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Predicting Credit Risk in Peer-to-Peer Lending: A Neural Network Approach

机译:对等信贷中的信用风险预测:一种神经网络方法

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Emergence of peer-to-peer lending has opened an appealing option for micro-financing and is growing rapidly as an option in the financial industry. However, peer-to-peer lending possesses a high risk of investment failure due to the lack of expertise on the borrowers' creditworthiness. In addition, information asymmetry, the unsecured nature of loans as well as lack of rigid rules and regulations increase the credit risk in peer-to-peer lending. This paper proposes a credit scoring model using artificial neural networks in classifying peer-to-peer loan applications into default and non-default groups. The results indicate that the neural network-based credit scoring model performs effectively in screening default applications.
机译:点对点贷款的出现为小额信贷打开了一个诱人的选择,并且在金融行业中作为一种选择正在迅速增长。但是,由于缺乏对借款人信誉的专门知识,对等贷款具有很高的投资失败风险。此外,信息不对称,贷款的无抵押性质以及缺乏严格的规章制度,都增加了点对点贷款的信用风险。本文提出了一种使用人工神经网络的信用评分模型,将对等贷款申请分为违约和非违约组。结果表明,基于神经网络的信用评分模型可以有效地筛选默认应用程序。

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