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Economics and Finances
ArticleName Predicting bankruptcy risks for ferrous metallurgy companies using a logit model
DOI 10.17580/chm.2022.01.11
ArticleAuthor N. A. Kazakova, E. A. Sergeeva
ArticleAuthorData

Plekhanov Russian University of Economics, Moscow, Russia:

N. A. Kazakova, Dr. Econ., Professor of the Basic Dept. of Financial and Economic Security, e-mail: axd_audit@mail.ru
E. A. Sergeeva, Business Analyst, Accountant

Abstract

The digital economy has changed the priorities for assessing business performance: there have been significant changes in the structure of assets of organizations, criteria for stability, liquidity, growth and business risks. In this regard, bankruptcy analysis methods should be adapted to the use of information resources, big data technologies, and current legal regulation in the relevant areas. Many researchers and practitioners consider logistic regression analysis to be a more reliable method for assessing the likelihood of bankruptcy in the short and medium term, the models of which provide more accurate value. The aim of the study is to substantiate a risk-factor approach to building a regression logit model to predict the likelihood of bankruptcy of ferrous metallurgy companies, which makes it possible to increase the reliability of diagnosing key risks that contribute to the growth of business financial insolvency. In comparison with the published examples of constructing logit models, the authors used a new approach focused on the grouping of risks that are normatively defined by international standards, corresponding to the most significant factors identified as a result of industry analysis. The classification of risks is the basis for the selection of model`s factor indicators, which was carried out by the method of correlation analysis and assessment of their statistical significance on the data of ferrous metallurgy companies. To build the model, the data for 2016–2020 were calculated and used, downloaded from the information system for professional analysis of markets and companies and the Unified State Register of Legal Entities for 29 companies in the metallurgical industry, the main activity of which is included in OKVED 24.1 “Production of iron, steel and ferroalloys”, including those declared bankrupt as of June 2021. The model was tested on 8 companies that were not included in the sample. To assess the quality of the resulting logistic regression model, a receiver operating characteristic curve (ROC-curve) was constructed, the statistical indicator AUC was calculated, and the limiting effects of factor indicators were determined. The resulting model showed a fairly high level of forecast reliability (over 85%).

The article is prepared within the framework of the scientific and research work of Plekhanov Russian University of Economics according to the theme "Monitoring of sectoral risks of financial safety in the digital medium using the Harvard paradigm of industrial branch analysis".

keywords Metallurgical companies, ferrous metallurgy, bankruptcy, logit-model, risk-factor approach, regression analysis
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