Bayesian analysis of joint mean and covariance models for longitudinal data |
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Authors: | Dengke Xu Zhongzhan Zhang Liucang Wu |
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Affiliation: | 1. Department of Statistics, Zhejiang Agriculture and Forest University, Lin'an 311300, People's Republic of China;2. College of Applied Sciences, Beijing University of Technology, Beijing 100124, People's Republic of China;3. College of Applied Sciences, Beijing University of Technology, Beijing 100124, People's Republic of China;4. Faculty of Science, Kunming University of Science and Technology, Kunming 650500, People's Republic of China |
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Abstract: | Efficient estimation of the regression coefficients in longitudinal data analysis requires a correct specification of the covariance structure. If misspecification occurs, it may lead to inefficient or biased estimators of parameters in the mean. One of the most commonly used methods for handling the covariance matrix is based on simultaneous modeling of the Cholesky decomposition. Therefore, in this paper, we reparameterize covariance structures in longitudinal data analysis through the modified Cholesky decomposition of itself. Based on this modified Cholesky decomposition, the within-subject covariance matrix is decomposed into a unit lower triangular matrix involving moving average coefficients and a diagonal matrix involving innovation variances, which are modeled as linear functions of covariates. Then, we propose a fully Bayesian inference for joint mean and covariance models based on this decomposition. A computational efficient Markov chain Monte Carlo method which combines the Gibbs sampler and Metropolis–Hastings algorithm is implemented to simultaneously obtain the Bayesian estimates of unknown parameters, as well as their standard deviation estimates. Finally, several simulation studies and a real example are presented to illustrate the proposed methodology. |
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Keywords: | joint mean and covariance models Cholesky decomposition Bayesian analysis Gibbs sampler Metropolis–Hastings algorithm |
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