Using an ensemble classifier based on sequential floating forward selection for financial distress prediction problem |
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Affiliation: | 1. University of Tehran, Iran;2. Financial Department, University of Tehran, Iran;3. Sanchez School of Business, Texas A&M International University Laredo, TX, USA;1. Polytechnic Institute of Cavado and Ave (School of Management), Portugal;2. School of Economics and Management of the University of Porto, Portugal;1. School of International Business Administration, Shanghai University of Finance and Economics, Shanghai 200433, China;2. Monash Business School, Monash University, Caulfield East, VIC 3145, Australia;1. School of Management, Federal University of Rio Grande do Sul (UFRGS), 855 Washington Luiz Street, Porto Alegre, Brazil;2. Faculty of Economics and Business Administration, Ghent University, Tweekerkenstraat 2, 9000 Ghent, Belgium;3. IMED Business School, Faculdade Meridional, 304 Senador Pinheiro Street, Passo Fundo, Brazil;1. School of Advertising, Marketing and Public Relations, QUT Business School, GPO Box 2434, Brisbane, QLD 4000, Australia;2. SKK Graduate School of Business, Sungkyunkwan University, 25-2 Sungkyunkwan-ro, Jongro-gu 03063, Seoul, Korea;3. Department of Marketing, Monash Business School, PO Box 197, Caulfield East, Victoria 3145 Australia |
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Abstract: | Financial distress prediction (FDP) is a significant issue investigated by researchers, credit institutions and banks. Although extensive research has been conducted in this area, applications of combined feature selection (FS) methods and classification models are subjects that have been addressed intensely in recent years. One of the most important issues in the FDP problem is to employ an effective FS algorithm, leading to an acceptable level of performance accuracy in the implementation stage. Hence, this study primarily attempted to introduce a precise FS model and compared the obtained results with those of other conventional models tackling FDP in terms of accuracy. The proposed method involved the sequential floating forward selection (SFFS) algorithm applied as a wrapper FS technique to determine the best subset of features. At the classification stage, the support vector machine (SVM), owing to its good performance, demonstrated in numerous studies, in solving classification problems, was deployed. The performance of the proposed method was compared with those of other current well-known FS methods including artificial bee colony (ABC), genetic algorithm (GA) and sequential forward selection (SFS) (all of which are categorized under wrapper methods), and principal component analysis (PCA), relief and information gain (IG) (best known as filter techniques) for our given datasets. The results indicated that a combined model of SVM based on the SFFS approach can yield greater accuracy than the other methods applied for our defined domestic and foreign datasets. Therefore, the SFFS-SVM ensemble classifier can be considered a promising addition to existent models when confronting the FDP issue. |
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Keywords: | Bankruptcy prediction problem Sequential floating forward Artificial bee colony Support vector machine Genetic algorithm |
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