| Literature DB >> 23645941 |
Abstract
Many parameters and positive-definiteness are two major obstacles in estimating and modelling a correlation matrix for longitudinal data. In addition, when longitudinal data is incomplete, incorrectly modelling the correlation matrix often results in bias in estimating mean regression parameters. In this paper, we introduce a flexible and parsimonious class of regression models for a covariance matrix parameterized using marginal variances and partial autocorrelations. The partial autocorrelations can freely vary in the interval (-1, 1) while maintaining positive definiteness of the correlation matrix so the regression parameters in these models will have no constraints. We propose a class of priors for the regression coefficients and examine the importance of correctly modeling the correlation structure on estimation of longitudinal (mean) trajectories and the performance of the DIC in choosing the correct correlation model via simulations. The regression approach is illustrated on data from a longitudinal clinical trial.Entities:
Keywords: Generalized linear model; Markov Chain Monte Carlo; Uniform prior
Year: 2013 PMID: 23645941 PMCID: PMC3640593 DOI: 10.1016/j.jmva.2012.11.010
Source DB: PubMed Journal: J Multivar Anal ISSN: 0047-259X Impact factor: 1.473