Serrano-Cinca Carlos, Gutiérrez-Nieto Begoña, López-Palacios Luz
Department of Accounting and Finance, University of Zaragoza, Zaragoza, Spain.
PLoS One. 2015 Oct 1;10(10):e0139427. doi: 10.1371/journal.pone.0139427. eCollection 2015.
This paper studies P2P lending and the factors explaining loan default. This is an important issue because in P2P lending individual investors bear the credit risk, instead of financial institutions, which are experts in dealing with this risk. P2P lenders suffer a severe problem of information asymmetry, because they are at a disadvantage facing the borrower. For this reason, P2P lending sites provide potential lenders with information about borrowers and their loan purpose. They also assign a grade to each loan. The empirical study is based on loans' data collected from Lending Club (N = 24,449) from 2008 to 2014 that are first analyzed by using univariate means tests and survival analysis. Factors explaining default are loan purpose, annual income, current housing situation, credit history and indebtedness. Secondly, a logistic regression model is developed to predict defaults. The grade assigned by the P2P lending site is the most predictive factor of default, but the accuracy of the model is improved by adding other information, especially the borrower's debt level.
本文研究了P2P借贷以及解释贷款违约的因素。这是一个重要问题,因为在P2P借贷中,个人投资者而非擅长处理此类风险的金融机构承担信用风险。P2P贷款人面临严重的信息不对称问题,因为他们在与借款人打交道时处于劣势。因此,P2P借贷平台会向潜在贷款人提供有关借款人及其贷款用途的信息。他们还会为每笔贷款评定一个等级。实证研究基于从Lending Club收集的2008年至2014年的贷款数据(N = 24,449),首先使用单变量均值检验和生存分析进行分析。解释违约的因素包括贷款用途、年收入、当前住房状况、信用记录和负债情况。其次,建立了一个逻辑回归模型来预测违约情况。P2P借贷平台评定的等级是违约的最具预测性的因素,但通过添加其他信息,尤其是借款人的债务水平,可以提高模型的准确性。