The paper addresses methodological aspects of bankruptcy risk assessment. The study’s primary goal was to develop an effective bankruptcy prediction model specific to the chemical industry, independent of political and sanction influences. Correspondingly, classical models were tested on chemical industry data, revealing in particular that the Zaitseva model (1998) is less accurate than the Altman and Lis models. The hypothesis posited that a model based on current, industry-specific data would outperform general models. The newly developed model outperformed established models in predictive power, validating the hypothesis. By analyzing a dataset divided into narrow and broad samples, the study introduces new coefficients, including the IFR (Index of Financial Risk), which enhances model accuracy. This study classifies companies as bankrupt if declared by a court or multiple bankruptcy petitions are filed. The proposed model can be employed to assess bankruptcy probabilities in the chemical industry moving forward.
Original languageEnglish
Title of host publicationReliability and Statistics in Transportation and Communication: Human Sustainability and Resilience in the Digital Age (RelStat 2024)
PublisherSpringer Nature
Pages328-338
Number of pages11
ISBN (Print)9783031875311
DOIs
StatePublished - 2025
EventRELIABILITY and STATISTICS in TRANSPORTATION and COMMUNICATION - Латвийский Университет, Рига, Latvia
Duration: 25 Sep 202428 Sep 2024
https://relstat.tsi.lv/relstat-2024/

Publication series

NameLecture Notes in Networks and Systems
Volume1337

Conference

ConferenceRELIABILITY and STATISTICS in TRANSPORTATION and COMMUNICATION
Abbreviated titleRelStat-2024
Country/TerritoryLatvia
CityРига
Period25/09/2428/09/24
Internet address

    Research areas

  • Bankruptcy Prediction, Bankruptcy Prediction Model, Bankruptcy Risk

ID: 136165427