基于集成机器学习算法的银行贷款违约预测

Aman Soni, K. Shankar
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引用次数: 0

摘要

银行在任何国家的金融体系中都扮演着不可或缺的角色,它直接影响着一个国家的经济地位和增长。银行的主要作用包括从客户那里接受存款,用这些存款把钱借给借款人以换取一定的利息,发放信贷,票据贴现等。但银行的主要利润来源是向借款人放贷所获得的利息。在像Covid-19这样的全球大流行的情况下,需要银行金融援助的人数急剧增加。但这些银行面临的一个主要问题是借款人未能及时偿还贷款。因此,为了解决这个问题,银行现在使用一些模型来预测借款人偿还贷款的可能性。诸如年收入、就业状况、房屋所有权、当前债务等因素都被考虑在内,以将贷款请求分类为不良贷款或非不良贷款。因此,本文的基本目的是开发一个类似的模型,但使用随机森林分类的集成机器学习算法。并与当前使用的模型(决策树分类)进行比较分析。在完成所有模型的实现后,得出结论随机森林分类器在准确率方面优于决策树分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bank Loan Default Prediction Using Ensemble Machine Learning Algorithm
Banks play an integral role in the financial system of any country which directly affects its economic status and growth. The major roles of banks include accepting deposits from its customers, using those deposits to lend money to the borrowers in return for some interest, granting credits, discounting on bills etc. But the main source of profit for the banks is the interest it receives from lending money to the borrowers. And in a scenario of global pandemic like Covid-19, the number of people requiring financial aid from the banks has increased drastically. But a major problem faced by these banks is the failure of timely loan repayment by the borrowers. So, to tackle this problem, banks now a days use some models to predict the possibility of loan repayment from the borrower. Factors like annual income, employment status, home ownership, current debt etc are taken into consideration to categorize the loan request as bad loan or not. So, this paper basically aims to develop a similar model, but using ensemble machine learning algorithm of Random Forest Classification. And perform a comparative analysis with the model (Decision Tree Classification) that are currently in use. After complete implementation of all the models it was concluded that Random Forest Classifier Outperformed Decision Tree Classifier in terms of accuracy.
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