Covariance Estimation under Missing Observations and Moment Equivalence

Abstract
We consider the problem of estimating the covariance matrix of a random vector by observing i.i.d samples and each entry of the sampled vector is missed with probability . Under the standard moment equivalence assumption, we construct the first estimator that simultaneously achieves optimality with respect to the parameter and it recovers the optimal convergence rate for the classical covariance estimation problem when
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