Achieving Linear Convergence in Distributed Asynchronous Multi-agent Optimization
March 28, 2018 Β· Declared Dead Β· π IEEE Transactions on Automatic Control
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Authors
Ye Tian, Ying Sun, Gesualdo Scutari
arXiv ID
1803.10359
Category
math.OC: Optimization & Control
Cross-listed
cs.DC
Citations
89
Venue
IEEE Transactions on Automatic Control
Last Checked
4 months ago
Abstract
This papers studies multi-agent (convex and \emph{nonconvex}) optimization over static digraphs. We propose a general distributed \emph{asynchronous} algorithmic framework whereby i) agents can update their local variables as well as communicate with their neighbors at any time, without any form of coordination; and ii) they can perform their local computations using (possibly) delayed, out-of-sync information from the other agents. Delays need not be known to the agent or obey any specific profile, and can also be time-varying (but bounded). The algorithm builds on a tracking mechanism that is robust against asynchrony (in the above sense), whose goal is to estimate locally the average of agents' gradients. When applied to strongly convex functions, we prove that it converges at an R-linear (geometric) rate as long as the step-size is {sufficiently small}. A sublinear convergence rate is proved, when nonconvex problems and/or diminishing, {\it uncoordinated} step-sizes are considered. To the best of our knowledge, this is the first distributed algorithm with provable geometric convergence rate in such a general asynchronous setting. Preliminary numerical results demonstrate the efficacy of the proposed algorithm and validate our theoretical findings.
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