On MCMC sampling in hierarchical longitudinal models

Siddhartha Chib, Bradley P. Carlin

    Research output: Contribution to journalArticlepeer-review

    132 Scopus citations

    Abstract

    Markov chain Monte Carlo (MCMC) algorithms have revolutionized Bayesian practice. In their simplest form (i.e., when parameters are updated one at a time) they are, however, often slow to converge when applied to high-dimensional statistical models. A remedy for this problem is to block the parameters into groups, which are then updated simultaneously using either a Gibbs or Metropolis-Hastings step. In this paper we construct several (partially and fully blocked) MCMC algorithms for minimizing the autocorrelation in MCMC samples arising from important classes of longitudinal data models. We exploit an identity used by Chib (1995) in the context of Bayes factor computation to show how the parameters in a general linear mixed model may be updated in a single block, improving convergence and producing essentially independent draws from the posterior of the parameters of interest. We also investigate the value of blocking in non-Gaussian mixed models, as well as in a class of binary response data longitudinal models. We illustrate the approaches in detail with three real-data examples.

    Original languageEnglish
    Pages (from-to)17-26
    Number of pages10
    JournalStatistics and Computing
    Volume9
    Issue number1
    DOIs
    StatePublished - 1999

    Keywords

    • Blocking
    • Convergence acceleration
    • Correlated binary data
    • Gibbs sampler
    • Linear mixed model
    • Metropolis-Hastings algorithm
    • Panel data
    • Random effects

    Fingerprint

    Dive into the research topics of 'On MCMC sampling in hierarchical longitudinal models'. Together they form a unique fingerprint.

    Cite this