Applying nonparametric variable selection criteria in nonlinear regression models generally requires a substantial computational effort if the data set is large. In this paper we present a selection technique that is computationally much less demanding and performs well in comparison with methods currently available. It is based on a polynomial approximation of the nonlinear model. Performing the selection only requires repeated least squares estimation of models that are linear in parameters. The main limitation of the method is that the number of variables among which to select cannot be very large if the sample is small and the order of an adequate polynomial at the same time is high. Large samples can be handled without problems
Abstract: We propose a method for incorporating variable selection into local polynomial regression....
In this paper, the problem of variable selection is addressed for high-dimensional nonparametric add...
We investigate structured sparsity methods for variable selection in regression problems where the t...
Applying nonparametric variable selection criteria in nonlinear regression models generally requires...
A new algorithm which preselects variables in nonlinear system models is introduced by converting t...
Applying nonparametric variable selection criteria in nonlinear regression models generally requires...
We investigate the finite-sample performance of model selection criteria for local linear regression...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
© 2012 Springer-Verlag London Limited.Our strategy for automatic selection in potentially non-linear...
In this paper we consider a regularization approach to variable selection when the regression functi...
We investigate the finite-sample performance of model selection criteria for local linear regression...
We describe a method for variable selection and classification for a non-parametric regression in hi...
<div><p>In this article, we propose a new data mining algorithm, by which one can both capture the n...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
We propose a new method for input variable selection in nonlinear regression. The method is embedded...
Abstract: We propose a method for incorporating variable selection into local polynomial regression....
In this paper, the problem of variable selection is addressed for high-dimensional nonparametric add...
We investigate structured sparsity methods for variable selection in regression problems where the t...
Applying nonparametric variable selection criteria in nonlinear regression models generally requires...
A new algorithm which preselects variables in nonlinear system models is introduced by converting t...
Applying nonparametric variable selection criteria in nonlinear regression models generally requires...
We investigate the finite-sample performance of model selection criteria for local linear regression...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
© 2012 Springer-Verlag London Limited.Our strategy for automatic selection in potentially non-linear...
In this paper we consider a regularization approach to variable selection when the regression functi...
We investigate the finite-sample performance of model selection criteria for local linear regression...
We describe a method for variable selection and classification for a non-parametric regression in hi...
<div><p>In this article, we propose a new data mining algorithm, by which one can both capture the n...
Our strategy for automatic selection in potentially non-linear processes is: test for non-linearity ...
We propose a new method for input variable selection in nonlinear regression. The method is embedded...
Abstract: We propose a method for incorporating variable selection into local polynomial regression....
In this paper, the problem of variable selection is addressed for high-dimensional nonparametric add...
We investigate structured sparsity methods for variable selection in regression problems where the t...