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Semi-Supervised Anti-Fraud Models for Cash Pre-Loan in Internet Consumer Finance

机译:互联网消费者金融中现金预贷的半监督反欺诈模型

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This exploratory study aims to address the problem that cash loan fraud customers are difficult to detect manually. Cash loan is a new consumption model in the concept of Internet consumer finance(ICF). Manual detection of fraudulent customers requires a lot of manpower and time, and often causes great losses to financial institutions, so our group did the research mentioned above. In this paper, we proposed a Semi-supervised Pre-loan Fraud Detection (SPFD) system via investigating various supervised and unsupervised learning algorithms on basis of 285,771 applicants' desensitized data from MUCFC (a Chinese ICF company). In SPFD, feature selection methods consist of KL Divergence, Wasserstein Distance and Manual Selection, while the clustering algorithms we adopted was K-constrained seed clustering. Final result demonstrates good performance with the Adjusted Rand Index(ARI) reaching 81.7%. Such method would help financial institution to reduce financial losses.
机译:这项探索性研究旨在解决现金贷款欺诈客户难以手动检测的问题。现金贷款是Internet消费者金融(ICF)概念中的一种新的消费模式。手动检测欺诈性客户需要大量的人力和时间,并且经常给金融机构造成巨大损失,因此我们小组进行了上述研究。在本文中,我们通过研究MUCFC(一家中国ICF公司)的285,771名申请人的脱敏数据,通过研究各种有监督和无监督的学习算法,提出了一种半监督的贷款前欺诈检测(SPFD)系统。在SPFD中,特征选择方法包括KL发散,Wasserstein距离和人工选择,而我们采用的聚类算法是K约束种子聚类。最终结果显示出良好的性能,调整后的兰德指数(ARI)达到81.7%。这种方法将有助于金融机构减少金融损失。

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