Pointwise convergence of Fourier regularization for smoothing data

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摘要

The classical smoothing data problem is analyzed in a Sobolev space under the assumption of white noise. A Fourier series method based on regularization endowed with generalized cross validation is considered to approximate the unknown function. This approximation is globally optimal, i.e., the mean integrated squared error reaches the optimal rate in the minimax sense. In this paper the pointwise convergence property is studied. Specifically, it is proved that the smoothed solution is locally convergent but not locally optimal. Examples of functions for which the approximation is subefficient are given. It is shown that optimality and superefficiency are possible when restricting to more regular subspaces of the Sobolev space.

论文关键词:65R10,62J02,Mean integrated squared error,Mean squared error,Smoothing data,Fourier regularization,Generalized cross validation

论文评审过程:Received 2 December 2004, Available online 22 November 2005.

论文官网地址:https://doi.org/10.1016/j.cam.2005.10.009