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Semiparametric maximum likelihood for regression with measurement error

Semiparametric maximum likelihood analysis allows inference in errors-invariables
models with small loss of efficiency relative to full likelihood analysis but
with significantly weakened assumptions. In addition, since no distributional
assumptions are made for the nuisance parameters, the analysis more nearly
parallels that for usual regression. These highly desirable features and the high
degree of modelling flexibility permitted warrant the development of the approach
for routine use. This thesis does so for the special cases of linear and nonlinear
regression with measurement errors in one explanatory variable. A transparent and
flexible computational approach is developed, the analysis is exhibited on some
examples, and finite sample properties of estimates, approximate standard errors,
and likelihood ratio inference are clarified with simulation. / Graduation date: 2001

Identiferoai:union.ndltd.org:ORGSU/oai:ir.library.oregonstate.edu:1957/32594
Date03 May 2001
CreatorsSuh, Eun-Young
ContributorsSchafer, Daniel W.
Source SetsOregon State University
Languageen_US
Detected LanguageEnglish
TypeThesis/Dissertation

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