基于机器学习模型的贷款违约可解释性预测

Xu Zhu , Qingyong Chu , Xinchang Song , Ping Hu , Lu Peng
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引用次数: 1

摘要

由于网络贷款的便利性,越来越多的人在网络平台上借钱。随着机器学习技术的出现,预测贷款违约已经成为一个热门话题。然而,机器学习模型有一个不能忽视的黑盒问题。为了使预测模型规则更容易理解,从而增加用户对模型的信心,必须使用解释性模型。采用逻辑回归、决策树、XGBoost和LightGBM模型来预测贷款违约。预测结果表明,LightGBM和XGBoost在预测能力方面优于逻辑回归和决策树模型。LightGBM的曲线下面积为0.7213。LightGBM和XGBoost的精度超过0.8。LightGBM和XGBoost的精度超过0.55。同时,我们采用了局部可解释模型不可知的解释方法,对预测结果进行了可解释的分析。结果表明,贷款期限、贷款等级、信用评级和贷款金额等因素会影响预测结果。
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Explainable prediction of loan default based on machine learning models

Owing to the convenience of online loans, an increasing number of people are borrowing money on online platforms. With the emergence of machine learning technology, predicting loan defaults has become a popular topic. However, machine learning models have a black-box problem that cannot be disregarded. To make the prediction model rules more understandable and thereby increase the user’s faith in the model, an explanatory model must be used. Logistic regression, decision tree, XGBoost, and LightGBM models are employed to predict a loan default. The prediction results show that LightGBM and XGBoost outperform logistic regression and decision tree models in terms of the predictive ability. The area under curve for LightGBM is 0.7213. The accuracies of LightGBM and XGBoost exceed 0.8. The precisions of LightGBM and XGBoost exceed 0.55. Simultaneously, we employed the local interpretable model-agnostic explanations approach to undertake an explainable analysis of the prediction findings. The results show that factors such as the loan term, loan grade, credit rating, and loan amount affect the predicted outcomes.

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