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Comparative Analysis of Artificial Neural Network Models: Application in Bankruptcy Prediction


Christakis Charalambous


University of Cyprus - Department of Public and Business Administration

Andreas Charitou


University of Cyprus

Froso Kaourou


University of Cyprus


Annals of Operations Research

Abstract:     
This study compares the predictive performance of three neural network methods, namely the Learning Vector Quantization, the Radial Basis Function, and the Feedforward network that uses the conjugate gradient optimization algorithm, with the performance of the logistic regression and the backpropagation algorithm. All these methods are applied to a dataset of 139 matched-pairs of bankrupt and non-bankrupt U.S firms for the period 1983-1994. The results of this study indicate that the contemporary neural network methods applied in the present study provide superior results to those obtained from the logistic regression method and the backpropagation algorithm.

JEL Classification: M41, G33

Accepted Paper Series


Date posted: February 10, 2001  

Suggested Citation

Charalambous, Christakis, Charitou, Andreas and Kaourou, Froso, Comparative Analysis of Artificial Neural Network Models: Application in Bankruptcy Prediction. Annals of Operations Research. Available at SSRN: http://ssrn.com/abstract=254801

Contact Information

Christakis Charalambous
University of Cyprus - Department of Public and Business Administration ( email )
75 Kallipoleos Street
P.O. Box 20537
Nicosia CY-1678
CYPRUS
00357-2-892258 (Phone)
00357-2-339063 (Fax)
Andreas Charitou (Contact Author)
University of Cyprus ( email )
75 Kallipoleos Street
P.O. Box 20537
Nicosia CY-1678
Cyprus
+357 2 893624 (Phone)
+357 2 895030 (Fax)
Froso Kaourou
University of Cyprus
75 Kallipoleos Street
Nicosia CY 1678, Nicosia P.O. Box 2
Cyprus
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