Financial Credit Default Forecast Based on Big Data Analysis

Hu Jin, Longyin Luo, Xinyi Wang, Xiaoqing Zhu, Lian Qian, Zhice Zhang
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引用次数: 3

Abstract

How to effectively evaluate and identify the potential default risk of borrowers and calculate the default probability of borrowers before issuing loans is the basis and important link of the credit risk management of modern financial institutions. This paper mainly studies the statistical analysis of historical loan data of banks and other financial institutions with the help of the idea of non-balanced data classification, and uses machine learning algorithms (not statistical algorithms) such as random forest, logical regression and decision tree to establish loan default prediction model. The experimental results show that neural network and random forest algorithm outperform decision tree and logistic regression classification algorithm in prediction performance. In addition, by using the random forest algorithm to rank the importance of features, the features that have a greater impact on the final default can be obtained, so as to make a more effective judgment on the loan risk in the financial field.
基于大数据分析的金融信用违约预测
如何在发放贷款前有效地评估和识别借款人的潜在违约风险,计算借款人的违约概率,是现代金融机构信用风险管理的基础和重要环节。本文主要研究利用非平衡数据分类的思想对银行等金融机构的历史贷款数据进行统计分析,并利用随机森林、逻辑回归、决策树等机器学习算法(非统计算法)建立贷款违约预测模型。实验结果表明,神经网络和随机森林算法在预测性能上优于决策树和逻辑回归分类算法。此外,通过使用随机森林算法对特征的重要性进行排序,可以得到对最终违约影响较大的特征,从而对金融领域的贷款风险做出更有效的判断。
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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