TITLE:
Wavelet-Based Density Estimation in Presence of Additive Noise under Various Dependence Structures
AUTHORS:
N. Hosseinioun
KEYWORDS:
Additive Noise, Density Estimation, Dependent Sequence, Rate of Convergence, Wavelet
JOURNAL NAME:
Advances in Pure Mathematics,
Vol.6 No.1,
January
19,
2016
ABSTRACT: We study the following model: . The aim is to estimate the distribution of X when only are observed. In the classical model, the distribution of is assumed to be known, and this is often considered as an important drawback of this simple model. Indeed, in most practical applications, the distribution of the errors cannot be perfectly known. In this paper, the author will construct wavelet estimators and analyze their asymptotic mean integrated squared error for additive noise models under certain dependent conditions, the strong mixing case, the β-mixing case and the ρ-mixing case. Under mild conditions on the family of wavelets, the estimator is shown to be -consistent and fast rates of convergence have been established.