2024
DOI: 10.1002/for.3080
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Credit risk prediction based on causal machine learning: Bayesian network learning, default inference, and interpretation

Jiaming Liu,
Xuemei Zhang,
Haitao Xiong

Abstract: The predictive and interpretable power of models is crucial for financial risk management. The purpose of this study was to perform credit risk prediction in a structured causal network with four stages—data processing, structural learning, parameter learning, and interpretation of inferences—and use six real credit datasets to conduct empirical research on the proposed model. Compared with traditional machine learning algorithms, we comprehensively explain the results of credit default through forward and rev… Show more

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References 56 publications
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