DOI https://doi.org/10.18551/rjoas.2018-02.21
THE EFFECT OF GOOD CORPORATE GOVERNANCE, CAPITAL ADEQUACY, LIQUIDITY AND NON-PERFORMING LOAN ON BANK PROFITABILITY IN INDONESIA
Navy Sukmawati Kiky*, Iramani Rr
STIE Perbanas Surabaya, Indonesia *E-mail: [email protected]
ABSTRACT
This study aims to examine the effect of Good Corporate Governance, capital adequacy, liquidity, and non-performing loans to bank profitability in Indonesia in 2008-2016. The independent variables in this study are Good Corporate Governance assessed by its inverse value, capital adequacy represented by Capital Adequacy Ratio, liquidity represented by Loan to Deposit Ratio, and non-performing loans represented by Non-Performing Loan. Dependent variable in this research is profitability represented by Return on Asset and Return on Equity. This present study uses firm size control variables proxied by logarithm natural total asset (LnTA). The samples of this study are 10 banks with the largest total assets in Indonesia. The researcher uses data from bank annual report in 2008-2016 published on the website of each bank. This research is examined by using multiple linier regression analysis technique.
KEY WORDS
Bank, loan, profitability, assets, Indonesia.
Lehman Brothers is one of the strongest investment bank companies in Wall Street. The year of 2008 became the end of Lehman Brothers triumph. At that year, the consumption of the American people is very high compared to the income and they finance it in the form of debt or credit. Financial institutions went to bankruptcy because it cannot pay debts at the same time. At the same moment, Indonesia is also being disrupted by the Bank of Century bailout case. The case begins from the decrease of Bank of Century performance so that meetings are held to determine its status. The result of the meeting states that the Bank of Century is a failed bank, but there is a concern that it will have a systemic impact; therefore, in bank failure analysis, it is mentioned that the bank only needs additional capital of 632 billion rupiah.
Bank of Indonesia has attempted to improve the quality of conventional banks in Indonesia not only from the financial side but also from the non-financial side. Good Corporate Governance practices must be implemented in the banking industry since 2006. Based on Bank of Indonesia regulation No. 8/4/PBI/2006, Bank of Indonesia requires all banks in Indonesia to implement Good Corporate Governance. Based on the research conducted by Lukas (2015), Purwanto (2015), and Haider (2015), Good Corporate Governance affects profitability. Similarly, the research conducted by Lutfi et al (2014) states that the Board of commissioners and public transparency can increase profitability of bank operations. In this research, the effect of Good Corporate Governance on the profitability of conventional banks in Indonesia will be re- examined. In this study, Good Corporate Governance will be assessed based on composite value.
The implementation of Good Corporate Governance is done with the fulfillment of 11 assessment indicators. Assessment indicators ensure that the functioning of all policy holders is accountable. The bank's obligation to provide information transparently about the financial and non-financial conditions at the bank makes all management responsible for their respective duties. In addition, there is also the implementation of compliance functions that can maintain the suitability of implementation in banks with regulations set by Bank Indonesia. The main source of bank income is from interest income earned from credit customers. Loans are sourced from customers' deposits, including savings, deposits, and other time deposits. Since it has high role of customers for banks, then Bank of Indonesia
guarantees it with the assessment of Good Corporate Governance that will show the performance of bank management in regulating customer funds. Bank with composite value 1 is a bank that has implemented Good Corporate Governance very well. The implementation of Good Corporate Governance must be published so that customers know the performance of all banks, so that customers can choose which banks will be where they apply credit or to save the funds. The more customers have credit and save the funds in the bank, the more increasing the profitability of the bank.
In 2008, the banking industry is increasingly difficult to obtain third party funds, the banking industry reduces credit expansion due to tight liquidity, the weakening of rupiah exchange rate, the rising bank interest rates, the slackening of bond and stock market transactions, and the declining economic activity. The banking industry is also constrained by increasingly tight liquidity. The increasingly tight liquidity can threaten the Indonesian economy. The tight bank liquidity is viewed from the slow amount of deposits in the bank while the credit distribution is smoother. Based on the researches conducted by Rengasamy (2014) and Purwanto (2015), bank liquidity does not affect the profitability of banks. While the results of research dine by Serani et al (2016) prove that liquidity has a negative effect on profitability. The inconsistency of the study results will be re-examined in this present study.
Banking financial performance can be measured by liquidity ratio, solvency, and profitability. Liquidity ratio is the ratio used to see the bank's ability to meet its short-term liabilities. Short-term liabilities meant is the funds of depositors who are at any time withdrawn. Besides, the banks must also have the ability to provide disbursement of credit funds that have been approved. According to Agnes (2001, 28) the bank is considered being liquid if: (a) the bank has cash assets of the needs that will be used to meet its liquidity; (b) the bank has cash assets through various forms of debt. At the bank's financial statements, total assets of high value means not only shows a strong financial position, but also shows that there are excess assets which are idle. If a large asset is offset by a high asset turnover, it can generate profits. Idle funds can be allocated for disbursements in the form of credit so that banks can benefit from interest income. In this study, total assets can be a control variable to test the effect of Good Corporate Governance, capital adequacy, liquidity, and non-performing loans.
One of the causes of Lehman Brother's bankruptcy is the high level of bad debts, so the company is not able to finance the company's operations. Based on the research conducted by Abiola (2015), bad credit occurs due to the shift in the cost of failure of loan payments so that it can reduce profitability. Bhattarai (2016) and Juliana Stanley (2017) prove that non-performing loans have a positive effect on profitability, but in the research conducted by Frederick (2015), it reveals that non-performing loan is not the variable affecting profitability. In this research, the effect of non-performing loans on bank profitability in Indonesia will be examined.
Related to the large amount of bad loans, banks are required to have sufficient capital to be able to defend itself when conditions are difficult. The higher the capital adequacy rate of the bank, the better the bank is in self-defense. The research conducted by Abiola (2014), Frederick (2015) and Isanzu (2017) prove that capital adequacy has a positive effect on bank profitability. The condition of the capital adequacy of conventional banks in Indonesia over the past five years has always been an increase. Banks with large capital ratios mean having a capital structure that is a quarrel. Banks have sufficient funds that can be used as anticipation to cover the non-performing loans. A large capital ratio can trigger a team spirit to provide large credits, from the disbursed loans that are expected to provide a large interest income as well. A large interest income can increase ROA and ROE ratios.
METHODS OF RESEARCH
Based on the time dimension of the research, this research includes pooling data, in which the data used is from 2008-2016. Source of data used in this research is secondary data source that is bank annual report published in 2008-2016. Besides, based on the research objectives, this research is included into deductive research. On the other hand,
based on the characteristics of the problem, this study is included into comparative causal research, in which the researcher looks for causal relationships of dependent variables and independent variables.
The populations in this study are all conventional commercial banks in Indonesia and the research sample is the top ten banks with the largest total assets that publish annual report on 2008-2016 on their respective websites. The following sample in this research:
Table 1 - List of Sample
No. Bank name No. Bank name
1 BRI 6. Panin Bank
2 Mandiri 7. Permata Bank
3 BCA 8 Maybank
4 BNI 9 Danamon Bank
5 CIMB Niaga 10 OCBC NISP
The data analysis technique used is multiple linear regression. Before doing residual regression, the data must be free from undesirable things, so it needs to do normality test, multicolonierity test, autocorrelation test, and heteroscedasticity test. In this study, the effect of GCG variables, capital adequacy, liquidity and nonperforming loans to profitability (ROA and ROE) both partially and simultaneously will also be tested. The regression model used is:
Y = a + p i X i + p 2 X 2 + P 3 X 3 + P 4 X 4 + p 5 X 5 + £ 1
Where: a: constants
X1: Good Corporate Governance X2: Capital Adequacy X3: Liquidity
X4: Nonperforming loans
X5: Ln Total Assets
Pi, P2 ... P6: Regression coefficients
£1 : Error
The GCG used is the composite value submitted by each bank on the bank's annual report. High composite values indicate that banks disobey and adhere to 11 GCG guidelines, whereas GCGs should be able to improve profitability. The better the GCG implementation, the higher the profitability. However, high composite values indicate high GCG implementation. To simplify the process of data processing, the inverse value of GCG is done. The formula for inverse GCG is:
GCG1 = 6-GCG (1) GCG1 = inverse GCG value 6 = Constant GCG = Bank GCG Value
Capital adequacy used in this research is Capital Adequacy Ratio. The data used is the CAR ratio contained in the annual report of the bank year of 2008-2016. Liquidity used in this research is Loan to Deposit Ratio. The data used is the LDR ratio contained in the bank yearly report of 2008-2016. The bad credit used in this study is the ratio of Non-Performing Loans. The data used is the ratio of NPL found in the annual report of the bank year of 20082016.
RESULTS AND DISCUSSION
The classical assumption test shall be performed to ensure that the residual data used is data that is feasible and has been freed from the things that are not desirable. In this research, normality, multicolonierity test, autocorrelation test and heteroscedasticity test will be examined. Normality test is performed by using Kolmogorov smirnov test with significance of 5%. The results of the ROA normality test show 0,996, the significance is greater than
0,05. It means that the residual ROA data is normally distributed. Normality test result for the dependent variable ROE is 0,723, the significance is greater than 0,05. It means that residual rOe data is normally distributed.
Table 2 - Normality test result - ROA
One-Sample Kolmogorov-Smimov Test
n/n Unstandardized Residual
N. X 90
Normal Parameters a b Mean , 0000000
Std. Deviation ,74827451
Most Extreme Differences Absolute , 043
Positive , 037
Negative -, 043
Kolmogorov-Smirnov Z , 410
Asymp. Sig. (2-tailed) , 996
a. Test distribution is Normal.
b. Calculated from data.
Table 3 - Result of normality-ROE test
One-Sample Kolmogorov-Smimov Test
n/n Unstandardized Residual
N. X 90
Normal Parameters a b Mean , 0000000
Std. Deviation ,74827451
Most Extreme Differences Absolute , 043
Positive , 037
Negative -, 043
Kolmogorov-Smirnov Z , 410
Asymp. Sig. (2-tailed) , 996
a. Test distribution is Normal.
b. Calculated from data.
The multicolonierity test is performed by regression of the model and by looking at the VIF and tolerance values. The multiconerity test results show that the VIF value is less than 10 and tolerance is more than 0,1. The result of multicolonierity test on ROE variable with VIF value for all independent variable is less than 10 and tolerance value of all variables is more than 0.1. It means that, based on multicollonearity test, there is no correlation among independent variables.
Table 4 - Multicolonierity Test Result on ROA Variable
Coefficients3
Model Unstandardized Coefficients Standardized Coefficients t Sig. Collinearity Statistics
B Std. Error Beta Tolerance VIF
(Constant) -10,990 2,453 -4,480 , 000
gcg1 , 622 , 237 , 212 2,619 , 010 , 818 1,222
_ car1 1 ldr1 , 046 , 032 , 109 1,440 , 154 , 936 1.069
-, 008 , 009 -, 085 -, 934 , 353 , 648 1.544
npl1 -, 051 , 086 -, 045 -, 593 , 554 , 921 1.053
LnTA 2,000 , 264 , 637 7,577 , 000 , 757 1,321
a. Dependent Variable: roal
The table above reveals that the multicolonierity test results on the dependent variable of ROE with the VIF value for all independent variables is less than 10 and the tolerance value of all variables is more than 0,1. It means that, based on multicollonearity test, there is no correlation among independent variables.
RJOAS, 2(74), February 2018 Table 5 - Multicolonierity Test Result on ROE Variable
Coefficients3
Model Unstandardized Coefficients Standardized Coefficients t Sig. Collinearity Statistics
B Std. Error Beta Tolerance VIF
(Constant) -66,980 19,473 -3,440 , 001
gcgi 5,090 1.885 , 207 2,700 , 008 , 818 1,222
_ carl 1 ldr1 -, 503 , 252 -, 143 -1,997 , 049 , 936 1.069
-, 140 , 069 -, 176 -2,039 , 045 , 648 1.544
npll , 228 , 682 , 024 , 334 , 739 , 921 1.053
LnTA 15,328 2.095 , 584 7,316 , 000 , 757 1,321
a. Dependent Variable: roel
The next classical assumption test done is autocorrelation test. The purpose of the autocorrelation test is to ensure that there is no correlation between the period t and the previous period (t-1). The occurrence of autocorrelation can be done by doing Runs Test. The absence of correlation between periods t and t-1 can be seen from significance values above 0,05. The regression model in this study reveals that the autocorrelation test for the dependent variable of ROA is significant at 0,710. The result that the autocorrelation test for the dependent variable ROE shows significant at 0,710. It means that there is no correlation between the period t and the previous period (t-1).
Table 6 - Autocorrelation Test on ROA Variable
Runs Test
n/n Unstandardized Residual
Test Value a -, 28565
Cases <Test Value 45
Cases> = Test Value 45
Total Cases 90
Number of Runs 22
Z -5,088
Asymp. Sig. (2-tailed) , 710
a. Median
Table 7 - Autocorrelation Test on ROE Variable
Runs Test
n/n Unstandardized Residual
Test Value a -1,43717
Cases <Test Value 45
Cases> = Test Value 45
Total Cases 90
Number of Runs 24
Z -4,664
Asymp. Sig. (2-tailed) , 643
a. Median
The last classical assumption test is heteroscedasticity test. The purpose of the heteroscedasticity test is to ensure that the regression model does not contain residual variance inequality from one observation to another. The situation where the residual variance occurs is also called homoscedasticity. To obtain it, park test can be performed with significance of 0,05. The test results for the dependent variable of ROA shows that the significance of all independent variables is 0,05. It means that there is no heteroscedasticity in this model. The result of park test for ROA dependent variable reveals that the significance of all independent variables is above 0,05. It means that there is no heteroscedasticity in this model.
RJOAS, 2(74), February 2018 Table 8 - Heteroscedasticity Test Result on ROA Variable
Coefficients8
Model Unstandardized Coefficients Standardized Coefficients t Sig.
B Std. Error Beta
(Constant) -2,556 1,719 -1,486 , 145
gcg1 , 097 , 163 , 100 , 597 , 554
1 car1 ldr1 -, 009 , 020 -, 065 -, 429 , 670
-, 003 , 007 -, 080 -, 478 , 635
npl1 , 030 , 060 , 073 , 496 , 623
LnTA , 404 , 163 , 377 2,483 , 017
a. Dependent Variable: LnU2iROA
Table 9 - Heteroscedasticity Test Result on ROE Variable
Coefficients3
Model Unstandardized Coefficients Standardized Coefficients t Sig.
B Std. Error Beta
(Constant) 1,122 3,002 , 374 , 710
gcg1 -, 444 , 300 -, 242 -1,481 , 146
_ car1 1 ldr1 -, 004 , 040 -, 016 -, 105 , 917
-, 005 , 009 -, 100 -, 607 , 547
npl1 , 143 , 104 , 201 1.368 , 178
LnTA , 306 , 302 , 164 1.013 , 317
a. Dependent Variable: LnU2iROE
All the classical assumption test proves that the data used is the data which is worth using. Furthermore, multiple regression test is done with significance level 0,05. The amount of GCG variable capability, Capital Adequacy (CAR), liquidity (LDR) and Nonperforming Loans (LDR) in explaining ROA variable is 55,1%. It means that 44,9% can be explained by variables other than GCG, capital adequacy, liquidity, and non-performing loans.
Table 10 - Model Summary of Multiple Linear Regression - ROA
Model Summaryb
Model R. R Square Adjusted R Square Std. Error of the Estimate
1 A.4. , 551 , 524 , 7702227
a. Predictors: (Constant), LnTA, car1, npl1, gcg1, ldr1
b. Dependent Variable: roa1
Table 11 - Multiple Linear Regression Coefficient - ROA
Coefficientsa
Model Unstandardized Coefficients Standardized Coefficients t Sig.
B Std. Error Beta
(Constant) -10,990 2,453 -4,480 , 000
gcg1 , 622 , 237 , 212 2,619 , 010
„ car1 1 ldr1 , 046 , 032 , 109 1,440 , 154
-, 008 , 009 -, 085 -, 934 , 353
npl1 -, 051 , 086 -, 045 -, 593 , 554
LnTA 2,000 , 264 , 637 7,577 , 000
a. Dependent Variable: roal
The table above is the result of multiple regression test which shows that GCG has positive significant effect on profitability (ROA). While the variables of adequacy and liquidity and nonperforming loans are not significant on profitability (ROA).
RJOAS, 2(74), February 2018 Table 12 - Model Summary of Multiple Linear Regression - ROE
Model Summary b
Model R. R Square Adjusted R Square Std. Error of the Estimate
1 A.4. , 595 , 571 6,1137135
a. Predictors: (Constant), LnTA, carl, npll, gcgl, ldr1
b. Dependent Variable: roel
The table above reveals that the GCG variables of ability, Capital Adequacy (CAR), liquidity (LDR) and non-performing loans (LDR) in explaining ROE variable is 59,5%. It means that 40,5% can be explained by variables other than GCG, capital adequacy, liquidity, and non-performing loans.
Table 13 - Multiple Linear Regression Coefficient - ROA
Coefficients3
Model Unstandardized Coefficients Standardized Coefficients t Sig.
B Std. Error Beta
(Constant) -66,980 19,473 -3,440 , 001
gcgi 5,090 1.885 , 207 2,700 , 008
„ carl 1 ldr1 -, 503 , 252 -, 143 -1,997 , 049
-, 140 , 069 -, 176 -2,039 , 045
npll , 228 , 682 , 024 , 334 , 739
LnTA 15,328 2.095 , 584 7,316 , 000
a. Dependent Variable: roel
The result of multiple regression test shows that GCG has a significant positive effect on profitability (ROE), CAR, and LDR have significant negative effect on profitability (ROE). While, the variable of NOL is not significant to profitability (ROE). It means that GCG has a significant positive effect on profitability, capital adequacy, and liquidity significantly negatively affect profitability and nonperforming loan does not have significant effect on profitability (ROE).
In this study, the effect of GCG, capital adequacy, liquidity, and non-performing loan is tested significantly on profitability (ROA and ROE). The first step that must be done to perform the F test is to determine the test hypothesis. Ho testing mentions that there is no significant effect between GCG, CAR, LDR, NPL respectively on profitability (ROA). This test is significant at 5%. Based on Test F (simultaneous) on profitability (ROA), it reveals that F arithmetic amounted to 20,613. F table in this test is 2.479015. The value of F count is more than F table, so Ho is rejected. It means that there is a significant effect between GCG, capital adequacy, liquidity, and non-performing loan on profitability (ROA).
Table 14 - F Test Result (Simultaneous) - ROA
ANOVAb
Model Sum of Squares df Mean Square F. Sig.
1 Regression 61,143 5 12,229 20.613 A.4.
Residual 49.832 84 , 593
TOTAL 110.975 89
a. Predictors: (Constant), LnTA, carl, npll, gcgl, ldr1
b. Dependent Variable: roa1
In the ROE variable, Test F (Simultaneous) is also performed. The first step that must be done to perform the F test is to determine the test hypothesis. Ho testing mentions that there is no significant effect between GCG, adequacy, and liquidity and non-performing loans on profitability (ROE). This test is significant at 5%. Based on Test F (simultaneous) on profitability (ROA), it shows that F count for 24,661. F table in this test is 2.479015. F value count is more than F table, so Ho is rejected. It means that there is a significant effect between GCG, adequacy, and liquidity and non-performing loans on profitability (ROE).
RJOAS, 2(74), February 2018 Table 15 - F (Simultaneous) Test Result - ROE
ANOVA b
Model Sum of Squares df Mean Square F. Sig.
Regression 4608,871 5 921,774 24,661 A.4.
1 Residual 3139,709 84 37.377
TOTAL 7748,580 89
a. Predictors: (Constant), LnTA, carl, npll, gcgl, ldr1
b. Dependent Variable: roel
After simultaneous testing, this study also tests the effect of each variable of GCG, adequacy, and liquidity and non-performing loans respectively on Profitability (ROA and ROE). The tests are done in two stages namely for right side and left side. The test on the right side aims to partially test the effect of variables that have a positive effect and the test on the left side aims to partially test the effect of variables that negatively affect. Right-side testing is done for GCG variables, capital adequacy, and liquidity. Left-side testing is performed for the non-performing loan variable.
The first test is a right-left test. Ho in this test is GCG, capital adequacy, and liquidity partially have a non-significant positive effect on profitability (rOa). The significance of this test is 5% and t table in this study is 1.988268. The result of t test (partial) can be seen that t count of GCG is bigger than t table, and t count of other variable is less than t table. It means that partial GCG variables have a non-significant positive effect on profitability (ROA). The test results also prove that the capital adequacy and liquidity have a significant positive effect on profitability (ROA).
In the left-side test, Ho testing is a partially non-performing loans having a nonsignificant negative effect on profitability (ROE). The significance of this test is 5% and t table in this study is 1.988268. The result of t test (partial) can be seen that t count of NPL which is less than t table. It means that the liquidity variable partially has a significant negative effect on profitability (ROA).
Table 16 - T-ROA Test Result
Coefficients3
Model Unstandardized Coefficients Standardized Coefficients t Sig.
B Std. Error Beta
(Constant) -10,990 2,453 -4,480 , 000
gcg1 , 622 , 237 , 212 2,619 , 010
_ car1 1 ldr1 , 046 , 032 , 109 1,440 , 154
-, 008 , 009 -, 085 -, 934 , 353
npl1 -, 051 , 086 -, 045 -, 593 , 554
LnTA 2,000 , 264 , 637 7,577 , 000
a. Dependent Variable: roal
Table 17 - Result of t Test - ROE
Coefficients3
Model Unstandardized Coefficients Standardized Coefficients t Sig.
B Std. Error Beta
(Constant) -66,980 19,473 -3,440 , 001
gcg1 5,090 1.885 , 207 2,700 , 008
car1 1 ldr1 -, 503 , 252 -, 143 -1,997 , 049
-, 140 , 069 -, 176 -2,039 , 045
npl1 , 228 , 682 , 024 , 334 , 739
LnTA 15,328 2.095 , 584 7,316 , 000
a. Dependent Variable: roe1
The next test is the t test for the profitability variable (ROE). Ho in this test are GCG, capital adequacy, and liquidity partially have a non-significant positive effect on profitability
(ROE). The significance of this test is 5% and t table in this study is 1.988268. The result of t test (partial) shows t count of GCG is bigger than t table, and t count of other variable is less than t table. It means that partial GCG variables have a non-significant positive effect on profitability (ROA). The test results also show that the capital adequacy and liquidity have a significant positive effect on profitability (ROA).
In the left-side test, Ho testing is a partially non-performing loans having a nonsignificant negative effect on profitability (ROE). The significance of this test is 5% and t table in this study is 1.988268. Based on the table of t test results (partial), it can be seen that t count of NPL is less than t table. It means that the partial liquidity variable has a significant negative effect on profitability (ROE).
CONCLUSION
Based on the results of the research, it can be concluded that GCG, capital adequacy, and liquidity have an effect on profitability. Non-performing loan variable does not have any effect on profitability. In the upcoming research, other independent variables can be added that can affect the performance of banks in Indonesia.
REFERENCES
1. Abiola, I., & Olausi, A. S. (2014). The Impact Of Credit Risk Management On The Commercial Bank Performance In Nigeria. International journal of management and sustainability, Vol 3, No. 5, Pp. 295-306.
2. Agbeja,O., Adelakun, O.J., & Olufemi, F.I. (2015). Capital Adequacy Ratio and bank profitability in Nigeria: A linier approach. Inrernational Journal of Novel Research in Marketing Management and Economics, Vol. 2, No. 3, Pp. 91-95.
3. Agnes, S. (2001). Analisis Kinerja Keuangan dan perencanaan Keuangan Perusahaan. Jakarta: PT. Gramedia Pustaka Umum
4. Agnes, S. (2001). Analisis Kinerja Keuangan dan perencanaan Keuangan Perusahaan. Jakarta: PT. Gramedia Pustaka Umum
5. Bhattarai, Y. R. (2016). Effect Of Kredit bermasalah On The Profitability Of Commercial Bank In Nepal. The International Journal of Business dan Management, Vol 4, No.6, Pp. 435-441.
6. Frederick, N. K. (2015). Factors Affecting Performance of Commercial Banks in Uganda -A Case for Domestic Banks. International Review of Business Research papers, Vol. 11, No.1, Pp. 95-113.
7. Haider, N., Khan, N., & Iqbal, N. (2015). Impact of corporate Governance on Firm Financial Performance in Islamic Financial Institution. International letters of Social and Humanistic Science, Vol. 51, Pp. 106-110.
8. Isanzu, J. S. (2017). The Impact of Credit Risk on the financial performance of Chinese Banks. Journal of International Business Research and Marketing, Vol 2, No.3, Pp. 1417.
9. Lukas, S., & Basuki, B. (2015). The Impact of Good Corporate Governance and its impact on the financial performance of banking industry listed in IDX. The International Journal of Accounting and Business Society, Vol. 23, No.1, Pp. 47-71.
10. Lutfi, Silvy, M., & Iramani, R. 2014. The role of board of commissioners and transparency in improving bank operational efficiency and profitability. Journal of Economics, Business and Accountancy Ventura, Vol 17(No. 1), Pp. 81-90.
11. Purwanto, W. 2015. Analysis of the Impact of Good Corporate Governance and Bank Fundamental to the Financial Performance of Banking institutions in Indonesian Stock Exchange (BEI). Research Journal of Finance and Accounting, Vol. 6, No. 8, Pp.1-6.
12. Rengasamy, D. 2014. Impact of Likuiditas on profitability: Panel Evidence from commercial banks in Malaysia. Proceeding of the third International conference on global business, economic, finance and social sciences (GBI4 Mumbai).