A theoretical comparison of the data augmentation, marginal augmentation and PX-DA algorithms
成果类型:
Article
署名作者:
Hobert, James P.; Marchev, Dobrin
署名单位:
State University System of Florida; University of Florida; City University of New York (CUNY) System; Baruch College (CUNY); City University of New York (CUNY) System; Baruch College (CUNY)
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/009053607000000569
发表日期:
2008
页码:
532-554
关键词:
chain monte-carlo
GIBBS SAMPLER
covariance structure
distributions
CONVERGENCE
schemes
rates
摘要:
The data augmentation (DA) algorithm is a widely used Markov chain Monte Carlo (MCMC) algorithm that is based on a Markov transition density of the form p(x vertical bar x') = integral y fx vertical bar y (x vertical bar y)fY vertical bar X (y vertical bar x') dy, where fX vertical bar Y and fY vertical bar X are conditional densities. The PX-DA and marginal augmentation algorithms of Liu and Wu [J. Amer. Statist. Assoc. 94 (1999) 1264-1274] and Meng and van Dyk [Biometrika 86 (1999) 301-320] are alternatives to DA that often converge much faster and are only slightly more computationally demanding. The transition densities of these alternative algorithms can be written in the form PR (x vertical bar x') = integral Y integral y fX vertical bar Y (x vertical bar y') R(y, dy')fY vertical bar X (y vertical bar x') dy, where R is a Markov transition function on Y. We prove that when R satisfies certain conditions, the MCMC algorithm driven by PR is at least as good as that driven by p in terms of performance in the central limit theorem and in the operator norm sense. These results are brought to bear on a theoretical comparison of the DA, PX-DA and marginal augmentation algorithms. Our focus is on situations where the group structure exploited by Liu and Wu is available. We show that the PX-DA algorithm based on Haar measure is at least as good as any PX-DA algorithm constructed using a proper prior on the group.