DocumentCode
249202
Title
Comparison of wrapper and filtering approaches for corporate failure prediction
Author
Fallahpour, Saeid ; Zadeh, Mehrdad H. ; Lakvan, Eisa Norouzian
Author_Institution
Dept. of Finance, Univ. of Tehran, Tehran, Iran
fYear
2014
fDate
19-20 Aug. 2014
Firstpage
427
Lastpage
431
Abstract
Outbreak of debt crisis in Europe has made the issue of corporate failure prediction, known as financial distress prediction (FDP) as well, a significant topic in the field of management science. The purpose of this paper is to propose five hybrid classifiers to tackle corporate failure prediction problem. Principle component analysis (PCA),information gain (IG) and relief (Re) methods as representatives of feature selection filtering approach, and genetic algorithm (GA) and particle swarm optimization (PSO) techniques as the representatives of feature selection wrapper approach, have been integrated with k-nearest neighborhood (k-NN) to create our five classifies for our given data set. According to results, PSO-kNN ensemble classifier outperformed all the applied classifiers in the literature in terms of prediction accuracy for our defined data set.
Keywords
financial management; genetic algorithms; particle swarm optimisation; pattern classification; principal component analysis; Europe; FDP; GA; IG; PCA; PSO; corporate failure prediction; debt crisis; feature selection filtering approach; financial distress prediction; genetic algorithm; information gain; k-NN; k-nearest neighborhood; particle swarm optimization; principle component analysis; relief methods; wrapper approach; Accuracy; Expert systems; Filtering; Finance; Genetic algorithms; Particle swarm optimization; Principal component analysis; Corporate Failure prediction; filtering approach; particle swarm optimization; wrapper approach;
fLanguage
English
Publisher
ieee
Conference_Titel
Networks & Soft Computing (ICNSC), 2014 First International Conference on
Conference_Location
Guntur
Print_ISBN
978-1-4799-3485-0
Type
conf
DOI
10.1109/CNSC.2014.6906698
Filename
6906698
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