Generalizing the optimized gradient method for smooth convex minimization
Abstract
This paper generalizes the optimized gradient method (OGM) that achieves the optimal worst-case cost function bound of first-order methods for smooth convex minimization. Specifically, this paper studies a generalized formulation of OGM and analyzes its worst-case rates in terms of both the function value and the norm of the function gradient. This paper also develops a new algorithm called OGM-OG that is in the generalized family of OGM and that has the best known analytical worst-case bound with rate on the decrease of the gradient norm among fixed-step first-order methods. This paper also proves that Nesterov's fast gradient method has an worst-case gradient norm rate but with constant larger than OGM-OG. The proof is based on the worst-case analysis called Performance Estimation Problem.
Cite
@article{arxiv.1607.06764,
title = {Generalizing the optimized gradient method for smooth convex minimization},
author = {Donghwan Kim and Jeffrey A. Fessler},
journal= {arXiv preprint arXiv:1607.06764},
year = {2019}
}