Recovering Low-Rank and Sparse Components of Matrices from Incomplete and Noisy Observations
Many problems can be characterized by the task of recovering the low-rank and sparse components of a given matrix. Recently, it was discovered that this nondeterministic polynomial-time hard (NP-hard) task can be well accomplished, both theoretically and numerically, via heuristically solving a conv...
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Veröffentlicht in: | SIAM journal on optimization 2011-01, Vol.21 (1), p.57-81 |
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Sprache: | eng |
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Zusammenfassung: | Many problems can be characterized by the task of recovering the low-rank and sparse components of a given matrix. Recently, it was discovered that this nondeterministic polynomial-time hard (NP-hard) task can be well accomplished, both theoretically and numerically, via heuristically solving a convex relaxation problem where the widely acknowledged nuclear norm and ... norm are utilized to induce low-rank and sparsity. This paper studies the recovery task in the general settings that only a fraction of entries of the matrix can be observed and the observation is corrupted by both impulsive and Gaussian noise. The paper shows that the resulting model falls into the applicable scope of the classical augmented Lagrangian method. Moreover, the separable structure of the new model enables the paper to solve the involved subproblems more efficiently by splitting the augmented Lagrangian function. Hence, some splitting numerical algorithms are developed for solving the new recovery model. (ProQuest: ... denotes formulae/symbols omitted.) |
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ISSN: | 1052-6234 1095-7189 |
DOI: | 10.1137/100781894 |