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Recursive Exponential Weighting for Online Non-convex Optimization

Abstract

In this paper, we investigate the online non-convex optimization problem which generalizes the classic {online convex optimization problem by relaxing the convexity assumption on the cost function. For this type of problem, the classic exponential weighting online algorithm has recently been shown to attain a sub-linear regret of O(TlogT)O(\sqrt{T\log T}). In this paper, we introduce a novel recursive structure to the online algorithm to define a recursive exponential weighting algorithm that attains a regret of O(T)O(\sqrt{T}), matching the well-known regret lower bound. To the best of our knowledge, this is the first online algorithm with provable O(T)O(\sqrt{T}) regret for the online non-convex optimization problem.

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