We propose a two-step variable selection procedure for high dimensional quantile regressions, in which the dimension of the covariates, pn is much larger than the sample size n. In the first step, we perform ℓ1 penalty, and we demonstrate that the first step penalized estimator with the LASSO penalty can reduce the model from an ultra-high dimensional to a model whose size has the same order as that of the true model, and the selected model can cover the true model. The second step excludes the remained irrelevant covariates by applying the adaptive LASSO penalty to the reduced model obtained from the first step. Under some regularity conditions, we show that our procedure enjoys the model selection consistency. We conduct a simulation stud...
Standard regression analysis investigates the average behavior of a response variable, y, given a ve...
The coefficients of a quantile regression model are one-to-one functions of the order of the quantil...
Varying coefficient (VC) models are commonly used to study dynamic patterns in many scientific areas...
We propose an adaptively weighted group Lasso procedure for simultaneous variable selection and stru...
We consider the problem of automatic variable selection in a linear model with asymmetric or heavy-t...
We consider the problem of automatic variable selection in a linear model with asymmetric or heavy-t...
Heavy-tailed high-dimensional data are commonly encountered in var-ious scientific fields and pose g...
We consider the problem of automatic variable selection in a linear model with asymmetric or heavy-t...
We propose a general adaptive LASSO method for a quantile regression model. Our method is very in-te...
This article introduces a quantile penalized regression technique for variable selection and estimat...
This work involves interquantile identification and variable selection in two semi-parametric quanti...
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...
International audienceWe propose a general adaptive LASSO method for a quantile regression model. Ou...
Standard regression analysis investigates the average behavior of a response variable, y, given a ve...
Standard regression analysis investigates the average behavior of a response variable, y, given a ve...
The coefficients of a quantile regression model are one-to-one functions of the order of the quantil...
Varying coefficient (VC) models are commonly used to study dynamic patterns in many scientific areas...
We propose an adaptively weighted group Lasso procedure for simultaneous variable selection and stru...
We consider the problem of automatic variable selection in a linear model with asymmetric or heavy-t...
We consider the problem of automatic variable selection in a linear model with asymmetric or heavy-t...
Heavy-tailed high-dimensional data are commonly encountered in var-ious scientific fields and pose g...
We consider the problem of automatic variable selection in a linear model with asymmetric or heavy-t...
We propose a general adaptive LASSO method for a quantile regression model. Our method is very in-te...
This article introduces a quantile penalized regression technique for variable selection and estimat...
This work involves interquantile identification and variable selection in two semi-parametric quanti...
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...
International audienceWe propose a general adaptive LASSO method for a quantile regression model. Ou...
Standard regression analysis investigates the average behavior of a response variable, y, given a ve...
Standard regression analysis investigates the average behavior of a response variable, y, given a ve...
The coefficients of a quantile regression model are one-to-one functions of the order of the quantil...
Varying coefficient (VC) models are commonly used to study dynamic patterns in many scientific areas...