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Bayesian baseline-category logit random effects models for longitudinal nominal dataopen access

Authors
Kim, JiyeongLee, Keunbaik
Issue Date
Mar-2020
Publisher
Korean Statistical SocietyRoom 803, 88, Gasan digital 1-ro, Geumcheon-guSeoul08590office@kss.or.kr
Keywords
covariance matrix; heterogeneous; high-dimensional; modified Cholesky decomposition; positive-definiteness
Citation
Communications for Statistical Applications and Methods, v.27, no.2, pp.201 - 210
Indexed
SCOPUS
KCI
Journal Title
Communications for Statistical Applications and Methods
Volume
27
Number
2
Start Page
201
End Page
210
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/192240
DOI
10.29220/CSAM.2020.27.2.201
ISSN
2287-7843
Abstract
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.
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