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Loan default prediction is critical for financial risk management, enabling institutions to make informed lending decisions and mitigate potential losses. This study aims to improve the accuracy of loan default prediction using advanced machine learning techniques. Our research objectives include developing a robust prediction model through comprehensive data analysis, feature engineering, and model tuning. Methodologically, we use iterative interpolators to handle missing values, KBinsDiscretizer for feature binning, and neural networks optimized using Bayesian methods and genetic algorithms. The results show that the optimized model can produce more accurate prediction results.
Fang et al. (Fri,) studied this question.