Density Deconvolution in a Non-standard Case of Heteroscedastic Noises

Master'sLe Thi Hong ThuyCao Xuan Phuong

Faculty of Fundamental Sciences

Research output: Article

researchs.abstract

We study the density deconvolution problem with heteroscedastic noises whose densities are known exactly and Fourier-oscillating. Based on available data, we propose a nonparametric estimator depending on two regularization parameters. This estimator is shown to be consistency with respect to the mean integrated squared error. We then establish upper and lower bounds of the error over the Sobolev class of target density to give the minimax optimality of the estimator. In particular, this estimator is adaptive to the smoothness of the unknown target density. We finally demonstrate that the estimator achieves the minimax rates when the noise densities are supersmooth and ordinary smooth.

Overview
Type
Article
Publication year
01 Oct 2020
Original language
English
Published Journal
Journal of Statistical Theory and Practice
Volume No
Vol. 14 No. 4
Classification
Scopus Indexed
ISSN index
1559-8616
Page
1-17
Quartiles
Q3

Access Document Overview

To read the full-text of this publication, you can request a copy directly from the authors.