Testing Composite Hypotheses, Hermite Polynomials, and Optimal Estimation of a Nonsmooth Functional
Tony Cai and Mark Low
A sharp minimax lower bound is established by applying the general lower bound technique based on testing two fuzzy hypotheses. A key step is the construction of two special priors and bounding the chi-square distance between two normal mixtures. An estimator is constructed using approximation theory and Hermite polynomials and is shown to be asymptotically sharp minimax when the means are bounded by a given value M. It is shown that the minimax risk equals β* 2 M2 (loglog n)2/(log n)2 asymptotically, where β* is the Bernstein constant.
The general techniques and results developed in the present paper can also be used to solve other related problems.
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