Title of article
Differential evolution trained wavelet neural networks: Application to bankruptcy prediction in banks
Author/Authors
Chauhan، نويسنده , , Nikunj and Ravi، نويسنده , , V. and Karthik Chandra، نويسنده , , D.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
7
From page
7659
To page
7665
Abstract
In this study, differential evolution algorithm (DE) is proposed to train a wavelet neural network (WNN). The resulting network is named as differential evolution trained wavelet neural network (DEWNN). The efficacy of DEWNN is tested on bankruptcy prediction datasets viz. US banks, Turkish banks and Spanish banks. Further, its efficacy is also tested on benchmark datasets such as Iris, Wine and Wisconsin Breast Cancer. Moreover, Garson’s algorithm for feature selection in multi layer perceptron is adapted in the case of DEWNN. The performance of DEWNN is compared with that of threshold accepting trained wavelet neural network (TAWNN) [Vinay Kumar, K., Ravi, V., Mahil Carr, & Raj Kiran, N. (2008). Software cost estimation using wavelet neural networks. Journal of Systems and Software] and the original wavelet neural network (WNN) in the case of all data sets without feature selection and also in the case of four data sets where feature selection was performed. The whole experimentation is conducted using 10-fold cross validation method. Results show that soft computing hybrids viz., DEWNN and TAWNN outperformed the original WNN in terms of accuracy and sensitivity across all problems. Furthermore, DEWNN outscored TAWNN in terms of accuracy and sensitivity across all problems except Turkish banks dataset.
Keywords
Differential evolution trained wavelet neural network (DEWNN) , Classification , Threshold accepting trained wavelet neural network (TAWNN) , Wavelet neural networks (WNN) , Differential evolution (DE) , Bankruptcy prediction
Journal title
Expert Systems with Applications
Serial Year
2009
Journal title
Expert Systems with Applications
Record number
2346491
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