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Gradient-Free Approaches is a Key to an Efficient Interaction with Markovian Stochasticity

Boris Prokhorov
Semyon Chebykin
Alexander Gasnikov
Aleksandr Beznosikov
Main:10 Pages
1 Figures
Bibliography:4 Pages
5 Tables
Appendix:30 Pages
Abstract

This paper deals with stochastic optimization problems involving Markovian noise with a zero-order oracle. We present and analyze a novel derivative-free method for solving such problems in strongly convex smooth and non-smooth settings with both one-point and two-point feedback oracles. Using a randomized batching scheme, we show that when mixing time τ\tau of the underlying noise sequence is less than the dimension of the problem dd, the convergence estimates of our method do not depend on τ\tau. This observation provides an efficient way to interact with Markovian stochasticity: instead of invoking the expensive first-order oracle, one should use the zero-order oracle. Finally, we complement our upper bounds with the corresponding lower bounds. This confirms the optimality of our results.

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