
Optimal bandwidth selection for robust generalized method of moments estimation
Author(s) -
Daniel Wilhelm
Publication year - 2014
Language(s) - English
Resource type - Reports
DOI - 10.1920/wp.cem.2014.1514
Subject(s) - selection (genetic algorithm) , bandwidth (computing) , estimation , generalized method of moments , computer science , mathematics , statistics , algorithm , mathematical optimization , artificial intelligence , engineering , telecommunications , estimator , systems engineering
A two-step generalized method of moments estimation procedure can be made robust to heteroskedasticity and autocorrelation in the data by using a nonparametric estimator of the optimal weighting matrix. This paper addresses the issue of choosing the corresponding smoothing parameter (or bandwidth) so that the resulting point estimate is optimal in a certain sense. We derive an asymptotically optimal bandwidth that minimizes a higher-order approximation to the asymptotic meansquared error of the estimator of interest. We show that the optimal bandwidth is of the same order as the one minimizing the mean-squared error of the nonparametric plugin estimator, but the constants of proportionality are significantly different. Finally, we develop a data-driven bandwidth selection rule and show, in a simulation experiment, that it may substantially reduce the estimator's mean-squared error relative to existing bandwidth choices, especially when the number of moment conditions is large