Adapting Altman's bankruptcy prediction model to the compositional data methodology
Fatemeh Keivani (1), Germ\`a Coenders (1), Ge\`orgia Escaram\'is (1, 2) ((1) Universitat de Girona, (2) CEEISCAT. Department of Health. Government of Catalonia)

TL;DR
This paper adapts the Altman bankruptcy prediction model using compositional data methodology and machine learning, demonstrating improved sensitivity in predicting bankruptcies in Spanish firms.
Contribution
It introduces the use of compositional log-ratios in bankruptcy prediction models and compares machine learning methods with standard financial ratios.
Findings
Compositional methods outperform standard ratios in sensitivity.
Compositional random forests and logistic regression perform best.
The approach shows promise in predicting bankruptcy with higher recall.
Abstract
Using standard financial ratios as variables in statistical analyses has been related to several serious problems, such as extreme outliers, asymmetry, non-normality, and non-linearity. The compositional-data methodology has been successfully applied to solve these problems and has always yielded substantially different results when compared to standard financial ratios. An under-researched area is the use of financial log-ratios computed with the compositional-data methodology to predict bankruptcy or the related terms of business default, insolvency or failure. Another under-researched area is the use of machine learning methods in combination with compositional log-ratios. The present article adapts the classical Altman bankruptcy prediction model and some of its extensions to the compositional methodology with pairwise log-ratios and three common statistical and machine learning…
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Taxonomy
TopicsGeochemistry and Geologic Mapping · Financial Distress and Bankruptcy Prediction · Advanced Clustering Algorithms Research
