Author_Institution :
Dept. of Appl. & Comput. Math., California Inst. of Technol., Pasadena, CA, USA
Abstract :
On the heels of compressed sensing, a new field has very recently emerged. This field addresses a broad range of problems of significant practical interest, namely, the recovery of a data matrix from what appears to be incomplete, and perhaps even corrupted, information. In its simplest form, the problem is to recover a matrix from a small sample of its entries. It comes up in many areas of science and engineering, including collaborative filtering, machine learning, control, remote sensing, and computer vision, to name a few. This paper surveys the novel literature on matrix completion, which shows that under some suitable conditions, one can recover an unknown low-rank matrix from a nearly minimal set of entries by solving a simple convex optimization problem, namely, nuclear-norm minimization subject to data constraints. Further, this paper introduces novel results showing that matrix completion is provably accurate even when the few observed entries are corrupted with a small amount of noise. A typical result is that one can recover an unknown matrix of low rank from just about log noisy samples with an error that is proportional to the noise level. We present numerical results that complement our quantitative analysis and show that, in practice, nuclear-norm minimization accurately fills in the many missing entries of large low-rank matrices from just a few noisy samples. Some analogies between matrix completion and compressed sensing are discussed throughout.
Keywords :
data integrity; matrix algebra; minimisation; noise; signal sampling; compressed sensing; convex optimization problem; data constraints; low rank matrices; matrix completion; nuclear norm minimization; Collaboration; Compressed sensing; Computer vision; Filtering; Frequency; Linear matrix inequalities; Machine learning; Motion pictures; Noise level; Remote sensing; Compressed sensing; duality in optimization; low-rank matrices; matrix completion; nuclear-norm minimization; oracle inequalities; semidefinite programming;