利用机器学习技术预测银行贷款违约者的比较分析

B. Spoorthi, Shwetha S. Kumar, Anisha P. Rodrigues, Roshan Fernandes, N. Balaji
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引用次数: 2

摘要

如今,银行部门在向客户和获得贷款的个人提供贷款方面存在许多风险。对银行信贷风险的检查需要了解造成这种风险的原因。同样,金融领域的交流数量正在迅速发展,有关客户行为的信息数量也可以获得,提供贷款的风险也在扩大。本文的目的是发现申请贷款的客户的性质或细节。本文提出了随机森林、朴素贝叶斯(高斯模型、多项式模型、伯努利模型)和支持向量机(线性核、高斯RBF核、多项式核)三种机器学习模型的对比研究,以预测客户是否可以获得贷款。在本文中,我们分析了这些机器学习模型的评估参数,即分类精度,精度,召回率和F1-Score,以预测哪个模型最适合预测贷款。
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Comparative Analysis of Bank Loan Defaulter Prediction Using Machine Learning Techniques
Nowadays, there are numerous risks identified with the banking sector regarding giving loans to the clients and for the individuals who get the loan. The examination of risk in bank credits needs to understand what is the reason for this risk. Likewise, the quantity of exchanges in the financial area is quickly developing and information volumes are accessible which address the client’s conduct, and the risk of giving loans are expanded. The objective of this paper is to discover the nature or details of the clients who are applying for the loan. This paper proposes a comparative study of three machine learning models, namely, Random Forest, Naive Bayes (Gaussian model, Multinomial model, and Bernoulli Model), and Support Vector Machine (Linear kernel, Gaussian RBF kernel, and Polynomial kernel), to predict whether a customer may get a loan or not. In this paper, we analyze the evaluation parameters, namely, classification accuracy, precision, recall, and F1-Score for these machine learning models to foresee which model is best suitable for predicting a loan.
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