Linear Convergence of Frank-Wolfe for Rank-One Matrix Recovery Without Strong Convexity

12/03/2019
by   Dan Garber, et al.
0

We consider convex optimization problems which are widely used as convex relaxations for low-rank matrix recovery problems. In particular, in several important problems, such as phase retrieval and robust PCA, the underlying assumption in many cases is that the optimal solution is rank-one. In this paper we consider a simple and natural sufficient condition on the objective so that the optimal solution to these relaxations is indeed unique and rank-one. Mainly, we show that under this condition, the standard Frank-Wolfe method with line-search (i.e., without any tuning of parameters whatsoever), which only requires a single rank-one SVD computation per iteration, finds an ϵ-approximated solution in only O(log1/ϵ) iterations (as opposed to the previous best known bound of O(1/ϵ)), despite the fact that the objective is not strongly convex. We consider several variants of the basic method with improved complexities, as well as an extension motivated by robust PCA, and finally, an extension to nonsmooth problems.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/23/2022

Low-Rank Mirror-Prox for Nonsmooth and Low-Rank Matrix Optimization Problems

Low-rank and nonsmooth matrix optimization problems capture many fundame...
research
10/28/2014

Non-convex Robust PCA

We propose a new method for robust PCA -- the task of recovering a low-r...
research
02/08/2022

Efficient Algorithms for High-Dimensional Convex Subspace Optimization via Strict Complementarity

We consider optimization problems in which the goal is find a k-dimensio...
research
01/09/2020

A Deterministic Convergence Framework for Exact Non-Convex Phase Retrieval

In this work, we analyze the non-convex framework of Wirtinger Flow (WF)...
research
08/03/2023

Efficiency of First-Order Methods for Low-Rank Tensor Recovery with the Tensor Nuclear Norm Under Strict Complementarity

We consider convex relaxations for recovering low-rank tensors based on ...
research
01/15/2021

Local Search Algorithms for Rank-Constrained Convex Optimization

We propose greedy and local search algorithms for rank-constrained conve...
research
08/07/2017

Linear Convergence of a Frank-Wolfe Type Algorithm over Trace-Norm Balls

We propose a rank-k variant of the classical Frank-Wolfe algorithm to so...

Please sign up or login with your details

Forgot password? Click here to reset