Empirical likelihood inference with public-use survey data
Author(s) -
Puying Zhao,
J. N. K. Rao,
Changbao Wu
Publication year - 2020
Publication title -
electronic journal of statistics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.482
H-Index - 54
ISSN - 1935-7524
DOI - 10.1214/20-ejs1726
Subject(s) - empirical likelihood , inference , statistical inference , point estimation , econometrics , survey sampling , sample (material) , mathematics , empirical research , small area estimation , statistics , computer science , estimation , population , data mining , data science , artificial intelligence , estimator , engineering , chemistry , demography , systems engineering , chromatography , sociology
Public-use survey data are an important source of information for researchers in social science and health studies to build statistical models and make inferences on the target finite population. This paper presents two general inferential tools through the pseudo empirical likelihood and the sample empirical likelihood methods. Theoretical results on point estimation and linear or nonlinear hypothesis tests involving parameters defined through estimating equations are established, and practical issues with the implementation of the proposed methods are discussed. Results from simulation studies and an application to the 2016 General Social Survey dataset of Statistics Canada show that the proposed methods work well under different scenarios. The inferential procedures and theoretical results presented in the paper make the empirical likelihood a practically useful tool for users of complex survey data.
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