Research Article
PROBABILISTIC APPROACHES FOR CREDIT SCREENING AND BANKRUPTCY PREDICTION
Article first published online: 7 FEB 2012
DOI: 10.1002/isaf.331
Copyright © 2012 John Wiley & Sons, Ltd.
Issue

Intelligent Systems in Accounting, Finance and Management
Volume 18, Issue 4, pages 177–193, October/December 2011
Additional Information
How to Cite
Pendharkar, P. C. (2011), PROBABILISTIC APPROACHES FOR CREDIT SCREENING AND BANKRUPTCY PREDICTION. Int. J. Intell. Syst. Acc. Fin. Mgmt., 18: 177–193. doi: 10.1002/isaf.331
Publication History
- Issue published online: 21 FEB 2012
- Article first published online: 7 FEB 2012
- Manuscript Accepted: 27 DEC 2011
- Manuscript Revised: 22 DEC 2011
- Manuscript Received: 21 MAY 2011
- Abstract
- Article
- References
- Cited By
Keywords:
- probabilistic neural network;
- logistic regression;
- expectation maximization
SUMMARY
Three probabilistic neural network approaches are used for credit screening and bankruptcy prediction: a logistic regression neural network (LRNN), a probabilistic neural network (PNN) and a semi-supervised expectation maximization-based neural network. Using real-world bankruptcy prediction and credit screening datasets, we compare the three probabilistic approaches using various performance criteria of sensitivity, specificity, accuracy, decile lift and area under receiver operating characteristics (ROC) curves. The results of our experiments indicate that the PNN outperforms the other two techniques for decile lift and specificity performance metric. Using the area under ROC curve, we find that for bankruptcy prediction data the PNN outperforms the other two approaches when false positive rates (FPRs) are less than 40 %. LRNN outperforms the other two techniques for FPRs higher than 40 % for bankruptcy data. We observe that the LRNN results are very sensitive to the ratio of examples belonging to two classes in training data and there is a tendency to overfit training data. Copyright © 2012 John Wiley & Sons, Ltd.

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