AbstractThe estimation of a regression function by kernel method for longitudinal or functional data is considered. In the context of longitudinal data analysis, a random function typically represents a subject that is often observed at a small number of time points, while in the studies of functional data the random realization is usually measured on a dense grid. However, essentially the same methods can be applied to both sampling plans, as well as in a number of settings lying between them. In this paper general results are derived for the asymptotic distributions of real-valued functions with arguments which are functionals formed by weighted averages of longitudinal or functional data. Asymptotic distributions for the estimators of th...
International audienceThis work deals with the study of the estimation of the functional regression ...
International audienceWe consider the problem of predicting a real random variable from a functional...
We provide new asymptotic theory for kernel density estimators, when these are applied to autoregres...
We consider kernel estimation of density and regression based on functional data. We prove the stro...
AbstractWe consider the estimation of a regression functional where the explanatory variables take v...
AbstractWe consider a nonparametric regression model where the response Y and the covariate X are bo...
We consider nonparametric regression in a marginal longitudinal data framework. Previous work ([3])...
28 pagesThe main purpose of this work is to estimate the regression function of a real random variab...
AbstractThe aim of this paper is to study asymptotic properties of the kernel regression estimate wh...
International audienceWe study the nonparametric regression estimation when the explanatory variable...
We consider the asymptotic normality in L2 of kernel estimators of the long run covariance of statio...
Functional data analysis is a typical issue in modern statistics. During the last years, many papers...
AbstractThe aim of this work is to introduce a new nonparametric regression technique in the context...
We consider a nonparametric regression model where the response Y and the covariate X are both funct...
The use of principal component methods to analyze functional data is appropriate in a wide range of...
International audienceThis work deals with the study of the estimation of the functional regression ...
International audienceWe consider the problem of predicting a real random variable from a functional...
We provide new asymptotic theory for kernel density estimators, when these are applied to autoregres...
We consider kernel estimation of density and regression based on functional data. We prove the stro...
AbstractWe consider the estimation of a regression functional where the explanatory variables take v...
AbstractWe consider a nonparametric regression model where the response Y and the covariate X are bo...
We consider nonparametric regression in a marginal longitudinal data framework. Previous work ([3])...
28 pagesThe main purpose of this work is to estimate the regression function of a real random variab...
AbstractThe aim of this paper is to study asymptotic properties of the kernel regression estimate wh...
International audienceWe study the nonparametric regression estimation when the explanatory variable...
We consider the asymptotic normality in L2 of kernel estimators of the long run covariance of statio...
Functional data analysis is a typical issue in modern statistics. During the last years, many papers...
AbstractThe aim of this work is to introduce a new nonparametric regression technique in the context...
We consider a nonparametric regression model where the response Y and the covariate X are both funct...
The use of principal component methods to analyze functional data is appropriate in a wide range of...
International audienceThis work deals with the study of the estimation of the functional regression ...
International audienceWe consider the problem of predicting a real random variable from a functional...
We provide new asymptotic theory for kernel density estimators, when these are applied to autoregres...