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Near-Optimal Lower Bounds For Convex Optimization For All Orders of Smoothness

Abstract

We study the complexity of optimizing highly smooth convex functions. For a positive integer pp, we want to find an ϵ\epsilon-approximate minimum of a convex function ff, given oracle access to the function and its first pp derivatives, assuming that the ppth derivative of ff is Lipschitz. Recently, three independent research groups (Jiang et al., PLMR 2019; Gasnikov et al., PLMR 2019; Bubeck et al., PLMR 2019) developed a new algorithm that solves this problem with O~(1/ϵ23p+1)\tilde{O}(1/\epsilon^{\frac{2}{3p+1}}) oracle calls for constant pp. This is known to be optimal (up to log factors) for deterministic algorithms, but known lower bounds for randomized algorithms do not match this bound. We prove a new lower bound that matches this bound (up to log factors), and holds not only for randomized algorithms, but also for quantum algorithms.

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