Journal article
Pseudo-marginal Hamiltonian Monte Carlo
- Abstract:
- Bayesian inference in the presence of an intractable likelihood function is computationally challenging. When following a Markov chain Monte Carlo (MCMC) approach to approximate the posterior distribution in this context, one typically either uses MCMC schemes which target the joint posterior of the parameters and some auxiliary latent variables, or pseudo-marginal Metropolis—Hastings (MH) schemes. The latter mimic a MH algorithm targeting the marginal posterior of the parameters by approximating unbiasedly the intractable likelihood. However, in scenarios where the parameters and auxiliary variables are strongly correlated under the posterior and/or this posterior is multimodal, Gibbs sampling or Hamiltonian Monte Carlo (HMC) will perform poorly and the pseudo-marginal MH algorithm, as any other MH scheme, will be inefficient for high-dimensional parameters. We propose here an original MCMC algorithm, termed pseudo-marginal HMC, which combines the advantages of both HMC and pseudo-marginal schemes. Specifically, the PM-HMC method is controlled by a precision parameter N, controlling the approximation of the likelihood and, for any N, it samples the marginal posterior of the parameters. Additionally, as N tends to infinity, its sample trajectories and acceptance probability converge to those of an ideal, but intractable, HMC algorithm which would have access to the intractable likelihood and its gradient. We demonstrate through experiments that PM-HMC can outperform significantly both standard HMC and pseudo-marginal MH schemes.
- Publication status:
- Published
- Peer review status:
- Peer reviewed
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- Files:
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(Preview, Accepted manuscript, pdf, 4.1MB, Terms of use)
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- Publication website:
- https://www.jmlr.org/papers/v22/19-486.html
Authors
+ Engineering and Physical Sciences Research Council
More from this funder
- Grant:
- EP/K000276/1
- EP/R013616/1
- 56726
- Publisher:
- Journal of Machine Learning Research
- Journal:
- Journal of Machine Learning Research More from this journal
- Volume:
- 22
- Issue:
- 141
- Pages:
- 1-45
- Publication date:
- 2021-06-21
- Acceptance date:
- 2021-06-14
- EISSN:
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1533-7928
- ISSN:
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1532-4435
- Language:
-
English
- Keywords:
- Pubs id:
-
1182974
- Local pid:
-
pubs:1182974
- Deposit date:
-
2021-06-21
- ARK identifier:
Terms of use
- Copyright holder:
- JMLR
- Copyright date:
- 2021
- Rights statement:
- © JMLR 2021.
- Notes:
- This is the accepted manuscript version of the article. The final version is available from the Journal of Machine Learning Research at: https://www.jmlr.org/papers/v22/19-486.html
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