Affiliation:
1. Department of Statistics University of Auckland Auckland New Zealand
Abstract
SummaryAs complex‐survey data become more widely used in health and social science research, there is increasing interest in fitting a wider range of regression models. We describe an implementation of two‐level linear mixed models in R using the pairwise composite likelihood approach of Rao and co‐workers. We discuss the computational efficiency of pairwise composite likelihood and compare the estimator to the existing sequential pseudolikelihood estimator in simulations and in data from the Programme for International Student Assessment (PISA) educational survey.
Funder
Royal Society Te Apārangi
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