DocumentCode
1298149
Title
ADMiRA: Atomic Decomposition for Minimum Rank Approximation
Author
Lee, Kiryung ; Bresler, Yoram
Author_Institution
Dept. of Electr. & Comput. Eng., Univ. of Illinois at Urbana-Champaign, Urbana, IL, USA
Volume
56
Issue
9
fYear
2010
Firstpage
4402
Lastpage
4416
Abstract
In this paper, we address compressed sensing of a low-rank matrix posing the inverse problem as an approximation problem with a specified target rank of the solution. A simple search over the target rank then provides the minimum rank solution satisfying a prescribed data approximation bound. We propose an atomic decomposition providing an analogy between parsimonious representations of a sparse vector and a low-rank matrix and extending efficient greedy algorithms from the vector to the matrix case. In particular, we propose an efficient and guaranteed algorithm named atomic decomposition for minimum rank approximation (ADMiRA) that extends Needell and Tropp´s compressive sampling matching pursuit (CoSaMP) algorithm from the sparse vector to the low-rank matrix case. The performance guarantee is given in terms of the rank-restricted isometry property (R-RIP) and bounds both the number of iterations and the error in the approximate solution for the general case of noisy measurements and approximately low-rank solution. With a sparse measurement operator as in the matrix completion problem, the computation in ADMiRA is linear in the number of measurements. Numerical experiments for the matrix completion problem show that, although the R-RIP is not satisfied in this case, ADMiRA is a competitive algorithm for matrix completion.
Keywords
approximation theory; data compression; greedy algorithms; inverse problems; matrix decomposition; sampling methods; sparse matrices; ADMiRA; CoSaMP algorithm; R-RIP; atomic decomposition for minimum rank approximation; compressed sensing; compressive sampling matching pursuit algorithm; data approximation bound; greedy algorithms; inverse problem; low-rank matrix; minimum rank solution; noisy measurements; parsimonious representations; rank-restricted isometry property; sparse measurement operator; sparse vector; Approximation algorithms; Compressed sensing; Image reconstruction; Inverse problems; Least squares approximation; Matching pursuit algorithms; Matrix decomposition; Minimization; Pursuit algorithms; Signal processing algorithms; Sparse matrices; Vectors; Compressed sensing; matrix completion; performance guarantee; rank minimization; singular value decomposition (SVD);
fLanguage
English
Journal_Title
Information Theory, IEEE Transactions on
Publisher
ieee
ISSN
0018-9448
Type
jour
DOI
10.1109/TIT.2010.2054251
Filename
5550497
Link To Document