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arxiv: 1412.2669 · v2 · pith:IWWJLFQ4new · submitted 2014-12-05 · 📊 stat.ML · cs.IT· math.IT

Two step recovery of jointly sparse and low-rank matrices: theoretical guarantees

classification 📊 stat.ML cs.ITmath.IT
keywords algorithmmatrixmeasurementsrecoverystepcolumnsguaranteesjointly
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We introduce a two step algorithm with theoretical guarantees to recover a jointly sparse and low-rank matrix from undersampled measurements of its columns. The algorithm first estimates the row subspace of the matrix using a set of common measurements of the columns. In the second step, the subspace aware recovery of the matrix is solved using a simple least square algorithm. The results are verified in the context of recovering CINE data from undersampled measurements; we obtain good recovery when the sampling conditions are satisfied.

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