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Accelerated linear iterations for distributed averaging

机译:加速线性迭代以进行分布式平均

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Distributed averaging deals with a network of n > 1 agents and the constraint that each agent is able to communicate only with its neighbors. The purpose of the distributed averaging problem is to devise a protocol which will enable all n agents to asymptotically determine in a decentralized manner, the average of the initial values of their scalar agreement variables. Most distributed averaging protocols involve a linear iteration which depends only on the current estimates of the average. Building on the idea proposed in Muthukrishnan, Ghosh, and Schultz (1998), this paper investigates an augmented linear iteration for fast distributed averaging in which local memory is exploited. A thorough characterization of the behavior of the augmented system is obtained under appropriate assumptions. It is shown that the augmented linear iteration can solve the distributed averaging problem faster than the original linear iteration, but the adjustable parameter must be chosen carefully. The optimal choice of the parameter and the corresponding fastest rate of convergence are also provided in closed form.
机译:分布式平均处理n> 1个代理的网络,以及每个代理只能与其邻居通信的约束。分布平均问题的目的是设计一种协议,该协议将使所有n个代理能够以分散方式渐近确定其标量协议变量初始值的平均值。大多数分布式平均协议都涉及线性迭代,该线性迭代仅取决于当前对平均值的估计。基于Muthukrishnan,Ghosh和Schultz(1998)提出的想法,本文研究了利用线性记忆的快速分布式平均算法,该算法利用了局部内存。在适当的假设下,可以全面了解增强系统的行为。结果表明,增强线性迭代可以比原始线性迭代更快地解决分布式平均问题,但是必须谨慎选择可调参数。还以封闭形式提供了参数的最佳选择和相应的最快收敛速度​​。

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