利用机器学习研究 P2P 网络借贷中贷款违约的决定因素:COVID-19 之前和期间是否存在差异?

IF 4.8 2区 经济学 Q1 BUSINESS, FINANCE
Qi Xu , Caixia Liu , Jing Luo , Feng Liu
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引用次数: 0

摘要

冠状病毒病(COVID-19)导致信贷市场波动性持续上升,并引发了一系列金融困境和破产。为了探究在 COVID-19 之前和期间贷款违约决定因素是否存在差异,并找出 COVID-19 期间最有效的贷款违约预测因素,本研究采用机器学习方法,从贷款特征、信贷交易记录、个人信息和宏观经济环境四个角度建立了一个全面的点对点(P2P)借贷贷款违约预测模型。结果表明,极端梯度提升(XGBoost)的效果优于其他模型,而且信贷交易历史在预测两个时期的贷款违约方面发挥了重要作用。我们还发现消费物价指数、采购经理人指数和投标人数量对大流行病之前和期间贷款违约的影响存在差异。我们的研究通过识别更适用于不稳定时期的贷款违约决定因素和调查 COVID-19 对违约预测的影响,为贷款违约预测的相关研究领域做出了贡献。同时,我们的研究结果可为 P2P 网络借贷投资者、平台和政策制定者提供实际参考,以减少类似黑天鹅事件带来的不确定性和损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using machine learning to investigate the determinants of loan default in P2P lending: Are there differences between before and during COVID-19?
The coronavirus disease (COVID-19) has led to a persistent increase in the volatility of the credit market and triggered a series of financial distress and bankruptcy. To investigate whether there are differences in loan default determinants before and during COVID-19 and to identify the most effective predictors of loan default during COVID-19, this study employs machine learning methods to establish a comprehensive loan default prediction model for Peer-to-peer (P2P) lending based on four perspectives: loan characteristics, credit transaction history, personal information, and macroeconomic environment. The results show that the EXtreme Gradient Boosting (XGBoost) outperforms the other models and that credit transaction history plays a vital role in forecasting loan default over the two periods. We also find discrepancies between the effects of consumer price index, purchasing manager’ index, and the number of bidders on loan default before and during the pandemic. Our study contributes to related research fields on loan default prediction by identifying loan default determinants that are more applicable to unstable periods and investigating the impact of COVID-19 on default predictions. Meanwhile, our findings can provide P2P lending investors, platforms, and policymakers with practical implications to reduce uncertainty and losses that result from similar black swan events.
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来源期刊
Pacific-Basin Finance Journal
Pacific-Basin Finance Journal BUSINESS, FINANCE-
CiteScore
6.80
自引率
6.50%
发文量
157
期刊介绍: The Pacific-Basin Finance Journal is aimed at providing a specialized forum for the publication of academic research on capital markets of the Asia-Pacific countries. Primary emphasis will be placed on the highest quality empirical and theoretical research in the following areas: • Market Micro-structure; • Investment and Portfolio Management; • Theories of Market Equilibrium; • Valuation of Financial and Real Assets; • Behavior of Asset Prices in Financial Sectors; • Normative Theory of Financial Management; • Capital Markets of Development; • Market Mechanisms.
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