between financial inclusion and economic growth, respectively. In theory, a Granger non-causality test may yield three possible outcomes: uni-directional, bi-directional, or absence of causality. For the purposes of this study, we ran the below-specified models to check for causality between financial inclusion and economic growth, respectively:
F I i . t = i + k = 1 K i , k F I i , t k + k = 1 K β i , k E G i , t 1 + ε i , t
E G i . t = i + k = 1 K i , k E G i , t k + k = 1 K β i , k F I i , t 1 + ε i , t
where FI and EG are the variables of interest, being financial inclusion and economic growth, respectively; i is the country; k is the number of lags and t ∈ [I, T]; β and are coefficients; εit is the random error term.

4. Findings and Discussion

4.1. Summary of the Descriptive Statistics

In order to observe the level of disparity across the data, we summarised the results of descriptive statistical analysis for the variables that are used in this study in Table 2 below.
Summary of the statistical analysis above shows that there is a slight variation in the level of financial inclusion and economic growth across the selected SSA countries, as indicated by the standard deviations, and hence it is important to assess and examine the relationship between the two variables.

4.2. Financial Inclusion Index

In line with our earlier discussion on the methodological approaches for this paper, we computed the Eigenvalues of the various financial inclusion indicators using the PCA technique, as shown in Table 3.
Table 3 above shows that the first two principal components explain the maximum variance (91.5%), with an eigenvalue above one (1). The rule of thumb is that components with an eigenvalue above one and a variance greater than the average can be taken for estimation. It is thus possible to conclude that the first two principal components are more relevant to developing the composite index for financial inclusion.
Based on the results shown in Table 4 below, the first two components are used to construct the financial inclusion index for the selected SSA countries. Subsequently, the equation below is used to construct the composite financial inclusion index.
FI = ((0.452 *NAC) + (0.429 *BRA) + (0.383 *NAT) + (0.367 *CPS) + (0.412 *DAT) + (0.400 *NBR)) + ((−0.021 *NAC) + (0.032 *BRA) + (0.528 *NAT) + (0.504 *CPS) + (−0.456 *DAT) + (−0.509 *NBR))
where FI is the financial inclusion index, NAC represents the number of deposit accounts per 100,000 of the population (access), BRA measures the number of branches per 100,000 of the population (access), NAT is the number of ATMs per 100,000 of the adult population (access), CPS measures private domestic credit gauged by GDP (usage), DAT is the number of ATMs per 1000 km2 (availability), and NBR is the number of branches per 1000 km2 (availability).

4.3. Panel Unit Root Tests

Our data were tested for the presence of unit roots using the Levin–Lin–Chu (LLC), Im–Pesaran–Shin (IPS), and Breitung and Pesaran’s CIPS techniques. The results of the various unit root tests are reflected in Table 5 below. The two-generation panel unit root tests proved that the variables are stationary. However, the regression results showed a mixed order of integration, indicating that the panel ARDL cointegration test is appropriate for this study.

4.4. Panel GMM Estimation Results

The panel system GMM estimation results of this study revealed that there is a strong positive relationship between financial inclusion and economic growth. Table 6 below exhibits the econometric analysis results of this study.
On the basis of the econometric analysis results of this study, in addition to financial inclusion, other macro- and microeconomic factors such as financial stability, inflation, and technology play an important role in promoting economic growth in Sub-Saharan African economies. Given the above results, further effort is made below to confirm whether there is a long-run relationship between financial inclusion and economic growth using the ARDL technique.

4.5. Panel ARDL Cointegration Tests

Prior to undertaking the cointegration tests, this study assessed the optimal lag lengths of the panel and the variables. Using the unrestricted error correction model (UECM) and information criterion, the optimal lag lengths of the variables and the models are (EG (1) and FI (0)), i.e., (1, 0). Subsequently, a panel ARDL cointegration test was conducted using the Mean Group (MG) and the Pooled Mean Group (PMG) estimators, and the Hausman test was applied to select between the two estimators. The overall results of the tests revealed the existence of long-run cointegration with slight variation across the outputs of the estimators. Table 7 below shows the regression results for the two estimators.
Table 7 above also shows that the Hausman test, which helps to determine whether there is a significant difference between MG and PMG estimators, confirmed that the PMG is more efficient and consistent compared to the MG (Hausman 1978). The output of the pooled mean group (PMG) estimator indicates long-run cointegration between the variables at the 5% level of significance. In addition, the error correction term and the short- and long-run coefficients are significant at 5%, indicative of a strong cointegration between financial inclusion and economic growth, and any deviation from equilibrium is corrected at an adjustment speed of around 37%.
Moreover, regardless of the estimators applied, financial inclusion has a significant negative influence on economic growth in the short run. This result is consistent with other scholars who found a significant negative relationship between these variables in the short run (Seven and Yetkiner 2016; Law and Singh 2014; Gourène and Mendy 2017; Collins and Ng’weno 2018; van Wyk and Kapingura 2021). Law and Singh (2014) and Gourène and Mendy (2017) argued that one of the reasons for the short-run negative relationship may be due to the high inequality in the regions, the low level of domestic saving, and a high dependency on foreign capital sources. A low level of financial inclusion and a high concentration of per capita income among a small group of people may expose the financial sector to more economic crises rather than growth. Although financial services have expanded over the past years, there is no clear evidence that shows financial access has improved the lives and per capita income of the masses (Collins and Ng’weno 2018). Instead, it raises the wealth of a few rich individuals, who spend their funds in the short run. In addition, the expansion of bank accounts did not have a significant effect on savings, as it is difficult to predict how households would use their income (Dupas et al. 2018; Kim et al. 2018).
Also, in Table 7 above, the application of a dummy variable to capture a structural break during the period under assessment had no significant impact on the relationship between the two variables in the long run. However, the structural change did exert an impact in the short run, indicating that the global financial crisis of 2007–2008 negatively affected economic growth in the short run. In addition, the structural change brought a slight difference in the magnitude of the coefficients, which shows that any structural change in the economy will have its own implications on the relationship between the financial system and economic growth.
On the other hand, this study revealed a significant positive long-run relationship between financial inclusion and economic growth. This indicates that inclusive finance for the marginalised population and economic growth move together, which is consistent with the findings of other scholars (Kim et al. 2018; Ali and Khan 2020; Fanta and Makina 2019). On the basis of the above findings, it is possible to conclude that financial inclusion will raise individual participation in the economy and thereby economic growth in the SSA countries. It is, therefore, critical for policymakers and regulators to develop and introduce proper strategies, policies, and regulations that enhance and promote financial inclusion in the region. In order to identify the direction of causality, it is appropriate to conduct a Granger non-causality test.

4.6. Panel Granger Non-Causality Tests

Once the existence of a long-run relationship is ascertained between financial inclusion (FI) and economic growth (EG), it is logical to assess the causalities between FI and EG and identify the directions of causality. Accordingly, the results of the Granger non-causality tests show that there is a causal relationship between financial inclusion and economic growth. A summary of the Granger non-causality tests is presented in Table 8 below.
Wald statistic (Juodis et al. 2021) and Z-bar statistic (Dumitrescu and Hurlin 2012) causality analysis results above indicated that financial inclusion Granger causes economic growth at a 5% level of significance, indicating the existence of causality that runs from financial inclusion to economic growth. In the same manner, the null hypothesis that economic growth does not (Granger) cause financial inclusion is rejected at a 5% level of significance, indicating the existence of causality that runs from financial inclusion to economic growth, implying complementarity. Lewis (1955) was the first to recognise the existence of a bi-directional causality between financial inclusion and economic growth. Several other studies also suggested this type of retroactivity and supported the argument of a two-way assertion (Sharma 2016; Okpara et al. 2018; Nayak and Yingnan 2019). On the basis of the above findings, it is logical to argue that the SSA countries should follow a holistic approach and adopt policies and strategies that promote synergy and, thereby, sustainable economic growth in the region.

5. Conclusions and Recommendations

Based on the overall results of this paper as derived from the panel ARDL cointegration and the Granger non-causality tests, we found that there is a positive and significant long-run relationship between financial inclusion and economic growth. We also conclude that there is bi-directional causality between financial inclusion and economic growth, indicating synergy and complementarity, similar to the work of Chima et al. (2021). This implies that financial services expansion enhances economic performance and contributes towards achieving sustainable economic growth and development in the SSA countries. Likewise, the growing needs of the productive sectors of the economy push up the demand for access to financial services. It is, therefore, important to expand the availability, accessibility, and affordability of formal financial products and services to all citizens of a country, regardless of their economic standing, so as to realise the UN sustainable development goals and the AU 2063 agenda in the region on financial inclusion and economic growth.
One of the limitations of this study is that it generalised the relationship between financial inclusion and economic growth across the SSA region. However, it is also possible to observe the relationship between the two variables within individual country contexts since levels of economic and financial development vary. As such, we suggest that future studies consider undertaking comparative analysis to determine what the effect of other individual factors on financial inclusion and economic growth may be. In addition, our paper only addressed one facet of the macroeconomic puzzle, and in the future, it will be important to acknowledge the role of financial inclusion in income inequality and economic growth across the region.

Author Contributions

Conceptualization, M.D.J. and P.L.M.; formal analysis, M.D.J.; methodology, M.D.J.; investigation, M.D.J.; data curation, M.D.J. and P.L.M.; project administration, P.L.M.; software, M.D.J.; supervision, P.L.M.; validation, P.L.M.; writing—original draft preparation, M.D.J.; writing—review and editing, P.L.M.; supervision, P.L.M. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding. The APC was funded by the University of South Africa.

Data Availability Statement

Publicly available datasets were analyzed in this study. This data can be found here: https://databank.worldbank.org/source/global-financial-inclusion (accessed on 10 June 2023) and https://databank.worldbank.org/source/world-development-indicators (accessed on 10 June 2023).

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Afonso, António, and M. Carmen Blanco-Arana. 2022. Financial and economic development in the context of the global 2008–09 financial crisis. International Economics 169: 30–42. [Google Scholar] [CrossRef]
  2. Ali, Jamshed, and Muhammad Arshad Khan. 2020. Micro and macro-financial inclusion and their impacts on economic growth: Evidence from Asian economies with alternative approaches. International Transaction Journal of Engineering, Management, and Applied Sciences and Technologies 11: 1–15. [Google Scholar] [CrossRef]
  3. Al-Moulani, Ali J., and Constantinos Alexiou. 2017. Banking sector depth and economic growth nexus: A comparative study between the natural resource-based and the rest of the world’s economies. International Review of Applied Economics 31: 625–50. [Google Scholar] [CrossRef]
  4. An, Hui, Qianmiao Zou, and Mohamed Kargbo. 2021. Impact of financial development on economic growth: Evidence from Sub-Saharan Africa. Australian Economic Papers 60: 226–60. [Google Scholar] [CrossRef]
  5. Arayssi, Mahmoud, Ali Fakih, and Mohamad Kassem. 2019. Government and Financial Institutional Determinants of Development in MENA Countries. Emerging Markets Finance and Trade 55: 2473–96. [Google Scholar] [CrossRef]
  6. Asante, Grace Nkansa, Paul Owusu Takyi, and Gideon Mensah. 2023. The impact of financial development on economic growth in sub-Saharan Africa. Does institutional quality matter? Development Studies Research 10: 2156904. [Google Scholar] [CrossRef]
  7. Balele, Nguling’wa Philip. 2019. The impact of financial inclusion on economic growth in Sub-Saharan Africa. Journal of Applied Economics and Business 7: 51–68. Available online: http://www.aebjournal.org/articles/0704/070404.pdf (accessed on 20 January 2023).
  8. Beck, Thorsten, and Ross Levine. 2004. Stock markets, banks, and growth: Panel evidence. Journal of Banking & Finance 28: 423–42. [Google Scholar] [CrossRef] [Green Version]
  9. Beck, Thorsten, Asli Demirgüç-Kunt, and Ross Levine. 2007. Finance, inequality and the poor. Journal of Economic Growth 12: 27–49. [Google Scholar] [CrossRef]
  10. Benczúr, Péter, Stelios Karagiannis, and Virmantas Kvedaras. 2019. Finance and economic growth: Financing structure and non-linear impact. Journal of Macroeconomics 62: 103048. [Google Scholar] [CrossRef]
  11. Campos, Nauro F., Menelaos G. Karanasos, and Bin Tan. 2012. Two to tangle: Financial development, political instability and economic growth in Argentina. Journal of Banking & Finance 36: 290–304. [Google Scholar] [CrossRef] [Green Version]
  12. Cecchetti, Stephen G., and Enisse Kharroubi. 2012. Reassessing the Impact of Finance on Growth. BIS Working Paper No. 381. Available online: https://ssrn.com/abstract=2117753 (accessed on 24 February 2023).
  13. Chima, Menyelim M., Abiola Ayopo Babajide, Alex Adegboye, Segun Kehinde, and Oluwatobi Fasheyitan. 2021. The Relevance of Financial Inclusion on Sustainable Economic Growth in Sub-Saharan African Nations. Sustainability 13: 5581. [Google Scholar] [CrossRef]
  14. Collins, Daryl, and Amolo Ng’weno. 2018. Do financial inclusion efforts really have an impact on poverty? Stanford Social Innovation Review. [Google Scholar] [CrossRef]
  15. Cooper, Richard N., and Robert J. Barro. 1997. Determinants of Economic Growth: A Cross-Country Empirical Study. Foreign Affairs 76: 154. [Google Scholar] [CrossRef] [Green Version]
  16. Dabla-Norris, Era, Yan Ji, Robert M. Townsend, and Filiz D. Unsal. 2015. Identifying Constraints to Financial Inclusion and Their Impact on GDP and Inequality: A Structural Framework for Policy. IMF Working Paper 22. Washington, DC: IMF. Available online: https://www.imf.org/en/Publications/WP/Issues/2016/12/31/Identifying-Constraints-to-Financial-Inclusion-and-Their-Impact-on-GDP-and-Inequality-A-42649 (accessed on 22 February 2022).
  17. Dahiya, Suman, and Manoj Kumar. 2020. Linkage between Financial Inclusion and Economic Growth: An Empirical Study of the Emerging Indian Economy. Vision: The Journal of Business Perspective 24: 184–93. [Google Scholar] [CrossRef]
  18. Demetriades, Panicos O., and Khaled A. Hussein. 1996. Does financial development cause economic growth? Time-series evidence from 16 countries. Journal of Development Economics 51: 387–411. [Google Scholar] [CrossRef]
  19. Demirgüç-Kunt, Asli, Leora Klapper, and Dorothe Singer. 2017. Financial Inclusion and Inclusive Growth: A Review of Recent Empirical Evidence. Policy Research Working Paper; No. 8040. Washington, DC: World Bank. Available online: https://openknowledge.worldbank.org/handle/10986/26479 (accessed on 22 February 2022).
  20. Demirgüç-Kunt, Asli, Leora Klapper, Dorothe Singer, Saniya Ansar, and Jake Hess. 2018. The Global Findex Database 2017: Measuring Financial Inclusion and the Fintech Revolution. Washington DC: World Bank. Available online: http://documents.worldbank.org/curated/en/332881525873182837/pdf/126033-PUB-PUBLIC-pubdate-4-19-2018.pdf (accessed on 17 May 2021).
  21. Dumitrescu, Elena-Ivona, and Christophe Hurlin. 2012. Testing for Granger non-causality in heterogeneous panels. Economic Modelling 29: 1450–60. [Google Scholar] [CrossRef] [Green Version]
  22. Dupas, Pascaline, Dean Karlan, Jonathan Robinson, and Diego Ubfal. 2018. Banking the Unbanked? Evidence from Three Countries. American Economic Journal: Applied Economics 10: 257–97. [Google Scholar] [CrossRef] [Green Version]
  23. Elias, Samuel, and Abebe Worku. 2015. Causal Relationship between Gross Domestic Saving and Economic Growth in East Africa: Evidence from Ethiopia, Uganda and Kenya. Journal of Agriculture and Social Research 15: 2. Available online: https://www.ajol.info/index.php/jasr/article/download/166717/156156 (accessed on 16 June 2022).
  24. Evans, Olaniyi, and Babatunde Adeoye. 2016. Determinants of financial inclusion in Africa: A dynamic panel data approach. University of Mauritius Research Journal 22: 310–36. [Google Scholar]
  25. Fan, Jiao-Jiao, Ruzhi Xu, Chi Wei Su, and Qing-Hua Shi. 2018. Demand-following or supply-leading? Trade openness and financial development in China. The Journal of International Trade & Economic Development 27: 314–32. [Google Scholar] [CrossRef]
  26. Fanta, Ashenafi Beyene, and Daniel Makina. 2019. The Relationship Between Technology and Financial Inclusion. In Extending Financial Inclusion in Africa. Amsterdam: Elsevier, pp. 211–30. [Google Scholar] [CrossRef]
  27. Ganti, Subrahmanyam, and Debashis Acharya. 2017. Financial Inclusion Fosters Growth: Simple Multiplier and “AK” Growth Model Analysis. Universal Journal of Accounting and Finance 5: 55–59. [Google Scholar] [CrossRef]
  28. Girma, Sourafel, and Anja Shortland. 2008. The political economy of financial development. Oxford Economic Papers 60: 567–96. [Google Scholar] [CrossRef]
  29. Gourène, Grakolet Arnold Zamereith, and Pierre Mendy. 2017. Financial Inclusion and Economic Growth in WAEMU: A Multi-scale Heterogeneity Panel Causality Approach. Munich Personal RePEc Archive. Available online: https://mpra.ub.uni-muenchen.de/82251/1/MPRA_paper_82251.pdf (accessed on 3 February 2023).
  30. Greenwood, Jeremy, and Bruce D. Smith. 1997. Financial markets in development, and the development of financial markets. Journal of Economic Dynamics and Control 21: 145–81. [Google Scholar] [CrossRef] [Green Version]
  31. Gujarati, Gujarati, ed. 2003. Econometrics by Example. Available online: http://zalamsyah.staff.unja.ac.id/wp-content/uploads/sites/286/2019/11/7-Econometrics-by-Example-Gujarati.pdf (accessed on 11 February 2023).
  32. Harrison, Paul, Oren Sussman, and Joseph Zeira. 1999. Finance and growth: Theory and new evidence, Federal Reserve Board. Finance and Economics Discussion Paper 35: 1–37. [Google Scholar]
  33. Hausman, Jerry A. 1978. Specification Tests in Econometrics. Econometrica 46: 1251–71. [Google Scholar] [CrossRef] [Green Version]
  34. Hsueh, Shun-Jen, Yu-Hau Hu, and Chien-Heng Tu. 2013. Economic growth and financial development in Asian countries: A bootstrap panel Granger causality analysis. Economic Modelling 32: 294–301. [Google Scholar] [CrossRef]
  35. Ibrahim, Abbas Umar, and Aderonke Folashade Olasunkanmi. 2019. Financial Inclusion: Prospects and Challenges in the Nigerian Banking Sector. European Journal of Business and Management 11: 40–47. [Google Scholar] [CrossRef]
  36. Ibrahim, Muazu, and Paul Alagidede. 2018. Nonlinearities in financial development–economic growth nexus: Evidence from sub-Saharan Africa. Research in International Business and Finance 46: 95–104. [Google Scholar] [CrossRef]
  37. Iqbal, Badar Alam, and Sahista Sami. 2017. Role of banks in financial inclusion in India. Contaduría y administración 62: 644–56. [Google Scholar] [CrossRef] [Green Version]
  38. Jima, Meshesha Demie, and Patricia Lindelwa Makoni. 2023. Causality between Financial Inclusion, Financial Stability and Economic Growth in Sub-Saharan Africa. Sustainability 15: 1152. [Google Scholar] [CrossRef]
  39. Jungo, João, Mara Madaleno, and Anabela Botelho. 2022. The Effect of Financial Inclusion and Competitiveness on Financial Stability: Why Financial Regulation Matters in Developing Countries? Journal of Risk and Financial Management 15: 122. [Google Scholar] [CrossRef]
  40. Juodis, Artūras, Yiannis Karavias, and Vasilis Sarafidis. 2021. A homogeneous approach to testing for Granger non-causality in heterogeneous panels. Empirical Economics 60: 93–112. [Google Scholar] [CrossRef]
  41. Kapingura, Forget Mingiri, Nwabisa Mkosana, and Suhal Kusairi. 2022. Financial sector development and macroeconomic volatility: Case of the Southern African Development Community region. Cogent Economics & Finance 10: 2038861. [Google Scholar] [CrossRef]
  42. Kim, Dai-Won, Jung-Suk Yu, and M. Kabir Hassan. 2018. Financial inclusion and economic growth in OIC countries. Research in International Business and Finance 43: 1–14. [Google Scholar] [CrossRef]
  43. Kim, Jong-Hee. 2016. A Study on the Effect of Financial Inclusion on the Relationship between Income Inequality and Economic Growth. Emerging Markets Finance and Trade 52: 498–512. [Google Scholar] [CrossRef]
  44. King, Robert G., and Ross Levine. 1993. Finance and Growth: Schumpeter Might Be Right. The Quarterly Journal of Economics 108: 717–37. [Google Scholar] [CrossRef]
  45. Law, Siong Hook, and Muzafar Shah Habibullah. 2009. The determinants of financial development: Institutions, openness and financial liberalisation. South African Journal of Economics 77: 45–58. [Google Scholar] [CrossRef]
  46. Law, Siong Hook, and Nirvikar Singh. 2014. Does too much finance harm economic growth? Journal of Banking & Finance 41: 36–44. [Google Scholar] [CrossRef] [Green Version]
  47. Lenka, Sanjaya Kumar, and Ruchi Sharma. 2017. Does Financial Inclusion Spur Economic Growth in India? The Journal of Developing Areas 51: 215–28. [Google Scholar] [CrossRef]
  48. Levine, Ross. 2005. Chapter 12 Finance and growth: Theory and evidence. In Handbook of Economic Growth. Edited by Philippe Aghion and Steven N. Durlauf. Amsterdam: Elsevier Science. [Google Scholar] [CrossRef]
  49. Levine, Ross, and Sara Zervos. 1998. Stock markets, banks, and economic growth. American Economic Review 88: 537–58. Available online: https://www.jstor.org/stable/116848 (accessed on 11 January 2021).
  50. Lewis, W. Arthur. 1955. Theory of Economic Growth. London: Allen and Unwin Ltd. [Google Scholar] [CrossRef]
  51. Lucas, Robert E. 1988. On the mechanics of economic development. Journal of Monetary Economics 22: 3–42. [Google Scholar] [CrossRef]
  52. Makina, Daniel, and Yabibal M. Walle. 2019. Financial inclusion and economic growth: Evidence from a panel of selected African countries. Extending Financial Inclusion in Africa 9: 193–210. [Google Scholar] [CrossRef]
  53. Makoni, Patricia Lindelwa. 2014. From financial exclusion to financial inclusion through microfinance: The case of rural Zimbabwe. Corporate Ownership and Control 11: 447–55. [Google Scholar] [CrossRef] [Green Version]
  54. McKinnon, Ronald. 1973. Money and Capital in Economic Development. Washington DC: The Brookings Institution. Available online: https://www.brookings.edu/book/money-and-capital-in-economic-development/ (accessed on 4 March 2021).
  55. Mehrotra, Aaron, and James Yetman. 2015. Financial Inclusion—Issues for Central Banks. BIS Quarterly Review. pp. 83–96. Available online: https://papers.ssrn.com/sol3/papers.cfm?Abstract-id=2580310 (accessed on 17 January 2022).
  56. Naceur, Sami Ben, Adolfo Barajas, and Alexander Massara. 2017. Can Islamic Banking Increase Financial Inclusion? In Handbook of Empirical Research on Islam and Economic Life. Edward Elgar Publishing: pp. 213–52. Available online: https://www.elgaronline.com/display/edcoll/9781784710729/9781784710729.00017.xml (accessed on 11 February 2023). [CrossRef]
  57. Naceur, Sami Ben, and Samir Ghazouani. 2007. Stock Markets, Banks, and Economic Growth: Empirical Evidence from the MENA Region. Research in International Business and Finance 21: 297–315. [Google Scholar] [CrossRef]
  58. Nanda, Kajole, and Mandeep Kaur. 2016. Financial Inclusion and Human Development: A Cross-country Evidence. Management and Labour Studies 41: 127–53. [Google Scholar] [CrossRef]
  59. Nanziri, Elizabeth Lwanga. 2016. Financial inclusion and welfare in South Africa: Is there a gender gap? Journal of African Development 18: 109–34. [Google Scholar] [CrossRef]
  60. Nayak, Bhabani Shankar, and Zhong Yingnan. 2019. Critical Reflections on Different Trends in the Relationship between Financial Developments and Economic Growth in China. International Journal of Economics and Finance 11: 89. [Google Scholar] [CrossRef]
  61. Odhiambo, Nicholas M. 2009. Savings and economic growth in South Africa: A multivariate causality test. Journal of Policy Modeling 31: 708–18. [Google Scholar] [CrossRef]
  62. Okpara, Godwin Chigozie, Anne Nwannennaya Onoh, Benson Mbonu Ogbonna, Eugene Iheanacho, and Iheukwumere Kelechi. 2018. Econometrics Analysis of Financial Development and Economic Growth: Evidence from Nigeria. Journal of Finance and Accounting 6: 26. [Google Scholar] [CrossRef]
  63. Otchere, Isaac, Lemma Senbet, and Witness Simbanegavi. 2017. Financial sector development in African overview. Review of Development Finance 7: 1–5. [Google Scholar] [CrossRef]
  64. Owen, Ann L., and Javier M. Pereira. 2018. Bank concentration, competition, and financial inclusion. Review of Development Finance 8: 1–17. [Google Scholar] [CrossRef]
  65. Park, Cyn-Young, and Rogelio V. Mercado. 2015. Financial Inclusion, Poverty, and Income Inequality in Developing Asia. Available online: https://www.adb.org/sites/default/files/publication/153143/ewp-426.pdf (accessed on 21 October 2021).
  66. Patrick, Hugh T. 1966. Financial Development and Economic Growth in Underdeveloped Countries. Economic Development and Cultural Change 14: 174–89. [Google Scholar] [CrossRef] [Green Version]
  67. Pesaran, M. Hashem, and Ron P. Smith. 1995. Estimating long-run relationships from dynamic heterogeneous panels. Journal of Econometrics 68: 79–113. [Google Scholar] [CrossRef]
  68. Pesaran, M. Hashem, Yongcheol Shin, and Ron P. Smith. 1999. Pooled Mean Group Estimation of Dynamic Heterogeneous Panels. Journal of the American Statistical Association 94: 621–34. [Google Scholar] [CrossRef]
  69. Revell, Jack R. S., and Raymond W. Goldsmith. 1970. Financial Structure and Development. The Economic Journal 80: 365–67. [Google Scholar] [CrossRef]
  70. Robinson, Joan. 1979. The Rate of Interest. In The Generalisation of the General Theory and other Essays. London: Palgrave Macmillan. [Google Scholar] [CrossRef]
  71. Sahay, Ratna, Martin Čihák, Papa M. N’Diaye, Adolfo Barajas, Srobona Mitra, Annette Kyobe, Yen N. Mooi, and Reza Yousefi. 2015. Financial Inclusion: Can It Meet Multiple Macroeconomic Goals? IMF Staff Discussion Note. Available online: https://www.imf.org/en/Publications/Staff-Discussion-Notes/Issues/2016/12/31/Financial-Inclusion-Can-it-Meet-Multiple-Macroeconomic-Goals-43163 (accessed on 6 May 2022).
  72. Samargandi, Nahla, Jan Fidrmuc, and Sugata Ghosh. 2014. Financial development and economic growth in an oil-rich economy: The case of Saudi Arabia. Economic Modelling 43: 267–78. [Google Scholar] [CrossRef] [Green Version]
  73. Schumpeter, Joseph A. 1911. The Theory of Economic Development: An Inquiry into Profits, Capital, Credit, Interest and the Business Cycle. Cambridge: Harvard University Press. [Google Scholar] [CrossRef]
  74. Sethi, Dinabandhu, and Debashis Acharya. 2018. Financial inclusion and economic growth linkage: Some cross country evidence. Journal of Financial Economic Policy 10: 369–85. [Google Scholar] [CrossRef]
  75. Seven, Ünal, and Hakan Yetkiner. 2016. Financial intermediation and economic growth: Does income matter? Economics Systems 40: 39–58. [Google Scholar] [CrossRef]
  76. Shahbaz, Muhammad, Thi Hong Van Hoang, Mantu Kumar Mahalik, and David Roubaud. 2017. Energy consumption, financial development and economic growth in India: New evidence from a nonlinear and asymmetric analysis. Energy Economics 63: 199–212. [Google Scholar] [CrossRef] [Green Version]
  77. Sharma, Dipasha. 2016. Nexus between financial inclusion and economic growth: Evidence from the emerging Indian economy. Journal of Financial Economic Policy 8: 13–36. [Google Scholar] [CrossRef]
  78. Sohag, Kazi, Abi Bibi Nabilah, and Rawshan Begum. 2015. Dynamic impact of financial development on economic growth: Heterogeneous panel data analysis of island economies. International Journal of Economic Policy in Emerging Economies 8: 77. [Google Scholar] [CrossRef]
  79. Stern, Nicholas. 1989. The Economics of Development: A Survey. The Economic Journal 99: 597–685. [Google Scholar] [CrossRef]
  80. van Wyk, Bianca Flavia, and Forget Mingiri Kapingura. 2021. Understanding the nexus between savings and economic growth: A South African context. Development Southern Africa 38: 828–44. [Google Scholar] [CrossRef]
  81. Zins, Alexandra, and Laurent Weill. 2016. The determinants of financial inclusion in Africa. Review of Development Finance 6: 46–57. [Google Scholar] [CrossRef] [Green Version]
Table 1. Financial Inclusion Variables.
Table 1. Financial Inclusion Variables.
VariableAbbreviationDimension Measured
Number of accounts per 1000 adultsNACacccessibility
Number of ATMs per 1000 km2NATavailaibility
Number of branches per 1000 km2NBRavailability
Geographic spreads of ATMs per 100,000 adultsDATavailability
Branches of commercial banks per 100,000 adultsBRAavailability
Credit to the private sector as a percentage of GDPCPSusage
Source: Authors’ own compilation.
Table 2. Summary of the descriptive statistics.
Table 2. Summary of the descriptive statistics.
VariableObsMeanStd. Dev.MinMax
NAC520291.841460.5650.0002274.504
BRA5204.3724.3090.02522.473
NAT5208.88914.7610.00072.450
DAT5209.34236.5130.000228.571
NBR5205.33818.0880.005111.823
CPS52022.41828.6100.491160.125
FI5200.2000.2340.0140.824
EG5202317.9933403.413111.92722,942.583
FS52011.1376.0142.20447.341
INF52010.63032.302−8.975513.907
RIR5205.5528.969−60.78138.976
EXR520802.6051458.8760.5459183.876
TEC5209.83313.2950.00668.200
IQI520−1.4161.509−4.6802.132
Source: Authors’ own computations.
Table 3. Principal Components Analysis: Eigenvalues.
Table 3. Principal Components Analysis: Eigenvalues.
Principal ComponentEigenvalueVariance (%)Cumulative (%)
14.47774.6074.60
21.01516.9091.50
30.2764.6096.10
40.1352.2098.40
50.0831.4099.80
60.0140.20100.00
Source: Authors’ own computations.
Table 4. Principal component analysis: Eigenvectors (loadings).
Table 4. Principal component analysis: Eigenvectors (loadings).
Variable PC-1PC-2PC-3PC-4PC-5PC-6
NAC 0.452−0.021−0.066−0.619−0.6390.025
BRA 0.4290.032−0.6820.557−0.170−0.102
NAT 0.3830.528−0.201−0.3600.6270.105
CPS 0.3670.5040.6370.400−0.211−0.015
DAT 0.412−0.4560.232−0.0430.297−0.692
NBR0.400−0.5090.1750.1220.1920.707
Source: Authors’ own computations.
Table 5. Results of the various Unit Root Tests.
Table 5. Results of the various Unit Root Tests.
VariablesLevin Lin Chu (LLC)Im Pesaran Shin (IPS)BreitungPesaran (2007) (CIPS)
StatisticOrderStatisticOrderStatisticOrderStatisticOrder
FI−1.370 *I(0)−6.465 ***I(1)−5.123 ***I(1)−3.980 ***I(1)
L.FI−3.7161 ***I(1)−6.4904 ***I(1)−5.092 ***I(1)−3.825 ***I(1)
EG−7.260 ***I(0)−8.195 ***I(1)−5.772 ***I(1)−4.147 ***I(0)
FS−3.8917 ***I(0)−5.4304 ***I(0)−3.094 ***I(0)−5.902 ***I(0)
INF−39.133 ***I(0)−8.086 ***I(0)−1.998 **I(0)−7.481 **I(0)
RIR−7.118 ***I(0)−8.698 ***I(0)−3.625 ***I(0)−3.427 ***I(0)
EXR−8.107 ***I(1)−6.733 ***I(1)−8.4720 ***I(1)−1.656 ***I(0)
IQI−2.787 ***I(0)−11.204 ***I(1)−5.663 ***I(1)−4.212 ***I(1)
TEC−7.130 ***I(0)−8.536 ***I(0)−4.541 ***I(0)−10.123 ***I(0)
Source: Authors’ own computations; Note: Robust standard errors in parenthesis (***), (**), and (*) indicate the level of significance at 1%, 5%, and 10%, respectively.
Table 6. Panel dynamic GMM estimation results of this study.
Table 6. Panel dynamic GMM estimation results of this study.
Variables(Economic Growth)(Economic Growth)
One-Step System GMMTwo-Step System GMM
L.EG0.8799 ***0.8836 ***
(0.0511)(0.0585)
FI0.5080 ***0.4815 **
(0.1799)(0.2314)
FS−0.0200 **−0.0221 *
(0.0090)(0.0121)
INF−0.0012 ***−0.0012 ***
(0.0002)(0.0003)
EXR−0.0000−0.0000
(0.0000)(0.0000)
RIR−0.0029−0.0028
(0.0035)(0.0035)
TEC−0.0039 ***−0.0033 **
(0.0012)(0.0013)
IQI0.01030.0195
(0.0184)(0.0227)
Constant1.1042 ***1.0822 **
(0.3637)(0.4097)
Observations494494
Number of countries (Instruments)2626
AR(1)0.01680.0247
AR(2)0.1910.148
Hansen0.1180.119
Sargan0.0020.012
Source: Authors’ own computations. Note: Robust standard errors in parenthesis (***), (**), and (*) indicate the level of significance at 1%, 5%, and 10%, respectively.
Table 7. Panel ARDL estimation results of the two variables (EG and FI).
Table 7. Panel ARDL estimation results of the two variables (EG and FI).
Dependent Variable (EG)Mean Group
(MG)
Pooled Mean Group (PMG)Mean Group
(MG)
Pooled Mean Group (PMG)
Short Run
ETC−0.1278 ***
(0.0545)
−0.3384 ***
(0.0062)
−0.1299 ***
(0.0500)
−0.3690 **
(0.0249)
∆FI−1.4777
(1.1217)
−0.5336
(1.4052)
−2.8375 **
(1.2732)
−2.7102 ***
(0.0059)
∆SB1--−0.1220 ***
(0.0243)
−0.0388 **
(0.0196)
Constant0.9380
(0.2906)
0.3822 ***
(0.0536)
−0.9561 **
(0.2672)
−0.2990 ***
(0.1335)
Long Run
FI3.6487
(4.4996)
4.1785 ***
(3.8686)
2.4441
(4.8391)
4.2693 ***
(1.4554)
SB1--0.2021
(1.5236)
1.3072
(0.3385)
Number of Obs 494494
Number of Groups 2626
Hausman (Prob > ch2)Inconclusive0.211
Source: Authors’ own computations; Note: Robust standard errors in parenthesis (***), (**), and (*) indicate the level of significance at 1%, 5%, and 10%, respectively.
Table 8. Granger causality test results (EG and FI).
Table 8. Granger causality test results (EG and FI).
Variable YCausality DirectionsVariable XJuodis et al. (2021)Dumitrescu and Hurlin (2012)
Wald TestZ-Bar
EG FI40.369 ***40.571 ***
FI EG 10.137 ***4.798 ***
Source: Authors’ own computations; Note: Robust standard errors in parenthesis (***), (**), and (*) indicate the level of significance at 1%, 5%, and 10%, respectively.
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Jima, M.D.; Makoni, P.L. Financial Inclusion and Economic Growth in Sub-Saharan Africa—A Panel ARDL and Granger Non-Causality Approach. J. Risk Financial Manag. 2023, 16, 299. https://doi.org/10.3390/jrfm16060299

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Jima MD, Makoni PL. Financial Inclusion and Economic Growth in Sub-Saharan Africa—A Panel ARDL and Granger Non-Causality Approach. Journal of Risk and Financial Management. 2023; 16(6):299. https://doi.org/10.3390/jrfm16060299

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Jima, Meshesha Demie, and Patricia Lindelwa Makoni. 2023. "Financial Inclusion and Economic Growth in Sub-Saharan Africa—A Panel ARDL and Granger Non-Causality Approach" Journal of Risk and Financial Management 16, no. 6: 299. https://doi.org/10.3390/jrfm16060299

APA Style

Jima, M. D., & Makoni, P. L. (2023). Financial Inclusion and Economic Growth in Sub-Saharan Africa—A Panel ARDL and Granger Non-Causality Approach. Journal of Risk and Financial Management, 16(6), 299. https://doi.org/10.3390/jrfm16060299

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