Deep Bribe: Predicting the Rise of Bribery in Blockchain Mining with Deep RL

R. Zur, Danielle Dori, Sharon Vardi, Ittay Eyal, Aviv Tamar
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引用次数: 1

Abstract

Blockchain security relies on incentives to ensure participants, called miners, cooperate and behave as the protocol dictates. Such protocols have a security threshold – a miner whose relative computational power is larger than the threshold can deviate to improve her revenue. Moreover, blockchain participants can behave in a petty compliant manner: usually follow the protocol, but deviate to increase revenue when deviation cannot be distinguished externally from the prescribed behavior. The effect of petty compliant miners on the security threshold of blockchains is not well understood. Due to the complexity of the analysis, it remained an open question since Carlsten et al. identified it in 2016. In this work, we use deep Reinforcement Learning (RL) to analyze how a rational miner performs selfish mining by deviating from the protocol to maximize revenue when petty compliant miners are present. We find that a selfish miner can exploit petty compliant miners to increase her revenue by bribing them. Our method reveals that the security threshold is lower when petty compliant miners are present. In particular, with parameters estimated from the Bitcoin blockchain, we find the threshold drops from the known value of 25% to only 21% (or 19%) when 50% (or 75%) of the other miners are petty compliant. Hence, our deep RL analysis puts the open question to rest; the presence of petty compliant miners exacerbates a blockchain's vulnerability to selfish mining and is a major security threat.
深度贿赂:用深度强化学习预测区块链挖矿中贿赂的兴起
区块链的安全性依赖于激励机制,以确保被称为矿工的参与者按照协议的规定进行合作和行为。这样的协议有一个安全阈值——相对计算能力大于这个阈值的矿工可以偏离这个阈值来提高自己的收入。此外,区块链参与者可以以一种微不足道的合规方式行事:通常遵循协议,但在无法从外部区分偏离规定行为时偏离以增加收入。小型合规矿工对区块链安全阈值的影响尚未得到很好的理解。由于分析的复杂性,自2016年Carlsten等人发现它以来,它仍然是一个悬而未决的问题。在这项工作中,我们使用深度强化学习(RL)来分析一个理性的矿工是如何通过偏离协议来实现收益最大化的。我们发现,一个自私的矿工可以通过贿赂那些顺从的小矿工来增加自己的收入。我们的方法表明,当小型合规矿工存在时,安全阈值较低。特别是,根据比特币区块链估计的参数,我们发现当50%(或75%)的其他矿工都是微不足道的合规时,阈值从已知的25%下降到21%(或19%)。因此,我们的深度强化学习分析解决了这个悬而未决的问题;小型合规矿工的存在加剧了区块链对自私采矿的脆弱性,并且是一个主要的安全威胁。
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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