Dual Averaging for Distributed Optimization: Convergence Analysis and Network Scaling 论文

2011IEEE Transactions on Automatic Control引用 898
Distributed Control Multi-Agent SystemsStochastic Gradient Optimization TechniquesGame Theory and Applications

详细信息

发表期刊/会议
IEEE Transactions on Automatic Control
发表日期
2011-07-06
发表年份
2011

关键词

Distributed Control Multi-Agent SystemsStochastic Gradient Optimization TechniquesGame Theory and Applications

摘要

The goal of decentralized optimization over a network is to optimize a global objective formed by a sum of local (possibly nonsmooth) convex functions using only local computation and communication. It arises in various application domains, including distributed tracking and localization, multi-agent coordination, estimation in sensor networks, and large-scale machine learning. We develop and analyze distributed algorithms based on dual subgradient averaging, and we provide sharp bounds on their convergence rates as a function of the network size and topology. Our analysis allows us to clearly separate the convergence of the optimization algorithm itself and the effects of communication dependent on the network structure. We show that the number of iterations required by our algorithm scales inversely in the spectral gap of the network, and confirm this prediction's sharpness both by theoretical lower bounds and simulations for various networks. Our approach includes the cases of deterministic optimization and communication, as well as problems with stochastic optimization and/or communication.

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