154
2

Matrix Completion with Noise via Leveraged Sampling

Abstract

Many matrix completion methods assume that the data follows the uniform distribution. To address the limitation of this assumption, Chen et al. \cite{Chen20152999} propose to recover the matrix where the data follows the specific biased distribution. Unfortunately, in most real-world applications, the recovery of a data matrix appears to be incomplete, and perhaps even corrupted information. This paper considers the recovery of a low-rank matrix, where some observed entries are sampled in a \emph{biased distribution} suitably dependent on \emph{leverage scores} of a matrix, and some observed entries are uniformly corrupted. Our theoretical findings show that we can provably recover an unknown n×nn\times n matrix of rank rr from just about O(nrlog2n)O(nr\log^2 n) entries even when the few observed entries are corrupted with a small amount of noisy information. Empirical studies verify our theoretical results.

View on arXiv
Comments on this paper