通过机器学习预测P2P借贷平台的失败:以中国为例

IF 7.4 2区 经济学 Q1 BUSINESS, FINANCE
Jen-Yin Yeh , Hsin-Yu Chiu , Jhih-Huei Huang
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引用次数: 0

摘要

本研究采用机器学习模型来预测P2P借贷平台的失败,特别是在中国。通过采用前向选择和后向消除的滤波方法和包装方法,我们建立了一个严格实用的程序,以确保变量在预测平台故障时的鲁棒性和重要性。该研究确定了一组鲁棒变量,这些变量在不同的选择方法和模型中始终出现在特征子集中,表明它们在预测平台故障方面的可靠性和相关性。该研究强调,在性能指标保持稳定的情况下,减少特征子集中变量的数量会导致错误接受率的增加,AUC值约为0.96,F1分数约为0.88。本研究结果对中国P2P借贷行业的监管部门和投资者具有重要的现实意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting failure of P2P lending platforms through machine learning: The case in China

This study employs machine learning models to predict the failure of Peer-to-Peer (P2P) lending platforms, specifically in China. By employing the filter method and wrapper method with forward selection and backward elimination, we establish a rigorous and practical procedure that ensures the robustness and importance of variables in predicting platform failures. The research identifies a set of robust variables that consistently appear in the feature subsets across different selection methods and models, suggesting their reliability and relevance in predicting platform failures. The study highlights that reducing the number of variables in the feature subset leads to an increase in the false acceptance rate while the performance metrics remain stable, with an AUC value of approximately 0.96 and an F1 score of around 0.88. The findings of this research provide significant practical implications for regulatory authorities and investors operating in the Chinese P2P lending industry.

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来源期刊
Finance Research Letters
Finance Research Letters BUSINESS, FINANCE-
CiteScore
11.10
自引率
14.40%
发文量
863
期刊介绍: Finance Research Letters welcomes submissions across all areas of finance, aiming for rapid publication of significant new findings. The journal particularly encourages papers that provide insight into the replicability of established results, examine the cross-national applicability of previous findings, challenge existing methodologies, or demonstrate methodological contingencies. Papers are invited in the following areas: Actuarial studies Alternative investments Asset Pricing Bankruptcy and liquidation Banks and other Depository Institutions Behavioral and experimental finance Bibliometric and Scientometric studies of finance Capital budgeting and corporate investment Capital markets and accounting Capital structure and payout policy Commodities Contagion, crises and interdependence Corporate governance Credit and fixed income markets and instruments Derivatives Emerging markets Energy Finance and Energy Markets Financial Econometrics Financial History Financial intermediation and money markets Financial markets and marketplaces Financial Mathematics and Econophysics Financial Regulation and Law Forecasting Frontier market studies International Finance Market efficiency, event studies Mergers, acquisitions and the market for corporate control Micro Finance Institutions Microstructure Non-bank Financial Institutions Personal Finance Portfolio choice and investing Real estate finance and investing Risk SME, Family and Entrepreneurial Finance
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