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Decentralized Optimization on Time-Varying Directed Graphs Under Communication Constraints

Yiyue Chen, Abolfazl Hashemi, Haris Vikalo

202113 citationsDOI

Abstract

We consider the problem of decentralized optimization where a collection of agents, each having access to a local cost function, communicate over a time-varying directed network and aim to minimize the sum of those functions. In practice, the amount of information that can be exchanged between the agents is limited due to communication constraints. We propose a communication-efficient algorithm for decentralized convex optimization that rely on sparsification of local updates exchanged between neighboring agents in the network. In directed networks, message sparsification alters column-stochasticity – a property that plays an important role in establishing convergence of decentralized learning tasks. We propose a decentralized optimization scheme that relies on local modification of mixing matrices, and show that it achieves $\mathcal{O}\left( {\frac{{\ln T}}{{\sqrt T }}} \right)$ convergence rate in the considered settings. Experiments validate theoretical results and demonstrate efficacy of the proposed algorithm.

Topics & Concepts

Convergence (economics)Computer scienceConvex functionOptimization problemFunction (biology)Mathematical optimizationProperty (philosophy)Scheme (mathematics)Convex optimizationRate of convergenceRegular polygonMathematicsAlgorithmChannel (broadcasting)Computer networkMathematical analysisEconomic growthEconomicsEpistemologyPhilosophyGeometryBiologyEvolutionary biologyDistributed Control Multi-Agent SystemsCooperative Communication and Network CodingAdvanced Wireless Communication Technologies
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