International audienceThe problem of estimating the regression function in a fixed design models with correlated observations is considered. Such observations are obtained from several experimental units, each of them forms a time series. Based on the trapezoidal rule, we propose a simple kernel estimator and we derive the asymptotic expression of its integrated mean squared error IMSE and its asymptotic normality. The problems of the optimal bandwidth and the optimal design with respect to the asymptotic IMSE are also investigated. Finally, a simulation study is conducted to study the performance of the new estimator and to compare it with the classical estimator of Gasser and Müller in a finite sample set. In addition, we study the robust...
We consider the problem of designing experiments for regression in the presence of correlated observ...
Several problems related to estimation, analysis and design with correlated observations are address...
In the common linear regression model the problem of determining op-timal designs for least squares ...
International audienceThe problem of estimating the regression function in a fixed design models wit...
In this paper we investigate the problem of designing experiments for series estimators in nonparame...
International audienceIn this paper, we investigate the problem of estimating the regression functio...
This paper discusses the problem of determining optimal designs for regression models, when the obse...
Automated bandwidth selection methods for nonparametric regression break down in the presence of cor...
We describe an algorithm for the construction of optimum experimental designs for the parameters in ...
Convolution type kernel estimators such as the Priestley-Chao estimator have been discussed by sever...
International audienceWe investigate the nonparametric estimation for regression in a fixed-design s...
This article considers estimation of regression function ff in the fixed design model Y(xi)=f(xi)...
International audienceThe problem of estimating the regression function for a fixed design model is ...
We consider the problem of construction of optimal experimental designs for linear regression models...
Motivated by the problem of setting prediction intervals in time series analysis, this investigation...
We consider the problem of designing experiments for regression in the presence of correlated observ...
Several problems related to estimation, analysis and design with correlated observations are address...
In the common linear regression model the problem of determining op-timal designs for least squares ...
International audienceThe problem of estimating the regression function in a fixed design models wit...
In this paper we investigate the problem of designing experiments for series estimators in nonparame...
International audienceIn this paper, we investigate the problem of estimating the regression functio...
This paper discusses the problem of determining optimal designs for regression models, when the obse...
Automated bandwidth selection methods for nonparametric regression break down in the presence of cor...
We describe an algorithm for the construction of optimum experimental designs for the parameters in ...
Convolution type kernel estimators such as the Priestley-Chao estimator have been discussed by sever...
International audienceWe investigate the nonparametric estimation for regression in a fixed-design s...
This article considers estimation of regression function ff in the fixed design model Y(xi)=f(xi)...
International audienceThe problem of estimating the regression function for a fixed design model is ...
We consider the problem of construction of optimal experimental designs for linear regression models...
Motivated by the problem of setting prediction intervals in time series analysis, this investigation...
We consider the problem of designing experiments for regression in the presence of correlated observ...
Several problems related to estimation, analysis and design with correlated observations are address...
In the common linear regression model the problem of determining op-timal designs for least squares ...