Bayesian baseline-category logit random effects models for longitudinal nominal data

Baseline-category logit random effects models have been used to analyze longitudinal nominal data. The models account for subject-specific variations using random effects. However, the random effects covariance matrix in the models needs to explain subject-specific variations as well as serial corre...

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Bibliographic Details
Published inCommunications for statistical applications and methods Vol. 27; no. 2; pp. 201 - 210
Main Authors Kim, Jiyeong, Lee, Keunbaik
Format Journal Article
LanguageKorean
Published 한국통계학회 31.03.2020
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ISSN2287-7843

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Summary:Baseline-category logit random effects models have been used to analyze longitudinal nominal data. The models account for subject-specific variations using random effects. However, the random effects covariance matrix in the models needs to explain subject-specific variations as well as serial correlations for nominal outcomes. In order to satisfy them, the covariance matrix must be heterogeneous and high-dimensional. However, it is difficult to estimate the random effects covariance matrix due to its high dimensionality and positive-definiteness. In this paper, we exploit the modified Cholesky decomposition to estimate the high-dimensional heterogeneous random effects covariance matrix. Bayesian methodology is proposed to estimate parameters of interest. The proposed methods are illustrated with real data from the McKinney Homeless Research Project.
Bibliography:The Korean Statistical Society
KISTI1.1003/JNL.JAKO202010861316917
ISSN:2287-7843