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Deanonymizing Cryptocurrency With Graph Learning: The Promises and Challenges

机译:通过图学习对加密货币进行去匿名化:承诺和挑战

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The world economy is embracing the next generation currency, i.e., cryptocurrencies, which dates back to 2009 when Satoshi Nakamoto made Bitcoin publicly available. Rooted from the nature of decentralization and anonymity of blockchain, the cryptocurrencies have, unfortunately, been leveraged for illicit activities by the criminals. The good news is that typical cryptocurrencies, such as Bitcoin, have to publicly publish their transactions, known as a graph, to retain their ultimate goal of trustless and decentralized transaction verification, which lends law enforcement a means to deanonymizing cryptocurrencies. At meantime, graph learning is an extremely powerful tool to extract the latent features of each vertex in a graph to fulfill various tasks, such as, classifying graph vertices. In this work, we discuss the promises and challenges of exploiting graph learning to deanonymizing cryptocurrencies, which can aid the cyberfighters to circumvent cryptocurrency-based illicit activities.
机译:世界经济正在拥抱下一代货币,即加密货币,该货币可以追溯到2009年中本聪(Satoshi Nakamoto)公开提供比特币。出于分散性和区块链匿名性的根源,不幸的是,加密货币已被犯罪分子利用来进行非法活动。好消息是,典型的加密货币(例如比特币)必须公开发布其交易(称为图形),以保持其不信任和分散交易验证的最终目标,这为执法部门提供了一种使加密货币匿名化的手段。同时,图学习是一种非常强大的工具,可以提取图中每个顶点的潜在特征来完成各种任务,例如对图顶点进行分类。在这项工作中,我们讨论了利用图学习对加密货币进行匿名处理的前景和挑战,这可以帮助网络作战人员规避基于加密货币的非法活动。

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