Uniqueness conditions for low-rank matrix recovery

Y. C. Eldar, D. Needell, Y. Plan

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

Low-rank matrix recovery addresses the problem of recovering an unknown low-rank matrix from few linear measurements. Nuclear-norm minimization is a tractable approach with a recent surge of strong theoretical backing. Analagous to the theory of compressed sensing, these results have required random measurements. For example, m >= Cnr Gaussian measurements are sufficient to recover any rank-r n x n matrix with high probability. In this paper we address the theoretical question of how many measurements are needed via any method whatsoever - tractable or not. We show that for a family of random measurement ensembles, m >= 4nr-4r(2) measurements are sufficient to guarantee that no rank-2r matrix lies in the null space of the measurement operator with probability one. This is a necessary and sufficient condition to ensure uniform recovery of all rank-r matrices by rank minimization. Furthermore, this value of m precisely matches the dimension of the manifold of all rank-2r matrices. We also prove that for a fixed rank-r matrix, m >= 2nr - r(2) + 1 random measurements are enough to guarantee recovery using rank minimization. These results give a benchmark to which we may compare the efficacy of nuclear-norm minimization.

Original languageEnglish
Title of host publicationWAVELETS AND SPARSITY XIV
EditorsM Papadakis, D VanDeVille, VK Goyal
PublisherSPIE
Number of pages9
ISBN (Print)9780819487483
DOIs
StatePublished - 13 Sep 2011
EventConference on Wavelets and Sparsity XIV - San Diego, United States
Duration: 21 Aug 201124 Aug 2011

Publication series

NameProceedings of SPIE
Volume8138
ISSN (Print)0277-786X

Conference

ConferenceConference on Wavelets and Sparsity XIV
Country/TerritoryUnited States
CitySan Diego
Period21/08/1124/08/11

Keywords

  • compressed sensing
  • low-rank matrix recovery
  • nuclear norm minimization
  • random matrices
  • rank-minimization

All Science Journal Classification (ASJC) codes

  • Electronic, Optical and Magnetic Materials
  • Condensed Matter Physics
  • Applied Mathematics
  • Electrical and Electronic Engineering
  • Computer Science Applications

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