The work of this thesis focuses upon some nonparametric estimation problems. More precisely, considering kernel estimators of the density, the regression and the conditional mode functions associated to a stationary continuous-time process, we aim at establishing some asymptotic properties while taking a sufficiently general dependency framework for the data as to be easily used in practice. The present manuscript includes four parts. The first one gives the state of the art related to the field of our concern and identifies well our contribution as compared to the existing results in the literature. In the second part, we focus on the kernel density estimation. In a rather general dependency setting, where we use a martingale difference de...
AbstractWe consider kernel density and regression estimation for a wide class of nonlinear time seri...
International audienceWe study a kernel estimator of the conditional mode of a scalar response varia...
Aspects of estimation of the (marginal) probability density for a stationary sequence or continuous ...
The work this thesis focuses on the choice of the smoothing parameter in the context of non-parametr...
AbstractIn order to construct confidence sets for a marginal density f of a strictly stationary cont...
: We analyze the asymptotic behaviour of kernel estimators provided the underlying regression funct...
In this thesis, we propose to study some functional parameters when the data are generated from a mo...
The main purpose of this thesis concerns the problem of spatial prediction using some nonparametric ...
The present PhD deals with nonparametric regression using repeated measurements data. On the one han...
Les travaux de cette thèse portent sur le choix du paramètre de lissage dans le problème de l'estima...
AbstractLet X1,…,Xn be n consecutive observations of a linear process X1=μ+∑r=0∞ArZt−r, where μ is a...
This thesis consists of five papers (Papers A-E) treating problems in non-parametric statistics, esp...
Mention Très HonorableIn a first part, the aim is to predict, in the sense of forecasting, a future ...
Nonparametric kernel estimation of density and conditional mean is widely used, but many of the poin...
This paper studies the nonparametric regression estimation and the prediction problem for continuous...
AbstractWe consider kernel density and regression estimation for a wide class of nonlinear time seri...
International audienceWe study a kernel estimator of the conditional mode of a scalar response varia...
Aspects of estimation of the (marginal) probability density for a stationary sequence or continuous ...
The work this thesis focuses on the choice of the smoothing parameter in the context of non-parametr...
AbstractIn order to construct confidence sets for a marginal density f of a strictly stationary cont...
: We analyze the asymptotic behaviour of kernel estimators provided the underlying regression funct...
In this thesis, we propose to study some functional parameters when the data are generated from a mo...
The main purpose of this thesis concerns the problem of spatial prediction using some nonparametric ...
The present PhD deals with nonparametric regression using repeated measurements data. On the one han...
Les travaux de cette thèse portent sur le choix du paramètre de lissage dans le problème de l'estima...
AbstractLet X1,…,Xn be n consecutive observations of a linear process X1=μ+∑r=0∞ArZt−r, where μ is a...
This thesis consists of five papers (Papers A-E) treating problems in non-parametric statistics, esp...
Mention Très HonorableIn a first part, the aim is to predict, in the sense of forecasting, a future ...
Nonparametric kernel estimation of density and conditional mean is widely used, but many of the poin...
This paper studies the nonparametric regression estimation and the prediction problem for continuous...
AbstractWe consider kernel density and regression estimation for a wide class of nonlinear time seri...
International audienceWe study a kernel estimator of the conditional mode of a scalar response varia...
Aspects of estimation of the (marginal) probability density for a stationary sequence or continuous ...