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Big Data Analytics for Complex Credit Risk Assessment of Network Lending Based on SMOTE Algorithm

机译:基于Smote算法的网络贷款复杂信用风险评估大数据分析

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摘要

With the continuous development of big data technology, the data of online lending platform witness explosive development. How to give full play to the advantages of data, establish a credit risk assessment model, and realize the effective control of platform credit risk have become the focus of online lending platform. In view of the fact that the network loan data are mainly unbalanced data, the smote algorithm is helpful to optimize the model and improve the evaluation performance of the model. Relevant research shows that stochastic forest model has higher applicability in credit risk assessment, and cart, ANN, C4.5, and other algorithms are also widely used. In the influencing factors of credit evaluation, the weight of the applicant’s enterprise scale, working years, historical records, credit score, and other indicators is relatively high, while the index weight of marriage and housing/car production (loan) is relatively low.
机译:随着大数据技术的不断发展,在线贷款平台的数据见证爆炸性发展。如何充分发挥数据的优势,建立信用风险评估模型,实现平台信用风险的有效控制已成为在线贷款平台的重点。鉴于网络贷款数据主要是不平衡数据的事实,Smote算法有助于优化模型并提高模型的评估性能。相关研究表明,随机森林模型在信用风险评估中具有较高的适用性,以及购物车,ANN,C4.5和其他算法也是广泛使用的。在信用评估的影响因素中,申请人的企业规模,工作年份,历史记录,信用评分和其他指标的重量相对较高,而婚姻和房屋生产的指数重量(贷款)相对较低。

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