MODEL FOR ASSESSING THE PROBABILITY OF REVOCATION OF A LICENSE FROM THE RUSSIAN BANK

The article deals with the problem of modeling and forecasting the revocation of the bank’s license depending on the volatility of macroeconomic variables. The urgency of this problem is due to the following reasons. First, the Central Bank of theRussian Federationtoday pursues a policy of clearing...

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Main Author: D. S. Bidzhoyan
Format: Article
Language:Russian
Published: Government of the Russian Federation, Financial University 2018-05-01
Series:Финансы: теория и практика
Subjects:
Online Access:https://financetp.fa.ru/jour/article/view/644
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author D. S. Bidzhoyan
author_facet D. S. Bidzhoyan
author_sort D. S. Bidzhoyan
collection DOAJ
description The article deals with the problem of modeling and forecasting the revocation of the bank’s license depending on the volatility of macroeconomic variables. The urgency of this problem is due to the following reasons. First, the Central Bank of theRussian Federationtoday pursues a policy of clearing the banking sector from unscrupulous participants in the banking market and from banks with weak economic positions. Secondly, the strong fl in the values of macroeconomic variables over the previous few years affect the financial condition of the bank, which is the basis for the decision to revoke the license. The purpose of the article is to develop a model for assessing the probability of revocation of a license from the Russian bank on the basis of its public financial statements, taking into account the volatility of macroeconomic variables. The author has developed a logistic regression model for assessing the probability of revocation of a license from the Russian bank taking into account the volatility of macroeconomic variables. To level the effect of multicollinearity in the data, we use RIDGE modification of the logistic regression model with a certain algorithm for setting the penalty factor. The model is based on the data of official public bank statements, data on macroeconomic variables, and data on license revocations by the Bank of Russia as well. To aggregate the information and bring it into a single format, an information and logical model for the formation of the information base of the study is developed. The obtained model for assessing the probability of revocation of a license from the Russian bank has a high prognostic ability. The hypothesis of statistical difference of coefficients from zero is accepted when indicators of volatility of macroeconomic variables were at significance levels of 0.01 and above. The author concluded that the volatility of macroeconomic variables has a significant impact on the fi condition of the bank. The Bank of Russia takes this into account when deciding whether to revoke a license, as the fi condition is one of the key aspects. This approach can be used by the bank’s counterparties in assessing its reliability.
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spelling doaj.art-a5b106e9305a447aa92d28199b2bdd372023-03-13T07:49:28ZrusGovernment of the Russian Federation, Financial UniversityФинансы: теория и практика2587-56712587-70892018-05-01222263710.26794/2587-5671-2018-22-2-26-37640MODEL FOR ASSESSING THE PROBABILITY OF REVOCATION OF A LICENSE FROM THE RUSSIAN BANKD. S. Bidzhoyan0Национальный исследовательский университет «Высшая школа экономики»The article deals with the problem of modeling and forecasting the revocation of the bank’s license depending on the volatility of macroeconomic variables. The urgency of this problem is due to the following reasons. First, the Central Bank of theRussian Federationtoday pursues a policy of clearing the banking sector from unscrupulous participants in the banking market and from banks with weak economic positions. Secondly, the strong fl in the values of macroeconomic variables over the previous few years affect the financial condition of the bank, which is the basis for the decision to revoke the license. The purpose of the article is to develop a model for assessing the probability of revocation of a license from the Russian bank on the basis of its public financial statements, taking into account the volatility of macroeconomic variables. The author has developed a logistic regression model for assessing the probability of revocation of a license from the Russian bank taking into account the volatility of macroeconomic variables. To level the effect of multicollinearity in the data, we use RIDGE modification of the logistic regression model with a certain algorithm for setting the penalty factor. The model is based on the data of official public bank statements, data on macroeconomic variables, and data on license revocations by the Bank of Russia as well. To aggregate the information and bring it into a single format, an information and logical model for the formation of the information base of the study is developed. The obtained model for assessing the probability of revocation of a license from the Russian bank has a high prognostic ability. The hypothesis of statistical difference of coefficients from zero is accepted when indicators of volatility of macroeconomic variables were at significance levels of 0.01 and above. The author concluded that the volatility of macroeconomic variables has a significant impact on the fi condition of the bank. The Bank of Russia takes this into account when deciding whether to revoke a license, as the fi condition is one of the key aspects. This approach can be used by the bank’s counterparties in assessing its reliability.https://financetp.fa.ru/jour/article/view/644логистическая регрессиямультиколлинеарностьволатильность макроэкономических переменныхформы банковской отчетностивероятность отзыва лицензиипорог отсечениястатистика колмогорова-смирновараспределение вероятностей
spellingShingle D. S. Bidzhoyan
MODEL FOR ASSESSING THE PROBABILITY OF REVOCATION OF A LICENSE FROM THE RUSSIAN BANK
Финансы: теория и практика
логистическая регрессия
мультиколлинеарность
волатильность макроэкономических переменных
формы банковской отчетности
вероятность отзыва лицензии
порог отсечения
статистика колмогорова-смирнова
распределение вероятностей
title MODEL FOR ASSESSING THE PROBABILITY OF REVOCATION OF A LICENSE FROM THE RUSSIAN BANK
title_full MODEL FOR ASSESSING THE PROBABILITY OF REVOCATION OF A LICENSE FROM THE RUSSIAN BANK
title_fullStr MODEL FOR ASSESSING THE PROBABILITY OF REVOCATION OF A LICENSE FROM THE RUSSIAN BANK
title_full_unstemmed MODEL FOR ASSESSING THE PROBABILITY OF REVOCATION OF A LICENSE FROM THE RUSSIAN BANK
title_short MODEL FOR ASSESSING THE PROBABILITY OF REVOCATION OF A LICENSE FROM THE RUSSIAN BANK
title_sort model for assessing the probability of revocation of a license from the russian bank
topic логистическая регрессия
мультиколлинеарность
волатильность макроэкономических переменных
формы банковской отчетности
вероятность отзыва лицензии
порог отсечения
статистика колмогорова-смирнова
распределение вероятностей
url https://financetp.fa.ru/jour/article/view/644
work_keys_str_mv AT dsbidzhoyan modelforassessingtheprobabilityofrevocationofalicensefromtherussianbank