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Identifying features for detecting fraudulent loan requests on P2P platforms

机译:识别用于在P2P平台上检测欺诈性贷款请求的功能

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This exploratory study is intended to address the problem of fraudulent loan requests on peer-to-peer (P2P) platforms. We propose a set of features that capture the behavioral characteristics (e.g., learning, past performance, social networking, and herding manipulation) of malevolent borrowers, who intentionally create loan requests to acquire funds from lenders but default later on. We found that using the widely adopted classification methods such as Random Forest and Support Vector Machines, the proposed feature set outperform the baseline feature set in helping detect fraudulent loan requests. Although the performance (e.g., Recall or Sensitivity) is still not up to its optimum, this study demonstrates that by analyzing the transaction records of confirmed malevolent borrowers, it is possible to capture some useful behavioral patterns for fraud detection. Such features and methods would possibly help lenders identify loan request frauds and avoid financial losses.
机译:这项探索性研究旨在解决点对点(P2P)平台上的欺诈性贷款请求问题。我们提出了一系列功能,以捕获恶意借款人的行为特征(例如,学习,过往表现,社交网络和羊群操纵),这些借款人故意创建贷款请求以从贷方获取资金,但随后违约。我们发现,使用广泛采用的分类方法(例如“随机森林”和“支持向量机”),在帮助检测欺诈性贷款请求时,提出的功能集优于基线功能集。尽管性能(例如召回率或灵敏度)仍未达到最佳状态,但这项研究表明,通过分析已确认恶意借款人的交易记录,可以捕获一些有用的行为模式以进行欺诈检测。此类功能和方法可能会帮助贷方识别贷款请求欺诈并避免财务损失。

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