4.7 Article

Bankruptcy prediction in firms with statistical and intelligent techniques and a comparison of evolutionary computation approaches

Journal

COMPUTERS & MATHEMATICS WITH APPLICATIONS
Volume 62, Issue 12, Pages 4514-4524

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.camwa.2011.10.030

Keywords

Decision tree classification; Support vector machine; Financial bankruptcy prediction

Funding

  1. National Scientific Council (NSC) of the Republic of China (ROC) [NSC-98-2410-H-025-011, NSC-99-2410-H-025-011]

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In this paper, we compare some traditional statistical methods for predicting financial distress to some more unconventional methods, such as decision tree classification, neural networks, and evolutionary computation techniques, using data collected from 200 Taiwan Stock Exchange Corporation (TSEC) listed companies. Empirical experiments were conducted using a total of 42 ratios including 33 financial, 8 non-financial and 1 combined macroeconomic index, using principle component analysis (PCA) to extract suitable variables. This paper makes four critical contributions: (1) with nearly 80% fewer financial ratios by the PCA method, the prediction performance is still able to provide highly-accurate forecasts of financial bankruptcy; (2) we show that traditional statistical methods are better able to handle large datasets without sacrificing prediction performance, while intelligent techniques achieve better performance with smaller datasets and would be adversely affected by huge datasets; (3) empirical results show that C5.0 and CART provide the best prediction performance for imminent bankruptcies; and (4) Support Vector Machines (SVMs) with evolutionary computation provide a good balance of high-accuracy short- and long-term performance predictions for healthy and distressed firms. Therefore, the experimental results show that the Particle Swarm Optimization (PSO) integrated with SVM (PSO-SVM) approach could be considered for predicting potential financial distress. (C) 2011 Elsevier Ltd. All rights reserved.

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