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arxiv: 1902.03355 · v1 · pith:C7ONSV2Enew · submitted 2019-02-09 · 🧮 math.OC · cs.LG

Forward-backward-forward methods with variance reduction for stochastic variational inequalities

classification 🧮 math.OC cs.LG
keywords algorithmstochasticinequalitiesreductionvariancevariationalforward-backward-forwardmethod
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We develop a new stochastic algorithm with variance reduction for solving pseudo-monotone stochastic variational inequalities. Our method builds on Tseng's forward-backward-forward (FBF) algorithm, which is known in the deterministic literature to be a valuable alternative to Korpelevich's extragradient method when solving variational inequalities over a convex and closed set governed by pseudo-monotone, Lipschitz continuous operators. The main computational advantage of Tseng's algorithm is that it relies only on a single projection step and two independent queries of a stochastic oracle. Our algorithm incorporates a variance reduction mechanism and leads to almost sure (a.s.) convergence to an optimal solution. To the best of our knowledge, this is the first stochastic look-ahead algorithm achieving this by using only a single projection at each iteration..

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