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An Improved Convergence Analysis for Decentralized Online Stochastic Non-Convex Optimization

Ran Xin, Usman A. Khan, Soummya Kar

2021IEEE Transactions on Signal Processing98 citationsDOIOpen Access PDF

Abstract

In this paper, we study decentralized online stochastic non-convex optimization over a network of nodes. Integrating a technique called gradient tracking in decentralized stochastic gradient descent, we show that the resulting algorithm, GT-DSGD, enjoys certain desirable characteristics towards minimizing a sum of smooth non-convex functions. In particular, for general smooth non-convex functions, we establish non-asymptotic characterizations of GT-DSGD and derive the conditions under which it achieves network-independent performances that match the centralized minibatch SGD. In contrast, the existing results suggest that GT-DSGD is always network-dependent and is therefore strictly worse than the centralized minibatch SGD. When the global non-convex function additionally satisfies the Polyak-Łojasiewics (PL) condition, we establish the linear convergence of GT-DSGD up to a steady-state error with appropriate constant step-sizes. Moreover, under stochastic approximation step-sizes, we establish, for the first time, the optimal global sublinear convergence rate on almost every sample path, in addition to the asymptotically optimal sublinear rate in expectation. Since strongly convex functions are a special case of the functions satisfying the PL condition, our results are not only immediately applicable but also improve the currently known best convergence rates and their dependence on problem parameters.

Topics & Concepts

Sublinear functionConvex functionStochastic gradient descentRate of convergenceMathematicsMathematical optimizationConvergence (economics)Convex optimizationRegular polygonStochastic approximationFunction (biology)Computer scienceApplied mathematicsDiscrete mathematicsArtificial neural networkEconomic growthChannel (broadcasting)Key (lock)GeometryBiologyComputer networkComputer securityEvolutionary biologyMachine learningEconomicsStochastic Gradient Optimization TechniquesDistributed Control Multi-Agent SystemsSparse and Compressive Sensing Techniques