1. Trang chủ
  2. » Luận Văn - Báo Cáo

Macro economic determinants of credit risks in the asean banking system

112 6 0

Đang tải... (xem toàn văn)

Tài liệu hạn chế xem trước, để xem đầy đủ mời bạn chọn Tải xuống

THÔNG TIN TÀI LIỆU

UNIVERSITY OF ECONOMICS HO CHI MINH CITY VIETNAM ERASMUS UNVERSITY ROTTERDAM INSTITUTE OF SOCIAL STUDIES THE NETHERLANDS VIETNAM – THE NETHERLANDS PROGRAMME FOR M.A IN DEVELOPMENT ECONOMICS MACROECONOMIC DETERMINANTS OF CREDIT RISK IN THE ASEAN BANKING SYSTEM BY NGUYEN CHI THANH MASTER OF ARTS IN DEVELOPMENT ECONOMICS HO CHI MINH CITY, DECEMBER 2016 UNIVERSITY OF ECONOMICS HO CHI MINH CITY VIETNAM INSTITUTE OF SOCIAL STUDIES THE HAGUE THE NETHERLANDS VIETNAM - NETHERLANDS PROGRAMME FOR M.A IN DEVELOPMENT ECONOMICS MACRO ECONOMIC DETERMINANTS OF CREDIT RISK IN THE ASEAN BANKING SYSTEM A thesis submitted in partial fulfilment of the requirements for the degree of MASTER OF ARTS IN DEVELOPMENT ECONOMICS By NGUYEN CHI THANH Academic Supervisor: DR NGUYEN VU HONG THAI HO CHI MINH CITY, DECEMBER 2016 DECLARATION I declare that the wholly and mainly contents and the work presented in this thesis (Macro Economic Determinants of Credit risk in the ASEAN Banking System) are conducted by myself The work is based on my academic knowledge as well as my review of others’ works and resources, which is always given and mentioned in the reference lists This thesis has not been previously submitted for any degree or presented to any academic board and has not been published to any sources I am hereby responsible for this thesis, the work and the results of my own original research NGUYEN CHI THANH i ACKNOWLEDGEMENT Here I would like to show my sincere expression of gratitude to thank my supervisor, Dr Nguyen Vu Hong Thai for his dedicated guideline, understanding and supports during the making of this thesis His precious academic knowledge and ideas has motivated me for completing this thesis Besides, I would like to express my appreciation to the lecturers and staff of the Vietnam – Netherlands Program at University of Economics Ho Chi Minh city for their willingness and priceless time to assist and give me opportunity for this thesis completion Next, I would like to thank all of my classmates for their encouragement and their hard work, which become a good example for me to the thesis I wish all of us will graduate at the same date Lastly, I would like to express my love to my families for their unlimited supports which has led to the completion of this course research project ii ABBREVIATION ASEAN: Association of Southeast Asian Nations DGMM: the difference generalized method of the moments estimator FE & RE: Fixed-effect and Random-effect estimator GDP: Gross domestic product NPLs: Non-performing loans OECD: Organization for Economic Cooperation and Development OLS: Ordinary Least Square SGMM: the system generalized method of the moments estimator ABSTRACT The impact of credit risk, which is caused by the increase in the non-performing loans (NPLs), on the performance and stability of banking system as well as economic activities have recently raised many interests from researchers and policy makers Motivated by the close connection between the NPLs and macroeconomic environments as proposed by many researchers, this paper will empirically examine the determinants of non-performing loans in commercial banking systems of the five ASEAN countries in the period of 2002 to 2015 The research uses a sample of 162 banks in these countries with 11 variables of macroeconomic and bank-specific factors and applies the System Generalized Method of Moments estimator (SGMM) for dynamic panel models The empirical results in this paper indicate that the movement of NPLs in the commercial banks of the five studied countries is associated with both macroeconomic variables and bank-specific factors For the macroeconomic condition, an increase in unemployment rate and the appreciation of domestic currency are found to significantly increase the NPLs In addition, bank with higher returns on asset and leverage ratio and low ratio of equity to total assets will have lower rate of NPLs Moreover, with the application of additional statistical analyses, the results indicate that the findings of the main model of this paper are consistent and robust CONTENTS DECLARATION i ACKNOWLEDGEMENT .ii ABBREVIATION iii CONTENTS v APPENDIX LIST OF TABLES CHAPTER 1: OVERVIEW OF RESEARCH .3 Introduction .3 1.1 Backgrounds: .3 1.2 Problem statements: 1.3 Research objectives: 1.4 Research questions: .6 1.5 Hypothesis of the study .6 1.6 The importance of research 1.7 Structure of Research CHAPTER 2: LITERATURE REVIEWS 2.1 Theoretical reviews: 2.2 Empirical reviews: .13 2.3 Conclusion 22 2.4 Research Hypothesis: 23 CHAPTER 3: DATA AND METHODOLOGY 27 3.1 Data collection 27 3.2 Econometric methodology – The NPLs measurement: 28 3.3 The variables definition and measurement: 32 3.3.1 The dependent variable – the Non-performing loans: .32 3.3.2 Macroeconomic variables: 32 3.3.3 Microeconomic variables – bank-specific determinants 34 3.4 Econometric strategy – The system GMM estimator 38 CHAPTER 4: RESULTS AND DISCUSSIONs 40 4.1 Summary statistics: 40 4.2 Unit root tests: 41 4.3 Empirical results: 41 CHAPTER 5: OTHER ANALYSIS AND ROBUSTNESS CHECK 51 CHAPTER 6: CONCLUSION, POLICY IMPLICATIONS & LIMITATIONS OF THE REASEARCH .56 6.1 Main findings: 56 6.2 Policy implications: 57 6.3 Limitations: 58 6.4 Future research recommendation 58 REFERENCES .59 APPENDIX 66 APPENDIX Appendix 1: Number of banks in each country Appendix 2: xtabond2 model selection criteria Appendix 3: Correlation of variables Appendix 4: Additional analyses and Robustness checks Appendix 5: Additional analyses and Robustness checks Page | LIST OF TABLES Table 1: Description of variables Table 2: Summary statistics Table 3: Unit root tests for NPLs estimations variables Table 4: Results with SGMM and fixed-effect estimations CHAPTER 1: OVERVIEW OF RESEARCH Introduction: Banks are the financial intermediaries who play an important role in the development of a country In the financial sector, a commercial bank is a funding channel, which can allocate the cash flows in the economy through their financial services as well as traditional services (taking deposits and make business loans) Whenever a loan is approved, banks gain profits from the borrowers by loan interest rate and services fees However, banks would expose to credit risk from this service because borrowers could suddenly lost their abilities to pay the loan in time, namely the nonperforming loans (NPLs) The main reason for that comes from the movement of the macroeconomic environment, which directly impacts to the revenues and business activities of bank borrowers Therefore, this paper will conduct an examination about how the economics determinants affect the bank credit risk In this chapter, the backgrounds, problem statements, research objectives, research questions, significance of the research and the layouts will be discuss around this issue 1.1 Backgrounds: Along with the expansion of the economy as well as financial liberalization process in developing countries, the financial sector have been grown with surprising rate Besides, the improvements of technology and management procedures help banks making decisions to grow in financial markets However, the occurrences of two big economic recessions in 1997 and 2007 have significantly affected the banking systems in developing countries It associated with the deteriorated quality of bank assets due to a massive increase in the NPLs, which has a close connection to the economic cycle Asfaw, A H & P Veni, P (2015) Determinants of Credit Risk in Ethiopian Private Commercial Banks International Journal of Accounting and Financial Management Research Vol 5, Issue 3, 1-14 Aver, B., 2008 An empirical analysis of credit risk factors of the Slovenian banking system Managing Global Transitions, (3), 317–334 Badar, M., & Javid, A Y., (2013) Impact of macroeconomic forces on nonperforming loans: an empirical study of commercial banks in Pakistan WSEAS Transactions on Business and Economics, 10(1), 40-48 Beck, R., Jakubik, P., Piloiu, A., (2013) Non-performing loans-What matters in addition to the economic cycle? Working Paper Series, European Central Bank, No 1515 Berge, T.O., Boye, K.G., (2007) An analysis of bankfs problem loans Norges Bank Economic Bulletin 78, 65.76 Berger, A., DeYoung, R., (1997) Problem loans and cost efficiency in commercial banks Journal of Banking and Finance 21, 849.870 Blankespoor, E., Linsmeier, T J., Petroni, K R and Shakespeare, C., (2012) Fair value accounting for financial instruments: Does it improve the association between bank leverage and credit risk? Forthcoming at The Accounting Review Blundell, R., Bond, S., (1998) Initial conditions and moment conditions in dynamic panel data models Journal of Econometrics 87, 115–143 Blundell, R., Bond, S., Windmeijer, F., (2000) Estimation in dynamic panel data models: improving on the performance of the standard GMM estimator In: Nonstationary Panels, Panel Cointegration and Dynamic Panels In: Baltagi, B (Ed.) Advances in Econometrics, vol 15 JAI Press, Elsevier Science, Amsterdam Bohachova, O., (2008) The impact of macroeconomic factors on risks in the banking sector: a cross-country empirical assessment IAW Discussion Papers, 44 Bond, S., (2002) Dynamic panel data models: a guide to micro data methods and practice Portuguese Economic Review 1, 141–162 Bond, S., Windmeijer, F., (2002) Finite Sample Inference for GMM Estimators in Linear Panel Data Models: A Comparison of Alternative Tests Mimeo, Institute for fiscal studies, London Page | 60 Bucur, I A & Dragomirescu, S E., (2014) The Influence of Macroeconomic Conditions on Credit Risk: Case of Romanian Banking System Studies and Scientific Researches Economics Edition, No 19 Carkovic, M., Levine, R., (2005) Does foreign investment accelerate economic growth? In: Mortan, T., Graham, E., Blomstrom, M.(Eds.), Does Direct Foreign Investment Promote Development? Institute for International Economics and Center of Global Development, Washington, DC, pp 195.220 Castro, V., (2013) Macroeconomic determinants of the credit risk in the banking system: The case of the GIPSI Economic Modelling, Volume 31, March 2013, Pages 672-683, ISSN 0264-9993 Cifter, A., Yilmazer, S., Cifter, E., (2009) Analysis of sectorial credit default cycle dependency with wavelet networks: evidence from Turkey Economic Modelling 26, 1382–1388 Chaibi, H., & Ftiti,Z., (2015) Credit risk determinants: Evidence from a cross country study Research in International Business and Finance, 33, 1–16 Curak, M., Sandra Pepur, S., Poposki, K., (2013) Determinants of non-performing loans – evidence from Southeastern European banking systems Banks and Bank Systems, Volume 8, Issue Dash, M., Kabra, G., (2010), The determinants of non-performing assets in Indian commercial bank: An econometric study Middle Eastern Finance and Economics, 7, 94-106 DeAngelo, H and Stulz, R M., (2013) Why High Leverage is Optimal for Banks NBER Working Paper No 19139 De Bock, R & Demyanets, A., (2012) Bank Asset Quality in Emerging Markets; Determinants and Spillovers IMF Working Papers 12/71 Demirguc-Kunt, A., Detragiache, E., (1998) The Determinants of Banking Crises and Developed Countries IMF Staff Papers, 45 (1), 81-109 Demirguc-Kunt, A., Huizinga, H (1999) Determinant s of commercial bank interest margins and profitability: some international evidence The World Bank Economic Review, 13(2), 379-408 Page | 61 Farhan, M., Sattar, A., Chaudhry, A B., & Fareeha K., (2012) Economic determinants of non-performing loans: perception of Pakistani bankers European Journal of Business and Management, 4(19), 87-99 Festic, M., Kavkler, A., Repina, S., (2011) The macroeconomic sources of systemic risk in the banking sectors of five new EU member states Journal of Banking and Finance 35, 310–322 Fofack, H., (2005) Non-performing loans in sub-Saharan Africa: Causal Analysis and Macroeconomic Implications World Bank Policy Research Working Paper no 3769 Gambera, M., (2000) Simple forecasts of bank loan quality in the business cycle Issue Series, No 3, Federal Reserve Bank of Chicago, Chicago Gunsel, N., (2012) Micro and macro determinants of bank fragility in North Cyprus economy African Journal of Business Management, 6(4), 1323-1329 Hoggarth, G., Sorensen, S and Zicchino, L (2005) Stress tests of UK banks using a VAR approach Working Paper no 282 Bank of England Hu, J., Yang, Li., Yung-Ho, C., (2004) Ownership and non-performing loans: evidence from Taiwan’s banks Developing Economies 42, 405.420 Jakubik, P., (2007) Macroeconomic environment and credit risk Czech Journal of Economics and Finance 57 (1–2), 60–78 Jiménez, G., Saurina, J., (2006) Credit cycles, credit risk and prudential regulation International Journal of Central Banking (2), 65–98 Judson, R., Owen, L., (1999) Estimating dynamic panel data models: a guide for macroeconomists Economics Letters 65, 9–15 Juks, R., (2010) Why banks prefer leverage? Sveriges Riksbank, Economic Review 2010:3, 23-35 Garr, D, K., (2013) Determinants of Credit Risk in the Banking Industry of Ghana Developing Country Studies, 3(1), 64-77 Garr, D, K., (2013) Macroeconomic and Industry Determinants of Interest Rate Spread- Empirical Evidence Developing Country Studies, 3(12), 90-99 Godlewski, C., (2005).Bank capital and credit risk taking in emerging market economies Journal of Banking Regulation 6(2), 128-145 Kalirai, H and Scheicher, M (2002) Macroeconomic stress testing: preliminary evidence for Austria Financial Stability Report 3, 58-74 Kelly, R (2012) House Prices, Unemployment & Irish Mortgage Losses Central Bank of Ireland Klein, N., (2013) Non-Performing Loans in CESSE: Determinants and Impact on Macroeconomic Performance IMF Working Paper, European Department, 2013 Koch, T W and McDonald (2003) Bank Management 3rd edition,Sydney, Thomson Lawrence, E., (1995) Default and the life cycle model Journal of Money Credit and Banking 27, 939–954 Laeven, L., Ratnovski, L and Tong, H (2014) Bank Size and Systemic Risk IMF Staff Discussion Note 14/04 Lindgren, C.-J., Garcia, G., and M I Saal (1996) Bank Soundness and Macroeconomic Policy Washington, D.C Louzis, D., Vouldis, A., and Metaxas, V., (2012) Macroeconomic and Bank-specific Determinants of Non-performing Loans in Greece: A Comparative Study of Mortgage, Business and Consumer Loan Portfolios Journal of Banking & Finance, Elsevier, 36, 1012 Makri, V., Tsagkanos, A., Bellas, A., (2014) Determinants of Non-Performing Loans: The Case of Eurozone PANOECONOMICUS, 2014, 2, pp 193-206 Messai, A and Jouini, F., (2013) Micro and Macro Determinants of Non-performing Loans International Journal of Economics and Financial Issues 3, 852 Mishkin, F (1996) Understanding Financial Crises: A Developing Country Perspective NBER Working Paper 5600 Modigliani, F., Miller, M., 1958 The cost of capital, corporate finance, and the theory of investment American Economic Review 48, 261-297 Nkusu, M., (2011) Nonperforming Loans and Macro financial Vulnerabilities in Advanced Economies International Monetary Fund, WP No 11/161 Nursechafia, N & Abduh, M (2014) The Susceptibility of Islamic Banks’ Credit Risk towards Macroeconomic Variables Journal of Islamic Finance Vol 3, No Pesola, J., (2005) Banking fragility and distress: an econometric study of macroeconomic determinants Bank of Finland Research Discussion Papers, 13/2005 Peyavali, J S (2015) The Impact of Macroeconomic Determinants on Nonperforming Loans in Namibia International Review of Research in Emerging Markets and the Global Economy, (4), 612-632 Podpiera, J., Weill, L., (2008) Bad luck or bad management? banking market experience Journal of Financial Stability 4, 135–148 Poudel, R P S., (2013) Macroeconomic determinants of credit risk in Nepalese banking industry In Proceedings of 21st International Business Research Conference Quagliariello, M., (2007) Banks riskiness over the business cycle: a panel analysis on Italian intermediaries Applied Financial Economics, 17(2), 119-138 Rajan, R., (1994) Why bank policies fluctuate: a theory and some evidence Quarterly Journal of Economics 109, 399.441 Ratnovski, L., (2013) Liquidity and Transparency in Bank Risk Management International Monetary Fund Rinaldi, L., Sanchis-Arellano, A., (2006) Household Debt Sustainability: What Explains Household Non-performing Loans? An Empirical Analysis ECB Working Paper Roodman, D., (2006) How to xtabond2: An introduction to “difference” and “system” GMM in Stata Center for Global Development Working Paper No 103 Roodman, D., (2009) Practitioners' corner A note on the theme of too many instruments Oxford Bulletin of Economics and Statistics, 71(1), 135.158 Salas, V., Saurina, J., (2002) Credit risk in two institutional regimes: Spanish commercial and savings banks Journal of Financial Services Research 22, 203– 224 Shu, C., (2002) The impact of macroeconomic environment on the asset quality of Hong Kong's banking sector R D Economic Research Division, Hong Kong Monetary Authority Solarin, S A., Sulaiman, W., Yusoff, W and Dahalan, A., (2011) An ARDL approach to the determinants of Nonperforming loans in Islamic banking system in Malaysia Kuwait Chapter of Arabian journal of business and management review vol no Stiglitz, J E and A Weiss (1981) Credit Rationing in Markets with Imperfect Information American Economic Review 71(3): 393-410 Stiroh, K & Rumble, A., (2006) The dark side of diversification: The case of US financial holding companies Journal of Banking and Finance, 30, 2131-2161 Thiagarajan, S., (2013) Determinants of Credit Risk in the Commercial Banking Sector of Belize Research Journal Of Social Science And Management, 03, 84-90 Thiagarajan, S., S Auuapan, et al (2011) Credit risk determinants of public and Private sector banks in India European Journal of Economics, Finance and Administrative Science(34): 147-154 Vogiazas, S D., (2015) Determinants of Credit Risk in the Bulgarian and the Romanian Banking Systems and the Role of the Greek Crisis South East European Research Centre, Department of Economics of Sheffield University Vogiazas, S D., Nikolaidou, E (2011) Credit risk determinants in the Bulgarian banking system and the Greek twin crises Management of International Business and Economics Systems, 177-189 Washington, G K., (2014) Effects of macroeconomic variables on credit risk in the Kenyan banking system International Journal of Business and Commerce, 3(9), 1-26 Windmeijer, F., (2005) A finite sample correction for the variance of linear efficient two-step GMM estimators Journal of Econometrics 126, 25–51 Williamson, S (1987), Financial Intermediation, Business Failures, and Real Business Cycles Journal of Political Economy, 95(6), 1196–1216 Zribi, N., & Boujelbene, Y., (2011) The factors influencing bank credit risk: the case of Tunisia Journal of Accounting and Taxation, 3(4), 70-78 APPENDIX APPENDIX Number of banks in each country: 162 banks in total Indonesia 70 banks Malaysia 20 banks Philippine 21 banks Thailand 21 banks Vietnam 30 banks APPENDIX xtabond2 model selection criteria Criteria Requirement description F-test - Reject the null hypothesis that independent variables are jointly equal to zero Arellano-Bond test - First-order serial correlation (AR1 ≤ 0.05) but no second-order serial correlation (AR2 ≥ 0.1) in the residuals (Arellano & Bond, 1991) Sargan Test - Sargan statistic is biased in one-step estimator with ‘Robust’ option (Roodman, 2006) Therefore, Sargan Test is not considered Hansen J-statistic - P value ≥ 0.25 (Roodman, 2009) and p ≤ 0.80 over-identifying restrictions does not reject the null at any conventional level of significance Difference-in-Hansen 2009) Steady state - P value of is the sign of inappropriate model (Roodman, The estimated coefficient on the lagged dependent variable should have a value less than (absolute) unity (Roodman, 2009) The number of instruments should not exceed the number of groups (i.e number of banks) (Roodman, 2009) Number - of instruments Optimal instruments - Roodman (2006, 2009) suggests reporting how the optimal number of instruments The standard treatment on lag-limits is used, such that lag-limits start from lag2 for endogenous variable (and from lag1 for exogenous and predetermined) to the most available lag The ‘collapse’ option is used to keep the number of instruments within Stata's size limit A number of other regressions are estimated by adjusting the upper and lower lag- limits The regression which satisfies all the criteria listed above is selected as the optimal regression Source: Roodman, 2006; Roodman, 2009; Arellano & Bond, 1991 APPENDIX Correlation NPL SVCR DEBT INEFF LOGSIZE NOINTINC ROA UNEMP RINT REER GDPG NPL 1.0000 SVCR 0.0353 1.0000 DEBT 0.0334 0.9662 1.0000 INEFF 0.1353 -0.1233 -0.0950 1.0000 LOGSIZE 0.0228 -0.4342 -0.3636 -0.1384 1.0000 NOINTINC 0.1235 -0.0361 -0.0384 0.1424 0.1461 1.0000 -0.2017 0.2285 0.1753 -0.4678 -0.0232 0.0874 1.0000 UNEMP 0.0734 0.0250 -0.0076 0.1780 -0.3636 -0.0083 0.1818 1.0000 RINT 0.0488 0.0424 0.0322 0.0800 -0.0568 0.0160 0.0141 0.1580 1.0000 REER -0.2705 -0.0293 -0.0194 -0.0337 0.2032 -0.0733 -0.0923 -0.3603 -0.0715 1.0000 GDPG 0.0008 -0.0504 -0.0491 -0.0004 -0.1201 0.0022 0.0521 0.1180 -0.3303 0.0706 1.0000 -0.1192 -0.0242 -0.0251 0.0079 -0.2542 -0.1739 0.1016 0.2952 -0.6768 -0.0622 0.3395 ROA INFGDP INFGDP 1.0000 Page | 67 APPENDIX Additional analyses and Robustness checks Variables Constant Lagged NPLs SVCR LEVER INEFF NOINTINC LOGSIZE ROA UNEMP RINT INTSP REER L.GDPG L.M2 Money supply (M2) (4) -10.5152 (11.0380) 0.5715*** (0 0713) Interest rate spread (5) -11.3040 (11.7284) 0.5385*** (0.0823) Bank-specifics 0.5168* 0.5412** (0.2772) (0.2723) -0.2033* -0.2167* (0.1188) (0.1113) -0.0024 -0.0040 (0.0277) (0.0355) -0.0326 -0.0090 (0.0839) (0.1138) 1.1340 1.1503 (0.7988) (0.8109) -2.346** -2.0048** (0.9870) (1.100) Macro - Variables 0.2460* 0.2565* (0.1417) (0.1467) 0.0134 (0.1472) 0.1337 (0.2038) -0.0622** -0.0717*** (0.0266) (0.0245) 0.0807 (0.0533) 0.0388** (0.0197) No of obs No of groups No of instrument AR1-test AR2-test 0.0283 (0.1424) 1261 162 41 -2.67 [0.008] 0.91 [0.362] -11.0404 (11.1411) 0.5525*** (0.0781) 0.5360** (0.2615) -0.2119** (0.1061) -0.0027 (0.0297) -0.0237 (0.0911) 1.1392 (0.7696) -2.0679** (0.8526) 0.2322* (0.1370) 0.0517 (0.1272) -0.0651*** (0.0233) 0.0588 L.GDP/Capita INFGDP GDP per capita (6) 0.0501 (0.0382) 1261 162 41 Sargantest 36.55 [0.019] (0.0466) 0.0773 (0.1197) 1261 162 41 -2.73 [0.006] 0.55 [0.580] Page | 69 39.09 [0.079] Hansen p-value 0.714 7 0.765 [0.006] 0.89 [0.373] 39.70 [0.070] 0.726 Page | 70 Notes: All models were estimated with a constant Robust t-statistics are in parentheses Significance level at which the null hypothesis is rejected: ***, 1%; **, 5%; and *, 10% The model was estimated one-step SGMM estimator with difference lag For each regression are presented the number of observations (No Obs.) AR1 and AR2 tests are the Arellano–Bond tests for first and second-order autocorrelation in firstdifferenced errors; The statistics and p-values (in square brackets) for the Sargan-test of over-identifying restrictions and Hansen-test for uncorrelation between the instruments and residuals are also reported for the AB estimations The appreciated real effective exchange rate means appreciated domestic currency APPENDIX Additional analyses and Robustness checks Variables Constant Lagged NPLs SVCR LEVER INEFF NOINTINC LOGSIZE ROA UNEMP RINT REER L.GDPG INFGDP No of obs No of groups No of instrument year ≥ 2007 (7) -2.4997 IDN out (8) -7.2192 Two-step SGMM (9) -6.9052 (9.9146) (11.8557) (6.1437) 0.5942*** (0.1107) 0.6034** Bank-specifics * 0.6097** (0.0699) (0.2428) -0.2017** 0.2249 (0 0859) (0.2354) -0.1039** -0.0982 (0.0423) (0.0999) -0.1289 -0.0774* (0.1046) (0.0448) 1.4037* -0.0339 (0.8462) (0.0971) -3.1629** 0.6483 (1.2715) (0.5420) Macro - Variables -2.734** 0.8106*** (1.0950) (0.3077) 0.1930* 0.4470** (0.1081) (0.2195) -0.0813*** 0.0525 (0.0301) (0.1734) 0.0161 -0.0151 (0.0506) (0.0182) 0.1174 0.0014 (0.1213) (0.0357) 0.0627 (0 1644) 917 838 159 92 48 55 DGMM (10) - 0.5606*** (0.0741) 0.5627*** (0.1130) 0.3833*** (0.1306) -0.1437*** (0.0553) -0.0109 (0.0176) -0.0027 (0.0542) 0.8674* (0.4470) -2.0851*** (0.5018) 0.8776* (0.4927) -0.3497* (0.2052) -0.0040 (0.0232) -00012 (0.0618) 0.1907 (1.0371) -3.0477*** (1.0557) 0.1833* (0.1091) 0.0195 (0.1066) -0.0579** (0.0238) 0.0513 (0.0598) 0.1307* (0.0712) 0.3361 (0.2433) 0.0659 (0.1126) -0.0684*** (0.0251) 0.0492 (0.0481) 0.0816 (0.0935) 1261 162 41 1053 152 33 AR1-test AR2-test -2.54 [0.011] 0.41 [0.685] -2.14 [0.033] 0.92 [0.359] -2.73 [0.006] 0.84 [0.402] -2.54 [0.011] 0.08 [0.938] Sargan-test Hansen p-value 60.87 [0.004] 0.742 35.87 [0.736] 0.776 39.71 [0.070] 0.728 27.02 [0.170] 0.786 Notes: All models were estimated with a constant Robust t-statistics are in parentheses Significance level at which the null hypothesis is rejected: ***, 1%; **, 5%; and *, 10% The model was estimated one-step SGMM estimator with difference lag For each regression are presented the number of observations (No Obs.) AR1 and AR2 tests are the Arellano–Bond tests for first and second-order autocorrelation in firstdifferenced errors; The statistics and p-values (in square brackets) for the Sargan-test of over-identifying restrictions and Hansen- test for are also reported for the AB estimations The appreciated real effective exchange rate means appreciated domestic currency Page | 70 ... empirically examine the determinants of non-performing loans in commercial banking systems of the five ASEAN countries in the period of 2002 to 2015 The research uses a sample of 162 banks in these countries... CHI MINH CITY, DECEMBER 2016 DECLARATION I declare that the wholly and mainly contents and the work presented in this thesis (Macro Economic Determinants of Credit risk in the ASEAN Banking System) ...UNIVERSITY OF ECONOMICS HO CHI MINH CITY VIETNAM INSTITUTE OF SOCIAL STUDIES THE HAGUE THE NETHERLANDS VIETNAM - NETHERLANDS PROGRAMME FOR M.A IN DEVELOPMENT ECONOMICS MACRO ECONOMIC DETERMINANTS OF CREDIT

Ngày đăng: 21/10/2022, 21:15

Xem thêm:

TÀI LIỆU CÙNG NGƯỜI DÙNG

TÀI LIỆU LIÊN QUAN

w