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Covariance loss, Szemeredi regularity, and differential privacy (2301.02705v1)
Published 6 Jan 2023 in math.PR, cs.CR, math.ST, and stat.TH
Abstract: We show how randomized rounding based on Grothendieck's identity can be used to prove a nearly tight bound on the covariance loss--the amount of covariance that is lost by taking conditional expectation. This result yields a new type of weak Szemeredi regularity lemma for positive semidefinite matrices and kernels. Moreover, it can be used to construct differentially private synthetic data.
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