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Securing Majority-Attack in Blockchain Using Machine Learning and Algorithmic Game Theory: A Proof of Work

机译:使用机器学习和算法博弈论确保区块链中的多数攻击:工作证明

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Recently we could see several institutions coming together to create consortium based blockchain networks such as Hyperledger. Although for applications of blockchain such as Bitcoin, Litcoin, etc. the majority-attack might not be a great threat but for consortium based blockchain networks where we could see several institutions such as public, private, government, etc. are collaborating, the majority-attack might just prove to be a prevalent threat if collusion among these institutions takes place. This paper proposes a methodology where we can use intelligent software agents to monitor the activity of stakeholders in the blockchain networks to detect anomaly such as collusion, using supervised machine learning algorithm and algorithmic game theory and stop the majority-attack from taking place.
机译:最近,我们可以看到几个机构汇聚在一起,创建了基于联盟的区块链网络,例如Hyperledger。尽管对于比特币,Litcoin等区块链的应用而言,多数攻击可能不是一个巨大的威胁,但对于基于财团的区块链网络,我们可以看到诸如公共,私有,政府等多个机构正在合作,多数如果这些机构之间发生合谋,攻击可能只是一个普遍的威胁。本文提出了一种方法,我们可以使用有监督的机器学习算法和算法博弈论,使用智能软件代理来监视区块链网络中的利益相关者的活动,以检测诸如合谋之类的异常现象,并阻止多数攻击的发生。

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