A pseudo-marginal sequential Monte Carlo algorithm for random effects models in Bayesian sequential design
Data(s) |
2015
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Resumo |
A computationally efficient sequential Monte Carlo algorithm is proposed for the sequential design of experiments for the collection of block data described by mixed effects models. The difficulty in applying a sequential Monte Carlo algorithm in such settings is the need to evaluate the observed data likelihood, which is typically intractable for all but linear Gaussian models. To overcome this difficulty, we propose to unbiasedly estimate the likelihood, and perform inference and make decisions based on an exact-approximate algorithm. Two estimates are proposed: using Quasi Monte Carlo methods and using the Laplace approximation with importance sampling. Both of these approaches can be computationally expensive, so we propose exploiting parallel computational architectures to ensure designs can be derived in a timely manner. We also extend our approach to allow for model uncertainty. This research is motivated by important pharmacological studies related to the treatment of critically ill patients. |
Formato |
application/pdf |
Identificador | |
Publicador |
Springer |
Relação |
http://eprints.qut.edu.au/77732/4/77732.pdf DOI:10.1007/s11222-015-9596-z McGree, James, Drovandi, Christopher C., White, Gentry, & Pettitt, Anthony N. (2015) A pseudo-marginal sequential Monte Carlo algorithm for random effects models in Bayesian sequential design. Statistics and Computing. (In Press) http://purl.org/au-research/grants/ARC/DP110100159 http://purl.org/au-research/grants/ARC/DP120100269 |
Direitos |
Copyright 2015 Springer |
Fonte |
ARC Centre of Excellence for Mathematical & Statistical Frontiers (ACEMS); School of Mathematical Sciences; Science & Engineering Faculty |
Palavras-Chave | #010400 STATISTICS #Importance Sampling #Laplace approximation #Nonlinear regression #Optimal design #Parallel computing #Particle filter #Quasi Monte Carlo |
Tipo |
Journal Article |