JOINT ASYMPTOTICS FOR SEMI-NONPARAMETRIC REGRESSION MODELS WITH PARTIALLY LINEAR STRUCTURE

Citation
Guang Cheng et Zuofeng Shang, JOINT ASYMPTOTICS FOR SEMI-NONPARAMETRIC REGRESSION MODELS WITH PARTIALLY LINEAR STRUCTURE, Annals of statistics , 43(3), 2015, pp. 1351-1390
Journal title
ISSN journal
00905364
Volume
43
Issue
3
Year of publication
2015
Pages
1351 - 1390
Database
ACNP
SICI code
Abstract
We consider a joint asymptotic framework for studying semi-nonparametric regression models where (finite-dimensional) Euclidean parameters and (infinite-dimensional) functional parameters are both of interest. The class of models in consideration share a partially linear structure and are estimated in two general contexts: (i) quasi-likelihood and (ii) true likelihood. We first show that the Euclidean estimator and (pointwise) functional estimator, which are re-scaled at different rates, jointly converge to a zeromean Gaussian vector. This weak convergence result reveals a surprisingyom/asymptotics phenomenon: these two estimators are asymptotically independent. A major goal of this paper is to gain first-hand insights into the above phenomenon. Moreover, a likelihood ratio testing is proposed for a set of joint local hypotheses, where a new version of the Wilks phenomenon [Ann. Math. Stat. 9 (1938) 60-62; Ann. Statist. 1 (2001) 153-193] is unveiled. A novel technical tool, called a joint Bahadur representation, is developed for studying these joint asymptotics results.