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Financial distress prediction using support vector machines: Ensemble vs. individual
Authors:Jie Sun  Hui Li
Affiliation:1. School of Economics and Management, Zhejiang Normal University, P.O. Box 62, 688 YingBinDaDao, Jinhua, Zhejiang 321004, PR China;2. College of Engineering, The Ohio State University, 470 Hitchcock Hall, 2070 Neil Avenue, Columbus, OH 43210, USA;3. School of Mechanical and Electronic Engineering, Wuhan University of Technology, Wuhan, Hubei 430070, PR China;1. The Department of Financial and Investment Management of the Financial University under the Government of Russian Federation, 49 Leningradskiy Av., Moscow 125993, Russia;2. The Faculty of Economics of the St. Petersburg State University, 62 Tchaikovskogo St., St. Petersburg 198123, Russia;1. School of Management, Zhejiang University, 866 Yuhangtang Road, Hangzhou, Zhejiang Province 310058, People’s Republic of China;2. Indian Institute of Management Calcutta, Diamond Harbour Road, Joka, Kolkata 700104, West Bengal, India
Abstract:Financial distress prediction (FDP) is of great importance to both inner and outside parts of companies. Though lots of literatures have given comprehensive analysis on single classifier FDP method, ensemble method for FDP just emerged in recent years and needs to be further studied. Support vector machine (SVM) shows promising performance in FDP when compared with other single classifier methods. The contribution of this paper is to propose a new FDP method based on SVM ensemble, whose candidate single classifiers are trained by SVM algorithms with different kernel functions on different feature subsets of one initial dataset. SVM kernels such as linear, polynomial, RBF and sigmoid, and the filter feature selection/extraction methods of stepwise multi discriminant analysis (MDA), stepwise logistic regression (logit), and principal component analysis (PCA) are applied. The algorithm for selecting SVM ensemble's base classifiers from candidate ones is designed by considering both individual performance and diversity analysis. Weighted majority voting based on base classifiers’ cross validation accuracy on training dataset is used as the combination mechanism. Experimental results indicate that SVM ensemble is significantly superior to individual SVM classifier when the number of base classifiers in SVM ensemble is properly set. Besides, it also shows that RBF SVM based on features selected by stepwise MDA is a good choice for FDP when individual SVM classifier is applied.
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