Randomized Low-Memory Singular Value Projection
Abstract
Affine rank minimization algorithms typically rely on calculating the gradient of a data error followed by a singular value decomposition at every iteration. Because these two steps are expensive, heuristic approximations are often used to reduce computational burden. To this end, we propose a recovery scheme that merges the two steps with randomized approximations, and as a result, operates on space proportional to the degrees of freedom in the problem. We theoretically establish the estimation guarantees of the algorithm as a function of approximation tolerance. While the theoretical approximation requirements are overly pessimistic, we demonstrate that in practice the algorithm performs well on the quantum tomography recovery problem.
Cite
@article{arxiv.1303.0167,
title = {Randomized Low-Memory Singular Value Projection},
author = {Stephen Becker and Volkan Cevher and Anastasios Kyrillidis},
journal= {arXiv preprint arXiv:1303.0167},
year = {2013}
}
Comments
13 pages. This version has a revised theorem and new numerical experiments