AbstractLocal polynomial methods hold considerable promise for boundary estimation, where they offer unmatched flexibility and adaptivity. Most rival techniques provide only a single order of approximation; local polynomial approaches allow any order desired. Their more conventional rivals, for example high-order kernel methods in the context of regression, do not have attractive versions in the case of boundary estimation. However, the adoption of local polynomial methods for boundary estimation is inhibited by lack of knowledge about their properties, in particular about the manner in which they are influenced by bandwidth; and by the absence of techniques for empirical bandwidth choice. In the present paper we detail the way in which ban...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
Local polynomial methods hold considerable promise for boundary estimation, where they offer unmatch...
A decisive question in nonparametric smoothing techniques is the choice of the bandwidth or smoothin...
The selection of the smoothing parameter represents a crucial step in the local polynomial regressi...
When estimating a mean regression function and its derivatives, locally weighted least squares regre...
When estimating a mean regression function and its derivatives, locally weighted least squares regre...
When estimating a mean regression function and its derivatives, locally weighted least squares regre...
When estimating a mean regression function and its derivatives, locally weighted least squares regre...
AbstractIn this paper, the asymptotic optimality of the cross validation bandwidth selector for the ...
Local polynomial regression is commonly used for estimating regression functions. In practice, howev...
AbstractThe varying-coefficient model is an attractive alternative to the additive and other models....
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
Local polynomial methods hold considerable promise for boundary estimation, where they offer unmatch...
A decisive question in nonparametric smoothing techniques is the choice of the bandwidth or smoothin...
The selection of the smoothing parameter represents a crucial step in the local polynomial regressi...
When estimating a mean regression function and its derivatives, locally weighted least squares regre...
When estimating a mean regression function and its derivatives, locally weighted least squares regre...
When estimating a mean regression function and its derivatives, locally weighted least squares regre...
When estimating a mean regression function and its derivatives, locally weighted least squares regre...
AbstractIn this paper, the asymptotic optimality of the cross validation bandwidth selector for the ...
Local polynomial regression is commonly used for estimating regression functions. In practice, howev...
AbstractThe varying-coefficient model is an attractive alternative to the additive and other models....
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...
The selection of the smoothing parameter represents a crucial step in local polynomial regression, d...