We consider a nonparametric regression model where the response Y and the covariate X are both functional (i.e. valued in some infinite-dimensional space). We define a kernel type estimator of the regression operator and we first establish its pointwise asymptotic normality. The double functional feature of the problem makes the formulas of the asymptotic bias and variance even harder to estimate than in more standard regression settings, and we propose to overcome this difficulty by using resampling ideas. Both a naive and a wild componentwise bootstrap procedure are studied, and their asymptotic validity is proved. These results are also extended to data-driven bases which is a key point for implementing this methodology. The theoretical ...
Regressing nonparametrically a scalar response on a contaminated random curve observed at some measu...
AbstractThe aim of this paper is to study asymptotic properties of the kernel regression estimate wh...
Nonparametric functional regression is of considerable importance due to its impact on the developme...
AbstractWe consider a nonparametric regression model where the response Y and the covariate X are bo...
We consider a nonparametric regression model where the response Y and the covariate X are both funct...
We consider the functional nonparametric regression model Y = r(X)+", where the response Y is univar...
We consider the functional non-parametric regression model Y = r(chi) + epsilon, where the response ...
International audienceWe consider the problem of predicting a real random variable from a functional...
AbstractThe aim of this work is to introduce a new nonparametric regression technique in the context...
The aim of this work is to introduce a new nonparametric regression technique in the context of fun...
International audienceWe study the nonparametric regression estimation when the explanatory variable...
In this paper we present a nonparametric method for extending functional regression methodology to t...
Functional data analysis is a typical issue in modern statistics. During the last years, many papers...
International audienceIn this paper we present a nonparametric method for extending functional regre...
Nonparametric regression methods have been widely studied in functional regression analysis in the c...
Regressing nonparametrically a scalar response on a contaminated random curve observed at some measu...
AbstractThe aim of this paper is to study asymptotic properties of the kernel regression estimate wh...
Nonparametric functional regression is of considerable importance due to its impact on the developme...
AbstractWe consider a nonparametric regression model where the response Y and the covariate X are bo...
We consider a nonparametric regression model where the response Y and the covariate X are both funct...
We consider the functional nonparametric regression model Y = r(X)+", where the response Y is univar...
We consider the functional non-parametric regression model Y = r(chi) + epsilon, where the response ...
International audienceWe consider the problem of predicting a real random variable from a functional...
AbstractThe aim of this work is to introduce a new nonparametric regression technique in the context...
The aim of this work is to introduce a new nonparametric regression technique in the context of fun...
International audienceWe study the nonparametric regression estimation when the explanatory variable...
In this paper we present a nonparametric method for extending functional regression methodology to t...
Functional data analysis is a typical issue in modern statistics. During the last years, many papers...
International audienceIn this paper we present a nonparametric method for extending functional regre...
Nonparametric regression methods have been widely studied in functional regression analysis in the c...
Regressing nonparametrically a scalar response on a contaminated random curve observed at some measu...
AbstractThe aim of this paper is to study asymptotic properties of the kernel regression estimate wh...
Nonparametric functional regression is of considerable importance due to its impact on the developme...