关于预测俄罗斯联邦信贷组织违约的可能性

D. F. Zakirova
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引用次数: 0

摘要

结果:在现代经济中,银行系统的稳定性不仅在很大程度上影响着金融业,而且还影响着国家的经济和投资环境。要了解银行对经济的影响,就必须建立适当、有效的预测系统,以便在吊销执照之前发现问题银行。俄罗斯银行现有的方法具有主观性和评估不准确的特点。对银行违约预测研究的分析表明,评估信贷机构破产概率的方法多种多样,但都存在一些缺陷。在选择影响银行财务稳定性的关键因素的基础上,形成了预测银行破产的逻辑回归模型。本文提出的方法包括在改进的 logit 回归变量选择方法基础上选择的五个预测因素,是对现有方法的补充。科学新颖性:制定了评估俄罗斯联邦商业银行破产概率的方法,其中包括评估银行财务稳定性的五个关键预测因素:资产收益率、流动资产在资产负债表货币中的单位权重、贷款组合在资产负债表货币中的单位权重、对实体部门的贷款在资产负债表货币中的份额以及长期贷款在贷款组合中的份额。本文提出的二元选择逻辑回归模型可以将财务稳定的信贷组织与问题银行区分开来,预测期限为 5 个月,分类准确率为 88.33%。实用意义:该模型的分类准确率较高,俄罗斯银行可以利用它来控制信贷组织的运作,信贷组织的管理层也可以直接利用它来评估组织的财务稳定性和预测违约概率,以及制定银行的发展战略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On predicting the probability of default of credit organizations in the Russian Federation
Objective: to form a model for predicting the default of credit organizations under the modern conditions of the banking sector functioning.Methods: unidimensional analysis of variance, regression analysis of binary choice models.Results: in the modern economy, the banking system stability largely affects not only the financial sector, but also the economic and investment climate in the country. Understanding of the banks’ influence on the economy necessitates the formation of appropriate effective forecasting systems that allow identifying problem banks before revoking their licenses is necessary. The existing methodology of the Bank of Russia is characterized by subjectivity and inaccuracy of assessment. The analysis of studies on predicting bank defaults showed various approaches to the methodology of assessing the probability of credit institutions’ bankruptcy, though they have a number of shortcomings. Based on the selection of key factors affecting the bank’s financial stability, the logistic regression model for predicting bankruptcy of banks was formed. The methodology proposed in this article includes five predictors, selected on the basis of the improved methodology for selecting logit regression variables, and complements the existing methodologies.Scientific novelty: a methodology for assessing the probability of commercial banks’ bankruptcy in the Russian Federation was developed, which includes five key predictors for assessing the bank’s financial stability: return on assets, unit weight of liquid assets in the balance sheet currency, unit weight of the loan portfolio in the balance sheet currency, share of loans to the real sector in the balance sheet currency, and share of long-term placements in the loan portfolio. The logistic regression model of binary choice proposed in the paper allows distinguishing financially stable credit organizations from problem banks with a forecasting horizon of five months and a classification accuracy of 88,33 %.Practical significance: the relatively high classification accuracy of the model allows its use by the Bank of Russia in controlling the credit organizations functioning, as well as directly by the credit organization’s management, in order to assess the organization’s financial stability and to predict the default probability, as well as to form the bank’s development strategy.
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