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Home / A unifying framework for marginalized random intercept models of correlated binary outcomes.

A unifying framework for marginalized random intercept models of correlated binary outcomes.

TitleA unifying framework for marginalized random intercept models of correlated binary outcomes.
Publication TypeJournal Article
Year of Publication2014
AuthorsSwihart BJ, Caffo BS, Crainiceanu CM
JournalInt Stat Rev
Volume82
Issue2
Pagination275-295
Date Published2014 Aug
ISSN0306-7734
Abstract

We demonstrate that many current approaches for marginal modeling of correlated binary outcomes produce likelihoods that are equivalent to the copula-based models herein. These general copula models of underlying latent threshold random variables yield likelihood-based models for marginal fixed effects estimation and interpretation in the analysis of correlated binary data with exchangeable correlation structures. Moreover, we propose a nomenclature and set of model relationships that substantially elucidates the complex area of marginalized random intercept models for binary data. A diverse collection of didactic mathematical and numerical examples are given to illustrate concepts.

DOI10.1111/insr.12035
Alternate JournalInt Stat Rev
PubMed ID25342871
PubMed Central IDPMC4203426
Grant ListR01 EB012547 / EB / NIBIB NIH HHS / United States
R01 NS060910 / NS / NINDS NIH HHS / United States
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