Next Article in Journal
Transcriptome Profiles of Circular RNAs in Common Wheat during Fusarium Head Blight Disease
Next Article in Special Issue
Technology Transfer from Nordic Capital Parenting Companies to Lithuanian and Estonian Subsidiaries or Joint Capital Companies: The Analysis of the Obtained Primary Data
Previous Article in Journal
Student Dataset from Tecnologico de Monterrey in Mexico to Predict Dropout in Higher Education
Previous Article in Special Issue
A Hybrid Stock Price Prediction Model Based on PRE and Deep Neural Network
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Data Descriptor

A Dataset for the Vietnamese Banking System (2002–2021)

1
University of Economics and Law, Ho Chi Minh City 700000, Vietnam
2
Vietnam National University, Ho Chi Minh City 700000, Vietnam
3
School of Aviation, Massey University, Palmerston North 4442, New Zealand
4
University of Economics & Business, Vietnam National University, Hanoi 10000, Vietnam
*
Authors to whom correspondence should be addressed.
Data 2022, 7(9), 120; https://doi.org/10.3390/data7090120
Submission received: 26 May 2022 / Revised: 22 August 2022 / Accepted: 22 August 2022 / Published: 25 August 2022
(This article belongs to the Special Issue Second Edition of Data Analysis for Financial Markets)

Abstract

:
This data article describes a dataset that consists of key statistics on the activities of 45 Vietnamese banks (e.g., deposits, loans, assets, and labor productivity), operated during the 2002–2021 period, yielding a total of 644 bank-year observations. This is the first systematic compilation of data on the splits of state vs. private ownership, foreign vs. domestic banks, commercial vs. policy banks, and listed vs. nonlisted banks. Consequently, this arrives at a unique set of variables and indicators that allow us to capture the development and performance of the Vietnamese banking sector over time along many different dimensions. This can play an important role for financial analysts, researchers, and educators in banking efficiency and performance, risk and profit/revenue management, machine learning, and other fields.
Dataset License: CC0

1. Summary

Since its entry into the World Trade Organization (WTO) in 2007, Vietnam has boasted one of the fastest-growing emerging economies in the world, with an average of more than 6% gross-domestic-product (GDP) growth per year in real terms [1]. Because of its relatively underdeveloped capital markets [2], the Vietnamese banking system acts as a backbone of the economy [3,4], and it contributes from 16% to 18% toward the annual GDP [5]. Consequently, the Vietnamese banking system’s efficiency and performance have recently been the main interest of many analysts and researchers. However, it is difficult for researchers, and especially foreign scholars, to conduct studies on the Vietnamese banking system due to its data limitation. For instance, the authors of [6] showed that, during the last decade, there were only 27 published articles on the performance of Vietnamese banks.
There are some great databases provided by Bankscope or the Banker association, but such databases focus more on advanced markets, such as the United States or European countries, and have fewer observations on Vietnamese banks. Additionally, the Thomson Reuter Eikon database also provides data information on the listed banks in Vietnam. More importantly, the subscription fees for these databases are not cheap for academic researchers or educators. This data article introduces a free and new dataset that provides financial analysts and researchers with a comprehensive assessment of the performance of the Vietnamese banking system. This dataset provides key statistics on the activities of 45 Vietnamese banks (e.g., deposits, loans, assets, and labor productivity), operated during the 2002–2021 period, yielding a total of 644 bank-year observations. The dataset will thus enable financial analysts and researchers to compare the performances of banks for a given year and over time.
This new dataset draws on a wider array of variables and key performance indicators (KPIs) of the activities and efficiency of a much broader set of banking institutions, trying to cover all the banks that have been operating in the Vietnamese banking system (2002–2021). Specifically, this is the first systematic compilation of data on the split of state vs. private ownership, foreign vs. domestic banks, commercial vs. policy banks, and listed vs. nonlisted banks. Consequently, this arrives at a unique set of indicators that allows us to capture the development and structure of the Vietnamese banking sector over time along many different dimensions. This can play an important role for financial analysts, researchers, and educators in banking efficiency and performance, risk and profit/revenue management, machine learning, and other fields, and especially regarding the Vietnamese banking sector.

2. Data Description

The dataset is a CSV file with nine sheets consisting of the data, information about the dataset, a list of the banks involved, a list of variables, the data availability, a list of banks that are state-owned, a list of banks that are private-owned, a list of banks that are foreign-owned, and a list of policy banks.
The data itself were manually extracted from the annual and financial reports of each of the 45 banks involved in our dataset; some of them were merged during the restructuring period of 2011–2015 [7] (see also the Banks list of our dataset). As of 31 March 2022, there were a total of 46 commercial banks operating in the Vietnamese banking sector [8] (see also the lists of banks with different types of ownership in our dataset). Because our 2021 data, for example, cover a total of 22 banks, including the so-called “Big Four” (i.e., AGB, BIDV, CTG, and VCB (see Table 1)) that are dominating the Vietnamese banking sector and that account for 74.03% of the total assets of the whole sector (the same figures for 2020 are 32 banks and 85.47%), our dataset is a good representative of the Vietnamese banking sector. Such data consist of popular (but important) information on the number of employees, number of bank branches, total deposits, total loans, costs, profits, etc., of the bank. More details are presented below. We ended up with 644 bank-year observations, as reported in Table 1.
At first sight, the numbers of variables and indicators for the performances of Vietnamese banks are countless. We, however, focus more on common indicators that represent the efficiency of a bank by using its inputs to produce outputs, which is in line with the banking-efficiency literature [9,10].
In the banking-efficiency literature, there are two main approaches to choosing a bank’s input and output factors: the production and intermediation approaches [11]. The production approach sees the banks as financial institutions that primarily produce services for account holders. Consequently, the inputs include physical factors such as capital, labor, loan applications, credit reports, checks, or other payment instruments, while the number and type of transactions, documents processed over a given time, and number of deposit or loan accounts are referred to as outputs [9]. Except for variables in Vietnamese dongs (VND), the only available physical variables of Vietnamese banks are the number of employees (NE) and number of branches (NB). We argue that the number of branches is highly correlated with the number of accounts that a bank can provide to its customers. The corresponding indicators are labor productivity (LPROD) and network productivity (NPROD), which are measured by the total incomes (TIs) over the NE and NB, respectively [12,13]. Additionally, the indicators for the relative size between a certain bank and the whole banking system in a certain year are also calculated, namely, the employees ratio (ER) (computed as the bank’s number of employees over the total employees of all banks in the same year across the sample) and the branches ratio (BR) (computed as the bank’s number of branches over the total number of branches of all banks in the same year across the sample). It is noted that our database covers from a low of 11 banks in 2002 to a high of 43 banks in 2008–2010, of which the four state-owned commercial banks (SOCBs) are always included so that it is a good representative of the whole Vietnamese banking system. For example, in the 2003–2010 period, the average deposits and credit shares of only twelve banks in our database already accounted for 96.3% and 65.1%, respectively, of the total domestic deposits and credit [2]. In this sense, the total employees of all the banks included in this database can represent the total employees of the whole banking sector; a similar argument applies to the total number of branches.
In contrast, the intermediation approach sees banks as intermediaries that transfer funds between savers and investors. Specifically, banks collect deposits and purchase funds to intermediate them into loans and other assets. In this sense, the bank’s assets can be treated as outputs, while its liabilities can be treated as inputs. Common variables, according to the banking-efficiency literature, include total deposits and total shareholder’s equity on the input side, and total loans, total fixed assets, other earning assets, as well as total assets on the output side [11,14,15]. Similar to the production approach, we also calculate the indicators for the total-deposits ratio (computed as the bank’s total deposits over the total deposits of all banks in the same year across the sample), the total-loans ratio (computed as the bank’s total loans over the total loans of all banks in the same year across the sample), and the total-assets ratio (computed as the bank’s total assets over the total assets of all banks in the same year across the sample). Note that these indicators can also be used to measure the sensitivity to market risk of the CAMELS rating system, described below.
Avkiran [16] and Avkiran and Cai [17] proposed the core profit model (CPM), which is based on the intermediation approach, but specifically focuses on the costs (inputs) and revenues/profits (outputs). They argued that a bank is not different from other firms in the sense that it too aims for profit maximization. Therefore, a bank will need to minimize its interest expenses and noninterest expenses (inputs), and maximize its interest incomes, noninterest incomes, as well as total income (outputs). These variables were also used in [18,19,20,21], among other studies, and they can even be mixed in a broader view of the intermediation approach: a bank is a “black box” that converts inputs into outputs [14]. Additionally, one can also use the personnel expenses (payments on labor), occupancy expenses (payments on fixed assets), and total operating expenses (payments on labor, fixed assets, and other operating activities) as inputs to capture the costs of the banks. Following Ngo and Tripe [22], who pointed out that the results from banking-efficiency analyses are sensitive to the choice of the expenses/costs, we also calculate the core cost (equal to the sum of interest expenses, personnel expenses, and occupancy expenses) and total cost (equal to the sum of interest expenses, personnel expenses, and other noninterest expenses) for each bank. Consequently, the indicators of the core-cost ratio (computed as the bank’s core cost over the total core costs of all banks in the same year across the sample) and the total-cost ratio (computed as the bank’s total cost over the total costs of all banks in the same year across the sample) are also calculated.
Another approach, which is more popular with bank managers, evaluates the efficiency and performance of banks based on their soundness. The CAMELS rating system rates individual banks according to their financial condition in six aspects: capital adequacy, asset quality, management quality, earnings ability, liquidity, and sensitivity to market risks. It is believed that the CAMELS rating system is “an effective internal supervisory tool for evaluating the soundness of financial institutions on a uniform basis and for identifying those institutions requiring special attention or concern” [23]. Alongside the total-assets ratio calculated above, we computed another eleven indicators to represent the six categories of the CAMELS rating system based on their popularity in the literature: the equity over total assets, equity over total deposits, nonperforming-loans ratio (over total loans), loan-loss-provisions ratio (over total loans), returns over assets, returns over equity, net interest margin, cost–income ratio, liquid assets over total assets, liquid assets over total deposits, and cumulative gaps over total assets.
Recent banking studies also analyze the role of off-balance-sheet (OBS) activities [24,25], as the exclusion of OBS may lead to biases in the assessment of the bank performance. Consequently, we also provide additional information on OBS values as well as the banks’ profits (before and after taxes) in the database. Note that the value of the profits before tax and the difference between the total income and total cost are not the same, due to the banks often adjusting for some provisions before tax. The list of our variables is presented in Table 2.

3. Methods

The data were manually extracted from the annual and financial reports of each of the 45 banks involved in our dataset. As of 31 March 2022, after the restructuring, as well as mergers and acquisitions, there were a total of 46 commercial banks operating in the Vietnamese banking sector [8]. Such data consist of popular (but important) information on the number of employees, number of bank branches, total deposits, total loans, costs, profits, etc., of the bank. Other variables, such as the employees ratio (ERATIO), total-deposits ratio (DEPORATIO), and nonperforming-loans ratio (NPLRATIO), were computed by the authors, as previously explained.

4. User Notes

  • The dataset can be used by other researchers to examine the development and efficiency/performance of Vietnamese banks (2002–2021), including their total factor productivity (TFP), or technological changes over time [26,27,28,29]. For example, one can employ data envelopment analysis (DEA) [30,31,32,33,34] or stochastic frontier analysis (SFA) [2,24,35] to estimate the Malmquist TFP, Fisher TFP, Fare–Primont TFP, or Hicks–Moorsteen TFP utilizing data on labor (e.g., NE or PE), capital (e.g., TOE or EQUITY), outputs (e.g., II or TI), profits (e.g., PBT or PAT), and costs (e.g., CC or TC);
  • The dataset is not only useful for researchers in the fields of business, economics, banking, and finance, but it also provides important information for bank managers or credit-rating institutions;
  • The amount of data, with up to 644 bank-year observations, is good enough to be used with machine-learning models. Such an extension would be extremely valuable, for example, to predict the performance of the banks or their risks and soundness;
  • The dataset can be easily extended by adding more data (e.g., for 2022 or later) when they are available, by providing detailed information on the employment structure (e.g., skilled versus unskilled) or bank diversification (e.g., participation in the stock or cryptocurrency markets), or to combine with other datasets on regional- and/or national-level variables, such as GDP, inflation, policy events, COVID-19, and so on.

Author Contributions

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

Funding

This research was funded by the University of Economics and Law, Vietnam National University, Ho Chi Minh City, Vietnam.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The data presented in this study are available at https://doi.org/10.7910/DVN/RIWA3B (accessed on 20 May 2022).

Conflicts of Interest

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

References

  1. World Bank. World Development Indicators (WDI); The World Bank: Washington, DC, USA, 2021. [Google Scholar]
  2. Ngo, D.T. Efficiency of the Banking System in Vietnam under Financial Liberalization. Ph.D. Thesis, Massey University, Palmerston North, New Zealand, 2015. [Google Scholar]
  3. Le, P.T.; Harvie, C.; Arjomandi, A.; Borthwick, J. Financial liberalisation, bank ownership type and performance in a transition economy: The case of Vietnam. Pac. Basin Financ. J. 2019, 57, 101182. [Google Scholar] [CrossRef]
  4. Le, T. The interrelationship between liquidity creation and bank capital in Vietnamese banking. Manag. Financ. 2019, 45, 331–347. [Google Scholar] [CrossRef]
  5. Stewart, C.; Matousek, R.; Nguyen, T.N. Efficiency in the Vietnamese banking system: A DEA double bootstrap approach. Res. Int. Bus. Financ. 2016, 36, 96–111. [Google Scholar] [CrossRef]
  6. Ho, T.H.; Nguyen, D.T.; Ngo, T.; Le, T.D.Q. Efficiency in Vietnamese Banking: A Meta-Regression Analysis Approach. Int. J. Financ. Stud. 2021, 9, 41. [Google Scholar] [CrossRef]
  7. Vietnamese Government. Decision No. 254/QD-TTg on Approving the Scheme on “Restructuring the Credit Institutions System in the 2011–2015 Period”; Vietnamese Government: Hanoi, Vietnam, 2012.
  8. SBV. The State Bank of Vietnam—System of Credit Institutions. Available online: https://www.sbv.gov.vn/webcenter/portal/en/home/fm/socins (accessed on 12 April 2022).
  9. Berger, A.N.; Humphrey, D.B. Efficiency of financial institutions: International survey and directions for future research. Eur. J. Oper. Res. 1997, 98, 175–212. [Google Scholar] [CrossRef]
  10. Paradi, J.; Zhu, H. A survey on bank branch efficiency and performance research with data envelopment analysis. OMEGA 2013, 41, 61–79. [Google Scholar] [CrossRef]
  11. Sealey, C.W.; Lindley, J.T. Inputs, outputs, and a theory of production and cost at depository financial institutions. J. Financ. 1977, 32, 1251–1266. [Google Scholar] [CrossRef]
  12. Athanasoglou, P.P.; Brissimis, S.N.; Delis, M.D. Bank-specific, industry-specific and macroeconomic determinants of bank profitability. J. Int. Financ. Mark. Inst. Money 2008, 18, 121–136. [Google Scholar] [CrossRef]
  13. Naceur, S.B.; Goaied, M. The determinants of the Tunisian deposit banks’ performance. Appl. Financ. Econ. 2001, 11, 317–319. [Google Scholar] [CrossRef]
  14. Berger, A.N.; Mester, L.J. Inside the black box: What explains differences in the efficiencies of financial institutions? J. Bank. Financ. 1997, 21, 895–947. [Google Scholar] [CrossRef] [Green Version]
  15. Clark, J.A. Economies of scale and scope at depository financial institutions: A review of the literature. Econ. Rev. 1988, 73, 17–33. [Google Scholar]
  16. Avkiran, N.K. Association of DEA super-efficiency estimates with financial ratios: Investigating the case for Chinese banks. OMEGA 2011, 39, 323–334. [Google Scholar] [CrossRef]
  17. Avkiran, N.K.; Cai, L. Identifying distress among banks prior to a major crisis using non-oriented super-SBM. Ann. Oper. Res. 2014, 217, 31–53. [Google Scholar] [CrossRef]
  18. Miller, S.M.; Noulas, A.G. The technical efficiency of large bank production. J. Bank. Financ. 1996, 20, 495–509. [Google Scholar] [CrossRef]
  19. Bhattacharyya, A.; Lovell, C.A.K.; Sahay, P. The impact of liberalization on the productive efficiency of Indian commercial banks. Eur. J. Oper. Res. 1997, 98, 332–345. [Google Scholar] [CrossRef]
  20. Leightner, J.E.; Lovell, C.A.K. The impact of financial liberalization on the performance of Thai banks. J. Econ. Bus. 1998, 50, 115–131. [Google Scholar] [CrossRef]
  21. Sturm, J.-E.; Williams, B. Foreign bank entry, deregulation and bank efficiency: Lessons from the Australian experience. J. Bank. Financ. 2004, 28, 1775–1799. [Google Scholar] [CrossRef]
  22. Ngo, T.; Tripe, D. Stochastic cost frontier analysis—A sensitivity analysis on cost measures. Pac. Account. Rev. 2016, 28, 401–410. [Google Scholar] [CrossRef]
  23. FDIC. Uniform financial institutions rating system. Fed. Regist. 1996, 61, 67021–67029. [Google Scholar]
  24. Lozano-Vivas, A.; Pasiouras, F. Bank Productivity Change and Off-Balance-Sheet Activities Across Different Levels of Economic Development. J. Financ. Serv. Res. 2014, 46, 271–294. [Google Scholar] [CrossRef]
  25. Lozano-Vivas, A.; Pasiouras, F. The impact of non-traditional activities on the estimation of bank efficiency: International evidence. J. Bank. Financ. 2010, 34, 1436–1449. [Google Scholar] [CrossRef]
  26. Caves, D.W.; Christensen, L.R.; Diewert, W.E. The economic theory of index numbers and the measurement of input, output and productivity. Econometrica 1982, 50, 1393–1414. [Google Scholar] [CrossRef]
  27. Diewert, W.E. Fisher ideal output, input, and productivity indexes revisited. J. Product. Anal. 1992, 3, 211–248. [Google Scholar] [CrossRef]
  28. Wooldridge, J.M. On estimating firm-level production functions using proxy variables to control for unobservables. Econ. Lett. 2009, 104, 112–114. [Google Scholar] [CrossRef]
  29. Rovigatti, G.; Mollisi, V. Theory and Practice of Total-Factor Productivity Estimation: The Control Function Approach using Stata. Stata J. 2018, 18, 618–662. [Google Scholar] [CrossRef]
  30. Fragoudaki, A.; Giokas, D.; Glyptou, K. Efficiency and productivity changes in Greek airports during the crisis years 2010–2014. J. Air Transp. Manag. 2016, 57, 306–315. [Google Scholar] [CrossRef]
  31. Plastina, A.; Lence, S.H.; Ortiz-Bobea, A. How weather affects the decomposition of total factor productivity in U.S. agriculture. Agric. Econ. 2021, 52, 215–234. [Google Scholar] [CrossRef]
  32. Kerstens, K.; Van de Woestyne, I. Comparing Malmquist and Hicks–Moorsteen productivity indices: Exploring the impact of unbalanced vs. balanced panel data. Eur. J. Oper. Res. 2014, 233, 749–758. [Google Scholar] [CrossRef]
  33. Nguyen, P.A.; Simioni, M. Productivity and efficiency of Vietnamese banking system: New evidence using Färe-Primont index analysis. Appl. Econ. 2015, 47, 4395–4407. [Google Scholar] [CrossRef]
  34. Färe, R.; Grosskopf, S.; Norris, M.; Zhang, Z. Productivity growth, technical progress, and efficiency change in industrialized countries. Am. Econ. Rev. 1994, 84, 66–83. [Google Scholar]
  35. Ngo, T.; Le, T.; Tran, S.H.; Nguyen, A.; Nguyen, C. Sources of the performance of manufacturing firms: Evidence from Vietnam. Post-Communist Econ. 2019, 31, 790–804. [Google Scholar] [CrossRef]
Table 1. Data availability of the dataset.
Table 1. Data availability of the dataset.
No.BankCodeOwnershipn
1An Binh Commercial Joint Stock BankABBJSCB17
2Asia Commercial Joint Stock BankACBJSCB20
3Vietnam Bank for Agriculture and Rural DevelopmentAGBSOCB20
4Joint Stock Commercial Bank for Investment and Development of VietnamBIDVJSCB20
5Bac A Joint Stock Commercial BankBABJSCB10
6Bao Viet Joint Stock Commercial BankBVBJSCB13
7Construction BankCBSOCB4
8Vietnam Joint Stock Commercial Bank of Industry and TradeCTGJSCB20
9Dong A Joint Stock Commercial BankDABJSCB14
10Vietnam Export Import Commercial Joint Stock BankEIBJSCB17
11First Joint Stock Commercial BankFCBJSCB3
12Great Asia Commercial Joint Stock BankGABJSCB6
13Global Petro Commercial Joint Stock BankGPBSOCB3
14Hanoi Building Commercial Joint Stock BankHBBJSCB9
15Ho Chi Minh City Development Joint Stock Commercial BankHDBJSCB17
16HSBC Bank (Vietnam) LimitedHSBCFOCB14
17Indovina Bank Ltd.IVBJSCB12
18Kien Long Commercial Joint Stock BankKLBJSCB18
19Lien Viet Post Joint Stock Commercial BankLVBJSCB14
20Military Commercial Joint Stock BankMBJSCB20
21Vietnam Maritime Commercial Joint Stock BankMSBJSCB17
22Mekong Development Joint Stock Commercial BankMDBJSCB11
23Mekong Housing BankMHBJSCB11
24Nam A Commercial Joint Stock BankNABJSCB17
25National Citizen BankNCBJSCB16
26Ocean Commercial One Member Limited Liability BankOBSOCB8
27Orient Commercial Joint Stock BankOCBJSCB16
28Petrolimex Group Commercial Joint Stock BankPGBJSCB14
29Southern Commercial Joint Stock BankPNBJSCB9
30Vietnam Public Joint Stock Commercial BankPVBJSCB8
31Saigon Commercial BankSCBJSCB13
32South East Asia Joint Stock Commercial BankSEABJSCB18
33Saigon Bank for Industry and TradeSGBJSCB19
34Saigon—Hanoi Commercial Joint Stock BankSHBJSCB16
35Saigon Thuong Tin Commercial Joint Stock BankSTBJSCB18
36Vietnam Technological and Commercial Joint Stock BankTCBJSCB20
37Vietnam Tin Nghia Commercial Joint Stock BankTNBJSCB4
38Tien Phong Commercial Joint Stock BankTPBJSCB14
39Viet A Joint Stock Commercial BankVABJSCB18
40Vietnam Bank for Social PoliciesVBSPPB20
41Joint Stock Commercial Bank for Foreign Trade of VietnamVCBJSCB20
42Viet Capital Commercial Joint Stock BankVCPBJSCB18
43Vietnam International Commercial Joint Stock BankVIBJSCB17
44Vietnam Commercial Joint Stock Bank for Private EnterpriseVPBJSCB20
45Western Commercial Joint Stock BankWEBJSCB11
Total644
Notes: The banks’ codes were defined by the authors. SOCB: state-owned commercial bank; JSCB: joint-stock commercial bank; PB: policy bank; FOCB: foreign-owned commercial bank. n stands for the number of bank-year observations. Source: Authors’ calculation.
Table 2. List of variables.
Table 2. List of variables.
VariableCodeObservationsMean
Commonly used in the Production Approach
Number of Employees (person)NE4686724
Number of Branches (unit)NB4331721
Labour Productivity (VND million)LPROD466420
Network Productivity (VND million)NPROD43110,543
Employees RatioERATIO4680.04
Branches RatioBRATIO4330.05
Commonly used in the Intermediation Approach
Total Deposits (VND million)DEPOSITS631107,396,618
Total Shareholder’s Equity (VND million)EQUITY63111,178,170
Total Loans (VND million)LOANS63098,572,641
Loan Loss Provisions (VND million) LLP6031,592,868
Nonperforming Loans (VND million)NPL5771,887,911
Total Fixed Assets (VND million)FASSETS6291,467,437
Other Earning Assets (VND million)EASSETS62654,117,927
Total Assets (VND million)TASSETS627154,301,833
Total-Deposits RatioDEPORATIO6310.03
Total-Loans RatioLOANRATIO6300.03
Total-Assets RatioASSETRATIO6270.03
Commonly used in the Core-Profit-Model (CPM) Approach
Interest Expenses (VND million)IE6266,667,943
Noninterest Expenses (VND million)NIE6252,682,819
Personnel Expenses (VND million)PE4971,455,288
Occupancy Expenses (VND million)OE492235,741
Other Expenses (VND million)OTE4991,059,682
Total Operating Expenses (VND million)TOE5062,703,645
Core Cost (VND million)CC6277,995,845
Total Cost (VND million)TC6279,331,570
Core-Cost RatioCCRATIO6270.03
Total-Cost RatioTCRATIO6270.03
Interest Incomes (VND million)II62610,952,689
Noninterest Income (VND million)NI6181,770,242
Other Incomes (VND million)OI620−1,340,610
Total Income (VND million)TI62711,354,409
Total-Income RatioTIRATIO6270.03
Commonly used in the Ratio (CAMELS) Approach
Equity Over Total AssetsETA62711.53
Equity Over Total DepositsETD63141.49
Nonperforming-Loans RatioNPLRATIO5771.98
Loan-Loss-Provisions RatioLLPRATIO6031.31
Returns Over AssetsROA6231.27
Returns Over EquityROE62710.74
Net Interest MarginNIM62213.04
Cost–Income RatiosCIR62779.18
Liquid Assets Over Total AssetsLTA62642.04
Liquid Assets Over Total DepositsLTD626103.19
Cumulative Gaps Over Total AssetsGTA63128.13
Additional Information
Off-Balance-Sheet Activities (VND million)OBS41735,140,331
Profits Before Tax (VND million)PBT6252,029,313
Profits After Tax (VND million)PAT6271,652,135
Source: Authors’ calculation.
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Le, T.D.Q.; Ho, T.H.; Ngo, T.; Nguyen, D.T.; Tran, S.H. A Dataset for the Vietnamese Banking System (2002–2021). Data 2022, 7, 120. https://doi.org/10.3390/data7090120

AMA Style

Le TDQ, Ho TH, Ngo T, Nguyen DT, Tran SH. A Dataset for the Vietnamese Banking System (2002–2021). Data. 2022; 7(9):120. https://doi.org/10.3390/data7090120

Chicago/Turabian Style

Le, Tu D. Q., Tin H. Ho, Thanh Ngo, Dat T. Nguyen, and Son H. Tran. 2022. "A Dataset for the Vietnamese Banking System (2002–2021)" Data 7, no. 9: 120. https://doi.org/10.3390/data7090120

Article Metrics

Back to TopTop