COWLES FOUNDATION FOR RESEARCH IN
ECONOMICS Box 208281
COWLES FOUNDATION DISCUSSION PAPER NO. 908R "Asymptotics for Semiparametric Econometric Models: Donald W.K. Andrews May 1990 This paper provides a general framework for proving the square root of T consistency
and asymptotic normality of a wide variety of semiparametric estimators. The results apply
in time series and cross-sectional modeling contexts. The class of estimators considered
consists of estimators that can be defined as the solution to a minimization problem based
on a criterion function that may depend on a preliminary infinite dimensional nuisance
parameter estimator. The criterion function need not be differentiable. The method of
proof exploits results concerning the stochastic equicontinuity or weak convergence of
normalized sums of stochastic processes. JEL Classification: 211 Keywords: Asymptotic normality, empirical process, infinite dimensional nuisance parameter, Lagrange multiplier test, likelihood ratio-like test, nonparametric estimation, semiparametric estimation, semiparametric model, semiparametric test, stochastic equicontinuity, Wald test, weak convergence See CFP 863 |