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Title: Density deconvolution with associated stationary data (English)
Author: Thuy, Le Thi Hong
Author: Phuong, Cao Xuan
Language: English
Journal: Applications of Mathematics
ISSN: 0862-7940 (print)
ISSN: 1572-9109 (online)
Volume: 68
Issue: 5
Year: 2023
Pages: 685-708
Summary lang: English
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Category: math
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Summary: We study the density deconvolution problem when the random variables of interest are an associated strictly stationary sequence and the random noises are i.i.d.\ with a nonstandard density. Based on a nonparametric strategy, we introduce an estimator depending on two parameters. This estimator is shown to be consistent with respect to the mean integrated squared error. Under additional regularity assumptions on the target function as well as on the density of noises, some error estimates are derived. Several numerical simulations are also conducted to illustrate the efficiency of our method. (English)
Keyword: associated process
Keyword: density deconvolution
Keyword: nonstandard noise density
MSC: 62G05
MSC: 62G07
MSC: 62G20
DOI: 10.21136/AM.2023.0135-22
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Date available: 2023-10-05T15:14:01Z
Last updated: 2023-10-09
Stable URL: http://hdl.handle.net/10338.dmlcz/151839
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