信用制裁预测

P. Kirubanantham, A. Saranya, D. S. Kumar
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引用次数: 0

摘要

在今天的银行业中,由于技术的进步,有很多改进。申请贷款审批的人数也每天都在增加,银行很难对每个申请人进行人工审核,然后推荐贷款审批。在批准贷款之前,银行业仍需要一种更精确的方法来预测安全客户。贷款的质量指标之一是贷款的状态。虽然它是贷款审批过程中最重要的一步,但它不会立即透露任何信息。为了获得违约者和有效用户,使用信用制裁预测框架对信用数据进行精确分析。使用随机森林分类器技术可以更可靠地估计客户的贷款偿还能力。因此,这种投影的效率是基于随机森林方法的多因素。目的是为了表明参数优化的结果在较高的准确性估计贷款偿还能力的客户。主要目标是使用python软件包和机器学习算法实现的。结合最小-最大标准化、Logistic回归、随机森林分类器和使用张量流创建的深度学习模型来预测贷款审批的安全客户。CSF提供了高精度的重要细节,也主要通过ML和深度学习的分类算法来预测银行的贷款状况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Credit Sanction Forecasting
In today's banking sector, there is a lot of enhancement because of the advancement of technology. The number of applicants for the loan approval is also increasing every day, and it is difficult for the banking sector to verify each applicant manually and then recommend for the loan approval. The banking sector still needs a more precise method for forecasting the safe customer before approving the loan. One of the quality metrics of the loan is the status of the loan. It doesn't instantly reveal anything, though it is a foremost step in the process of loan approval. To obtain a defaulter and also valid user, the Credit Sanction Forecasting framework is used for precise analysis of the credit data. A customer's loan repayment capacity is more reliably estimated using the random forest classifier technique. Therefore, the efficiency of this projection is based on the multiple factors of the Random Forest method. The aim is to show that parameter optimization outcomes in high accuracy for the estimation of loan repayments capacity by customers. The primary aim has implemented using a software package of python and machine learning algorithms. The combination Min-Max standardization, Logistic Regression, Random Forest classifier, and deep learning model created using tensor flow are used to predict the safe customers for the loan approval. CSF offers important details with high accuracy and is also mainly used to forecast the loan status of the bank with help of a classification algorithm of ML and deep learning.
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