Endogenous Prediction of Bankruptcy using a Support Vector Machine

Authors

  • Jorge Zazueta Gutierrez Universidad Autónoma de San Luis Potosí
  • Andrea Chávez-Heredia Department of Mathematics, Univeridad de Guanajuato
  • Jorge Antonio Zazueta-Hernández Department of Mathematics, Univeridad de Guanajuato

Keywords:

bankruptcy, support vector machine, global model

Abstract

We build a global bankruptcy prediction model using a support vector machine trained only on firms' endogenous information in the form of financial ratios. The model is tested not only on entirely random unseen data but on samples taken from specific global regions and industries to test for prediction bias, achieving satisfactory prediction performance in all cases. While support vector machines are not easily interpretable, we explore variable importance and find it consistent with economic intuition.

 

Published

2022-08-15

How to Cite

Zazueta Gutierrez, J., Chávez-Heredia, A., & Zazueta-Hernández, J. A. (2022). Endogenous Prediction of Bankruptcy using a Support Vector Machine. International Journal of Combinatorial Optimization Problems and Informatics, 13(2), 88–97. Retrieved from https://ijcopi.org/ojs/article/view/262

Issue

Section

SI Business Analytics