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arxiv: 1703.00102 · v2 · pith:YFGRGOWOnew · submitted 2017-03-01 · 📊 stat.ML · cs.LG· math.OC

SARAH: A Novel Method for Machine Learning Problems Using Stochastic Recursive Gradient

classification 📊 stat.ML cs.LGmath.OC
keywords sarahstochasticgradientrecursivealgorithmconvergencelinearnovel
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In this paper, we propose a StochAstic Recursive grAdient algoritHm (SARAH), as well as its practical variant SARAH+, as a novel approach to the finite-sum minimization problems. Different from the vanilla SGD and other modern stochastic methods such as SVRG, S2GD, SAG and SAGA, SARAH admits a simple recursive framework for updating stochastic gradient estimates; when comparing to SAG/SAGA, SARAH does not require a storage of past gradients. The linear convergence rate of SARAH is proven under strong convexity assumption. We also prove a linear convergence rate (in the strongly convex case) for an inner loop of SARAH, the property that SVRG does not possess. Numerical experiments demonstrate the efficiency of our algorithm.

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