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A Fourier Analytical Approach to Estimation of Smooth Functions in Gaussian Shift Model

Abstract

Let xj=θ+ϵj\mathbf{x}_j = \mathbf{\theta} + \mathbf{\epsilon}_j, j=1,,nj=1,\dots,n be i.i.d. copies of a Gaussian random vector xN(θ,Σ)\mathbf{x}\sim\mathcal{N}(\mathbf{\theta},\mathbf{\Sigma}) with unknown mean θRd\mathbf{\theta} \in \mathbb{R}^d and unknown covariance matrix ΣRd×d\mathbf{\Sigma}\in \mathbb{R}^{d\times d}. The goal of this article is to study the estimation of f(θ)f(\mathbf{\theta}) where ff is a given smooth function of which smoothness is characterized by a Besov-type norm. The problem of interest resides in the high dimensional regime where the intrinsic dimension can grow with the sample size nn. Inspired by the classical work of A. N. Kolmogorov on unbiased estimation and Littlewood-Paley theory, we develop a new estimator based on a Fourier analytical approach that achieves effective bias reduction. Asymptotic normality and efficiency are proved when the smoothness index of ff is above certain threshold which was discovered recently by Koltchinskii et. al. (2018) for a H\"{o}lder type class. Numerical simulations are presented to validate our analysis. The simplicity of implementation and its superiority over the plug-in approach indicate the new estimator can be applied to a broad range of real world applications.

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