A novel framework for enhancing transparency in credit scoring: Leveraging Shapley values for interpretable credit scorecards
Rivalani Hlongwane,
Kutlwano Ramabao,
Wilson Mongwe
Abstract:Credit scorecards are essential tools for banks to assess the creditworthiness of loan applicants. While advanced machine learning models like XGBoost and random forest often outperform traditional logistic regression in predictive accuracy, their lack of interpretability hinders their adoption in practice. This study bridges the gap between research and practice by developing a novel framework for constructing interpretable credit scorecards using Shapley values. We apply this framework to two credit datasets… Show more
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