
Asymptotic efficiency of semiparametric two-step GMM
Author(s) -
Jinyong Hahn,
Daniel A. Ackerberg,
Xiaohong Chen
Publication year - 2014
Language(s) - English
Resource type - Reports
DOI - 10.1920/wp.cem.2014.2814
Subject(s) - semiparametric model , semiparametric regression , mathematics , econometrics , computer science , nonparametric statistics
Many structural economics models are semiparametric ones in which the unknown nuisance functions are identified via nonparametric conditional moment restrictions with possibly nonnested or overlapping conditioning sets, and the finite dimensional parameters of interest are over-identified via unconditional moment restrictions involving the nuisance functions. In this paper we characterize the semiparametric efficiency bound for this class of models. We show that semiparametric two-step optimally weighted GMMestimators achieve the efficiency bound, where the nuisance functions could be estimated via any consistent nonparametric methods in the first step. Regardless of whether the efficiency bound has a closed form expression or not, we provide easy-to-compute sieve based optimal weight matrices that lead to asymptotically efficient two-step GMM estimators