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An introduction to decentralized stochastic optimization with gradient tracking

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arxiv 1907.09648 v2 pith:AJVALDGR submitted 2019-07-23 cs.LG cs.SYeess.SYmath.OCstat.ML

An introduction to decentralized stochastic optimization with gradient tracking

classification cs.LG cs.SYeess.SYmath.OCstat.ML
keywords decentralizedapplicationsdatagradientlearningmachineoptimizationstochastic
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Decentralized solutions to finite-sum minimization are of significant importance in many signal processing, control, and machine learning applications. In such settings, the data is distributed over a network of arbitrarily-connected nodes and raw data sharing is prohibitive often due to communication or privacy constraints. In this article, we review decentralized stochastic first-order optimization methods and illustrate some recent improvements based on gradient tracking and variance reduction, focusing particularly on smooth and strongly-convex objective functions. We provide intuitive illustrations of the main technical ideas as well as applications of the algorithms in the context of decentralized training of machine learning models.

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