Improving Credit Risk Assessment through Deep Learning-based Consumer Loan Default Prediction Model

M. Jumaa, M. Saqib, Arif Attar
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Abstract

This study aims to enhance credit risk identification, improve loan borrower review efficiency, and increase default prediction accuracy rate using data mining and machine learning techniques. The study also employs deep learning to develop a consumer loan default prediction model that minimizes credit risks and ensures consistent development. The researchers collected data from a survey of 1000 participants, stratified into local and foreign banks, and selected the top 11 banks based on turnover and customer volume. To construct the machine learning model, Keras, a neural network library that runs on TensorFlow, was utilized. The model predicts loan applicant default likelihood. The study's practical implications demonstrate a noteworthy success rate of customer default prediction, which can significantly benefit banks. The model was evaluated on a test set of 250 records and achieved a test set accuracy of 95.2%, correctly predicting the default state of 238 out of 250 respondents.
基于深度学习的消费者贷款违约预测模型改进信用风险评估
本研究旨在利用数据挖掘和机器学习技术,增强信用风险识别,提高贷款借款人审查效率,提高违约预测准确率。该研究还利用深度学习开发了一个消费者贷款违约预测模型,以最大限度地降低信用风险并确保持续发展。研究人员收集了1000名参与者的调查数据,将他们分为本地银行和外资银行,并根据营业额和客户数量选出了排名前11位的银行。为了构建机器学习模型,使用了运行在TensorFlow上的神经网络库Keras。该模型预测贷款申请人违约的可能性。该研究的实际意义表明,客户违约预测的成功率值得注意,这可以显着使银行受益。该模型在250条记录的测试集上进行了评估,测试集的准确率达到95.2%,正确预测了250个应答者中238个的默认状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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