International audienceIn some real world applications, such as spectrometry, functional models achieve better predictive performances if they work on the derivatives of order m of their inputs rather than on the original functions. As a consequence, the use of derivatives is a common practice in Functional Data Analysis, despite a lack of theoretical guarantees on the asymptotically achievable performances of a derivative based model. In this paper, we show that a smoothing spline approach can be used to preprocess multivariate observations obtained by sampling functions on a discrete and finite sampling grid in a way that leads to a consistent scheme on the original infinite dimensional functional problem. This work extends (Mas and Pumo, ...
This study deals with the simultaneous nonparametric estimations of n curves or observations of a r...
Functional data analyses typically proceed by smoothing, followed by functional PCA. This paradigm i...
We present two methods based on functional principal component analysis (FPCA) for the estimation of...
National audienceIn some real world applications, functional models achieve better predictive perfor...
International audienceIn some applications, especially spectrometric ones, curve classifiers achieve...
Abstract. In some applications, especially spectrometric ones, curve classifiers achieve better perf...
Observations that are realizations of some continuous process are frequently found in science, engin...
This thesis presents three novel statistical methods for the robust analysis of functional data and ...
We introduce a new model of linear regression for random functional inputs taking into account the f...
We consider functional data analysis when the observations at each location are functional rather th...
We consider functional linear regression where a real variable Y depends on a func-tional variable X...
In many situations it is of primary interest to estimate the rate of change of the relationship betw...
peer-reviewedTraditional algorithms for modelling functional data use derivative-based optimisation ...
The sample observations of a functional variable are functions that come from the observation of a ...
The paper considers functional linear regression, where scalar re- sponses are modeled in dependenc...
This study deals with the simultaneous nonparametric estimations of n curves or observations of a r...
Functional data analyses typically proceed by smoothing, followed by functional PCA. This paradigm i...
We present two methods based on functional principal component analysis (FPCA) for the estimation of...
National audienceIn some real world applications, functional models achieve better predictive perfor...
International audienceIn some applications, especially spectrometric ones, curve classifiers achieve...
Abstract. In some applications, especially spectrometric ones, curve classifiers achieve better perf...
Observations that are realizations of some continuous process are frequently found in science, engin...
This thesis presents three novel statistical methods for the robust analysis of functional data and ...
We introduce a new model of linear regression for random functional inputs taking into account the f...
We consider functional data analysis when the observations at each location are functional rather th...
We consider functional linear regression where a real variable Y depends on a func-tional variable X...
In many situations it is of primary interest to estimate the rate of change of the relationship betw...
peer-reviewedTraditional algorithms for modelling functional data use derivative-based optimisation ...
The sample observations of a functional variable are functions that come from the observation of a ...
The paper considers functional linear regression, where scalar re- sponses are modeled in dependenc...
This study deals with the simultaneous nonparametric estimations of n curves or observations of a r...
Functional data analyses typically proceed by smoothing, followed by functional PCA. This paradigm i...
We present two methods based on functional principal component analysis (FPCA) for the estimation of...