WEIGHTED LIKELIHOOD ESTIMATION UNDER TWO-PHASE SAMPLING

Citation
Takumi Saegusa et Jon A. Wellner, WEIGHTED LIKELIHOOD ESTIMATION UNDER TWO-PHASE SAMPLING, Annals of statistics , 41(1), 2013, pp. 269-295
Journal title
ISSN journal
00905364
Volume
41
Issue
1
Year of publication
2013
Pages
269 - 295
Database
ACNP
SICI code
Abstract
We develop asymptotic theory for weighted likelihood estimators (WLE) under two-phase stratified sampling without replacement. We also consider several variants of WLEs involving estimated weights and calibration. A set of empirical process tools are developed including a Glivenko-Cantelli theorem, a theorem for rates of convergence of M-estimators, and a Donsker theorem for the inverse probability weighted empirical processes under twophase sampling and sampling without replacement at the second phase. Using these general results, we derive asymptotic distributions of the WLE of a finite-dimensional parameter in a general semiparametric model where an estimator of a nuisance parameter is estimable either at regular or nonregular rates. We illustrate these results and methods in the Cox model with right censoring and interval censoring. We compare the methods via their asymptotic variances under both sampling without replacement and the more usual (and easier to analyze) assumption of Bernoulli sampling at the second phase.