In this paper, we study the local composite quantile regression estimator for mixed categorical and continuous data. The local composite quantile estimator is an efficient and safe alternative to the local polynomial method and has been well-studied for continuous covariates. Generalization of the local composite quantile regression estimator to a flexible data structure is appealing to practitioners as empirical studies often encounter categorical data. Furthermore, we study the theoretical properties of the cross-validated bandwidth selection for the local composite quantile estimator. Under mild conditions, we derive the rates of convergence of the cross-validated smoothing parameters to their optimal benchmark values for both categorica...
Conditional quantile curves provide a comprehensive picture of a response contingent on explanatory ...
In this thesis, attention will be mainly focused on the local linear kernel regression quantile esti...
We propose a new approach to conditional quantile function estimation that combines both parametric ...
In this paper, we study the local composite quantile regression estimator for mixed categorical and ...
Local polynomial regression is a useful non-parametric regression tool to explore fine data structur...
Estimating derivatives is of primary interest as it quantitatively measures the rate of change of th...
Local composite quantile regression smoothing: an efficient and safe alternative to local polynomial...
In this paper, we investigate the problem of nonparametrically estimating a conditional quantile fun...
Abstract: Local linear kernel methods have been shown to dominate local constant methods for the non...
© 2018 Elsevier B.V. The composite quantile estimator is a robust and efficient alternative to the l...
In this article we study nonparametric regression quantile estimation by kernel weighted local linea...
The choice of a smoothing parameter or bandwidth is crucial when applying non-parametric regression ...
Quantile regression is a technique to estimate conditional quantile curves. It pro-vides a comprehen...
We introduce the local composite quantile regression (LCQR) to causal inference in regression discon...
Abstract: We consider the problem of nonparametrically estimating the conditional quantile function ...
Conditional quantile curves provide a comprehensive picture of a response contingent on explanatory ...
In this thesis, attention will be mainly focused on the local linear kernel regression quantile esti...
We propose a new approach to conditional quantile function estimation that combines both parametric ...
In this paper, we study the local composite quantile regression estimator for mixed categorical and ...
Local polynomial regression is a useful non-parametric regression tool to explore fine data structur...
Estimating derivatives is of primary interest as it quantitatively measures the rate of change of th...
Local composite quantile regression smoothing: an efficient and safe alternative to local polynomial...
In this paper, we investigate the problem of nonparametrically estimating a conditional quantile fun...
Abstract: Local linear kernel methods have been shown to dominate local constant methods for the non...
© 2018 Elsevier B.V. The composite quantile estimator is a robust and efficient alternative to the l...
In this article we study nonparametric regression quantile estimation by kernel weighted local linea...
The choice of a smoothing parameter or bandwidth is crucial when applying non-parametric regression ...
Quantile regression is a technique to estimate conditional quantile curves. It pro-vides a comprehen...
We introduce the local composite quantile regression (LCQR) to causal inference in regression discon...
Abstract: We consider the problem of nonparametrically estimating the conditional quantile function ...
Conditional quantile curves provide a comprehensive picture of a response contingent on explanatory ...
In this thesis, attention will be mainly focused on the local linear kernel regression quantile esti...
We propose a new approach to conditional quantile function estimation that combines both parametric ...