Abstract: We consider the nonparametric estimation of the density func-tion of weakly and strongly dependent processes with noisy observations. We show that in the ordinary smooth case the optimal bandwidth choice can be influenced by long range dependence, as opposite to the standard case, when no noise is present. In particular, if the dependence is moder-ate the bandwidth, the rates of mean-square convergence and, additionally, central limit theorem are the same as in the i.i.d. case. If the dependence is strong enough, then the bandwidth choice is influenced by the strength of dependence, which is different when compared to the non-noisy case. Also, central limit theorem are influenced by the strength of dependence. On the other hand, i...
This paper deals with semiparametric convolution models, where the noise sequence has a Gaussian cen...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
It is quite common in the statistical literature on nonparametric deconvolution to assume that the e...
AbstractThis paper studies the asymptotic properties of the kernel probability density estimate of s...
This paper studies the asymptotic properties of the kernel probability density estimate of stationar...
We consider nonparametric prediction problem for both short- and long-range de-pendent linear proces...
AbstractThis paper investigates performance of nonparametric kernel regression and its associated ba...
Abstract. In the convolution model Zi = Xi + εi, we give a model selection procedure to estimate the...
summary:We study the density deconvolution problem when the random variables of interest are an asso...
AbstractThis paper studies the asymptotic properties of the kernel probability density estimate of s...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
This paper deals with semiparametric convolution models, where the noise sequence has a Gaussian cen...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
It is quite common in the statistical literature on nonparametric deconvolution to assume that the e...
AbstractThis paper studies the asymptotic properties of the kernel probability density estimate of s...
This paper studies the asymptotic properties of the kernel probability density estimate of stationar...
We consider nonparametric prediction problem for both short- and long-range de-pendent linear proces...
AbstractThis paper investigates performance of nonparametric kernel regression and its associated ba...
Abstract. In the convolution model Zi = Xi + εi, we give a model selection procedure to estimate the...
summary:We study the density deconvolution problem when the random variables of interest are an asso...
AbstractThis paper studies the asymptotic properties of the kernel probability density estimate of s...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
This paper deals with semiparametric convolution models, where the noise sequence has a Gaussian cen...
In this paper we investigate the performance of a linear wavelet-type deconvolution estimator for we...
It is quite common in the statistical literature on nonparametric deconvolution to assume that the e...