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Distributed optimization for evolving networks of growing connectivity

机译:针对不断发展的连通性不断发展的网络进行分布式优化

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We focus on the problem of distributed optimization for multi-agent networks via distributed dual averaging (DDA) over an evolving network of growing connectivity. It is known that the convergence rate of DDA is influenced by the algebraic connectivity of the underlying network, where better connectivity leads to faster convergence. However, the effect of the growth of network connectivity on the convergence rate has not been fully understood. This paper provides a tractable approach to analyze the improvement in the convergence rate of DDA induced by the growth of network connectivity. This analysis is applicable, for example, to successive refinement strategies in massive multi-core optimizers where an increasing number of local data passage edges are successively added between cores in order to accelerate total run time. Compared to the existing convergence results, our analysis gives tighter bounds on the convergence of DDA over networks of growing connectivity. Numerical experiments show that our analysis leads to orders of improvement for evaluating convergence rate, which is not captured by existing analysis.
机译:我们专注于在不断发展的连接性不断发展的网络上通过分布式双重平均(DDA)对多主体网络进行分布式优化的问题。众所周知,DDA的收敛速度受基础网络的代数连接性影响,其中更好的连接性会导致更快的收敛。但是,尚未完全了解网络连接性增长对收敛速度的影响。本文提供了一种易于处理的方法来分析由网络连接性增长引起的DDA收敛速度的提高。此分析适用于例如大型多核优化器中的后续优化策略,在这些策略中,越来越多的本地数据通道边缘被相继添加在内核之间,以加快总运行时间。与现有的收敛结果相比,我们的分析为连接不断增长的网络上的DDA收敛提供了更严格的界限。数值实验表明,我们的分析导致评估收敛速度的改进顺序,而现有分析并未捕捉到这一点。

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