Abstract
Machine learning for financial risk prediction has garnered substantial interest in recent decades. However, the class imbalance problem and the dilemma of accuracy gain by loss interpretability have yet to be widely studied. Symbolic classifiers have emerged as a promising solution for forecasting banking failures and estimating creditworthiness as it addresses class imbalance while maintaining both accuracy and interpretability. This paper aims to evaluate the effectiveness of REMED, a symbolic classifier, in the context of financial risk management, and focuses on its ability to handle class imbalance and provide interpretable decision rules. Through empirical analysis of a real-world imbalanced financial dataset from the Federal Deposit Insurance Corporation, we demonstrate that REMED effectively handles class imbalance, improving performance accuracy metrics while ensuring interpretability through a concise and easily understandable rule system. A comparative analysis is conducted against two well-known rule-generating approaches, J48 and JRip. The findings suggest that, with further development and validation, REMED can be implemented as a competitive approach to improve predictive accuracy on imbalanced financial datasets without compromising model interpretability.
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Details
; Félix, Vanessa G. 3 ; Ostos, Rodolfo 3 ; Martínez-Peláez, Rafael 4
; Ochoa-Brust, Alberto 5 ; Velarde-Alvarado, Pablo 6 1 Universidad Politecnica de Sinaloa, Academic Unit of Information Technology Engineering, Mazatlan, Mexico (ISNI:0000 0004 0369 5637)
2 Universidad Autonoma de Ciudad Juarez, Department of Electrical and Computer Engineering, Ciudad Juarez, Mexico (GRID:grid.441213.1) (ISNI:0000 0001 1526 9481)
3 Universidad Politecnica de Sinaloa, Academic Unit of Information Technology Engineering, Mazatlan, Mexico (GRID:grid.441213.1) (ISNI:0000 0004 0369 5637); Universidad Autonoma de Occidente, Department of Economic and Administrative Sciences, Software Engineering Career, Mazatlan, Mexico (GRID:grid.441213.1)
4 Universidad Politecnica de Sinaloa, Academic Unit of Information Technology Engineering, Mazatlan, Mexico (GRID:grid.441213.1) (ISNI:0000 0004 0369 5637); Universidad Catolica del Norte, Department of Systems and Computer Engineering, Antofagasta, Chile (GRID:grid.8049.5) (ISNI:0000 0001 2291 598X)
5 Universidad de Colima, Faculty of Mechanical and Electrical Engineering, Colima, Mexico (GRID:grid.412887.0) (ISNI:0000 0001 2375 8971)
6 Universidad Autonoma de Nayarit, Academic Unit of Basic Sciences and Engineering, Tepic, Mexico (GRID:grid.412858.2) (ISNI:0000 0001 2164 1788)




