会议专题

The Integrated Methodology of Rough Set and GAbased SVM for Predicting Financial Distress

In the analysis of predicting financial distress based on support vector machine (SVM),irrelevant or correlated features in the samples could spoil the performance of the SVM classifier,leading to decrease of prediction accuracy.On the other hand,two SVM parameters,c and σ,its improper determining will cause either over-fitting or under-fitting of a SVM model.In order to solve the problems mentioned above,this paper used rough sets as a preprocessor of SVM to select a subset of input variables and employed the genetic algorithm (GA) to optimize the parameters of SVM.Additionally,the proposed GA-SVM model that can automatically determine the optimal parameters was tested on the prediction of financial distress of listed companies in China.Then,we compared the accuracies of the proposed GA-SVM model with those of other models of multivariate statistics (Fisher and Probit) and other artificial intelligence (BPN and fix-SVM).Especially,we adopted bootstrap technology to evaluate the reliability of validation.Experimental results showed that the GASVM model performed the best predictive accuracy and generalization,implying that the hybrid of GA with traditional SVM model can serve as a promising alternative for financial distress prediction.

financial distress rough set genetic algorithm support vector machine.

Jian-guo Zhou Tao Bai

School of Business Administration,North China Electric Power University,Baoding City,China

国际会议

International Conference on Modelling,Identification and Control(模拟、鉴定、控制国际会议)

上海

英文

2008-06-29(万方平台首次上网日期,不代表论文的发表时间)