On the Convergence Rate of Distributed Gradient Methods for Finite-Sum Optimization under Communication Delays

T. Doan, Carolyn L. Beck, R. Srikant
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引用次数: 13

Abstract

Motivated by applications in machine learning and statistics, we study distributed optimization problems over a network of processors, where the goal is to optimize a global objective composed of a sum of local functions. In these problems, due to the large scale of the data sets, the data and computation must be distributed over multiple processors resulting in the need for distributed algorithms. In this paper, we consider a popular distributed gradient-based consensus algorithm, which only requires local computation and communication. An important problem in this area is to analyze the convergence rate of such algorithms in the presence of communication delays that are inevitable in distributed systems. We prove the convergence of the gradient-based consensus algorithm in the presence of uniform, but possibly arbitrarily large, communication delays between the processors. Moreover, we obtain an upper bound on the rate of convergence of the algorithm as a function of the network size, topology, and the inter-processor communication delays.
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通信延迟下有限和优化的分布梯度方法的收敛速度
在机器学习和统计学应用的激励下,我们研究了处理器网络上的分布式优化问题,其目标是优化由局部函数和组成的全局目标。在这些问题中,由于数据集的规模很大,数据和计算必须分布在多个处理器上,这就需要分布式算法。本文考虑了一种流行的基于分布式梯度的一致性算法,该算法只需要局部计算和通信。该领域的一个重要问题是分析分布式系统中存在不可避免的通信延迟时这些算法的收敛速度。我们证明了在处理器之间存在统一但可能任意大的通信延迟的情况下,基于梯度的共识算法的收敛性。此外,我们还得到了该算法收敛速度的上界,该上界与网络大小、拓扑结构和处理器间通信延迟有关。
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