We present a greedy method for simultaneously performing local bandwidth selection and variable selection in nonparametric regression. The method starts with a local linear estimator with large bandwidths, and incrementally decreases the bandwidth of variables for which the gradient of the estimator with respect to bandwidth is large. The method—called rodeo (regularization of derivative expectation operator)—conducts a sequence of hypothesis tests to threshold derivatives, and is easy to implement. Under certain assumptions on the regression function and sampling density, it is shown that the rodeo applied to local linear smoothing avoids the curse of dimensionality, achieving near optimal minimax rates of convergence in the number of rele...
This paper is concerned with data-based selection of the bandwidth for a data sharpening estimator i...
When estimating a mean regression function and its derivatives, locally weighted least squares regre...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
We present a greedy method for simultaneously performing local band-width selection and variable sel...
We present a method for simultaneously performing bandwidth selection and variable selection in nonp...
We present a method for simultaneously performing bandwidth selection and variable selection in nonp...
We present a method for nonparametric regression that performs band-width selection and variable sel...
RODEO is a recently developed general strategy for nonparametric estimation based on the regularizat...
We consider the problem of estimating the joint density of a d-dimensional random vector X = (X1,X2,...
<div><p>An open challenge in nonparametric regression is finding fast, computationally efficient app...
Nonparametric estimators are particularly affected by the curse of dimensionality. An interesting me...
We consider the problem of estimating the joint density of a d-dimensional random vec-tor X = (X1,X2...
The local polynomial estimator is particularly affected by the curse of dimensionality, which reduce...
A decisive question in nonparametric smoothing techniques is the choice of the bandwidth or smoothin...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
This paper is concerned with data-based selection of the bandwidth for a data sharpening estimator i...
When estimating a mean regression function and its derivatives, locally weighted least squares regre...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
We present a greedy method for simultaneously performing local band-width selection and variable sel...
We present a method for simultaneously performing bandwidth selection and variable selection in nonp...
We present a method for simultaneously performing bandwidth selection and variable selection in nonp...
We present a method for nonparametric regression that performs band-width selection and variable sel...
RODEO is a recently developed general strategy for nonparametric estimation based on the regularizat...
We consider the problem of estimating the joint density of a d-dimensional random vector X = (X1,X2,...
<div><p>An open challenge in nonparametric regression is finding fast, computationally efficient app...
Nonparametric estimators are particularly affected by the curse of dimensionality. An interesting me...
We consider the problem of estimating the joint density of a d-dimensional random vec-tor X = (X1,X2...
The local polynomial estimator is particularly affected by the curse of dimensionality, which reduce...
A decisive question in nonparametric smoothing techniques is the choice of the bandwidth or smoothin...
In the context of nonparametric regression estimation, the behaviour of kernel methods such as the N...
This paper is concerned with data-based selection of the bandwidth for a data sharpening estimator i...
When estimating a mean regression function and its derivatives, locally weighted least squares regre...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...