In this paper, we consider the Group Lasso estimator of the covariance matrix of a stochastic process corrupted by an additive noise. We propose to estimate the covariance matrix in a high-dimensional setting under the assumption that the process has a sparse representation in a large dictionary of basis functions. Using a matrix regression model, we propose a new methodology for high-dimensional covariance matrix estimation based on empirical contrast regularization by a group Lasso penalty. Using such a penalty, the method selects a sparse set of basis functions in the dictionary used to approximate the process, leading to an approximation of the covariance matrix into a low dimensional space. Consistency of the estimator is studied in Fr...
The Lasso is an attractive technique for regularization and variable selection for high-dimensional ...
First part of the thesis focuses on sparse covariance matrices estimation under the scenario of larg...
This paper studies the multi-task high-dimensional linear regression models where the noise among di...
In this paper, we consider the Group Lasso estimator of the covariance matrix of a stochastic proces...
In this paper, we consider the Group Lasso estimator of the covariance matrix of a stochastic proces...
Nowadays an increasing amount of data is available and we have to deal with models in high dimension...
In this work, we present a novel formulation for efficient estimation of group-sparse regression pro...
We present a Group Lasso procedure for generalized linear models (GLMs) and we study the properties ...
This thesis deals with three problems. The first two of the problems are related in that they are co...
We consider high-dimensional estimation of a (possibly sparse) Kronecker-decomposable covariance mat...
High-dimensional datasets, where the number of measured variables is larger than the sample size, ar...
In this paper, we discuss a parsimonious approach to estimation of high-dimensional covariance matri...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
This thesis presents three projects, including adaptive estimation in high-dimensional additive mode...
The Lasso is an attractive technique for regularization and variable selection for high-dimensional ...
First part of the thesis focuses on sparse covariance matrices estimation under the scenario of larg...
This paper studies the multi-task high-dimensional linear regression models where the noise among di...
In this paper, we consider the Group Lasso estimator of the covariance matrix of a stochastic proces...
In this paper, we consider the Group Lasso estimator of the covariance matrix of a stochastic proces...
Nowadays an increasing amount of data is available and we have to deal with models in high dimension...
In this work, we present a novel formulation for efficient estimation of group-sparse regression pro...
We present a Group Lasso procedure for generalized linear models (GLMs) and we study the properties ...
This thesis deals with three problems. The first two of the problems are related in that they are co...
We consider high-dimensional estimation of a (possibly sparse) Kronecker-decomposable covariance mat...
High-dimensional datasets, where the number of measured variables is larger than the sample size, ar...
In this paper, we discuss a parsimonious approach to estimation of high-dimensional covariance matri...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
This thesis presents three projects, including adaptive estimation in high-dimensional additive mode...
The Lasso is an attractive technique for regularization and variable selection for high-dimensional ...
First part of the thesis focuses on sparse covariance matrices estimation under the scenario of larg...
This paper studies the multi-task high-dimensional linear regression models where the noise among di...