基于BP神经网络的互联网金融平台信用风险评估

Yu Yuan, Yue Yang
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摘要

针对信用风险问题,本文选取关键数据指标,结合影响平台信用风险的因素,建立指标体系。使用Python爬虫软件获取网贷平台相关数据,并对1000多个平台的爬虫数据进行预处理。选取95个数据完备的平台,建立BP神经网络风险评估模型。利用获得的数据,运用BP神经网络模型对网贷平台的风险进行实证分析,并将本文的评价方法与网贷天眼评级方法进行对比。实证结果表明,BP神经网络的误差可以稳定在0.5左右,评价准确率高达95.45%,远高于网贷平台44.21%的准确率。本文为网贷平台信用风险预警提供决策支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Credit Risk Assessment of Internet Financial Platforms Based on BP Neural Network
Aiming at the problem of credit risk, this paper selects key data indicators to establish an index system combining with the factors affecting the credit risk of the platform. Python crawler software was used to obtain relevant data of net lending platforms, and the crawled data of more than 1000 platforms were preprocessed. Ninety-five platforms with complete data were selected to build a BP neural network risk assessment model. The BP neural network model is used to make an empirical analysis of the risks of online lending platforms by using the data obtained, and the evaluation method of this paper is compared with the rating method of online lending sky eye. The empirical results show that the error of BP neural network can be stable at about 0.5, and the accuracy rate of evaluation is as high as 95.45%, which is much higher than the accuracy rate of 44.21% of net loan platform. This paper provides decision support for the credit risk early warning of net loan platform.
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