Artificial neural networks in bankruptcy prediction: General framework and cross-validation analysis

Artificial neural networks in bankruptcy prediction: General framework and cross-validation analysis

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Article ID: iaor20002256
Country: Netherlands
Volume: 116
Issue: 1
Start Page Number: 16
End Page Number: 32
Publication Date: Jul 1999
Journal: European Journal of Operational Research
Authors: , , ,
Keywords: heuristics
Abstract:

In this paper, we present a general framework for understanding the role of artificial neural networks in bankruptcy prediction. We give a comprehensive review of neural network applications in this area and illustrate the link between neural networks and traditional Bayesian classification theory. The method of cross-validation is used to examine the between-sample variation of neural networks for bankruptcy prediction. Based on a matched sample of 220 firms, our findings indicate that neural networks are significantly better than logistic regression models in prediction as well as classification rate estimation. In addition, neural networks are robust to sampling variations in overall classification performance.

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