University of Maryland DRUM  
University of Maryland Digital Repository at the University of Maryland

DRUM >
Theses and Dissertations from UM >
UM Theses and Dissertations >

Please use this identifier to cite or link to this item: http://hdl.handle.net/1903/9690

Title: Statistical Inference Based On Estimating Functions in Exact and Misspecified Models
Authors: Janicki, Ryan Louis
Advisors: Kagan, Abram M
Department/Program: Mathematical Statistics
Type: Dissertation
Sponsors: Digital Repository at the University of Maryland
University of Maryland (College Park, Md.)
Keywords: 0463 Statistics
Issue Date: 2009
Abstract: Estimating functions, introduced by Godambe, are a useful tool for constructing estimators. The classical maximum likelihood estimator and the method of moments estimator are special cases of estimators generated as the solution to certain estimating equations. The main advantage of this method is that it does not require knowledge of the full model, but rather of some functionals, such as a number of moments. We define an estimating function <bold>&Psi;</bold> to be a Fisher estimating function if it satisfies E<sub><bold>&theta;</bold></sub>(<bold>&Psi;</bold><bold>&Psi;</bold><super>T</super) = -E<sub><bold>&theta;</bold></sub>(d<bold>&Psi;</bold>/d<bold>&theta;</bold>). The motivation for considering this class of estimating functions is that a Fisher estimating function behaves much like the Fisher score, and the estimators generated as solutions to these estimating equations behave much like maximum likelihood estimators. The estimating functions in this class share some of the same optimality properties as the Fisher score function and they have applications for estimation in submodels, elimination of nuisance parameters, and combinations of independent samples. We give some applications of estimating functions to estimation of a location parameter in the presence of a nuisance scale parameter. We also consider the behavior of estimators generated as solutions to estimating equations under model misspecication when the misspecication is small and can be parameterized. A problem related to model misspecication is attempting to distinguish between a finite number of competing parametric families. We construct an estimator that is consistent and efficient, regardless of which family contains the true distribution.
URI: http://hdl.handle.net/1903/9690
Appears in Collections:UM Theses and Dissertations
Mathematics Theses and Dissertations

Files in This Item:

File Description SizeFormatNo. of Downloads
Janicki_umd_0117E_10581.pdfRESTRICTED ACCESS489.67 kBAdobe PDF0View/Open

All items in DRUM are protected by copyright, with all rights reserved.

 

DRUM is brought to you by the University of Maryland Libraries
University of Maryland, College Park, MD 20742-7011 (301)314-1328.
Please send us your comments. -
All Contents