Affine-invariant contracting-point methods for Convex Optimization
Abstract
In this paper, we develop new affine-invariant algorithms for solving composite convex minimization problems with bounded domain. We present a general framework of Contracting-Point methods, which solve at each iteration an auxiliary subproblem restricting the smooth part of the objective function onto contraction of the initial domain. This framework provides us with a systematic way for developing optimization methods of different order, endowed with the global complexity bounds. We show that using an appropriate affine-invariant smoothness condition, it is possible to implement one iteration of the Contracting-Point method by one step of the pure tensor method of degree . The resulting global rate of convergence in functional residual is then , where is the iteration counter. It is important that all constants in our bounds are affine-invariant. For , our scheme recovers well-known Frank-Wolfe algorithm, providing it with a new interpretation by a general perspective of tensor methods. Finally, within our framework, we present efficient implementation and total complexity analysis of the inexact second-order scheme , called Contracting Newton method. It can be seen as a proper implementation of the trust-region idea. Preliminary numerical results confirm its good practical performance both in the number of iterations, and in computational time.
Cite
@article{arxiv.2009.08894,
title = {Affine-invariant contracting-point methods for Convex Optimization},
author = {Nikita Doikov and Yurii Nesterov},
journal= {arXiv preprint arXiv:2009.08894},
year = {2020}
}