Article ID Journal Published Year Pages File Type
478113 European Journal of Operational Research 2014 9 Pages PDF
Abstract

•We develop a profit-based classification performance measure for credit scoring.•This performance measure enables selection of the most profitable credit scoring model, and provides the optimal cutoff point.•Results indicate that this approach outperforms traditional approaches in terms of accuracy and monetary value.

This paper presents a new approach for consumer credit scoring, by tailoring a profit-based classification performance measure to credit risk modeling. This performance measure takes into account the expected profits and losses of credit granting and thereby better aligns the model developers’ objectives with those of the lending company. It is based on the Expected Maximum Profit (EMP) measure and is used to find a trade-off between the expected losses – driven by the exposure of the loan and the loss given default – and the operational income given by the loan. Additionally, one of the major advantages of using the proposed measure is that it permits to calculate the optimal cutoff value, which is necessary for model implementation. To test the proposed approach, we use a dataset of loans granted by a government institution, and benchmarked the accuracy and monetary gain of using EMP, accuracy, and the area under the ROC curve as measures for selecting model parameters, and for determining the respective cutoff values. The results show that our proposed profit-based classification measure outperforms the alternative approaches in terms of both accuracy and monetary value in the test set, and that it facilitates model deployment.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science (General)
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