CENSor: Detecting Illicit Bitcoin Operation via GCN-Based Hyperedge Classification
【Author】 Lee, Suyeol; Kim, Jaehan; Seo, Minjae; Ho Na, Seung; Shin, Seungwon; Kim, Jinwoo
【Source】IEEE ACCESS
【影响因子】3.476
【Abstract】Cryptocurrencies have increasingly been used as a medium for illicit financial activities by criminals. Annually, billions of dollars' worth of Bitcoin penetrate cryptocurrency exchanges. Despite the critical need for advanced Bitcoin financial forensics to investigate these criminal activities, no novel methods have been developed to detect illicit Bitcoin operations. Existing approaches to identifying illegal Bitcoin activity are limited due to their inadequate consideration of graph data. To address these limitations, we present a novel approach, Hyperedge Classification, to detect illegal transactions with greater precision. This approach introduces a novel cluster-based Hyperedge-Node Switching technique, which enables effective hyperedge classification and visualization of hyperedge relationships. Additionally, we propose a framework named CENSor (Cluster-based Edge Node Switching Detector), which offers more powerful and robust detection capabilities compared to traditional techniques for both illegal entity detection and illegal transaction detection. Our cluster-based Hyperedge-Node Switching technique demonstrates its effectiveness with an F1-score of 0.867, outperforming comparative baselines. Moreover, CENSor visualizes the Bitcoin cluster graph and the Hyperedge-Node switched graph, highlighting the importance of utilizing appropriate graph information in Bitcoin analysis. Finally, we demonstrate that CENSor is resilient to an adversarial attack aimed at evading detection.
【Keywords】Bitcoin; Switches; Image edge detection; Forensics; Feature extraction; Visualization; Scalability; Cryptocurrency; Detection algorithms; illicit entity detection; hypergraph; graph neural network
【发表时间】2024
【收录时间】2024-11-01
【文献类型】案例研究
【主题类别】
区块链治理-技术治理-地址分类
Zach
这篇论文主要研究了一种名为“超边分类”的新方法,用于检测比特币中的非法交易。研究人员提出了一种基于聚类的超边-节点切换技术,该技术能够有效地对超边进行分类并可视化超边之间的关系。此外,研究还提出了一种名为CENSor(基于聚类的边节点切换检测器)的框架,该框架在非法实体检测和非法交易检测方面提供了比传统技术更强大和更鲁棒的检测能力。CENSor通过聚类技术展示了其在检测非法比特币活动方面的有效性,F1分数达到了0.867,超过了其他比较基线。此外,CENSor还能可视化比特币聚类图和超边-节点切换图,强调了在比特币分析中利用适当图信息的重要性。最后,研究表明CENSor能够抵抗旨在逃避检测的敌对攻击,显示了其在比特币金融取证中的实用性和可靠性。
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