In this paper, we investigate the problem of nonparametrically estimating a conditional quantile function with mixed discrete and continuous covariates. A local linear smoothing technique combining both continuous and discrete kernel functions is introduced to estimate the conditional quantile function. We propose using a fully data-driven cross-validation approach to choose the bandwidths, and further derive the asymptotic optimality theory. In addition, we also establish the asymptotic distribution and uniform consistency (with convergence rates) for the local linear conditional quantile estimators with the data-dependent optimal bandwidths. Simulations show that the proposed approach compares well with some existing methods. Finally, an ...
Charlier, Paindaveine, and Saracco (2014) recently introduced a nonparametric estimatorof conditiona...
Abstract: We consider the problem of nonparametrically estimating the conditional quantile function ...
In this article we study nonparametric regression quantile estimation by kernel weighted local linea...
Allowing for the existence of irrelevant covariates, we study the problem of estimating a conditiona...
Socio-economic variables are often measured on a discrete scale or rounded to protect confidentialit...
Abstract: Socio-economic variables are often measured on a discrete scale or rounded to protect conf...
Quantile regression was originally introduced to the statistical community by Koenker and Basset ( [...
The choice of a smoothing parameter or bandwidth is crucial when applying non-parametric regression ...
In this paper, we study the local composite quantile regression estimator for mixed categorical and ...
The nonparametric smoothing technique with mixed discrete and continuous regressors is considered. I...
In the first essay, we investigate the nonlinear quantile regression with mixed discrete and continu...
In this thesis, attention will be mainly focused on the local linear kernel regression quantile esti...
We study the sampling properties of two alternative approaches to estimating the conditional distrib...
We propose a new approach to conditional quantile function estimation that combines both parametric ...
We suggest quantile regression methods for a class of smooth coefficient time series models. We use ...
Charlier, Paindaveine, and Saracco (2014) recently introduced a nonparametric estimatorof conditiona...
Abstract: We consider the problem of nonparametrically estimating the conditional quantile function ...
In this article we study nonparametric regression quantile estimation by kernel weighted local linea...
Allowing for the existence of irrelevant covariates, we study the problem of estimating a conditiona...
Socio-economic variables are often measured on a discrete scale or rounded to protect confidentialit...
Abstract: Socio-economic variables are often measured on a discrete scale or rounded to protect conf...
Quantile regression was originally introduced to the statistical community by Koenker and Basset ( [...
The choice of a smoothing parameter or bandwidth is crucial when applying non-parametric regression ...
In this paper, we study the local composite quantile regression estimator for mixed categorical and ...
The nonparametric smoothing technique with mixed discrete and continuous regressors is considered. I...
In the first essay, we investigate the nonlinear quantile regression with mixed discrete and continu...
In this thesis, attention will be mainly focused on the local linear kernel regression quantile esti...
We study the sampling properties of two alternative approaches to estimating the conditional distrib...
We propose a new approach to conditional quantile function estimation that combines both parametric ...
We suggest quantile regression methods for a class of smooth coefficient time series models. We use ...
Charlier, Paindaveine, and Saracco (2014) recently introduced a nonparametric estimatorof conditiona...
Abstract: We consider the problem of nonparametrically estimating the conditional quantile function ...
In this article we study nonparametric regression quantile estimation by kernel weighted local linea...