Research on credit risk assessment optimization based on machine learning

Xuyang Zhang, Lidong Xu, Ningxin Li, Jianke Zou
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Abstract

Credit business is a vital part of the bank's core business, which has an extremely important impact on the bank's income and development. In the operation of credit business, credit risk assessment is particularly crucial, and accurate risk assessment can minimize risks while maximizing the bank's returns. We propose a method to optimize credit risk assessment using machine learning techniques. In this work, we employ a random forest machine learning model to process and analyze large amounts of loan application data. By using correlation analysis, information enrichment, etc., the characteristics that have the most impact on credit risk assessment are screened. Subsequently, the model was constructed using a random forest algorithm. Random forests improve the generalization ability and accuracy of the model by building multiple decision trees and introducing randomness between these trees. In the experimental analysis part, we compare the performance of various models on the German credit dataset, and the results show that the deep learning model outperforms the traditional machine learning model in most indicators, verifying the effectiveness of our method.
基于机器学习的信用风险评估优化研究
信贷业务是银行核心业务的重要组成部分,对银行的收入和发展有着极其重要的影响。在信贷业务的运营中,信贷风险评估尤为关键,准确的风险评估可以将风险降到最低,同时实现银行收益的最大化。我们提出了一种利用机器学习技术优化信贷风险评估的方法。在这项工作中,我们采用随机森林机器学习模型来处理和分析大量的贷款申请数据。通过相关性分析、信息富集等方法,筛选出对信用风险评估影响最大的特征。随后,使用随机森林算法构建模型。随机森林通过建立多棵决策树并在这些树之间引入随机性来提高模型的泛化能力和准确性。在实验分析部分,我们比较了各种模型在德国信贷数据集上的表现,结果表明深度学习模型在大多数指标上都优于传统的机器学习模型,验证了我们方法的有效性。
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