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K-nearest-neighbour non-parametric estimation of regression functions in the presence of irrelevant variables

Rui Li and Guan Gong

Econometrics Journal, 2008, vol. 11, issue 2, 396-408

Abstract: We show that when estimating a non-parametric regression model, the k-nearest-neighbour non-parametric estimation method has the ability to remove irrelevant variables provided one uses a product weight function with a vector of smoothing parameters, and the least-squares cross-validation method is used to select the smoothing parameters. Simulation results are consistent with our theoretical analysis and show that the performance of the k-nn estimator is comparable to the popular kernel estimator; and it dominates a non-parametric series (spline) estimator when there exist irrelevant regressors. Copyright © 2008 The Author(s). Journal compilation © Royal Economic Society 2008

Date: 2008
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Econometrics Journal is currently edited by Richard J. Smith, Oliver Linton, Pierre Perron, Jaap Abbring and Marius Ooms

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