We propose two novel bandwidth selection procedures for the nonparametric regression model with classical measurement error in the regressors. Each method evaluates the prediction errors of the regression using a second (density) deconvolution. The first approach uses a typical leave-one-out cross-validation criterion, while the second applies a bootstrap approach and the concept of out-of-bag prediction. We show the asymptotic validity of both procedures and compare them to the SIMEX method in a Monte Carlo study. As well as dramatically reducing computational cost, the methods proposed in this article lead to lower mean integrated squared error (MISE) compared to the current state-of-the-art.
机构:
Univ Lille, LEM UMR CNRS 9221, Batiment F,Domaine Univ Pont de Bois,BP 60149, F-59653 Villeneuve Dascq, FranceUniv Lille, LEM UMR CNRS 9221, Batiment F,Domaine Univ Pont de Bois,BP 60149, F-59653 Villeneuve Dascq, France
Dabo-Niang, Sophie
Thiam, Baba
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机构:
Univ Lille, LEM UMR CNRS 9221, Batiment F,Domaine Univ Pont de Bois,BP 60149, F-59653 Villeneuve Dascq, FranceUniv Lille, LEM UMR CNRS 9221, Batiment F,Domaine Univ Pont de Bois,BP 60149, F-59653 Villeneuve Dascq, France