Get off of Chain: Unveiling Dark Web Using Multilayer Bitcoin Address Clustering
【Author】 Kim, Minjae; Lee, Jinhee; Kwon, Hyunsoo; Hur, Junbeom
【Source】IEEE ACCESS
【影响因子】3.476
【Abstract】Bitcoin is the most widely used cryptocurrency for illegal trade in current darknet markets. Owing to the anonymity of its addresses, even though transaction flows are globally visible, Bitcoin clustering remains one of the most challenging and open problems in illegal Bitcoin transaction analysis. In this article, to resolve this problem, we propose a novel multi-layer heuristic algorithm for Bitcoin clustering, which leverages on-chain transactions as well as off-chain application data in the real world. For this purpose, we first explored the unique characteristics of darknet market ecosystems including their trading systems. By conducting an in-depth analysis of the data manually collected for 11 months, we found that some darknet market review data disclosed transactions containing Bitcoin value and item delivery information. We then identified unique Bitcoin addresses associated with the disclosed information, owned by the same darknet providers. Based on address ownership, more accurate market clusters could be created, which have not previously been identified by other clustering algorithms. According to our experimental results, approximately 31.68% of the darknet market review data matched real Bitcoin transactions, and 122 hidden clusters associated with Silk Road 4 were found. This indicates that the proposed algorithm can complement existing clustering methods and significantly reduce the false negative rate by up to 91.7%.
【Keywords】Bitcoin; Clustering algorithms; Roads; Heuristic algorithms; Blockchains; Approximation algorithms; Public key; Address clustering; Bitcoin; blockchain; de-anonymization
【发表时间】2022
【收录时间】2022-08-28
【文献类型】理论模型
【主题类别】
区块链治理-技术治理-实体分类
wangjiaxin
今天有1篇链上数据分析相关文章,https://doi.org/10.1109/ACCESS.2022.3187210,发表在《IEEE ACCESS》,提出了一种新的比特币聚类多层启发式算法,该算法利用了现实世界中的链上交易和链外应用程序数据。为此探索了暗网市场生态系统的独特特征,通过对手动收集11个月的数据进行深入分析,利用我们的识别方法,大约31.68%的暗网市场审查数据与真正的比特币交易相匹配,并发现了122个与丝绸之路4相关的隐藏集群。这表明该算法可以补充现有的聚类方法,并将假阴性率显著降低高达91.7%。
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