Oracle Complexity of Second-Order Methods for Smooth Convex Optimization
Optimization and Control
2017-08-18 v2
Abstract
Second-order methods, which utilize gradients as well as Hessians to optimize a given function, are of major importance in mathematical optimization. In this work, we prove tight bounds on the oracle complexity of such methods for smooth convex functions, or equivalently, the worst-case number of iterations required to optimize such functions to a given accuracy. In particular, these bounds indicate when such methods can or cannot improve on gradient-based methods, whose oracle complexity is much better understood. We also provide generalizations of our results to higher-order methods.
Cite
@article{arxiv.1705.07260,
title = {Oracle Complexity of Second-Order Methods for Smooth Convex Optimization},
author = {Yossi Arjevani and Ohad Shamir and Ron Shiff},
journal= {arXiv preprint arXiv:1705.07260},
year = {2017}
}
Comments
35 pages; Added discussion of matching upper bounds, and generalization to higher-order methods