AbstractIn this paper, we introduce a functional semiparametric model, where a real-valued random variable is explained by the sum of a unknown linear combination of the components of a multivariate random variable and an unknown transformation of a functional random variable. The errors can be autocorrelated. We focus here on the parametric estimation of the coefficients in the linear combination. First, we use a nonparametric kernel method to remove the effect of the functional explanatory variable. Then, we use generalized least squares approach to obtain an estimator of these coefficients. Under some technical assumptions, we prove consistency and asymptotic normality of our estimator. Finally, we present Monte Carlo simulations that il...
AbstractThis paper studies the estimation of a varying-coefficient partially linear regression model...
We introduce a new class of functional generalized linear models, where the response is a scalar and...
In this paper we study nonparametric estimation and hypothesis testing procedures for the functional...
International audienceIn this paper, we introduce a functional semiparametric model, where a real-va...
AbstractIn this paper, we introduce a functional semiparametric model, where a real-valued random va...
It is well-known that the traditional functional regression model is mainly based on the least squar...
This paper is concerned with a semiparametric partially linear regression model with unknown regress...
We propose new tests for the correct specification of functional models in terms of transformed resi...
We consider the partially linear model relating a response Y to predictors (X; T ) with mean functio...
AbstractThe paper is concerned with estimating multivariate linear and autoregressive models using a...
The inferences for semiparametric models with functional data are investigated. We propose an integr...
In this paper, we introduce a new procedure for the estimation in the nonlinear functional regressio...
AbstractWe consider a panel data semiparametric partially linear regression model with an unknown ve...
This paper studies a linear regression model, whose errors are functional coefficient autoregressive...
Abstract: A multivariate semiparametric partial linear model for both fixed and random design cases ...
AbstractThis paper studies the estimation of a varying-coefficient partially linear regression model...
We introduce a new class of functional generalized linear models, where the response is a scalar and...
In this paper we study nonparametric estimation and hypothesis testing procedures for the functional...
International audienceIn this paper, we introduce a functional semiparametric model, where a real-va...
AbstractIn this paper, we introduce a functional semiparametric model, where a real-valued random va...
It is well-known that the traditional functional regression model is mainly based on the least squar...
This paper is concerned with a semiparametric partially linear regression model with unknown regress...
We propose new tests for the correct specification of functional models in terms of transformed resi...
We consider the partially linear model relating a response Y to predictors (X; T ) with mean functio...
AbstractThe paper is concerned with estimating multivariate linear and autoregressive models using a...
The inferences for semiparametric models with functional data are investigated. We propose an integr...
In this paper, we introduce a new procedure for the estimation in the nonlinear functional regressio...
AbstractWe consider a panel data semiparametric partially linear regression model with an unknown ve...
This paper studies a linear regression model, whose errors are functional coefficient autoregressive...
Abstract: A multivariate semiparametric partial linear model for both fixed and random design cases ...
AbstractThis paper studies the estimation of a varying-coefficient partially linear regression model...
We introduce a new class of functional generalized linear models, where the response is a scalar and...
In this paper we study nonparametric estimation and hypothesis testing procedures for the functional...