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Unified Optimal Analysis of the (Stochastic) Gradient Method (1907.04232v2)
Published 9 Jul 2019 in cs.LG, cs.NA, math.NA, math.OC, and stat.ML
Abstract: In this note we give a simple proof for the convergence of stochastic gradient (SGD) methods on $\mu$-convex functions under a (milder than standard) $L$-smoothness assumption. We show that for carefully chosen stepsizes SGD converges after $T$ iterations as $O\left( LR2 \exp \bigl[-\frac{\mu}{4L}T\bigr] + \frac{\sigma2}{\mu T} \right)$ where $\sigma2$ measures the variance in the stochastic noise. For deterministic gradient descent (GD) and SGD in the interpolation setting we have $\sigma2 =0$ and we recover the exponential convergence rate. The bound matches with the best known iteration complexity of GD and SGD, up to constants.