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Differentially Private Consensus With an Event-Triggered Mechanism

机译:带有事件触发机制的差异化私人共识

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摘要

This paper studies the differentially private consensus problem of multiagent networks by employing a distributed event-triggered mechanism such that not only agents can protect the privacy of their initial states from information disclosure, but the execution efficiency of the whole network can be improved. First, we propose a distributed event-triggered mechanism for a differentially private consensus algorithm such that frequent real-time communication and controller updates can be avoided. Second, we propose a distributed event-triggering condition that only depends on local information and local parameters, which can effectively avoid global information collection. Third, the convergence analysis of the mean-square average consensus is given to explain the sufficiency of the proposed event-triggered mechanism and event-triggering condition. Furthermore, we establish the statistic properties of the convergent accuracy that the expectation of the convergence point converges to the average value of all agents' initial states exactly and the disturbance variance is bounded with an explicit expression. In addition, we further give the differential privacy analysis that each agent can flexibly select its own privacy level to prevent information disclosure. Finally, simulation results are given to illustrate the effectiveness of the proposed mechanism and the correctness of the theoretical results.
机译:本文通过采用分布式事件触发机制研究了多主体网络的差分私有共识问题,使得代理不仅可以保护其初始状态的隐私不受信息泄露的影响,而且可以提高整个网络的执行效率。首先,我们为差分私有共识算法提出了一种分布式事件触发机制,从而可以避免频繁的实时通信和控制器更新。其次,我们提出了一种分布式事件触发条件,该条件仅依赖于本地信息和本地参数,可以有效避免全局信息收集。第三,给出了均方平均共识的收敛性分析,以说明所提出的事件触发机制和事件触发条件的充分性。此外,我们建立了收敛精度的统计性质,即收敛点的期望准确地收敛到所有代理初始状态的平均值,并且扰动方差以一个明确的表达式为界。另外,我们进一步给出了差异隐私分析,每个代理可以灵活选择自己的隐私级别以防止信息泄露。最后,仿真结果说明了所提机构的有效性以及理论结果的正确性。

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