A1 Journal article (refereed)
Importance sampling type estimators based on approximate marginal Markov chain Monte Carlo (2020)
Vihola, M., Helske, J., & Franks, J. (2020). Importance sampling type estimators based on approximate marginal Markov chain Monte Carlo. Scandinavian Journal of Statistics, 47(4), 1339-1376. https://doi.org/10.1111/sjos.12492
JYU authors or editors
Publication details
All authors or editors: Vihola, Matti; Helske, Jouni; Franks, Jordan
Journal or series: Scandinavian Journal of Statistics
ISSN: 0303-6898
eISSN: 1467-9469
Publication year: 2020
Publication date: 03/09/2020
Volume: 47
Issue number: 4
Pages range: 1339-1376
Publisher: Wiley-Blackwell
Publication country: United Kingdom
Publication language: English
DOI: https://doi.org/10.1111/sjos.12492
Publication open access: Not open
Publication channel open access:
Publication is parallel published (JYX): https://jyx.jyu.fi/handle/123456789/71682
Publication is parallel published: https://arxiv.org/abs/1609.02541
Abstract
We consider importance sampling (IS) type weighted estimators based on Markov chain Monte Carlo (MCMC) targeting an approximate marginal of the target distribution. In the context of Bayesian latent variable models, the MCMC typically operates on the hyperparameters, and the subsequent weighting may be based on IS or sequential Monte Carlo (SMC), but allows for multilevel techniques as well. The IS approach provides a natural alternative to delayed acceptance (DA) pseudo-marginal/particle MCMC, and has many advantages over DA, including a straightforward parallelisation and additional flexibility in MCMC implementation. We detail minimal conditions which ensure strong consistency of the suggested estimators, and provide central limit theorems with expressions for asymptotic variances. We demonstrate how our method can make use of SMC in the state space models context, using Laplace approximations and time-discretised diffusions. Our experimental results are promising and show that the IS type approach can provide substantial gains relative to an analogous DA scheme, and is often competitive even without parallelisation.
Keywords: statistical methods; Bayesian analysis; sampling (statistical methods); estimating (statistical methods); Markov chains; Monte Carlo methods
Free keywords: Markov chain Monte Carlo (MCMC); Bayesian analysis
Contributing organizations
Related projects
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Ministry reporting: Yes
VIRTA submission year: 2020
JUFO rating: 2