A model for analyzing the financial stability of banks in the VUCA-world conditions
-
DOIhttp://dx.doi.org/10.21511/bbs.16(1).2021.16
-
Article InfoVolume 16 2021 , Issue #1, pp. 182-194
- Cited by
- 2305 Views
-
575 Downloads
This work is licensed under a
Creative Commons Attribution 4.0 International License
VUСA is a chaotic and rapidly changing business environment that, based on the variability, uncertainty, complexity and ambiguity of the modern world, transforms the approach of banks to the analysis of financial stability. The aim of the paper is to improve tools for monitoring the impact of VUCA-world conditions on the financial stability of banks, namely a model for studying and analyzing the impact of the modern business space “VUCA” on the financial stability of the country's banks. To test the model, the method of constructing regression equations in multifactor regression analysis is used. For this study, data from some Eastern European countries (Ukraine, Belarus, Latvia, Lithuania, Moldova) were used, and time series data were used for 10 years from 2010 to 2019.
Having considered the definition of “VUCA-world conditions”, the model of modern business space “VUCA” was developed when analyzing the activity of banks in the studied countries. Drivers, consequences, requirements and macroeconomic indicators of the countries’ activities in the VUСA-world conditions are determined. The VUCA-world conditions also consider the study of key macroeconomic indicators that allow building long-term relationships throughout the value chain. The analysis of the studied Eastern European countries showed that with the increase of factors of GDP growth, GNI per capita growth, research and development costs, foreign direct investment, and net inflow of 1%, the effective ratio of bank capital and assets also increases. The assessment, in contrast to the existing ones, makes it possible to consider the impact of the macroeconomic environment of banks on their financial stability.
- Keywords
-
JEL Classification (Paper profile tab)C51, G21, F36
-
References29
-
Tables5
-
Figures2
-
- Figure 1. Gini index of the Eastern European countries for the period 2010–2019
- Figure 2. Average ranks of the Gini index of the Eastern European countries for the period 2010–2019
-
- Table 1. Average value of bank performance in some Eastern European countries on average for the period 2010–2019
- Table 2. General indicators of development of the studied countries’ economies on average for 2010–2019 in the VUCA world conditions
- Table 3. System for studying the impact of modern business space “VUCA” on the analysis of financial stability of the country’s banks
- Table 4. Summary of regression analysis results of the dependence of bank capital to assets ratio on macroeconomic indicators
- Table 5. Evaluation of the statistical significance of the regression model parameters with t-criterion
-
- Banae Costa, C. A., & Chagas, M. P. (2004). A career choice problem: an example of how to use MACBETH to build a quantitative value model based on qualitative value judgments. European Journal of Operational Research, 153(2), 323-331.
- Batischeva, G. A., Denisov, M. Yu., Rybchinskaya, I. V., & Stryukov, M. B. (2018). Regional Development and Banking Activities. European Research Studies Journal, 21(1), 455-465.
- Bortnyk, N., Tsurcan-Saifulina, J., & Kotukha, O. (2018). Essence and content of category “financial investigations” and concept development amid European integration. Baltic Journal of Economic Studies, 4(5), 36-39.
- Cenkhan, S., de Haan, J., & Neretina, E. (2020). Banking stress test effects on returns and risks. Journal of Banking & Finance, 117(C), 105843.
- Codreanu, A. (2016). A VUCA action framework for a VUCA environment. Leadership challenges and solutions. Journal of Defense Resources Management, 7(2), 31-38.
- Cont, R., Kotlicki, A., & Valderrama, L. (2020). Liquidity at risk: Joint stress testing of solvency and liquidity. Journal of Banking & Finance, 118, 105871.
- Dardac, N., & Boitan, I. (2009). A Simple Early Warning System for Evaluating the Credit Portfolio’s Quality. Theoretical and Applied Economics, 5(05), 69-78.
- Donatosi, G. S., & Giokas, D. I. (2008). Relative Efficiency in the branch network of a Greek bank: A quantitative analysis. European Research Studies, 11(3), 53-72.
- Dzhafarova, O., Riabchenko, O., & Artemenko, I. (2018). Structural and legal analysis of banking safety in Ukraine. Baltic Journal of Economic Studies, 4(5), 67-74
- Halunko, V., Halunko, V., & Savyuk, М. (2018). Foreign experience for financing small and medium business. Baltic Journal of Economic Studies, 4(5), 40-45.
- Keesoony, S. (2016). International anti-money laundering laws: the problems with enforcement. Journal of Money Laundering Control, 19(2), 130-147.
- Khalatur, S., Pavlova, G., & Zhylenko, K. (2018). The role of some indicators of financial security in Ukraine in the context of transnationalization and national interests. Investment Management and Financial Innovations, 15(3), 237-248.
- Konig, E. (2017). Implementing an efficient resolution framework in the Banking Union: lessons from the crisis and challenges ahead. Financial Stability Review, 21, 71-76.
- Kreidych, I., Roshchyna, N., & Kazak, O. (2018). The application of monetary incentive policy in current economic conditions. Baltic Journal of Economic Studies, 4(5), 129-139.
- Li, L. (2020). Regulation of Leverage Ratio, Credit Expansion and Credit Risk of Commercial Banks. Open Journal of Social Sciences, 8, 376-396.
- Lietava, M., & Fáziková, M. (2017). Selection of EU financed projects and the territorial cohesion. Acta Oeconomica Universitatis Selye, 6(1), 71-82.
- Nangia, M., & Mohsin F. (2020). Identifying VUCA Factors in A Pandemic Era – A Framework Focused on Indian It Industry. Journal of Critical Reviews, 7(7), 931-936.
- Nidar, S. R., Anwar, M., Komara, R., & Layyinaturrobaniyah, L. (2020). Determinant of regional development bank efficiency for their sustainability issues. Entrepreneurship and Sustainability Issues, 8(1), 1133-1145.
- Rakhmetova, A., Kalkabayeva, G., Kurmanalina, A., Gusmanova, Z., Serikova, G., & Aimurzina, B. (2020). Financial-credit and innovative economic sectors: evaluation of macroeconomic effects of regulation and interaction sectors. Entrepreneurship and Sustainability Issues, 8(1), 1224-1237.
- Shchenin, R. (2010). Banking systems of the countries of the world: a training manual. M.: KNORUS, 400 p.
- Shukla, S. (2014). Analysis of Banking System Performance of Select Global Economies with That of India – During and After the Global Financial. Procedia Economics and Finance, 11, 383-395.
- Shuyan, L., & Fabuš, M. (2019). Study on the spatial distribution of China’s Outward Foreign Direct Investment in EU and its influencing factors. Entrepreneurship and Sustainability Issues, 6(3), 1280-1296.
- Singhwal, N. (2018). Financial Challenges in VUCA World. In 2nd International Conference on “Innovative Business Practices and Sustainability in VUCA World” (pp. 137-142).
- Sinha, D. (2020). Managing in a VUCA World: Possibilities and Pitfalls. Journal of Technology Management for Growing Economies, 11(1), 17-21.
- State Committee of Statistics of Ukraine. (n.d.). Official site.
- Velychko, O., & Velychko, L. (2017). Logistical modelling of managerial decisions in social and marketing business systems. Journal of International Studies, 10(3), 206-219.
- Wang, J., Lee, Y.-N., & Walsh, J. (2018). Funding model and creativity in science: Competitive versus block funding and status contingency effects. Research Policy, 47(6), 1070-1083.
- World Bank. (n.d.).
- Zavadska, D. (2018). Determining the role of banks in the financing of innovative development processes of the economy. Baltic Journal of Economic Studies, 4(3), 68-73.