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On Zeroth-Order Stochastic Convex Optimization via Random Walks

11 February 2014
Tengyuan Liang
Hariharan Narayanan
Alexander Rakhlin
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Abstract

We propose a method for zeroth order stochastic convex optimization that attains the suboptimality rate of O~(n7T−1/2)\tilde{\mathcal{O}}(n^{7}T^{-1/2})O~(n7T−1/2) after TTT queries for a convex bounded function f:Rn→Rf:{\mathbb R}^n\to{\mathbb R}f:Rn→R. The method is based on a random walk (the \emph{Ball Walk}) on the epigraph of the function. The randomized approach circumvents the problem of gradient estimation, and appears to be less sensitive to noisy function evaluations compared to noiseless zeroth order methods.

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