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Matrix Completion from Non-Uniformly Sampled Entries

27 June 2018
Yuanyu Wan
Jinfeng Yi
Lijun Zhang
ArXiv (abs)PDFHTML
Abstract

In this paper, we consider matrix completion from non-uniformly sampled entries including fully observed and partially observed columns. Specifically, we assume that a small number of columns are randomly selected and fully observed, and each remaining column is partially observed with uniform sampling. To recover the unknown matrix, we first recover its column space from the fully observed columns. Then, for each partially observed column, we recover it by finding a vector which lies in the recovered column space and consists of the observed entries. When the unknown m×nm\times nm×n matrix is low-rank, we show that our algorithm can exactly recover it from merely Ω(rnln⁡n)\Omega(rn\ln n)Ω(rnlnn) entries, where rrr is the rank of the matrix. Furthermore, for a noisy low-rank matrix, our algorithm computes a low-rank approximation of the unknown matrix and enjoys an additive error bound measured by Frobenius norm. Experimental results on synthetic datasets verify our theoretical claims and demonstrate the effectiveness of our proposed algorithm.

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