4.5 Article

Using hierarchical centering to facilitate a reversible jump MCMC algorithm for random effects models

Journal

COMPUTATIONAL STATISTICS & DATA ANALYSIS
Volume 98, Issue -, Pages 79-90

Publisher

ELSEVIER
DOI: 10.1016/j.csda.2015.12.010

Keywords

Combined likelihood; Metropolis-Hastings; Point transect sampling; Random effects; Reparameterization

Funding

  1. Multistate Conservation Grant Program [MS M-1-T-05121213, MS M-2-R-1/F09AP00400]
  2. Wildlife and Sport Fish Restoration Program
  3. US Department of Agriculture (USDA) Farm Service Agency
  4. USDA Natural Resources Conservation Service Conservation Effects Assessment Project
  5. University of St Andrews [EP/C522702/1]
  6. EPSRC, through the National Centre for Statistical Ecology (EPSRC grant) [EP/C522702/1]
  7. EPSRC/NERC [EP/1000917/1]
  8. Engineering and Physical Sciences Research Council [EP/C522702/1] Funding Source: researchfish

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Hierarchical centering has been described as a reparameterization method applicable to random effects models. It has been shown to improve mixing of models in the context of Markov chain Monte Carlo (MCMC) methods. A hierarchical centering approach is proposed for reversible jump MCMC (RJMCMC) chains which builds upon the hierarchical centering methods for MCMC chains and uses them to reparameterize models in an RJMCMC algorithm. Although these methods may be applicable to models with other error distributions, the case is described for a log-linear Poisson model where the expected value A includes fixed effect covariates and a random effect for which normality is assumed with a zero-mean and unknown standard deviation. For the proposed RJMCMC algorithm including hierarchical centering, the models are reparameterized by modeling the mean of the random effect coefficients as a function of the intercept of the lambda model and one or more of the available fixed effect covariates depending on the model. The method is appropriate when fixed-effect covariates are constant within random effect groups. This has an effect on the dynamics of the RJMCMC algorithm and improves model mixing. The methods are applied to a case study of point transects of indigo buntings where, without hierarchical centering, the RJMCMC algorithm had poor mixing and the estimated posterior distribution depended on the starting model. With hierarchical centering on the other hand, the chain moved freely over model and parameter space. These results are confirmed with a simulation study. Hence, the proposed methods should be considered as a regular strategy for implementing models with random effects in RJMCMC algorithms; they facilitate convergence of these algorithms and help avoid false inference on model parameters. (C) 2015 Elsevier B.V. All rights reserved.

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