Neural network rule extraction for credit scoring

  • Bart Baesens (Department of Applied Economic Sciences K.U.Leurven, Naamsestraat 69, B-3000 Leuven Belgium) ;
  • Rudy Setiono (Department of Information Systems National University of Singapore Kent Ridge, Singapore 119260, Republic of Singapore) ;
  • Lille, Valerina-De (Department of Applied Economic Sciences K.U.Leurven, Naamsestraat 69, B-3000 Leuven Belgium) ;
  • Stijn Viaene (Department of Applied Economic Sciences K.U.Leurven, Naamsestraat 69, B-3000 Leuven Belgium)
  • Published : 2001.01.01

Abstract

In this paper, we evaluate and contrast four neural network rule extraction approaches for credit scoring. Experiments are carried our on three real life credit scoring data sets. Both the continuous and the discretised versions of all data sets are analysed The rule extraction algorithms, Neurolonear, Neurorule. Trepan and Nefclass, have different characteristics, with respect to their perception of the neural network and their way of representing the generated rules or knowledge. It is shown that Neurolinear, Neurorule and Trepan are able to extract very concise rule sets or trees with a high predictive accuracy when compared to classical decision tree(rule) induction algorithms like C4.5(rules). Especially Neurorule extracted easy to understand and powerful propositional if -then rules for all discretised data sets. Hence, the Neurorule algorithm may offer a viable alternative for rule generation and knowledge discovery in the domain of credit scoring.

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