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Asymptotic normality and optimality in nonsmooth stochastic approximation
Published 16 Jan 2023 in math.OC, math.ST, stat.ML, and stat.TH | (2301.06632v1)
Abstract: In their seminal work, Polyak and Juditsky showed that stochastic approximation algorithms for solving smooth equations enjoy a central limit theorem. Moreover, it has since been argued that the asymptotic covariance of the method is best possible among any estimation procedure in a local minimax sense of H\'{a}jek and Le Cam. A long-standing open question in this line of work is whether similar guarantees hold for important non-smooth problems, such as stochastic nonlinear programming or stochastic variational inequalities. In this work, we show that this is indeed the case.
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