Efficient and Guaranteed Rank Minimization by Atomic Decomposition
Abstract
Recht, Fazel, and Parrilo provided an analogy between rank minimization and -norm minimization. Subject to the rank-restricted isometry property, nuclear norm minimization is a guaranteed algorithm for rank minimization. The resulting semidefinite formulation is a convex problem but in practice the algorithms for it do not scale well to large instances. Instead, we explore missing terms in the analogy and propose a new algorithm which is computationally efficient and also has a performance guarantee. The algorithm is based on the atomic decomposition of the matrix variable and extends the idea in the CoSaMP algorithm for -norm minimization. Combined with the recent fast low rank approximation of matrices based on randomization, the proposed algorithm can efficiently handle large scale rank minimization problems.
Cite
@article{arxiv.0901.1898,
title = {Efficient and Guaranteed Rank Minimization by Atomic Decomposition},
author = {Kiryung Lee and Yoram Bresler},
journal= {arXiv preprint arXiv:0901.1898},
year = {2009}
}
Comments
submitted to ISIT 2009