4.5 Article

A Data-Driven Wavelet Estimator For Deconvolution Density Estimations

Journal

RESULTS IN MATHEMATICS
Volume 78, Issue 4, Pages -

Publisher

SPRINGER BASEL AG
DOI: 10.1007/s00025-023-01928-0

Keywords

Wavelets; density estimation; deconvolution; data-driven; Besov spaces

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This paper proposes a data-driven wavelet estimator for deconvolution density model. Additionally, we investigate the totally adaptive estimations with moderately ill-posed noises on Besov spaces B-r,q(s)(R). The estimation for the case of 0 < s <= 1/r is considered, and the convergence rate in the region of 1 <= p <= 2sr+(2 beta+1)r/sr+2 beta+1 is improved compared to not necessarily compactly supported density estimations.
This current paper provides a data-driven wavelet estimator for deconvolution density model. Moreover, we investigate the totally adaptive estimations with moderately ill-posed noises over L-p risk on Besov spaces B-r,q(s)(R). Compared with the traditional adaptive wavelet estimators, the estimation for the case of 0 < s <= 1/r is considered. On the other hand, the convergence rate in the region of 1 <= p <= 2sr+(2 beta+1)r/sr+2 beta+1 is improved than that for not necessarily compactly supported density estimations.

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