Minimax estimation of norms of a probability density: II. Rate-optimal estimation procedures

Abstract
In this paper we develop rate--optimal estimation procedures in the problem of estimating the --norm, of a probability density from independent observations. The density is assumed to be defined on , and to belong to a ball in the anisotropic Nikolskii space. We adopt the minimax approach and construct rate--optimal estimators in the case of integer . We demonstrate that, depending on parameters of Nikolskii's class and the norm index , the risk asymptotics ranges from inconsistency to --estimation. The results in this paper complement the minimax lower bounds derived in the companion paper \cite{gl20}.
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