Observations that are realizations of some continuous process are frequently found in science, engineering, economics, and other fields. In this paper, we consider linear models with possible random effects and where the responses are random functions in a suitable Sobolev space. In particular, the processes cannot be observed directly. By using smoothing procedures on the original data, both the response curves and their derivatives can be reconstructed, both as an ensemble and separately. From these reconstructed functions, one representative sample is obtained to estimate the vector of functional parameters. A simulation study shows the benefits of this approach over the common method of using information either on curves or derivatives....
In the functional regression model where the responses are curves new tests for the functional form ...
We propose an estimation approach to analyse correlated functional data, which are observed on unequ...
Functional linear models are useful in longitudinal data analysis. They include many classical and r...
Observations that are realizations of some continuous process are frequently found in science, engin...
We introduce a new model of linear regression for random functional inputs taking into account the f...
In this thesis, we are concerned with data in the form of curves. We study how to estimate the mean ...
International audienceIn some real world applications, such as spectrometry, functional models achie...
National audienceIn some real world applications, functional models achieve better predictive perfor...
Nowadays, with data collecting methods developing rapidly, effectively functional type responses are...
We propose straightforward nonparametric estimators for the mean and the covariance functions of fun...
This thesis presents three novel statistical methods for the robust analysis of functional data and ...
We consider marked empirical processes indexed by a randomly projected functional covariate to const...
AbstractIn the functional regression model where the responses are curves, new tests for the functio...
dissertationThis dissertation is concerned with functional data analysis. Functional data consists o...
Functional regression modelling has become one of the most vibrant areas of research in the last yea...
In the functional regression model where the responses are curves new tests for the functional form ...
We propose an estimation approach to analyse correlated functional data, which are observed on unequ...
Functional linear models are useful in longitudinal data analysis. They include many classical and r...
Observations that are realizations of some continuous process are frequently found in science, engin...
We introduce a new model of linear regression for random functional inputs taking into account the f...
In this thesis, we are concerned with data in the form of curves. We study how to estimate the mean ...
International audienceIn some real world applications, such as spectrometry, functional models achie...
National audienceIn some real world applications, functional models achieve better predictive perfor...
Nowadays, with data collecting methods developing rapidly, effectively functional type responses are...
We propose straightforward nonparametric estimators for the mean and the covariance functions of fun...
This thesis presents three novel statistical methods for the robust analysis of functional data and ...
We consider marked empirical processes indexed by a randomly projected functional covariate to const...
AbstractIn the functional regression model where the responses are curves, new tests for the functio...
dissertationThis dissertation is concerned with functional data analysis. Functional data consists o...
Functional regression modelling has become one of the most vibrant areas of research in the last yea...
In the functional regression model where the responses are curves new tests for the functional form ...
We propose an estimation approach to analyse correlated functional data, which are observed on unequ...
Functional linear models are useful in longitudinal data analysis. They include many classical and r...