articleIEEE Transactions on Automatic ControlJul 6, 2011GREEN OA

Dual Averaging for Distributed Optimization: Convergence Analysis and Network Scaling

JCJ. C. DuchiAAA. AgarwalMJM. J. Wainwright

University of California, Berkeley

Indexed inarxivcrossref

Abstract

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…

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Authors

3
  • JC
    J. C. DuchiCorresponding

    University of California, Berkeley

  • AA
    A. Agarwal

    University of California, Berkeley

  • MJ
    M. J. Wainwright

    University of California, Berkeley

Topics & keywords

Keywords
  • Subgradient method
  • Convergence (economics)
  • Computation
  • Convex optimization
  • Convex function
  • Optimization problem
  • Distributed algorithm
  • Scaling
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