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Characterization of Convex Objective Functions and Optimal Expected Convergence Rates for SGD

Published 9 Oct 2018 in math.OC and cs.LG | (1810.04100v2)

Abstract: We study Stochastic Gradient Descent (SGD) with diminishing step sizes for convex objective functions. We introduce a definitional framework and theory that defines and characterizes a core property, called curvature, of convex objective functions. In terms of curvature we can derive a new inequality that can be used to compute an optimal sequence of diminishing step sizes by solving a differential equation. Our exact solutions confirm known results in literature and allows us to fully characterize a new regularizer with its corresponding expected convergence rates.

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