Do consumer internet behaviours provide incremental information to predict credit default risk?

IF 1.5 4区 社会学 Q2 SOCIAL SCIENCES, INTERDISCIPLINARY Economic and Political Studies-EPS Pub Date : 2020-05-15 DOI:10.1080/20954816.2020.1759765
Wuqing Wu, Dongliang Xu, Yue Zhao, Xinhai Liu
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引用次数: 6

Abstract

Abstract The peer-to-peer lending industry has experienced recent turmoil, posing risks to fintech companies and banks. Based on a random sample of 33,669 borrowers who had downloaded peer-to-peer lending platforms prior to submitting loan applications to a well-known fintech company, Du Xiaoman Financial (formerly Baidu Finance), this article evaluates the predictive power of borrowers’ internet behaviours on credit default risk. After controlling for borrowers’ basic characteristics that are widely used in academic research and enterprise practices, the coefficients of key factors selected from 3,100 variables are economically and statistically significant. The average Kolmogorov-Smirnov value of the prediction model calculated using the hold-out method is approximately 37.09%. The results remain robust in several additional analyses. This study indicates the importance of non-credit information, particularly borrowers’ internet behaviours, in supplementing borrowers’ credit records for both fintech companies and banks.
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消费者互联网行为是否为预测信用违约风险提供了增量信息?
摘要点对点借贷行业最近经历了动荡,给金融科技公司和银行带来了风险。本文随机抽取33669名在向知名金融科技公司度小满金融(原百度金融)提交贷款申请之前下载了点对点借贷平台的借款人,评估了借款人互联网行为对信用违约风险的预测能力。在控制了学术研究和企业实践中广泛使用的借款人的基本特征后,从3100个变量中选择的关键因素系数在经济和统计上具有显著性。使用保持法计算的预测模型的平均Kolmogorov-Smirnov值约为37.09%。在几个额外的分析中,结果仍然稳健。这项研究表明,非信用信息,特别是借款人的互联网行为,在补充借款人对金融科技公司和银行的信用记录方面的重要性。
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来源期刊
Economic and Political Studies-EPS
Economic and Political Studies-EPS SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
5.60
自引率
4.20%
发文量
29
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