Multiple Testing of Linear Forms for Noisy Matrix Completion
Many important tasks of large-scale recommender systems can be naturally cast as testing multiple linear forms for noisy matrix completion. These problems, however, present unique challenges because of the subtle bias-and-variance tradeoff of and an intricate dependence among the estimated entries i...
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Zusammenfassung: | Many important tasks of large-scale recommender systems can be naturally cast
as testing multiple linear forms for noisy matrix completion. These problems,
however, present unique challenges because of the subtle bias-and-variance
tradeoff of and an intricate dependence among the estimated entries induced by
the low-rank structure. In this paper, we develop a general approach to
overcome these difficulties by introducing new statistics for individual tests
with sharp asymptotics both marginally and jointly, and utilizing them to
control the false discovery rate (FDR) via a data splitting and symmetric
aggregation scheme. We show that valid FDR control can be achieved with
guaranteed power under nearly optimal sample size requirements using the
proposed methodology. Extensive numerical simulations and real data examples
are also presented to further illustrate its practical merits. |
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DOI: | 10.48550/arxiv.2312.00305 |