DocumentCode
110862
Title
Incoherence-Optimal Matrix Completion
Author
Yudong Chen
Author_Institution
Dept. of Electr. Eng. & Comput. Sci., Univ. of California at Berkeley, Berkeley, CA, USA
Volume
61
Issue
5
fYear
2015
fDate
May-15
Firstpage
2909
Lastpage
2923
Abstract
This paper considers the matrix completion problem. We show that it is not necessary to assume joint incoherence, which is a standard but unintuitive and restrictive condition that is imposed by previous studies. This leads to a sample complexity bound that is orderwise optimal with respect to the incoherence parameter (as well as to the rank r and the matrix dimension n up to a log factor). As a consequence, we improve the sample complexity of recovering a semidefinite matrix from O(nr2 log2 n) to O(nr log2 n), and the highest allowable rank from Θ(√n/ log n) to Θ(n/ log2 n). The key step in proof is to obtain new bounds in terms of the ℓ∞,2-norm, defined as the maximum of the row and column norms of a matrix. To illustrate the applicability of our techniques, we discuss extensions to singular value decomposition projection, structured matrix completion and semisupervised clustering, for which we provide orderwise improvements over existing results. Finally, we turn to the closely related problem of low-rank-plus-sparse matrix decomposition. We show that the joint incoherence condition is unavoidable here for polynomialtime algorithms conditioned on the planted clique conjecture. This means it is intractable in general to separate a rank-ω(√n) positive semidefinite matrix and a sparse matrix. Interestingly, our results show that the standard and joint incoherence conditions are associated, respectively, with the information (statistical) and computational aspects of the matrix decomposition problem.
Keywords
computational complexity; singular value decomposition; sparse matrices; ℓ∞,2-norm; incoherence optimal matrix completion problem; incoherence parameter; joint incoherence condition; low rank plus sparse matrix decomposition; matrix decomposition problem; planted clique conjecture; polynomial- time algorithm; sample complexity bound; semidefinite matrix recovery; semisupervised clustering; singular value decomposition projection; structured matrix completion; Complexity theory; Information theory; Joints; Matrix decomposition; Sparse matrices; Standards; Vectors; Matrix completion; computational barrier; incoherence; nuclear norm minimization; robust PCA;
fLanguage
English
Journal_Title
Information Theory, IEEE Transactions on
Publisher
ieee
ISSN
0018-9448
Type
jour
DOI
10.1109/TIT.2015.2415195
Filename
7064749
Link To Document