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Matrix Completion With Selective Sampling

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arxiv 1904.08540 v1 pith:BR7AKKS6 submitted 2019-04-17 cs.LG stat.ML

Matrix Completion With Selective Sampling

classification cs.LG stat.ML
keywords matrixproblemsamplingcompletionentriespreviousselectivesome
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Matrix completion is a classical problem in data science wherein one attempts to reconstruct a low-rank matrix while only observing some subset of the entries. Previous authors have phrased this problem as a nuclear norm minimization problem. Almost all previous work assumes no explicit structure of the matrix and uses uniform sampling to decide the observed entries. We suggest methods for selective sampling in the case where we have some knowledge about the structure of the matrix and are allowed to design the observation set.

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