We introduce a new model of linear regression for random functional inputs taking into account the first-order derivative of the data. We propose an estimation method that comes down to solving a special linear inverse problem. Our procedure tackles the problem through a double and synchronised penalisation. An asymptotic expansion of the mean square prevision error is given. The model and the method are applied to a benchmark dataset of spectrometric curves and compared with other functional models
We consider the problem of estimating the regression function in functional linear regression models...
Abstract. We are interested in the functional linear regression when the covariates are subject to e...
As is known, the regression analysis task is widely used in machine learning problems, which allows ...
We introduce a new model of linear regression for random func-tional inputs taking into account the ...
Observations that are realizations of some continuous process are frequently found in science, engin...
National audienceIn some real world applications, functional models achieve better predictive perfor...
International audienceIn some real world applications, such as spectrometry, functional models achie...
A generalized functional linear regression model is proposed by considering a functional covariate a...
We present a fully automated framework to estimate derivatives nonparametrically without estimating ...
Functional regression modelling has become one of the most vibrant areas of research in the last yea...
We present a fully automated framework to estimate derivatives nonparametrically without esti-mating...
Abstract. We are interested in the functional linear regression when the covariates are subject to e...
International audienceIn some applications, especially spectrometric ones, curve classifiers achieve...
AbstractThis paper investigates the rate of convergence of estimating the regression weight function...
The focus of this paper is the nonparametric estimation of the marginal effects (i.e. first partial ...
We consider the problem of estimating the regression function in functional linear regression models...
Abstract. We are interested in the functional linear regression when the covariates are subject to e...
As is known, the regression analysis task is widely used in machine learning problems, which allows ...
We introduce a new model of linear regression for random func-tional inputs taking into account the ...
Observations that are realizations of some continuous process are frequently found in science, engin...
National audienceIn some real world applications, functional models achieve better predictive perfor...
International audienceIn some real world applications, such as spectrometry, functional models achie...
A generalized functional linear regression model is proposed by considering a functional covariate a...
We present a fully automated framework to estimate derivatives nonparametrically without estimating ...
Functional regression modelling has become one of the most vibrant areas of research in the last yea...
We present a fully automated framework to estimate derivatives nonparametrically without esti-mating...
Abstract. We are interested in the functional linear regression when the covariates are subject to e...
International audienceIn some applications, especially spectrometric ones, curve classifiers achieve...
AbstractThis paper investigates the rate of convergence of estimating the regression weight function...
The focus of this paper is the nonparametric estimation of the marginal effects (i.e. first partial ...
We consider the problem of estimating the regression function in functional linear regression models...
Abstract. We are interested in the functional linear regression when the covariates are subject to e...
As is known, the regression analysis task is widely used in machine learning problems, which allows ...