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Privacy-Preserving Consensus for Multi-Agent Systems via Node Decomposition Strategy

机译:通过节点分解策略对多智能体系的隐私保留共识

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This paper proposes two kinds of algorithms to achieve privacy-preserving consensus of multi-agent systems over undirected graphs via node decomposition mechanism and homomorphic cryptography technique. Based on the number of neighboring nodes (vertical bar N-i vertical bar), every agent is decomposed into vertical bar N-i vertical bar subagents, which are connected as a chain graph. Note that every subagent connects one and only one non-homologous subagent (generated by different agents). Information interaction between non-homologous subagents is encrypted by a homomorphic cryptography algorithm, and homologous subagents exchange information directly. In this regard, the proposed node decomposition mechanism enhances the privacy of the initial values without increasing the computational complexity of encryption. The first privacy-preserving algorithm can achieve the accurate average consensus, which means that the agreement value of every subagent is consistent with the original average consensus value. The second algorithm studies the privacy-preserving scaled consensus problem without a priori knowledge about the underlying graph. Although the final convergence values of subagents do not keep exactly the same, homologous subagents can compute the original group decision value by resorting to the product of the limit value and agent's degree. Importantly, this algorithm also guarantees the privacy of group decision value of the whole system. Besides, it is proved that the privacy of the initial value can be preserved if the agent has at least one neutral neighbor.
机译:本文提出了两种算法,通过节点分解机制和同态密码技术实现了多种子体系统的隐私保留共识。基于相邻节点的数量(垂直条N-I垂直条),每个代理都被分解为垂直条形图N-I垂直条形子,其作为链图连接。请注意,每个子代理都连接一个且只有一个非同源性子代理(由不同代理生成)。非同源子算法之间的信息相互作用是通过同态密码算法加密的,以及直接交换信息的同源子宫内容。在这方面,所提出的节点分解机制可以增强初始值的隐私,而不会增加加密的计算复杂性。第一个隐私保留算法可以实现准确的平均共识,这意味着每个子代理的协议值与原始平均共识值一致。第二种算法研究了隐私保留了缩放的共识问题,而无需了解底层图表。虽然子因素的最终收敛值不保持完全相同,但同源子物子因素可以通过借助于限制值和代理学位的产品来计算原始组决策价值。重要的是,该算法还保证了整个系统的组决策价值的隐私。此外,证明如果代理具有至少一个中立邻居,则可以保留初始值的隐私。

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