We consider the problem of automatic variable selection in a linear model with asymmetric or heavy-tailed errors when the number of explanatory variables diverges with the sample size. For this high-dimensional model, the penalized least square method is not appropriate and the quantile framework makes the inference more difficult because to the non differentiability of the loss function. We propose and study an estimation method by penalizing the expectile process with an adaptive LASSO penalty. Two cases are considered: the number of model parameters is smaller and afterwards larger than the sample size, the two cases being distinct by the adaptive penalties considered. For each case we give the rate convergence and establish the oracle p...
Semiparametric models are particularly useful for high-dimensional regression problems. In this pape...
Semiparametric models are particularly useful for high-dimensional regression problems. In this pape...
International audienceThe paper considers a linear regression model in high-dimension for which the ...
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...
Abstract: We study the asymptotic properties of the adaptive Lasso estimators in sparse, high-dimens...
We propose a two-step variable selection procedure for high dimensional quantile regressions, in whi...
Variable selection is fundamental to high dimensional statistical modeling. In this study, penalized...
In this paper we study the asymptotic properties of the adaptive Lasso estimate in high dimensional ...
High dimensional data are commonly encountered in various scientific fields and pose great challenge...
In many problems involving generalized linear models, the covariates are subject to measurement erro...
International audienceThe paper considers a linear regression model in high-dimension for which the ...
In this paper, we consider the problem of variable selection for high-dimensional generalized varyin...
International audienceThe paper considers a linear regression model in high-dimension for which the ...
Semiparametric models are particularly useful for high-dimensional regression problems. In this pape...
Semiparametric models are particularly useful for high-dimensional regression problems. In this pape...
International audienceThe paper considers a linear regression model in high-dimension for which the ...
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...
Abstract: We study the asymptotic properties of the adaptive Lasso estimators in sparse, high-dimens...
We propose a two-step variable selection procedure for high dimensional quantile regressions, in whi...
Variable selection is fundamental to high dimensional statistical modeling. In this study, penalized...
In this paper we study the asymptotic properties of the adaptive Lasso estimate in high dimensional ...
High dimensional data are commonly encountered in various scientific fields and pose great challenge...
In many problems involving generalized linear models, the covariates are subject to measurement erro...
International audienceThe paper considers a linear regression model in high-dimension for which the ...
In this paper, we consider the problem of variable selection for high-dimensional generalized varyin...
International audienceThe paper considers a linear regression model in high-dimension for which the ...
Semiparametric models are particularly useful for high-dimensional regression problems. In this pape...
Semiparametric models are particularly useful for high-dimensional regression problems. In this pape...
International audienceThe paper considers a linear regression model in high-dimension for which the ...