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Article

Efficiency of the Islamic Banking Sector: Evidence from Two-Stage DEA Double Frontiers Analysis

1
University of Economics & Business, Vietnam National University, Hanoi 10000, Vietnam
2
Ho Chi Minh National Academy of Politics, Hanoi 10000, Vietnam
3
School of Aviation, Massey University, Palmerston North 4442, New Zealand
4
Institute for Development and Research in Banking Technology, University of Economics and Law, Ho Chi Minh City 700000, Vietnam
5
Vietnam National University, Ho Chi Minh City 700000, Vietnam
6
Hanoi University, Hanoi 10000, Vietnam
*
Authors to whom correspondence should be addressed.
Int. J. Financial Stud. 2023, 11(1), 32; https://doi.org/10.3390/ijfs11010032
Submission received: 10 January 2023 / Revised: 9 February 2023 / Accepted: 10 February 2023 / Published: 14 February 2023

Abstract

:
This paper examines the multi-dimensional efficiency of the Islamic banking sector and its determinants, including the impacts of the COVID-19 pandemic. To do that, we use a novel approach of two-stage data envelopment analysis (DEA) double frontiers to evaluate the overall efficiency of 79 Islamic banks across 16 countries (2005–2020). In the first-stage analysis, we found that the Islamic banking sector experienced an increasing trend in its efficiency and performance, even during the recent pandemic, although it varied across banks and countries. Our empirical results of the second-stage analysis further showed that economic development can help countries both withstand the recent pandemic and improve the efficiency and performance of their (Islamic) banking system. This, in turn, could help speed up the recovery process of the global economy. Since there is evidence that the Islamic banking sector is resilient to the COVID-19 pandemic, it is expected that this sector will be a driving force of such recovery.

1. Introduction

The ongoing COVID-19 pandemic has been affecting many countries, regions, and sectors such as (public) healthcare, capital and financial markets, tourism, and banking (Boubaker et al. 2022b; Elnahass et al. 2021; International Monetary Fund 2021). According to Demirgüç-Kunt et al. (2021), it is thus important to examine the impacts of such events on the efficiency and performance of the global banking sector. Boubaker et al. (2022b) further argued that by analysing Islamic banks (IBs), which are arguably more resilient than conventional banks during crisis times (Alqahtani et al. 2017; Ashraf et al. 2022; Farooq and Zaheer 2015), one can understand the supportive role of the IBs and the global banking sector in the recovery process of the World economy (International Monetary Fund 2021). This paper, therefore, aims to examine the efficiency of the IBs and its determinants, including the impacts of the COVID-19 pandemic.
Measuring bank efficiency and performance is an important task for not only policymakers and bank managers, but also for researchers. For instance, a simple search on Google Scholar using the keywords of “bank efficiency” AND “determinants” resulted in about 16,000 articles; many of them using the multi-dimensional frontier analysis approach of data envelopment analysis (DEA) and stochastic frontier analysis (SFA) (Ben Mohamed et al. 2021; Boubaker et al. 2022b; Le et al. 2022b; Lu et al. 2018). Both DEA and SFA have their own pros and cons; however, DEA is more popularly used in the bank efficiency literature, thanks to its flexibility (Boubaker et al. 2020; Boubaker et al. 2022a; Ho et al. 2021; P. H. Nguyen and Pham 2020; Vidal-García et al. 2018).
Originally introduced by Charnes et al. (1978) to measure the relative efficiency of a set of homogenous decision-making units (DMUs) using multiple inputs to produce multiple outputs, DEA has been extended to various settings, including the variable returns to scale assumption (Banker et al. 1984), slack-based optimization (Tone 2001), common weights (Hammami et al. 2022), worst-frontier measurement (Paradi et al. 2004), the inverse model (Boubaker et al. 2022b), and so on. Since DEA is sensitive to the characteristics of the sampled DMUs (e.g., outliers, input/output selection, and the specific DEA methods) (Hughes and Yaisawarng 2004; Tortosa-Ausina et al. 2008), it is argued that the relevant interpretations or conclusions would benefit from multiple DEA results, rather than from a single one (Wang et al. 2007). Particularly, Wang et al. (2007) and Azizi (2014), among others, pointed out that while one can assess the efficiency of a DMU based on an optimistic (i.e., ‘best practice’) frontier, one can also use a pessimistic (i.e., ‘worst practice’) frontier for the same evaluation purposes. Accordingly, the overall efficiency of such a DMU should account for both frontiers under a DEA double frontiers approach. This approach was developed to measure the overall efficiency of DMUs operating in the manufacturing sector (Wang and Chin 2009), supply chains (Badiezadeh et al. 2018), aviation (Cui et al. 2022), and so on. However, it is worth mentioning that none of those studies has examined the determinants of such DEA double frontiers efficiency scores.
The application of DEA double frontiers in the banking sector, however, is also scanty. To the best of our knowledge, there was only a single study by Gölcükcü (2015) on 20 Turkish banks. Due to data limitations, however, Gölcükcü (2015) could only examine the single-dimension efficiency of the banks (i.e., the relationship between deposit rates and loan rates) but not the multi-dimensional perspective of DEA (Charnes et al. 1978). Accordingly, the contributions of this paper to the literature are as follows.
  • It is the first cross-country study on the efficiency of Islamic banks using DEA double frontiers to evaluate the overall efficiency, including both the optimistic and pessimistic aspects, of the examined IBs. It, therefore, can provide more robust insight into the performance of the IBs.
  • For the first time, the determinants of such double frontier efficiency, including the recent COVID-19 pandemic, are investigated under a two-stage DEA framework.
  • It extends the applications of DEA double frontier in the banking efficiency literature.
The rest of this study is constructed as follows. Section 2 provides some reviews of the relevant literature. Section 3 explains the data and methodologies used in this study. Section 4 discusses our empirical findings, and Section 5 concludes.

2. Literature Review

In this section, we first review the relevant literature on banking efficiency and performance. It is noted that financial ratios, such as net interest margin, returns over assets, or nonperforming loan ratios, are commonly used for this purpose (Ramalho and Silva 2013; Salmi and Martikainen 1994; Tran and Ngo 2014). Because a single ratio can only reflect a single aspect of the bank’s efficiency and performance, in recent decades, a multi-dimensional approach of efficiency evaluation has become more popular (see, for example, the surveys of Berger and Humphrey 1997; Emrouznejad and Yang 2018; Fethi and Pasiouras 2010). For instance, Liu et al. 2013 found that the banking sector accounts for the highest number of studies and applications in the DEA literature. The basic idea of DEA in banks is to measure the aggregated technical efficiency of a bank in combining all inputs to produce all outputs (Charnes et al. 1978; Tran and Ngo 2014), without too much concern about the specific technology of how these combinations occur, i.e., a bank is treated as a ‘black box’. Although there are several approaches to unboxing this ‘black box’ using network DEA, fuzzy DEA, or stochastic DEA (Avkiran 2015; Cui et al. 2022; Fukuyama and Matousek 2017; Matthews 2013; Ngo and Tsui 2022; Tsionas 2021; Yang and Liu 2012), our study is more focused on the sensitivity issue of DEA, and, thus, we only employ the basic DEA model of Charnes et al. 1978 in our analysis.
Although Islamic banking is still an emerging industry, compared to the CBs, the performance of IBs, especially during economic turmoil such as the Asian Financial Crisis 1997 (AFC) and the Global Financial Crisis 2007 (GFC), has attracted increasing attention from researchers. Studies on the efficiency of the IBs under COVID-19, although on an increasing trend, are still limited (Ashraf et al. 2022; Boubaker et al. 2022b; Le et al. 2022a; Mirzaei et al. 2022). According to Majeed and Zainab (2021), there is a mixed result on the performance comparison between IBs and CBs using a single-dimensional perspective (Ansari and Rehman 2011; Hassoune 2002; Iqbal 2001; Ramlan and Adnan 2016) and a multi-dimensional one (Abdul-Majid et al. 2017; Bader et al. 2008; Ben Mohamed et al. 2021; Kamaruddin et al. 2008; Kamarudin et al. 2014). One reason for this inconclusive finding is that, according to Miah and Uddin (2017) and Boubaker et al. (2022b), the IBs and CBs are operating under different principles (e.g., the Islamic laws of Shari’ah for the IBs). One may argue that it is not a fair comparison between the IBs and CBs, for example, in terms of a profitability evaluation, because the CBs are trying to maximize their profits, while the IBs are not. Consequently, to have a better view of the Islamic banking sector, this study focuses on the efficiency of the IBs within their own group, avoiding any comparisons between the IBs and CBs. It could provide a more insightful view into the operations and efficiency of the IBs themselves within their “Islamic world” (Khan 2010; Mastrosimone 2013). We consider it as filling a gap in the literature.
The second strand of literature that we also look at is the methodological aspect of those studies. Except for single-dimension studies where a ratio (e.g., net profit margin or return on assets) or several ratios were used to evaluate the IBs, multi-dimension studies often use DEA for their investigations (Alexakis et al. 2019; Bahrini 2017; Belanès et al. 2015; Viverita and Skully 2007; Yudistira 2004). A recent study by Boubaker et al. (2022b) examines the global Islamic banking sector (consisting of 49 IBs for the 2019–2020 period) amid the effects of COVID-19 but under an inverse DEA model. Particularly, this study argues that the IBs, under COVID-19, faced difficulties in increasing or retaining their outputs, such as operating incomes and earning assets. As such, to maintain the pre-COVID-19 levels of efficiency, those IBs needed to accordingly reduce their inputs (e.g., total deposits and, especially, operating expenses). Another study by Mirzaei et al. (2022) used DEA to examine the IBs and CBs together (and, thus, faces the previously discussed problem) and also found that the IBs have evidently higher efficiency levels than their counterparts during the COVID-19 crisis. Focusing on Indonesian IBs, Lantara et al. 2022 found that the sampled banks improved their overall technical efficiency in the 2020–2021 period in three out of four models. The resiliency of the IBs during the recent COVID-19 pandemic was also observed in some other studies (Abdulla and Ebrahim 2022; Alabbad and Schertler 2022; Ashraf et al. 2022; Boubaker et al. 2022b; Rizwan et al. 2022). However, DEA studies on the efficiency of the IBs amid COVID-19 are still limited (Boubaker et al. 2022b; Lantara et al. 2022; Mirzaei et al. 2022); none of them has applied the double frontier approach, which is more robust against the DEA sensitivity issue, and none has also examined the determinants of the double frontier efficiency. We consider it as a methodological gap in the literature.
Given these two research gaps, in this paper, we develop a two-stage DEA double frontier framework to examine the efficiency and its determinants of the global Islamic banking sector (see Table 1). Generally, our first stage involves the use of DEA double frontier to estimate the overall efficiency of a set of global IBs only; no comparison with the CBs is needed. In the second stage, such overall efficiency is regressed on a set of determinants, including the COVID-19 variable, to measure the impacts of those factors on the IBs. The next section will present more details on our method and data.

3. Data and Methodologies

3.1. Data

We follow Lozano-Vivas et al. (2002), Fujii et al. (2014), and Boubaker et al. (2022b), among others, to select operating expenses (x1) and total deposits (x2) as the two inputs, while operating income (y1) and other earning assets (y2) are the two outputs of our DEA double frontiers model. In this sense, the IBs are treated as intermediaries between savers and borrowers, whereas their objective is to use the least inputs to produce the most outputs (Sealey and Lindley 1977). Such input/output variables are popularly used in the banking efficiency literature (Alqahtani et al. 2017; Ben Mohamed et al. 2021; Berger et al. 1993; Bonin et al. 2005; Dincer et al. 2019); the readers are encouraged to seek more information on those variables therein. The data were consequently gathered from the Thomson Reuters Eikon (2022) database.
To examine the determinants of the DEA double frontier efficiency scores, we further collected macroeconomic data, such as GDP growth rate, inflation index (consumer price index, base year 2010, as 100 points), and income levels (e.g., low-income or advanced countries) from the World Economic Outlook (International Monetary Fund 2021). This resulted in unbalanced panel data of 79 IBs in 16 countries for the 2005–2020 period, ranging from a low of 42 banks in 2005 to a high of 64 banks in 2019, yielding a total of 783 bank-year observations (see also the Appendix A). These countries include Bangladesh (BGD), Bahrain (BHR), Egypt (EGY), Indonesia (IDN), Jordan (JOR), Kuwait (KWT), Malaysia (MYS), Nigeria (NGA), Oman (OMN), Pakistan (PAK), Qatar (QAT), Saudi Arabia (SAU), Sri Lanka (LKA), Sudan (SDN), the United Arab Emirates (ARE), and the United Kingdom (GBR). While it is suggested that one should focus more on the IBs in countries where the Islamic principles are more practiced (such as PAK, LKA, and GBR), our data limitations prevent us from doing so. More importantly, since we would like to provide an examination of the global Islamic banking sector, and how it can contribute to the recovery of the world economy (International Monetary Fund 2021), a cross-country sample is more suitable for our analysis. The descriptive statistics of our data are presented in Table 2 below.

3.2. The Overall Efficiency of IBs: The DEA Double Frontiers

DEA is a popular tool for efficiency and performance evaluation in the banking sector (Liu et al. 2013). The major reason is that DEA is more flexible with multiple inputs/outputs and small sample situations, which is a common setting for many banking studies (Avkiran 2011; Ngo and Le 2019; Reinhard et al. 2000). Initially, DEA optimizes the weights of the multiple inputs/outputs of the examined banks so that the banks can be closest to the best-practice frontier, i.e., the so-called ‘optimistic DEA frontier’ (Charnes et al. 1978; Schaffnit et al. 1997). Following Ngo and Le (2019) and Hammami et al. (2022), among others, we formulate our optimistic DEA model as follows.
E F j 0 o p t = max r = 1 m u r y r j 0
Subject to
i s v i x i j 0 = 1 , i r m u r y r j i s v i x i j 0 , i , r , j u r , v i ε , i , r
where u and v are the vectors of weight of the j0-th bank’s outputs (y) and inputs (x), respectively; and j runs from 1 to n, with n as the total number of IBs being examined (in a certain year). It is noted that the higher the value of E F j 0 o p t , the better the performance of the IB, with E F j 0 o p t = 1 indicating the most efficient.
On the other hand, one can also use DEA to measure the ‘pessimistic’ efficiency of the IBs. In particular, an inefficient (or ‘worst practice’) frontier can be estimated; and the banks further from this inefficient frontier are considered to be more efficient (Wang and Chin 2009). In this sense, the higher the value of E F j 0 p e s , the better the performance of the IB, with E F j 0 p e s = 1 indicating the less efficient. Following Azizi (2014), Badiezadeh et al. (2018), and Cui et al. (2022), the pessimistic DEA model can be expressed as:
E F j 0 p e s = min r = 1 m u r y r j 0
Subject to
i s v i x i j 0 = 1 , i r m u r y r j i s v i x i j 0 , i , r , j u r , v i ε , i , r
Once both the optimistic and pessimistic DEA efficiency scores are estimated, one can follow Wang et al. (2007) to compute the overall efficiency ( O E F j , t ) of bank j in year t as the geometric mean of E F j , t o p t and E F j , t p e s using Equation (3), with the higher the value of OEF, the better the performance of the IB:
O E F j , t = E F j , t o p t × E F j , t p e s
where j denotes the bank, and t denotes the year.

3.3. The Determinants of the Overall Efficiency of IBs

To further examine the determinants of the overall efficiency of the IBs, we follow the rich literature on the two-stage DEA approach (Boubaker et al. 2020; Boubaker et al. 2021; Casu and Molyneux 2003; Hoff 2007; K. M. Nguyen et al. 2012) and regress the OEF against a set of macro-economic factors that can affect the performance of the IBs (see Table 2B). For instance, (Heffernan and Fu 2010; Fang et al. 2019; Le and Ngo 2020) showed that the economic status of the country, such as GDP growth (GDPGR) and inflation (INF), can influence bank performance, where a higher GDPGR reflects an increase, and a higher INF indicates a reduction in demand for banking services. To better capture the other factors of economic status that were not reflected in GDPGR and INF, we also use a dummy variable (ADVANCE) to distinguish between advanced and (under)developed countries, since there is evidence that banks in advanced countries are more profitable than their counterparts (Ngo and Le 2019; Yin et al. 2020). Furthermore, (Yudistira 2004; Viverita and Skully 2007; Bahrini 2017) all found that the IBs performed differently across regions. Consequently, Equation (4) estimates the relationship between the OEF of the IB j, from country I, in year t ( O E F j , i , t ), and a set of control variables, including the economic development of the country that the IB operates in (i.e., GDPGR, INF, and ADVANCE); the regional effect (MIDDLEEAST), in which IBs outside the Middle East and Central Asia region tend to outperform IBs from that region (Alexakis et al. 2019; Boubaker et al. 2022b; Viverita and Skully 2007; Yudistira 2004); and also the 2008 global financial crisis (GFC) and the recent coronavirus pandemic (COVID-19) effects. Because the O E F j , i , t is not restricted to be bounded between 0 and 1, and due to the existence of dummy variables (e.g., ADVANCE or COVID) that prevents us from performing a fixed-effect estimation, we instead employed a generalized least squares (GLS) random-effect panel regression in the estimation of Equation (4).
O E F j , i , t = β 0 + β 1 G D P G R j , i , t + β 2 I N F j , i , t + β 3 A D V A N C E j , i , t + β 4 M I D D L E E A S T j , i , t + β 5 G F C + β 6 C O V I D + ε
where j denotes the bank; i denotes the country; and t denotes the year.

4. Empirical Results and Discussion

4.1. DEA Double Frontiers Efficiency of the IBs (2005–2020)

We first report the average DEA efficiency scores of the sampled IBs in Table 3. As observed from that table, the efficiency scores and ranks of the IBs are different under the optimistic and pessimistic approaches, and, thus, it is justified to evaluate the IBs using the double frontiers approach. By analysing the DEA double frontier’s OEF scores and rankings, one can see that the top-three performer banks (for the whole 2005–2020 period) include Bahrain Islamic Bank BSC (BISB.BH), Al Salam Bank Bahrain BSC (SALAM.BH), and Sterling Bank PLC (STERLNB.LG), while the bottom three are Abu Dhabi Islamic Bank PJSC (ADIB.AD), Al Baraka Bank Egypt SAE (SAUD.CA), and Bank of Punjab (BOPU.PSX).
All in all, Table 3 suggests that there are some significant differences in the efficiency and performance of the examined IBs. For instance, Bahrain Islamic Bank BSC (top performer) has an OEF of 3.248, more than six-times higher than the efficiency of Abu Dhabi Islamic Bank PJSC (worst-performer, OEF = 0.524). We, therefore, continue to look for the country-wise picture of the DEA double frontiers efficiency, as reported in Table 4. Again, we observed that IBs operating in different countries also perform differently. For example, the six IBs in Egypt had the lowest (average) OEF scores, which may be due to the fact that Egypt is one of the few Muslim countries where the government tends to support the CBs, which puts more pressure on the Egyptian IBs (Galal Abdullah Mouawad 2009; Tammam 2019). It is, therefore, arguable that one should further examine which factors could lead to the differences in the performance of the IBs, e.g., the macroeconomic environments or the impacts of COVID-19. This question will be addressed in the next section.
We further illustrate the changes in the OEF over time in Figure 1. It shows the significant impact of the GFC when the OEF dropped to its lowermost value of 0.557 in 2008. This finding is consistent with the studies of Beck et al. (2013); Ftiti et al. (2013); Belanès et al. (2015); and Miah and Uddin (2017) on the negative impacts of the GFC on the IBs. The Islamic banking system has since recovered, with some struggles during the 2012–2018 period, similar to what was found by Alqahtani et al. (2017), and also experienced an increase in the OEF in 2019 and 2020, despite the recent pandemic. One may thus argue that the IBs were more resilient during the COVID-19 outbreak (Ashraf et al. 2022; Boubaker et al. 2022b; Mirzaei et al. 2022). Such effects of the GFC and COVID-19 will be empirically examined in the following section.

4.2. The Determinants of Islamic Banks’ Efficiency

It is noted that our model in Equation (4) is justified, since the Ramsey Regression Equation Specification Error Test (RESET) results of our random-effects panel data regression (DeBenedictis and Giles 1998) cannot reject the null hypothesis of a good specification (see Table 5). Table 6 consequently presents the regression results for the determinants of the IBs’ efficiency. Several conclusions can be drawn from this table, as follows. First, the economic growth (i.e., GDPGR) of the country can positively improve the performance of the IBs operating within its territory (at a 1% level of significance). Second, the global financial crisis in 2008 (i.e., GFC = 1) did have a negative impact on the performance of the Islamic banking sector (as illustrated in Figure 1). Third, the efficiency of the IBs during the COVID-19 pandemic (i.e., COVID-19 = 1) was higher than that of the previous years. Lastly, we could not find any statistical evidence of the (positive) impact of inflation (i.e., INF), the (negative) impact of higher income levels (i.e., ADVANCE), and the geographical characteristics (i.e., MIDDLEEAST) on the performance of the examined IBs.
We accordingly argue that maintaining good economic development not only helps countries to withstand crises and pandemics (Acemoglu 2009), but it also helps improve the efficiency and performance of the Islamic banking system. This, in turn, could help speed up the recovery process of the global economy (Elnahass et al. 2021; International Monetary Fund 2021). For instance, the International Monetary Fund (2021) projected a 4.9 percent growth rate for the world economy in 2022, subject to the stability conditions of the banking and financial sectors. We also expect that the Islamic banking sector will be a driving force of such recovery, as the sector is more resilient to the COVID-19 pandemic and even improved its efficiency and performance in recent years (Ashraf et al. 2022; Boubaker et al. 2022b; Mirzaei et al. 2022). It is thanks to the nature of the Islamic banking model (Elnahass et al. 2021), the lessons that the IBs have learnt from the GFC (Rehman et al. 2021), and the diversification approach of the IBs (Alabbad and Schertler 2022; Le et al. 2022a). The Islamic banking sector, in the near future, therefore, will be a talking point for researchers, policymakers, managers, and investors.

5. Conclusions

Measuring the efficiency of the banking sector, including Islamic banks, and its determinants is always an important task. The current literature, however, reveals two research gaps: (1) the lack of studies on the IBs only, especially under COVID-19, and not in a comparison with the CBs, as the two groups operate under different principles; and (2) the nonexistence of a two-stage double DEA frontier for the IBs. We, therefore, have contributed to the banking efficiency literature by empirically investigating the determinants of the DEA double frontiers efficiency scores of the Islamic banking sector, given the utilization of their inputs (i.e., operating expenses and total deposits) to produce the outputs (i.e., operating incomes and other earning assets), and the impacts of several macroeconomic conditions, such as GDP growth rates, inflation, and the recent COVID-19 pandemic. In this sense, this study extended the applications of the DEA double frontier approach (i) for the Islamic banking sector and (ii) for a two-stage DEA of efficiency determinants, especially to investigate the impacts of the recent COVID-19 pandemic on the efficiency of the examined Islamic banks.
Our empirical results showed that economic development can help countries to both withstand such crises as the recent pandemic and improve the efficiency and performance of the (Islamic) banking system. This, in turn, could help speed up the recovery process of the global economy. Given that the Islamic banking sector is more resilient to the COVID-19 pandemic, it is expected that this sector will be a driving force of such recovery, and, thus, will soon be a talking point for researchers, policymakers, managers, and investors.
This study is not without limitations. Firstly, due to data limitations, we could not examine IBs in more details at the country-level, especially for countries where the Islamic principles are more practiced. It is also noted that this study only focused on the determinants of efficiency at a macro-level (e.g., GDPGR or COVID-19) but not at the bank- or country-level; we leave this task for future research. Secondly, it would also be interesting to apply different DEA techniques, such as inverse DEA, network DEA, fuzzy DEA, or stochastic DEA (Boubaker et al. 2022b; Ngo and Tsui 2022; Tsionas 2021; J. Zhu 2020), in the first stage of the double frontier estimation. Thirdly, for the second-stage regression, future studies may extend the sample and overcome the data limitations to perform richer analyses with different settings of sub-sampling, variables selecting, and robustness testing to confirm and improve our findings. Newer estimation techniques such as random forest, artificial neuron network, or lasso regression (Chen et al. 2021; Thaker et al. 2021; N. Zhu et al. 2020) should also be employed.

Author Contributions

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

Funding

This research received no external funding.

Informed Consent Statement

Not applicable.

Data Availability Statement

The data presented in this study are available on request.

Conflicts of Interest

The authors declare no conflict of interest. The funders had no role in the design of the study, in the collection, analyses, or interpretation of the data, in the writing of the manuscript, or in the decision to publish the results.

Appendix A. List of Islamic Banks

No.NameCodeNo.NameCode
1Riyad Bank SJSC1010.SE41Hatton National Bank PLCHNB.CM
2AB Bank Ltd.ABBK.DH42Islami Bank Bangladesh Ltd.ISLB.DH
3Arab Banking Corporation BSCABCB.BH43Ithmaar Holding BSCITHMR.BH
4Arab Banking Corporation Jordan PSCABCO.AM44Jamuna Bank Ltd.JMNB.DH
5Abu Dhabi Commercial Bank PJSCADCB.AD45Jordan Islamic Bank Co PLCJOIB.AM
6Abu Dhabi Islamic Bank PJSCADIB.AD46KUWAIT FINANCE HOUSE K S C PKFH.KW
7Abu Dhabi Islamic Bank Egypt SAEADIB.CA47Khaleeji Commercial Bank BSCKHCB.BH
8Affin Bank BHDAFIN.KL48Kuwait International Bank KSCPKIBK.KW
9Ajman Bank PJSCAJBNK.DU49Masraf Al Rayan QPSCMARK.QA
10Amlak Finance PJSCAMLK.DU50Mashreqbank PSCMASB.DU
11AMMB Holdings BHDAMMB.KL51National Bank of Bahrain BSCNATB.BH
12Meezan Bank Ltd.AMZN.PSX52National Bank of Kuwait Egypt SAENBKE.CA
13Arab Bank PLCARBK.AM53National Bank of Kuwait SAKPNBKK.KW
14Ahli United Bank BSCAUBB.BH54National Bank of Oman SAOGNBOB.OM
15Bank Alfalah Ltd.BAFL.PSX55Pubali Bank Ltd.PBBK.DH
16Al Baraka Banking Group BSCBARKA.BH56Prime Bank Ltd.PRBK.DH
17Bank Islami Pakistan Ltd.BIPL.PSX57Premier Bank Ltd.PRBN.DH
18Bahrain Islamic Bank BSCBISB.BH58Qatar International Islamic Bank QPSCQIIB.QA
19Bank Asia Ltd.BKAL.DH59Qatar Islamic Bank QPSCQISB.QA
20Bank Dhofar SAOGBKDB.OM60Qatar National Bank QPSCQNBK.QA
21Bank Muscat SAOGBKMB.OM61RHB Bank BHDRHBC.KL
22Ahli United Bank KSCPBKME.KW62Societe Arabe International De Banque SAESAIB.CA
23Bank Nizwa SAOGBKNZ.OM63Al Salam Bank Bahrain BSCSALAM.BH
24Sohar International Bank SAOGBKSB.OM64Al Baraka Bank Egypt SAESAUD.CA
25Bank of PunjabBOPU.PSX65Southeast Bank Ltd.SEBK.DH
26Boubyan Bank KSCPBOUK.KW66Sharjah Islamic Bank PJSCSIB.AD
27Bank Syariah Indonesia Tbk PTBRIS.JK67Safwa Islamic Bank PSCSIBK.AM
28Suez Canal Bank SAECANA.CA68Silkbank Ltd.SILK.PSX
29Commercial Bank of Kuwait KPSCCBKK.KW69Summit Bank Ltd.SMBL.PSX
30CIMB Group Holdings BHDCIMB.KL70Social Islami Bank Ltd.SOCI.DH
31Commercial Bank of Ceylon PLCCOMB.CM71Soneri Bank Ltd.SONA.PSX
32City Bank Ltd.CTBK.DH72Al Salam Bank Sudan PLCSSUD.DU
33Dhaka Bank Ltd.DHBK.DH73Standard Chartered PLCSTAN.L
34Dubai Islamic Bank PJSCDISB.DU74Standard Bank Ltd.STBL.DH
35Emirates NBD Bank PJSCENBD.DU75Sterling Bank PLCSTERLNB.LG
36Export Import Bank of Bangladesh Ltd.EXPT.DH76Trust Bank Ltd.TRBK.DH
37First Abu Dhabi Bank PJSCFAB.AD77United Arab Bank PJSCUAB.AD
38Faisal Islamic Bank of Egypt SAEFAITA.CA78United Bank Ltd.UBL.PSX
39Hong Leong Financial Group BHDHLCB.KL79Warba Bank KSCPWARB.KW
40Habib Metropolitan Bank Ltd.HMB.PSX

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Figure 1. The overall efficiency of the Islamic banking sector over time.
Figure 1. The overall efficiency of the Islamic banking sector over time.
Ijfs 11 00032 g001
Table 1. The characteristics of our study.
Table 1. The characteristics of our study.
Approaches in the LiteratureIssuesResearch GapsOur Solutions
Examine CBs and IBs togetherThe two groups operate under different principles and settingsPracticalOnly examine the IBs
Examine the IBs under COVID-19None has employed the DEA double frontiers approachMethodologicalUsing a two-stage DEA double frontiers approach
None has examined the determinants of DEA double frontiers
Table 2. Descriptive statistics.
Table 2. Descriptive statistics.
2A. The Inputs and Outputs of the DEA double Frontiers (in Million 2010USD)
MeanSDMinMax
x 1 : Operating Expenses 4318.0011,946.090.21266,712.00
x 2 : Deposits225,993.361,518,259.6225.4630,683,515.00
y 1 : Operating Incomes 27,166.24177,726.0124.223,294,489.00
y 2 : Other Earning Assets106,524.24790,691.2919.9716,980,369.00
2B. The Determinants of DEA double Frontiers Efficiency Scores
MeanSDMinMax
GDPGR4.553.70−8.1328.08
INF129.1268.0520.19283.71
ADVANCE0.010.0701
MIDDLEEAST0.640.4701
GFC0.070.2401
COVID0.060.2401
Notes: GDPGR, the annual economic growth rate; INF, the inflation index; ADVANCE is a dummy variable that takes the value of 1 if the country that the IB operates in is an advanced economy (according to the categorization of the IMF), and is otherwise equal to 0; MIDDLEEAST is a dummy variable that is equal to 1 if the country that the IB operates in belongs to the Middle East and Central Asia region (according to the categorization of the IMF), and is otherwise equal to 0; GFC is a dummy variable that takes a value of 1 for the year 2008 and 0 otherwise (following Acemoglu 2009; Alexakis et al. 2019; Hasan et al. 2021); COVID is a dummy variable that takes a value of 1 for the year 2020 and 0 otherwise; and SD stands for the standard deviation.
Table 3. Average efficiency of the examined IBs.
Table 3. Average efficiency of the examined IBs.
Code E F o p t E F p e s OEFRankCode E F o p t E F p e s OEFRank
ABBK.DH0.4561.5040.81243ISLB.DH1.0002.2351.4835
ADCB.AD0.5451.6100.90227ITHMR.BH0.4841.5700.84634
ADIB.CA0.5611.5410.90326JMNB.DH0.4841.4710.83736
ADIB.AD0.2931.0000.52479JOIB.AM0.6051.0000.75950
AFIN.KL0.4451.1310.68565KHCB.BH0.5431.3040.83238
AUBB.BH0.6181.2240.83537KFH.KW0.5921.8090.96719
BKME.KW0.5101.1420.71959KIBK.KW0.4861.2160.73355
AJBNK.DU0.4681.0990.70860MASB.DU0.6601.9211.09812
SAUD.CA0.3141.0860.57778MARK.QA0.6401.1090.82939
BARKA.BH0.4791.4730.81642AMZN.PSX0.5861.7300.99417
SALAM.BH0.9584.2531.9402NATB.BH0.4721.1240.68067
SSUD.DU0.5893.3221.3666NBKE.CA0.3761.2700.67668
AMLK.DU0.3971.4980.73853NBKK.KW0.4731.3230.74052
AMMB.KL0.5251.3500.80244NBOB.OM0.5731.0830.72757
ARBK.AM0.5131.6430.86432PRBN.DH0.5651.6070.94422
ABCB.BH0.6351.4200.92423PRBK.DH0.5261.5960.89728
ABCO.AM0.6331.5860.97418PBBK.DH0.5991.7771.01915
BISB.BH1.00011.3293.2481QIIB.QA0.6151.4280.92124
BAFL.PSX0.5701.8400.99716QISB.QA0.6441.6411.02114
BKAL.DH0.4851.4280.82740QNBK.QA0.3701.0870.61875
BKDB.OM0.5121.0860.73554RHBC.KL0.4771.1760.72558
BIPL.PSX0.7061.7681.100111010.SE0.4381.3430.72756
BKMB.OM0.7571.2280.94721SIBK.AM0.7091.1960.91925
BKNZ.OM0.7292.1981.2587SIB.AD0.6211.2770.88630
BOPU.PSX0.3211.1630.59877SILK.PSX0.4981.5490.85833
BRIS.JK1.0002.3731.5404SOCI.DH0.4381.4000.77148
BOUK.KW0.5981.0000.77347SAIB.CA0.3671.2870.67070
CIMB.KL0.4441.5190.77446BKSB.OM0.4721.0900.69264
CTBK.DH0.7491.8861.17210SONA.PSX0.4001.4700.74951
COMB.CM0.5241.8010.95320SEBK.DH0.3971.1530.67369
CBKK.KW0.5811.2680.81841STBL.DH0.4091.0990.66571
DHBK.DH0.4301.1330.69463STAN.L0.4441.5640.78945
DISB.DU0.5571.3910.84435STERLNB.LG1.0003.0811.7553
ENBD.DU0.5501.5120.86531CANA.CA0.3761.2280.65972
EXPT.DH0.3901.0320.63074SMBL.PSX0.5211.5560.89029
FAITA.CA0.3861.2680.68166TRBK.DH0.3621.2000.64773
FAB.AD0.4811.1640.70462UAB.AD0.8421.3181.03913
HMB.PSX0.4211.4680.76849UBL.PSX0.7322.1081.2128
HNB.CM0.6792.1651.1869WARB.KW0.3661.0080.60576
HLCB.KL0.4911.1000.70761
Note: The efficiency scores ( E F o p t , E F p e s , and OEF) are subjected to the rounding effect.
Table 4. Country-wise performance of the IBs.
Table 4. Country-wise performance of the IBs.
CountryRegionIncome LevelNumber of IBs InvolvedOEF
NigeriaAfricaEM11.755
IndonesiaAsia and PacificEM11.540
SudanMiddle East and Central AsiaLIC11.366
BahrainMiddle East and Central AsiaEM81.265
Sri LankaAsia and PacificEM21.070
PakistanMiddle East and Central AsiaEM90.907
JordanMiddle East and Central AsiaEM40.879
OmanMiddle East and Central AsiaEM50.872
BangladeshAsia and PacificLIC140.862
QatarMiddle East and Central AsiaEM40.847
United Arab EmiratesMiddle East and Central AsiaEM100.831
United KingdomEuropeAM10.789
KuwaitMiddle East and Central AsiaEM70.765
MalaysiaAsia and PacificEM50.739
Saudi ArabiaMiddle East and Central AsiaEM10.727
EgyptMiddle East and Central AsiaEM60.694
Table 5. DeBenedictis and Giles (1998) Specification RESET Tests.
Table 5. DeBenedictis and Giles (1998) Specification RESET Tests.
H0: Model is Specified vs. H1: Model is Mis-Specified
DeBenedictis & Giles Specification ResetL Test
The ResetL1 Test = 0.129p-value > F(2, 773): 0.8789
The ResetL2 Test = 0.207p-value > F(4, 771): 0.9346
The ResetL3 Test = 0.247p-value > F(6, 769): 0.9605
DeBenedictis & Giles Specification ResetS Test
The ResetS1 Test = 0.251 p-value > F(2, 773): 0.7784
The ResetS2 Test = 0.132p-value > F(4, 771): 0.9706
The ResetS3 Test = 0.293p-value > F(6, 769): 0.9402
Table 6. Regression results.
Table 6. Regression results.
CoefficientStandard Errort-Statisticp-Value
GDPGR0.035 ***0.0049.1700.000
INF0.0000.0000.9610.338
ADVANCE−0.0670.389−0.1700.864
MIDDLEEAST−0.0050.093−0.0550.954
GFC−0.227 ***0.037−6.1640.000
COVID0.091 **0.0432.1310.033
Constant0.103 **0.0422.4690.014
Model Statistics
N = 783 Cross sections number = 79
Wald Test χ 6 2 = 64.7369 p-value > χ 6 2 = 0.0000
F-Test = 10.7895 p-value > F(6, 698) = 0.0000
R 2 = 0.8517 R 2 -Adjusted = 0.8338
Log-likelihood = −308.6437 RMSE = 0.3801
Notes: ** and *** stand for 5% and 1% levels of significance, respectively.
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MDPI and ACS Style

Mai, X.T.T.; Nguyen, H.T.N.; Ngo, T.; Le, T.D.Q.; Nguyen, L.P. Efficiency of the Islamic Banking Sector: Evidence from Two-Stage DEA Double Frontiers Analysis. Int. J. Financial Stud. 2023, 11, 32. https://doi.org/10.3390/ijfs11010032

AMA Style

Mai XTT, Nguyen HTN, Ngo T, Le TDQ, Nguyen LP. Efficiency of the Islamic Banking Sector: Evidence from Two-Stage DEA Double Frontiers Analysis. International Journal of Financial Studies. 2023; 11(1):32. https://doi.org/10.3390/ijfs11010032

Chicago/Turabian Style

Mai, Xuan Thi Thanh, Ha Thi Nhu Nguyen, Thanh Ngo, Tu D. Q. Le, and Lien Phuong Nguyen. 2023. "Efficiency of the Islamic Banking Sector: Evidence from Two-Stage DEA Double Frontiers Analysis" International Journal of Financial Studies 11, no. 1: 32. https://doi.org/10.3390/ijfs11010032

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