预测点对点借贷中的信用风险:一种带有少量特征的机器学习方法

Y. Cheng, Hui-Ting Chang, Chia-Yu Lin, Heng-Yu Chang
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引用次数: 0

摘要

P2P借贷为借款人提供了相对较低的借款利率,并为贷款人提供了一个在线平台上的投资渠道。由于大多数P2P借贷不需要任何担保,借款人逾期付款导致借贷平台和贷款人遭受巨大损失。人们提出了许多风险预测模型来预测信用风险。然而,这些作品建立的模型有50多个特征,这导致了大量的计算时间。此外,在大多数P2P借贷数据集中,非违约数据的数量远远超过违约数据的数量。这些研究忽略了数据不平衡问题,导致预测不准确。因此,本研究提出了一种P2P借贷信用风险预测系统(CRPS),以解决数据不平衡的问题,并且只需要很少的特征来构建模型。在CRPS系统中实现了数据预处理模块、特征选择模块、数据综合模块和五个风险预测模型。在实验中,我们基于LendingClub平台的去识别个人贷款数据集评估CRPS。CRPS的准确率达到99%,召回率达到0.95,F1-Score为0.97。CRPS可以用不到10个特征准确预测信用风险,解决数据不平衡问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Credit Risk in Peer-to-Peer Lending: A Machine Learning Approach with Few Features
Peer-to-peer (P2P) lending provides borrowers with relatively low borrowing interest rates and gives lenders a channel for investment on an online platform. Since most P2P lending does not require any guarantees, the overdue payment of borrowers results in a massive loss of lending platforms and lenders. Many risk prediction models are proposed to predict credit risk. However, these works build models with more than 50 features, which causes a lot of computation time. Besides, in most P2P lending datasets, the number of non-default data far exceeds the number of default data. These researches ignore the data imbalance issue, leading to inaccurate predictions. Therefore, this study proposes a credit risk prediction system (CRPS) for P2P lending to solve data imbalance issues and only require few features to build the models. We implement a data preprocessing module, a feature selection module, a data synthesis module, and five risk prediction models in CRPS. In experiments, we evaluate CRPS based on the de-identified personal loan dataset of the LendingClub platform. The accuracy of the CRPS can achieve 99%, the recall reaches 0.95, and the F1-Score is 0.97. CRPS can accurately predict credit risk with less than 10 features and tackle data imbalance issues.
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