2019 COLT COLT 2019

Near Optimal Methods for Minimizing Convex Functions with Lipschitz $p$-th Derivatives

Abstract

In this merged paper, we consider the problem of minimizing a convex function with Lipschitz-continuous $p$-th order derivatives. Given an oracle which when queried at a point returns the first $p$-derivatives of the function at that point we provide some methods which compute an $\e$ approximate minimizer in $O\left(\e^{-\frac{2}{3p+1}} \right)$ iterations. These methods match known lower bounds up to polylogarithmic factors for constant $p$.

🧭 Keyword Pioneer — lipschitz derivative
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