Learning Parameters for Weighted Matrix Completion via Empirical Estimation

31 Dec 2014Jason Jo

Recently theoretical guarantees have been obtained for matrix completion in the non-uniform sampling regime. In particular, if the sampling distribution aligns with the underlying matrix's leverage scores, then with high probability nuclear norm minimization will exactly recover the low rank matrix... (read more)

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