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Variance-Reduced Decentralized Stochastic Optimization With Accelerated Convergence | IEEE Journals & Magazine | IEEE Xplore

Variance-Reduced Decentralized Stochastic Optimization With Accelerated Convergence


Abstract:

This paper describes a novel algorithmic framework to minimize a finite-sum of functions available over a network of nodes. The proposed framework, that we call GT-VR, is...Show More

Abstract:

This paper describes a novel algorithmic framework to minimize a finite-sum of functions available over a network of nodes. The proposed framework, that we call GT-VR, is stochastic and decentralized, and thus is particularly suitable for problems where large-scale, potentially private data, cannot be collected or processed at a centralized server. The GT-VR framework leads to a family of algorithms with two key ingredients: (i) local variance reduction, that enables estimating the local batch gradients from arbitrarily drawn samples of local data; and, (ii) global gradient tracking, which fuses the gradient information across the nodes. Naturally, combining different variance reduction and gradient tracking techniques leads to different algorithms of interest with valuable practical tradeoffs and design considerations. Our focus in this paper is on two instantiations of the GT-VR framework, namely GT-SAGA and GT-SVRG, that, similar to their centralized counterparts (SAGA and SVRG), exhibit a compromise between space and time. We show that both GT-SAGA and GT-SVRG achieve accelerated linear convergence for smooth and strongly convex problems and further describe the regimes in which they achieve non-asymptotic, network-independent linear convergence rates that are faster with respect to the existing decentralized first-order schemes. Moreover, we show that both algorithms achieve a linear speedup in such regimes compared to their centralized counterparts that process all data at a single node. Extensive simulations illustrate the convergence behavior of the corresponding algorithms.
Published in: IEEE Transactions on Signal Processing ( Volume: 68)
Page(s): 6255 - 6271
Date of Publication: 15 October 2020

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