AbstractIn this paper we aim to estimate the direction in general single-index models and to select important variables simultaneously when a diverging number of predictors are involved in regressions. Towards this end, we propose the nonconcave penalized inverse regression method. Specifically, the resulting estimation with the SCAD penalty enjoys an oracle property in semi-parametric models even when the dimension, pn, of predictors goes to infinity. Under regularity conditions we also achieve the asymptotic normality when the dimension of predictor vector goes to infinity at the rate of pn=o(n1/3) where n is sample size, which enables us to construct confidence interval/region for the estimated index. The asymptotic results are augmented...
In this paper, we consider quantile regression in additive coefficient models (ACM) with high dimens...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...
We propose penalized empirical likelihood for parameter estimation and variable selection for proble...
Predict a new response from a covariate is a challenging task in regression, which raises new questi...
International audiencePredicting a new response from a covariate is a challenging task in regression...
Since the extreme value index (EVI) controls the tail behaviour of the distribution function, the es...
In this paper, we consider a semiparametric single index regression model involving a real dependent...
International audiencePredicting a new response from a covariate is a challenging task in regression...
We study partially linear single-index models where both model parts may contain high-dimensional va...
We investigate high-dimensional nonconvex penalized regression, where the number of covariates may g...
In this article, we consider a semiparametric single index regression model involving a real depende...
International audienceIn this article, we consider a semiparametric single index regression model in...
Summary. We consider the problem of simultaneous variable selection and estimation in partially line...
In this paper, we consider quantile regression in additive coefficient models (ACM) with high dimens...
National audienceThe goal of this communication is to propose a new approach, called Single-index Ex...
In this paper, we consider quantile regression in additive coefficient models (ACM) with high dimens...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...
We propose penalized empirical likelihood for parameter estimation and variable selection for proble...
Predict a new response from a covariate is a challenging task in regression, which raises new questi...
International audiencePredicting a new response from a covariate is a challenging task in regression...
Since the extreme value index (EVI) controls the tail behaviour of the distribution function, the es...
In this paper, we consider a semiparametric single index regression model involving a real dependent...
International audiencePredicting a new response from a covariate is a challenging task in regression...
We study partially linear single-index models where both model parts may contain high-dimensional va...
We investigate high-dimensional nonconvex penalized regression, where the number of covariates may g...
In this article, we consider a semiparametric single index regression model involving a real depende...
International audienceIn this article, we consider a semiparametric single index regression model in...
Summary. We consider the problem of simultaneous variable selection and estimation in partially line...
In this paper, we consider quantile regression in additive coefficient models (ACM) with high dimens...
National audienceThe goal of this communication is to propose a new approach, called Single-index Ex...
In this paper, we consider quantile regression in additive coefficient models (ACM) with high dimens...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...
We propose penalized empirical likelihood for parameter estimation and variable selection for proble...