On the Convergence Complexity of Gibbs Samplers for a Family of Simple Bayesian Random Effects Models

被引:2
|
作者
Davis, Bryant [1 ]
Hobert, James P. [1 ]
机构
[1] Univ Florida, Dept Stat, Gainesville, FL 32611 USA
关键词
Convergence rate; Geometric ergodicity; High-dimensional inference; Monte Carlo; Quantitative bound; Spectral gap; Total variation distance; Trace-class operator; Wasserstein distance; MARKOV-CHAIN; QUANTITATIVE BOUNDS; SPECTRAL GAP; WASSERSTEIN; RATES; MCMC;
D O I
10.1007/s11009-020-09808-8
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
The emergence of big data has led to so-called convergence complexity analysis, which is the study of how Markov chain Monte Carlo (MCMC) algorithms behave as the sample size,n, and/or the number of parameters,p, in the underlying data set increase. This type of analysis is often quite challenging, in part because existing results for fixednandpare simply not sharp enough to yield good asymptotic results. One of the first convergence complexity results for an MCMC algorithm on a continuous state space is due to Yang and Rosenthal (2019), who established a mixing time result for a Gibbs sampler (for a simple Bayesian random effects model) that was introduced and studied by Rosenthal (Stat Comput 6:269-275,1996). The asymptotic behavior of the spectral gap of this Gibbs sampler is, however, still unknown. We use a recently developed simulation technique (Qin et al. Electron J Stat 13:1790-1812,2019) to provide substantial numerical evidence that the gap is bounded away from 0 asn -> infinity. We also establish a pair of rigorous convergence complexity results for two different Gibbs samplers associated with a generalization of the random effects model considered by Rosenthal (Stat Comput 6:269-275,1996). Our results show that, under a strong growth condition, the spectral gaps of these Gibbs samplers converge to 1 as the sample size increases.
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页码:1323 / 1351
页数:29
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