In more and more applications, a quantity of interest may depend on several covariates, with at least one of them infinite-dimensional (e.g. a curve). To select the relevant covariates in this context, we propose an adaptation of the Lasso method. Two estimation methods are defined. The first one consists in the minimisation of a criterion inspired by classical Lasso inference under group sparsity (Yuan and Lin, 2006; Lounici et al., 2011) on the whole multivariate functional space H. The second one minimises the same criterion but on a finite-dimensional subspace of H which dimension is chosen by a penalized leasts-squares method base on the work of Barron et al. (1999). Sparsity- oracle inequalities are proven in case of fixed or random d...
This thesis consists of three parts. In Chapter 1, we examine existing variable selection methods an...
We consider the linear regression problem. We propose the S-Lasso procedure to estimate the unknown ...
MI: Global COE Program Education-and-Research Hub for Mathematics-for-IndustryグローバルCOEプログラム「マス・フォア・イ...
In more and more applications, a quantity of interest may depend on several covariates, with at leas...
Functional datasets are comprised of data that have been sampled discretely over a continuum, usuall...
The Global COE Program Mathematics-for-Industry Education & Research HubグローバルCOEプログラム「マス・フォア・インダストリ教...
The abundance of available digital big data has created new challenges in identifying relevant varia...
Functional Regression has been an active subject of research in the last two decades but still lack...
In regression problems where covariates can be naturally grouped, the group Lasso is an attractive m...
In this paper, we are concerned with regression problems where covariates can be grouped in nonoverl...
Nonparametric estimators are particularly affected by the curse of dimensionality. An interesting me...
We consider a linear regression problem in a high dimensional setting where the number of covariates...
In this thesis, we consider the linear regression model in the high dimensional setup. In particular...
Recent work has focused on the problem of conducting linear regression when the number of covariates...
With the advancement of technology in data collection, repeated measurements with high dimensional c...
This thesis consists of three parts. In Chapter 1, we examine existing variable selection methods an...
We consider the linear regression problem. We propose the S-Lasso procedure to estimate the unknown ...
MI: Global COE Program Education-and-Research Hub for Mathematics-for-IndustryグローバルCOEプログラム「マス・フォア・イ...
In more and more applications, a quantity of interest may depend on several covariates, with at leas...
Functional datasets are comprised of data that have been sampled discretely over a continuum, usuall...
The Global COE Program Mathematics-for-Industry Education & Research HubグローバルCOEプログラム「マス・フォア・インダストリ教...
The abundance of available digital big data has created new challenges in identifying relevant varia...
Functional Regression has been an active subject of research in the last two decades but still lack...
In regression problems where covariates can be naturally grouped, the group Lasso is an attractive m...
In this paper, we are concerned with regression problems where covariates can be grouped in nonoverl...
Nonparametric estimators are particularly affected by the curse of dimensionality. An interesting me...
We consider a linear regression problem in a high dimensional setting where the number of covariates...
In this thesis, we consider the linear regression model in the high dimensional setup. In particular...
Recent work has focused on the problem of conducting linear regression when the number of covariates...
With the advancement of technology in data collection, repeated measurements with high dimensional c...
This thesis consists of three parts. In Chapter 1, we examine existing variable selection methods an...
We consider the linear regression problem. We propose the S-Lasso procedure to estimate the unknown ...
MI: Global COE Program Education-and-Research Hub for Mathematics-for-IndustryグローバルCOEプログラム「マス・フォア・イ...