Journal of Applied Economic Research
ISSN 2712-7435
Comparative Evaluation of the Performance of Commercial Banks in Russia Based on a Multidimensional Analysis of Financial Indicators
Ilya I. Kornukov, Alexey Yu. Domnikov
Ural Federal University named after the First President of Russia B.N. Yeltsin, Yekaterinburg, Russia
Abstract
Banks occupy a central place in the modern global economy. Their stability is an indicator of the state of the country's economy as a whole, which has been repeatedly confirmed by the history of financial crises. The trend and intensity of global digitalization are radically changing the architecture of markets, which requires the development of new theories, methodologies, the search for new management technologies for immediate response to all kinds of challenges and for making informed decisions based on a comprehensive system assessment. The purpose of the study is to conduct a comparative probabilistic assessment of the performance of banks based on the generation of a random multidimensional value of financial indicators. The hypothesis of the study is that probabilistic multidimensional comparative evaluation models will eliminate subjectivism, increase the efficiency and reliability of the raw data base for generating management decisions. The authors have developed a new methodology for comparative evaluation of banks using multidimensional probabilistic analysis. The main problems of managerial decision-making in conditions of uncertainty are identified, taking into account the presence of an anthropogenic factor in the system, the stages of formation of a training sample of commercial banks are described, a list of statistically significant financial indicators is selected, a mathematical problem is formulated, a methodology and mathematical tools for analyzing multidimensional indicators are defined. Using a practical example for 2015-2020, a training sample of banks was formed, divided into two clusters, the coefficients of the equation of the separating hyperplane were determined, a multidimensional random variable was generated, the probability of banks being assigned to one of the clusters was calculated. The results of the calculations showed that only some banks managed to keep their place in the "positive" cluster and the units showed a positive increase in probability. The scientific and practical significance of the research lies in the increment of knowledge on the development of a methodology for multidimensional probabilistic assessment of the position of banks in the training sample. The basis of this methodology can be extended to related spheres of economic life of society, to form the basis of automation models for assessing the financial condition of the subject, finding solutions to optimization problems and developing management solutions.
Keywords
banking system; probabilistic assessment; cluster analysis; logistic regression; multidimensional analysis; separating hyperplane; financial stability.
JEL classification
C21References
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About Authors
Ilya Igorevich Kornukov
Post-Graduate Student, Department of Banking and Investment Management, Institute of Economics and Management, Ural Federal University named after the first President of Russia B.N. Yeltsin, Yekaterinburg, Russia (620002, Yekaterinburg, Mira street, 19); ORCID 0000-0003-3055-9713; e-mail: kornukov.ii@mail.ru.
Alexey Yurievich Domnikov
Doctor of Economics, Professor, Department of Banking and Investment Management, Institute of Economics and Management, Ural Federal University named after the first President of Russia B.N. Yeltsin, Yekaterinburg, Russia (620002, Yekaterinburg, Mira street, 19); ORCID 0000-0002-6260-9423; e-mail: a.y.domnikov@urfu.ru.
For citation
Kornukov, I.I., Domnikov, A.Yu. (2023). Comparative Evaluation of the Performance of Commercial Banks in Russia Based on a Multidimensional Analysis of Financial Indicators. Journal of Applied Economic Research, Vol. 22, No. 1, 142-164. DOI: https://doi.org/10.15826/vestnik.2023.22.1.007.
Article info
Received July 17, 2022; Revised December 25, 2022; Accepted January 11, 2023.
DOI: http://dx.doi.org/10.15826/vestnik.2023.22.1.007
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