Zeroth order optimization with orthogonal random directions (2107.03941v2)
Abstract: We propose and analyze a randomized zeroth-order approach based on approximating the exact gradient byfinite differences computed in a set of orthogonal random directions that changes with each iteration. A number ofpreviously proposed methods are recovered as special cases including spherical smoothing, coordinate descent, as wellas discretized gradient descent. Our main contribution is proving convergence guarantees as well as convergence ratesunder different parameter choices and assumptions. In particular, we consider convex objectives, but also possiblynon-convex objectives satisfying the Polyak-{\L}ojasiewicz (PL) condition. Theoretical results are complemented andillustrated by numerical experiments.
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