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            Convex Optimization
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            Convex Optimization

            Jun 12, 2019

            Speakers

            AV

            Adrian Vladu

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            AG

            Alexander Gasnikov

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            AK

            Alexey Kroshnin

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            About

            Accelerated Linear Convergence of Stochastic Momentum Methods in Wasserstein Distances Momentum methods such as Polyak's heavy ball (HB) method, Nesterov's accelerated gradient (AG) as well as accelerated projected gradient (APG) method have been commonly used in machine learning practice, but their performance is quite sensitive to noise in the gradients. We study these methods under a first-order stochastic oracle model where noisy estimates of the gradients are available. For strongly convex…

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