Loan Repayment Prediction Using Logistic Regression Ensemble Learning With Machine Learning Algorithms

T. Dinh, Binh Pham Thanh
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Abstract

Lending activities are an important part of the credit activities of financial institutions and banks. This is an area that brings great potential for development as well as a sustainable source of profit for financial institutions and banks. However, lending to customers also brings high risks. Therefore, predicting the ability to repay on time and understanding the factors affecting the repayment ability of customers is extremely important and necessary, to help financial institutions and banks enhance their ability to pay debts. customers' ability to identify and pay debts on time, contributing to minimizing bad debts and enhancing credit risk management. In this study, Machine Learning models will be used: Proposing a method to combine Logistic Regression with Random Forest, Logistic Regression with K-Nearest Neighbor, Logistic Regression with Support Vector Machine, Logistic Regression with Artificial Neural Network, Logistic Regression with Long short-term memory and finally Logistic Regression with Decision Tree to predict customers' ability to repay on time and compare and evaluate the performance of Machine Learning models. As a result, the Logistic Regression with the Random Forest model ensemble is found as the optimal predictive model and it is expected that Fico Score and annual income significantly influence the forecast.
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使用逻辑回归集成学习与机器学习算法的贷款还款预测
贷款活动是金融机构和银行信贷活动的重要组成部分。这是一个具有巨大发展潜力的领域,也是金融机构和银行的可持续利润来源。然而,贷款给客户也带来了高风险。因此,预测客户的按时还款能力,了解影响客户还款能力的因素,对于帮助金融机构和银行提高偿债能力是极其重要和必要的。客户及时识别和偿还债务的能力,有助于减少坏账,加强信用风险管理。本研究将使用机器学习模型:提出将Logistic回归与随机森林、Logistic回归与k近邻、Logistic回归与支持向量机、Logistic回归与人工神经网络、Logistic回归与长短期记忆、Logistic回归与决策树相结合的方法来预测客户的按时还款能力,并比较和评估机器学习模型的性能。结果表明,随机森林模型集合的Logistic回归是最优预测模型,Fico评分和年收入对预测结果有显著影响。
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