加密货币的(∈,δ)-不可区分混合

Mingyu Liang, Ioanna Karantaidou, Foteini Baldimtsi, S. D. Gordon, Mayank Varia
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引用次数: 0

摘要

摘要我们提出了一种新的理论方法来构建加密货币的匿名混合机制。在混合过程中,我们没有要求完全一致的排列,而是放宽了这一要求,只坚持相邻排列的可能性相似。这是通过借用差异隐私的定义而正式定义的。这种宽松的隐私定义使我们能够大大减少混合协议中的交互和计算量。我们的构造实现了混合n个地址的O(n·polylog(n))计算时间,而所有其他混合方案都需要所有各方的O(n2)总计算。此外,我们支持对故障停止对手的平稳容忍,不需要任何可信的设置。我们在UC框架下以及在独立的、基于游戏的定义下分析了我们的通用协议的安全性。我们最后描述了一个使用环签名和机密事务的实例化。
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(∈, δ)-Indistinguishable Mixing for Cryptocurrencies
Abstract We propose a new theoretical approach for building anonymous mixing mechanisms for cryptocurrencies. Rather than requiring a fully uniform permutation during mixing, we relax the requirement, insisting only that neighboring permutations are similarly likely. This is defined formally by borrowing from the definition of differential privacy. This relaxed privacy definition allows us to greatly reduce the amount of interaction and computation in the mixing protocol. Our construction achieves O(n·polylog(n)) computation time for mixing n addresses, whereas all other mixing schemes require O(n2) total computation across all parties. Additionally, we support a smooth tolerance of fail-stop adversaries and do not require any trusted setup. We analyze the security of our generic protocol under the UC framework, and under a stand-alone, game-based definition. We finally describe an instantiation using ring signatures and confidential transactions.
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