In this paper, a hard thresholding wavelet estimator is constructed for a deconvolution model in a periodic setting that has long-range dependent noise. The estimation paradigm is based on a maxiset method that attains a near optimal rate of convergence for a variety of Lp loss functions and a wide variety of Besov spaces in the presence of strong dependence. The effect of long-range dependence is detrimental to the rate of convergence. The method is implemented using a modification of the WaveD-package in R and an extensive numerical study is conducted. The numerical study supplements the theoretical results and compares the LRD estimator with a naïve application of the standard WaveD approach.15 page(s
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We consider the problem of estimating the unknown response function in the multichannel deconvolutio...
Abstract: We investigate global performances of non-linear wavelet estimation in regression models w...
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This paper proposes a new wavelet-based method for deconvolving a\ud density. The estimator combines...
Thresholding algorithms in an orthonormal basis are studied to estimate noisy discrete signals degra...
We consider the estimation of nonparametric regression function with long memory data and investigat...
This paper proposes a new wavelet-based method for deconvolving a density. The estimator combines th...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
Deconvolution problems are naturally represented in the Fourier domain, whereas thresholding in wave...
The paper proposes a method of deconvolution in a periodic setting which combines two important idea...
The paper proposes a method of deconvolution in a periodic setting which combines two important idea...
We consider multichannel deconvolution in a periodic setting with long-memory errors under three dif...
This paper studies the estimation of a density in the convolution density model from weakly dependen...
We consider the problem of estimating the unknown response function in the multichannel deconvolutio...
We consider the problem of estimating the unknown response function in the multichannel deconvolutio...
Abstract: We investigate global performances of non-linear wavelet estimation in regression models w...
In this article we study function estimation via wavelet shrinkage for data with long-range dependen...
In this note, we consider the estimation of an unknown function $f$ for weakly dependent data ($\alp...
This paper proposes a new wavelet-based method for deconvolving a\ud density. The estimator combines...
Thresholding algorithms in an orthonormal basis are studied to estimate noisy discrete signals degra...
We consider the estimation of nonparametric regression function with long memory data and investigat...
This paper proposes a new wavelet-based method for deconvolving a density. The estimator combines th...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...