Building credit scoring models using genetic programming
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摘要
Credit scoring models have been widely studied in the areas of statistics, machine learning, and artificial intelligence (AI). Many novel approaches such as artificial neural networks (ANNs), rough sets, or decision trees have been proposed to increase the accuracy of credit scoring models. Since an improvement in accuracy of a fraction of a percent might translate into significant savings, a more sophisticated model should be proposed to significantly improving the accuracy of the credit scoring mode. In this paper, genetic programming (GP) is used to build credit scoring models. Two numerical examples will be employed here to compare the error rate to other credit scoring models including the ANN, decision trees, rough sets, and logistic regression. On the basis of the results, we can conclude that GP can provide better performance than other models.
论文关键词:Credit scoring,Artificial neural network (ANN),Decision trees,Genetic programming (GP),Rough sets
论文评审过程:Available online 19 January 2005.
论文官网地址:https://doi.org/10.1016/j.eswa.2005.01.003