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Recommendation on a Budget: Column Space Recovery from Partially Observed Entries with Random or Active Sampling

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arxiv 2002.11589 v2 pith:NASRYYJI submitted 2020-02-26 cs.LG cs.IRstat.ML

Recommendation on a Budget: Column Space Recovery from Partially Observed Entries with Random or Active Sampling

classification cs.LG cs.IRstat.ML
keywords columnspacebudgetrecoverysamplingactivealternatingcolumns
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We analyze alternating minimization for column space recovery of a partially observed, approximately low rank matrix with a growing number of columns and a fixed budget of observations per column. In this work, we prove that if the budget is greater than the rank of the matrix, column space recovery succeeds -- as the number of columns grows, the estimate from alternating minimization converges to the true column space with probability tending to one. From our proof techniques, we naturally formulate an active sampling strategy for choosing entries of a column that is theoretically and empirically (on synthetic and real data) better than the commonly studied uniformly random sampling strategy.

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