比特币欺诈检测的多方面方法:全球和本地异常值

Patrick M. Monamo, Vukosi Marivate, Bhesipho Twala
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引用次数: 47

摘要

在比特币网络中,缺乏类别标签往往会导致异常金融行为解释的模糊性。为了了解欺诈在金融部门的最新发展,提出了一个多方面的方法。在本文中,使用修剪的k-means和kd-tree从全局和局部角度描述了比特币欺诈。通过随机森林、基于最大似然和增强的二元回归模型进一步研究了这两个领域。尽管这两个角度都表现出良好的性能,但除了随机森林在两个维度上都表现出近乎完美的结果外,全局离群点视角的表现优于局部视角。这表明本研究提取的特征能够很好地描述网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multifaceted Approach to Bitcoin Fraud Detection: Global and Local Outliers
In the Bitcoin network, lack of class labels tend to cause obscurities in anomalous financial behaviour interpretation. To understand fraud in the latest development of the financial sector, a multifaceted approach is proposed. In this paper, Bitcoin fraud is described from both global and local perspectives using trimmed k-means and kd-trees. The two spheres are investigated further through random forests, maximum likelihood-based and boosted binary regression models. Although both angles show good performance, global outlier perspective outperforms the local viewpoint with exception of random forest that exhibits nearby perfect results from both dimensions. This signifies that features extracted for this study describe the network fairly.
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