A hybrid approach to integrate genetic algorithm into dual scoring model in enhancing the performance of credit scoring model

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Credit scoring model is an important tool for assessing risks in financial industry, consequently the majority of financial institutions actively develops credit scoring model on the credit approval assessment of new customers and the credit risk management of existing customers. Nonetheless, most past researches used the one-dimensional credit scoring model to measure customer risk. In this study, we select important variables by genetic algorithm (GA) to combine the bank’s internal behavioral scoring model with the external credit bureau scoring model to construct the dual scoring model for credit risk management of mortgage accounts. It undergoes more accurate risk judgment and segmentation to further discover the parts which are required to be enhanced in management or control from mortgage portfolio. The results show that the predictive ability of the dual scoring model outperforms both one-dimensional behavioral scoring model and credit bureau scoring model. Moreover, this study proposes credit strategies such as on-lending retaining and collection actions for corresponding customers in order to contribute benefits to the practice of banking credit.

论文关键词:Dual scoring model,Mortgage behavioral scoring model,Credit bureau scoring model,Genetic algorithm,Logistic regression

论文评审过程:Available online 17 September 2011.

论文官网地址:https://doi.org/10.1016/j.eswa.2011.08.120