Mixing detection on Bitcoin transactions using statistical patterns

Ardeshir Shojaeenasab, Amir Pasha Motamed, B. Bahrak
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引用次数: 5

Abstract

Cryptocurrencies, particularly Bitcoin, have garnered attention for their potential in anonymous transactions. However, their anonymity has often been compromised by deanonymization attacks. To counter this, mixing services have been introduced. While they enhance privacy, they obscure fund traceability. This study seeks to demystify transactions linked to these services, shedding light on pathways of concealed and laundered money. We propose a method to identify and classify transactions and addresses of major mixing services in Bitcoin. Unlike previous research focusing on older techniques like CoinJoin, we emphasize modern mixing services. We gathered labelled data by transacting with three prominent mixers (MixTum, Blemder, and CryptoMixer) and identified recurring patterns. Using these patterns, an algorithm was created to pinpoint mixing transactions and distinguish mixer‐related addresses.The algorithm achieved a remarkable recall rate of 100%. Given the lack of clear ground truth and the vast number of unlabelled transactions, ensuring accuracy was a challenge. However, by analyzing a set of non‐mixing transactions with our model, it was confirmed that the high recall rate was not misleading. This work provides a significant advancement in monitoring mixing transactions, presenting a valuable tool against fraud and money laundering in cryptocurrency networks.
使用统计模式对比特币交易进行混合检测
加密货币,尤其是比特币,因其在匿名交易方面的潜力而受到关注。然而,它们的匿名性经常被去匿名化攻击所破坏。为了解决这个问题,引入了混合服务。虽然它们增强了隐私性,但它们模糊了资金的可追溯性。这项研究旨在揭开与这些服务相关的交易的神秘面纱,揭示隐藏和洗钱的途径。我们提出了一种方法来识别和分类比特币中主要混合服务的交易和地址。不像之前的研究专注于CoinJoin等老技术,我们强调现代混合服务。我们通过与三个著名的混合器(MixTum, Blemder和CryptoMixer)进行交易来收集标记数据,并确定了重复出现的模式。利用这些模式,创建了一种算法来精确定位混合事务并区分与混合器相关的地址。该算法达到了100%的召回率。鉴于缺乏明确的事实依据和大量未标记交易,确保准确性是一项挑战。然而,通过使用我们的模型分析一组非混合交易,证实了高召回率并没有误导。这项工作在监控混合交易方面取得了重大进展,为打击加密货币网络中的欺诈和洗钱提供了有价值的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.80
自引率
0.00%
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