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Modelling Default Risk of Borrowers: Evidence from Online Peer to Peer Lending Platforms in Australia

机译:建模借款人的默认风险:澳大利亚在线对等借贷平台的证据

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Peer to Peer lending has the capacity to transforming the mass banking industry worldwide but credit risk modelling remains the core challenge of the platform. The general objective of this study is to analyse the credit default risk of borrowers of Peer to Peer online lending platform based in Australia. Specific objectives include the following; To identify the loan information applicants provide to request for a loan facility, Using RateSetter.com published data on loans to predict the likelihood of credit risk of the platform. In this article, we employed binary logistic regression model to assess the likelihood of loan default. Based on the mathematical approach and the nature of dependent variable, we grouped variables into categorical, numerical-continuous as well as binary. The dependent variable is dichotomous whilst real-life dataset was retrieved from a popular and competitive online lending platform based in Australia from 2014-2017. We identified that early repayment, no mortgage tenant; car, debt consolidation, investment, major events, professional services, 3-year loan duration, 4-year loan duration, interest rate and income have significant influence on borrowers’ likelihood to default. Our empirical coefficients suggest that, there is 83.4% likelihood of borrowers default rate and hence recommended a critical examination of borrowers’ information presented to the platform. This paper fulfills the need to examine the credit information provided by loan applicants. Similarly, it endeavors to predict the possibility of borrowers default risk and the reasons contributing to online lending credit default risk.
机译:点对点贷款有能力改变全球的大众银行业,但信用风险建模仍然是该平台的核心挑战。这项研究的总体目标是分析位于澳大利亚的Peer to Peer在线借贷平台的借款人的信用违约风险。具体目标包括以下内容;为了确定申请人提供的用于申请贷款工具的贷款信息,使用RateSetter.com发布的贷款数据来预测该平台发生信用风险的可能性。在本文中,我们采用了二进制逻辑回归模型来评估贷款违约的可能性。基于数学方法和因变量的性质,我们将变量分为类别,数字连续和二进制。因变量是二分法的,而真实数据集是从2014-2017年在澳大利亚的一个流行且竞争激烈的在线贷款平台中检索而来的。我们确定提前还款,没有抵押房客;汽车,债务合并,投资,重大事件,专业服务,3年期贷款期限,4年期贷款期限,利率和收入对借款人违约的可能性有重大影响。我们的经验系数表明,借款人违约率的可能性为83.4%,因此建议对提供给平台的借款人信息进行严格检查。本文满足了检查贷款申请人提供的信用信息的需要。同样,它努力预测借款人违约风险的可能性以及造成在线贷款信用违约风险的原因。

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