As sample quantiles can be obtained as maximum likelihood estimates of location parameters in suitable asymmetric Laplace distributions, so kernel estimates of quantiles can be obtained as maximum likelihood estimates of location parameters in a general class of distributions with simple exponential tails. In this paper, this observation is applied to kernel quantile regression. In doing so, a new double kernel local linear quantile regression estimator is obtained which proves to be consistently superior in performance to the earlier double kernel local linear quantile regression estimator proposed by the authors. It is also straightforward to compute and more readily affords a first derivative estimate. An alternative method of selection ...
The choice of a smoothing parameter or bandwidth is crucial when applying non-parametric regression ...
Two popular nonparametric conditional quantile estimation methods, local constant fitting and local ...
Quantile regression was originally introduced to the statistical community by Koenker and Basset ( [...
Summary. As sample quantiles can be obtained as maximum likelihood es-timates of location parameters...
In this article we study nonparametric regression quantile estimation by kernel weighted local linea...
In this thesis, attention will be mainly focused on the local linear kernel regression quantile esti...
We consider non-parametric additive quantile regression estimation by kernel-weighted local linear f...
A new quantile regression concept, based on a directional version of Koenker and Bassett's tradition...
Abstract: A two-step nonparametric regression quantile smoothing technique is presented here, combin...
[[abstract]]The bias of kernel methods based on local constant fits can have an adverse effect when ...
Local kernel estimates and B-spline estimates are considered in the nonparametric regression and the...
We propose two estimators of quantile density function in linear regression model. The estimators, e...
Quantiles are parameters of a distribution, which are of location and of scale character at the same...
Charlier et al. (2015a,b) developed a new nonparametric quantile regression method based on the conc...
Given a scalar random variable Y and a random vector X defined on the same probability space, the co...
The choice of a smoothing parameter or bandwidth is crucial when applying non-parametric regression ...
Two popular nonparametric conditional quantile estimation methods, local constant fitting and local ...
Quantile regression was originally introduced to the statistical community by Koenker and Basset ( [...
Summary. As sample quantiles can be obtained as maximum likelihood es-timates of location parameters...
In this article we study nonparametric regression quantile estimation by kernel weighted local linea...
In this thesis, attention will be mainly focused on the local linear kernel regression quantile esti...
We consider non-parametric additive quantile regression estimation by kernel-weighted local linear f...
A new quantile regression concept, based on a directional version of Koenker and Bassett's tradition...
Abstract: A two-step nonparametric regression quantile smoothing technique is presented here, combin...
[[abstract]]The bias of kernel methods based on local constant fits can have an adverse effect when ...
Local kernel estimates and B-spline estimates are considered in the nonparametric regression and the...
We propose two estimators of quantile density function in linear regression model. The estimators, e...
Quantiles are parameters of a distribution, which are of location and of scale character at the same...
Charlier et al. (2015a,b) developed a new nonparametric quantile regression method based on the conc...
Given a scalar random variable Y and a random vector X defined on the same probability space, the co...
The choice of a smoothing parameter or bandwidth is crucial when applying non-parametric regression ...
Two popular nonparametric conditional quantile estimation methods, local constant fitting and local ...
Quantile regression was originally introduced to the statistical community by Koenker and Basset ( [...