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Peer-To-Peer Lending: Classification in the Loan Application Process

机译:点对点贷款:贷款申请过程中的分类

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This paper studies the peer-to-peer lending and loan application processing of LendingClub. We tried to reproduce the existing loan application processing algorithm and find features used in this process. Loan application processing is considered a binary classification problem. We used the area under the ROC curve (AUC) for evaluation of algorithms. Features were transformed with splines for improving the performance of algorithms. We considered three classification algorithms: logistic regression, buffered AUC (bAUC) maximization, and AUC maximization.With only three features, Debt-to-Income Ratio, Employment Length, and Risk Score, we obtained an AUC close to 1. We have done both in-sample and out-of-sample evaluations. The codes for cross-validation and solving problems in a Portfolio Safeguard (PSG) format are in the Appendix. The calculation results with the data and codes are posted on the website and are available for downloading.
机译:本文研究了LendingClub的点对点借贷申请过程。我们试图重现现有的贷款申请处理算法,并找到此过程中使用的功能。贷款申请处理被认为是二进制分类问题。我们使用ROC曲线(AUC)下的面积来评估算法。使用样条线对特征进行了转换,以改善算法的性能。我们考虑了三种分类算法:逻辑回归,缓冲AUC(bAUC)最大化和AUC最大化。只有三个特征,即债务收入比,就业时间和风险得分,我们获得了接近1的AUC。样本内和样本外评估。附录中有用于交叉验证和解决投资组合保障(PSG)格式问题的代码。带有数据和代码的计算结果已发布在网站上,可供下载。

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