We propose an adaptively weighted group Lasso procedure for simultaneous variable selection and structure identification for varying coefficient quantile regression models and additive quantile regression models with ultra-high dimensional covariates. Under a strong sparsity condition, we establish selection consistency of the proposed Lasso procedure when the weights therein satisfy a set of general conditions. This consistency result, however, is reliant on a suitable choice of the tuning parameter for the Lasso penalty, which can be hard to make in practice. To alleviate this difficulty, we suggest a BIC-type criterion, which we call high-dimensional information criterion (HDIC), and show that the proposed Lasso procedure with the tuning...
Sparse group LASSO (SGL) is a penalization technique used in regression problems where the covariate...
In this paper, we consider the problem of variable selection for high-dimensional generalized varyin...
Standard regression analysis investigates the average behavior of a response variable, y, given a ve...
This work involves interquantile identification and variable selection in two semi-parametric quanti...
In regression problems where covariates can be naturally grouped, the group Lasso is an attractive m...
We propose a two-step variable selection procedure for high dimensional quantile regressions, in whi...
We propose a general adaptive LASSO method for a quantile regression model. Our method is very in-te...
International audienceWe propose a general adaptive LASSO method for a quantile regression model. Ou...
International audienceWe propose a general adaptive LASSO method for a quantile regression model. Ou...
Heavy-tailed high-dimensional data are commonly encountered in var-ious scientific fields and pose g...
International audienceWe propose a general adaptive LASSO method for a quantile regression model. Ou...
Sparse group LASSO (SGL) is a penalization technique used in regression problems where the covariate...
Sparse group LASSO (SGL) is a penalization technique used in regression problems where the covariate...
Sparse group LASSO (SGL) is a penalization technique used in regression problems where the covariate...
Over recent years, the state-of-the-art lasso and adaptive lasso have aquired remarkable considerati...
Sparse group LASSO (SGL) is a penalization technique used in regression problems where the covariate...
In this paper, we consider the problem of variable selection for high-dimensional generalized varyin...
Standard regression analysis investigates the average behavior of a response variable, y, given a ve...
This work involves interquantile identification and variable selection in two semi-parametric quanti...
In regression problems where covariates can be naturally grouped, the group Lasso is an attractive m...
We propose a two-step variable selection procedure for high dimensional quantile regressions, in whi...
We propose a general adaptive LASSO method for a quantile regression model. Our method is very in-te...
International audienceWe propose a general adaptive LASSO method for a quantile regression model. Ou...
International audienceWe propose a general adaptive LASSO method for a quantile regression model. Ou...
Heavy-tailed high-dimensional data are commonly encountered in var-ious scientific fields and pose g...
International audienceWe propose a general adaptive LASSO method for a quantile regression model. Ou...
Sparse group LASSO (SGL) is a penalization technique used in regression problems where the covariate...
Sparse group LASSO (SGL) is a penalization technique used in regression problems where the covariate...
Sparse group LASSO (SGL) is a penalization technique used in regression problems where the covariate...
Over recent years, the state-of-the-art lasso and adaptive lasso have aquired remarkable considerati...
Sparse group LASSO (SGL) is a penalization technique used in regression problems where the covariate...
In this paper, we consider the problem of variable selection for high-dimensional generalized varyin...
Standard regression analysis investigates the average behavior of a response variable, y, given a ve...