We present a Group Lasso procedure for generalized linear models (GLMs) and we study the properties of this estimator applied to sparse high-dimensional GLMs. Under general conditions on the covariates and on the joint distribution of the pair covariates, we provide oracle inequalities promoting group sparsity of the covariables. We get convergence rates for the prediction and estimation error and we show the ability of this estimator to recover good sparse approximation of the true model. Then we extend this procedure to the case of an Elastic net penalty. At last we apply these results to the so-called Poisson regression model (the output is modeled as a Poisson process whose intensity relies on a linear combination of the covariables). T...
In this work, we present a novel formulation for efficient estimation of group-sparse regression pro...
In this paper, we are concerned with regression problems where covariates can be grouped in nonoverl...
In the field of high-dimensional statistics, it is commonly assumed that only a small subset of the ...
Nowadays an increasing amount of data is available and we have to deal with models in high dimension...
37 pagesWe consider the problem of estimating a sparse linear regression vector $\beta^*$ under a ga...
17 pagesWe consider the linear regression model with Gaussian error. We estimate the unknown paramet...
We consider the problem of estimating a function f0 in logistic regression model. We propose to esti...
We consider the problem of estimating a function $f_{0}$ in logistic regression model. We propose to...
We define the group lasso estimator for the natural parameters of the exponential families of distri...
We consider the problem of estimating a function f0 in logistic regression model. We propose to esti...
In this paper, we consider the Group Lasso estimator of the covariance matrix of a stochastic proces...
International audienceWe consider the problems of estimation and selection of parameters endowed wit...
We establish estimation and model selection consistency, prediction and estimation bounds and persis...
This paper studies the sensitivity to the observations of the block/group Lasso solution to an overd...
In regression problems where covariates can be naturally grouped, the group Lasso is an attractive m...
In this work, we present a novel formulation for efficient estimation of group-sparse regression pro...
In this paper, we are concerned with regression problems where covariates can be grouped in nonoverl...
In the field of high-dimensional statistics, it is commonly assumed that only a small subset of the ...
Nowadays an increasing amount of data is available and we have to deal with models in high dimension...
37 pagesWe consider the problem of estimating a sparse linear regression vector $\beta^*$ under a ga...
17 pagesWe consider the linear regression model with Gaussian error. We estimate the unknown paramet...
We consider the problem of estimating a function f0 in logistic regression model. We propose to esti...
We consider the problem of estimating a function $f_{0}$ in logistic regression model. We propose to...
We define the group lasso estimator for the natural parameters of the exponential families of distri...
We consider the problem of estimating a function f0 in logistic regression model. We propose to esti...
In this paper, we consider the Group Lasso estimator of the covariance matrix of a stochastic proces...
International audienceWe consider the problems of estimation and selection of parameters endowed wit...
We establish estimation and model selection consistency, prediction and estimation bounds and persis...
This paper studies the sensitivity to the observations of the block/group Lasso solution to an overd...
In regression problems where covariates can be naturally grouped, the group Lasso is an attractive m...
In this work, we present a novel formulation for efficient estimation of group-sparse regression pro...
In this paper, we are concerned with regression problems where covariates can be grouped in nonoverl...
In the field of high-dimensional statistics, it is commonly assumed that only a small subset of the ...