评估基于启发式的比特币地址聚类的有效性

Hugo Schnoering, Pierre Porthaux, Michalis Vazirgiannis
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引用次数: 0

摘要

探索比特币区块链中的交易需要研究比特币在数亿个实体之间的转移。然而,研究如此庞大数量的实体往往既不现实,又耗费资源。因此,实体聚类是大多数分析研究的第一步。这一过程通常采用以这些实体的实践和行为为基础的启发式方法。在这项研究中,我们深入研究了两种广泛使用的启发式方法,并引入了四种新的启发式方法。我们的贡献包括引入了 "聚类比"(textit{clustering ratio}),这是一个旨在量化特定启发式所减少的实体数量的指标。对这一减少率的评估在证明特定启发式的分析选择合理性方面起着重要作用。鉴于比特币系统的动态特性,即区块链上实体数量的持续增加,以及这些实体行为的不断变化,我们将研究扩展到探索每种启发式聚类比率的时间演变。这种时间分析增强了我们对这些启发式随时间变化的有效性的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing the Efficacy of Heuristic-Based Address Clustering for Bitcoin
Exploring transactions within the Bitcoin blockchain entails examining the transfer of bitcoins among several hundred million entities. However, it is often impractical and resource-consuming to study such a vast number of entities. Consequently, entity clustering serves as an initial step in most analytical studies. This process often employs heuristics grounded in the practices and behaviors of these entities. In this research, we delve into the examination of two widely used heuristics, alongside the introduction of four novel ones. Our contribution includes the introduction of the \textit{clustering ratio}, a metric designed to quantify the reduction in the number of entities achieved by a given heuristic. The assessment of this reduction ratio plays an important role in justifying the selection of a specific heuristic for analytical purposes. Given the dynamic nature of the Bitcoin system, characterized by a continuous increase in the number of entities on the blockchain, and the evolving behaviors of these entities, we extend our study to explore the temporal evolution of the clustering ratio for each heuristic. This temporal analysis enhances our understanding of the effectiveness of these heuristics over time.
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