We consider the nonparametric estimation of the regression functions for dependentdata. Suppose that the covariates are observed with additive errors in the data and we employ nonparametric deconvolution kernel techniques to estimate the regression functions in this paper. We investigate how the strength of time dependence affects the asymptotic properties of the local constant and linear estimators. We treat both short-range dependent and long-range dependent linear processes in a unified way and demonstrate that the long-range dependence (LRD) of the covariates affects the asymptotic properties of the nonparametric estimators as well as the LRD of regressionerrors does
International audienceWe study the nonparametric regression estimation when the explanatory variable...
The fixed design regression model with long-memory errors is considered. The finite-dimensional asym...
AbstractWe investigate nonparametric curve estimation (including density, distribution, hazard, cond...
November 2009 (Revised: February 2010)We consider the nonparametric estimation of the regression fun...
Abstract. In this paper, we study the nonparametric estimation of the regression function for depend...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
This paper considers the use of a local linear kernel regression method to test whether the mean fun...
AbstractConsider the nonparametric estimation of a multivariate regression function and its derivati...
AbstractThe effect of dependent errors in fixed-design, nonparametric regression is investigated. It...
AbstractThis paper establishes the consistency and the root-n asymptotic normality of the exact maxi...
AbstractThis paper investigates performance of nonparametric kernel regression and its associated ba...
A central limit theorem is given for certain weighted sums of a covariance stationary process, assum...
AbstractIn this paper we propose nonparametric estimates of the regression function and its derivati...
In this paper, we consider nonparametric estimation for dependent data, where the observations do no...
We investigate nonparametric curve estimation (including density, distribution, hazard, conditional ...
International audienceWe study the nonparametric regression estimation when the explanatory variable...
The fixed design regression model with long-memory errors is considered. The finite-dimensional asym...
AbstractWe investigate nonparametric curve estimation (including density, distribution, hazard, cond...
November 2009 (Revised: February 2010)We consider the nonparametric estimation of the regression fun...
Abstract. In this paper, we study the nonparametric estimation of the regression function for depend...
The effect of errors in variables in nonparametric regression estimation is examined. To account for...
This paper considers the use of a local linear kernel regression method to test whether the mean fun...
AbstractConsider the nonparametric estimation of a multivariate regression function and its derivati...
AbstractThe effect of dependent errors in fixed-design, nonparametric regression is investigated. It...
AbstractThis paper establishes the consistency and the root-n asymptotic normality of the exact maxi...
AbstractThis paper investigates performance of nonparametric kernel regression and its associated ba...
A central limit theorem is given for certain weighted sums of a covariance stationary process, assum...
AbstractIn this paper we propose nonparametric estimates of the regression function and its derivati...
In this paper, we consider nonparametric estimation for dependent data, where the observations do no...
We investigate nonparametric curve estimation (including density, distribution, hazard, conditional ...
International audienceWe study the nonparametric regression estimation when the explanatory variable...
The fixed design regression model with long-memory errors is considered. The finite-dimensional asym...
AbstractWe investigate nonparametric curve estimation (including density, distribution, hazard, cond...