基于逻辑回归和CIBIL评分的贷款审批预测系统

Esha Kadam, Aryan Gupta, Srushti Jagtap, Ishu Dubey, G. Tawde
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引用次数: 0

摘要

许多个人申请银行贷款。但银行的资产有限,因此只能向有限数量的客户发放信贷。客户获得的信用可以成为银行不断增长的资产,因为它可以从利息中获得收益,如果客户无法偿还贷款,则可以成为一项负债。由于银行没有很好地了解客户的还款能力,大量被支付的资金可能会变成坏账。事先决定哪个客户可以偿还贷款对银行来说将是一个更安全的选择。银行职员可以通过检查客户的各种参数来判断是否批准贷款。这样做将需要人力和资本,因为人类雇员将执行预测工作。为了解决这种情况,需要自动化。此前在这一领域的研究表明,有许多策略可以减少贷款违约的数量。然而,准确的预测对利润最大化至关重要。提出的贷款审批预测系统是一个基于机器学习的web应用程序,旨在为用户提供即时的贷款审批预测。应用程序使用逻辑回归来预测贷款批准的概率,并计算信用评分(称为CIBIL评分)。总的来说,贷款审批预测系统对于希望快速评估贷款申请并做出明智决策的个人和金融机构来说是一个强大的工具。它利用机器学习的力量来提供准确可靠的预测,并为用户提供了一种简单方便的方式来访问此功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Loan Approval Prediction System using Logistic Regression and CIBIL Score
Many individuals apply for bank loans. But the banks have limited assets, so it can grant credit to a limited number of customers. The credit gained by the customers can be a growing asset for a bank due to the earnings from interests or a liability if the customer is unable to pay the loan. A huge amount of capital that is disbursed may turn into bad debt just because the bank was not well informed about the repayment capabilities of its customer. Determining beforehand that which customer can repay the loan will be a safer option for the bank. The process of predicting whether a loan should be approved or not, can be done by bank officials by inspecting various parameters of a customer. Doing so will require manpower and capital as human employees would perform the job of prediction. To tackle this situation, there is a need for automation. Previous research in this area has shown that there are numerous strategies for reducing the number of loan defaults. However, accurate prediction is critical for profit maximisation. The proposed loan approval prediction system is a web application based on machine learning, designed to provide instant loan approval predictions to users. The application uses logistic regression to predict the probability of loan approval and also computes a credit score which is referred as CIBIL score. Overall, the loan approval prediction system is a powerful tool for individuals and financial institutions looking to quickly assess loan applications and make informed decisions. It leverages the power of machine learning to provide accurate and reliable predictions, and also provides an easy and a convenient way for users to access this functionality.
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