Research Article

Credit Risk Prediction Using Explainable AI

Authors

  • Sarder Abdulla Al Shiam Department of Management, St Francis College, Brooklyn, NY, USA
  • Md Mahdi Hasan Department of Management, St Francis College, Brooklyn, NY, USA
  • Md Jubair Pantho Department of Computer Science and Engineering, University of Tennessee at Chattanooga, Chattanooga, TN, USA
  • Sarmin Akter Shochona Department of Management, St Francis College, Brooklyn, NY, USA
  • Md Boktiar Nayeem Department of Graduate and Professional Studies, Trine University, Angola, IN, USA
  • M Tazwar Hossain Choudhury Department of Graduate and Professional Studies, Trine University, Angola, IN, USA
  • Tuan Ngoc Nguyen VNDirect Securities, 97 Lo Duc, Hai Ba Trung, Hanoi, Vietnam

Abstract

Despite advancements in machine-learning prediction techniques, the majority of lenders continue to rely on conventional methods for predicting credit defaults, largely due to their lack of transparency and explainability. This reluctance to embrace newer approaches persists as there is a compelling need for credit default prediction models to be explainable. This study introduces credit default prediction models employing several tree-based ensemble methods, with the most effective model, XGBoost, being further utilized to enhance explainability. We implement SHapley Additive exPlanations (SHAP) in ML-based credit scoring models using data from the US-based P2P Lending Platform, Lending Club. Detailed discussions on the results, along with explanations using SHAP values, are also provided. The model explainability generated by Shapely values enables its applicability to a broad spectrum of industry applications.

Article information

Journal

Journal of Business and Management Studies

Volume (Issue)

6 (2)

Pages

61-66

Published

2024-03-18

How to Cite

Sarder Abdulla Al Shiam, Md Mahdi Hasan, Md Jubair Pantho, Sarmin Akter Shochona, Md Boktiar Nayeem, M Tazwar Hossain Choudhury, & Tuan Ngoc Nguyen. (2024). Credit Risk Prediction Using Explainable AI. Journal of Business and Management Studies, 6(2), 61–66. https://doi.org/10.32996/jbms.2024.6.2.6

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Keywords:

Credit Risk, Machine Learning, Shapely Value, Explainable AI