The paper considers functional linear regression, where scalar re- sponses are modeled in dependence of random functions. We propose a smoothing splines estimator for the functional slope parameter based on a slight modification of the usual penalty. Theoretical analysis concentrates on the error in an out-of- sample prediction of the response for a new random function. It is shown that rates of convergence of the prediction error depend on the smoothness of the slope function and on the structure of the predictors. We then prove that these rates are optimal in the sense that they are minimax over large classes of possible slope functions and distributions of the predictive curves. For the case of models with errors-in-variables the smooth...
AbstractWe analyze in a regression setting the link between a scalar response and a functional predi...
In this paper, we propose an adaptive smoothing spline (AdaSS) estimator for the function-on-functio...
In this paper, we propose an adaptive smoothing spline (AdaSS) estimator for the function-on-functio...
We consider functional linear regression where a real variable Y depends on a func-tional variable X...
The article is devoted to a regression setting where both, the response and the predictor, are rando...
In this paper, we propose an adaptive smoothing spline (AdaSS) estimator for the function-on-functio...
In this paper, we propose an adaptive smoothing spline (AdaSS) estimator for the function-on-functio...
Many existing methods for functional regression are based on the minimization of an L2 norm of the r...
We consider the functional linear regression model where the ex-planatory variable is a random surfa...
This thesis presents three novel statistical methods for the robust analysis of functional data and ...
There has been substantial recent work on methods for estimating the slope function in linear regres...
This article introduces free-knot regression spline estimators for the mean and the variance compone...
We consider the estimation of the value of a linear functional of the slope parameter in functional ...
We consider the estimation of the slope function in functional linear regression, where scalar respo...
We analyze in a regression setting the link between a scalar response and a functional predictor by ...
AbstractWe analyze in a regression setting the link between a scalar response and a functional predi...
In this paper, we propose an adaptive smoothing spline (AdaSS) estimator for the function-on-functio...
In this paper, we propose an adaptive smoothing spline (AdaSS) estimator for the function-on-functio...
We consider functional linear regression where a real variable Y depends on a func-tional variable X...
The article is devoted to a regression setting where both, the response and the predictor, are rando...
In this paper, we propose an adaptive smoothing spline (AdaSS) estimator for the function-on-functio...
In this paper, we propose an adaptive smoothing spline (AdaSS) estimator for the function-on-functio...
Many existing methods for functional regression are based on the minimization of an L2 norm of the r...
We consider the functional linear regression model where the ex-planatory variable is a random surfa...
This thesis presents three novel statistical methods for the robust analysis of functional data and ...
There has been substantial recent work on methods for estimating the slope function in linear regres...
This article introduces free-knot regression spline estimators for the mean and the variance compone...
We consider the estimation of the value of a linear functional of the slope parameter in functional ...
We consider the estimation of the slope function in functional linear regression, where scalar respo...
We analyze in a regression setting the link between a scalar response and a functional predictor by ...
AbstractWe analyze in a regression setting the link between a scalar response and a functional predi...
In this paper, we propose an adaptive smoothing spline (AdaSS) estimator for the function-on-functio...
In this paper, we propose an adaptive smoothing spline (AdaSS) estimator for the function-on-functio...