Title of article :
Principal component case-based reasoning ensemble for business failure prediction
Author/Authors :
Hui Li، نويسنده , , Jie Sun، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Pages :
8
From page :
220
To page :
227
Abstract :
Case-based reasoning (CBR) has several advantages for business failure prediction (BFP), including ease of understanding, explanation, and implementation and the ability to make suggestions on how to avoid failure. We constructed a new ensemble method of CBR that we termed principal component CBR ensemble (PC-CBR-E): it, was intended to improve the predictive ability of CBR in BFP by integrating the feature selection methods in the representation level, a hybrid of principal component analysis with its two classical CBR algorithms at the modeling level and weighted majority voting at the ensemble level. We statistically validated our method by comparing it with other methods, including the best base model, multivariate discriminant analysis, logistic regression, and the two classical CBR algorithms. The results from a one-tailed significance test indicated that PC-CBR-E produced superior predictive performance in Chinese short-term and medium-term BFP.
Keywords :
Multiple models combination , Principal component case-based reasoning ensemble (PC-CBR-E) , Business failure prediction (BFP)
Journal title :
Information and Management
Serial Year :
2011
Journal title :
Information and Management
Record number :
1227000
Link To Document :
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