Nonparametric empirical Bayes and compound decision approaches to estimation of a high-dimensional vector of normal means

Abstract

We consider the classical problem of estimating a vector μ=(μ1,...,μn) based on independent observations Yi N(μi,1), i=1,...,n. Suppose μi, i=1,...,n are independent realizations from a completely unknown G. We suggest an easily computed estimator μ, such that the ratio of its risk E(μ-μ)2 with that of the Bayes procedure approaches 1. A related compound decision result is also obtained. Our asymptotics is of a triangular array; that is, we allow the distribution G to depend on n. Thus, our theoretical asymptotic results are also meaningful in situations where the vector μ is sparse and the proportion of zero coordinates approaches 1. We demonstrate the performance of our estimator in simulations, emphasizing sparse setups. In ``moderately-sparse'' situations, our procedure performs very well compared to known procedures tailored for sparse setups. It also adapts well to nonsparse situations.

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