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Randomized gradient-free methods in convex optimization
Published 24 Nov 2022 in math.OC | (2211.13566v3)
Abstract: This review presents modern gradient-free methods to solve convex optimization problems. By gradient-free methods, we mean those that use only (noisy) realizations of the objective value. We are motivated by various applications where gradient information is prohibitively expensive or even unavailable. We mainly focus on three criteria: oracle complexity, iteration complexity, and the maximum permissible noise level.
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