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A heterogeneous ensemble credit scoring model based on adaptive classifier selection: An application on imbalanced data

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  • Tong Zhang
  • Guotai Chi

Abstract

In the domain of credit scoring, the number of bad clients is far less than that of good ones. So imbalanced data classification is a realisitc and critical issue in the credit scoring process. In this study, a novel heterogeneous ensemble credit scoring model is proposed for the problem of imbalanced data classification. This proposed model is on basis of five standard classifiers, namely LSVM, KNN, MDA, DT, LR, and adaptively selects the base classifiers with highest AUC according to the data distribution, then integrates all base classifiers to obtain a prediction. Finally, by using five comprehensive performance measures and four classical credit datasets, we find that the proposed model is better than other baseline models. This novel model can be applied to actual credit scoring and assist financial institutions in credit risk management.

Suggested Citation

  • Tong Zhang & Guotai Chi, 2021. "A heterogeneous ensemble credit scoring model based on adaptive classifier selection: An application on imbalanced data," International Journal of Finance & Economics, John Wiley & Sons, Ltd., vol. 26(3), pages 4372-4385, July.
  • Handle: RePEc:wly:ijfiec:v:26:y:2021:i:3:p:4372-4385
    DOI: 10.1002/ijfe.2019
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    Cited by:

    1. Li, Zhe & Liang, Shuguang & Pan, Xianyou & Pang, Meng, 2024. "Credit risk prediction based on loan profit: Evidence from Chinese SMEs," Research in International Business and Finance, Elsevier, vol. 67(PA).

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