Blockchain analysis is essential for understanding how cryptocurrencies like Bitcoin are used in practice, and address clustering is a cornerstone of blockchain analysis. However, current techniques rely on heuristics that have not been rigorously evaluated or optimized. In this paper, we tackle several challenges of change address identification and clustering. First, we build a ground truth set of transactions with known change from the Bitcoin blockchain that can be used to validate the efficacy of individual change address detection heuristics. Equipped with this data set, we develop new techniques to predict change outputs with low false positive rates. After applying our prediction model to the Bitcoin blockchain, we analyze the resulting clustering and develop ways to detect and prevent cluster collapse. Finally, we assess the impact our enhanced clustering has on two exemplary applications.
翻译:块链分析对于了解Bitcoin等隐秘性(例如Bitcoin)是如何在实践中使用的至关重要,而处理集群是块链分析的基石。然而,目前的技术依赖未经严格评估或优化的超自然理论。在本文件中,我们应对了变革的几种挑战:地址识别和集群。首先,我们构建了一套已知与Bitcoin块链变化有关的、可用来验证个人变化有效性的地面真理交易集,用以验证个人变化的功效;检测超常。用这套数据集制作,我们开发了新的技术,以低假正率预测变化产出。在对Bitcoin块链应用我们的预测模型后,我们分析由此产生的集群,并开发发现和防止集束崩溃的方法。最后,我们评估了我们增强的集群对两个示范应用的影响。