A greedy algorithm for low-rank matrix recovery incorporates subspace prior information to achieve convergence under milder rank-restricted isometry conditions than standard methods without priors.
Optimal Weighted Low-rank Matrix Recovery with Subspace Prior Information
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abstract
Matrix sensing is the problem of reconstructing a low-rank matrix from a few linear measurements. In many applications such as collaborative filtering, the famous Netflix prize problem, and seismic data interpolation, there exists some prior information about the column and row spaces of the ground-truth low-rank matrix. In this paper, we exploit this prior information by proposing a weighted optimization problem where its objective function promotes both rank and prior subspace information. Using the recent results in conic integral geometry, we obtain the unique optimal weights that minimize the required number of measurements. As simulation results confirm, the proposed convex program with optimal weights requires substantially fewer measurements than the regular nuclear norm minimization.
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cs.IT 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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A Greedy Algorithm for Matrix Recovery with Subspace Prior Information
A greedy algorithm for low-rank matrix recovery incorporates subspace prior information to achieve convergence under milder rank-restricted isometry conditions than standard methods without priors.