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Abstract
Standard MCMC methods can scale poorly to big data settings due to the need to evaluate the likelihood at each iteration. There have been a number of approximate MCMC algorithms that use sub-sampling ideas to reduce this computational burden, but with the drawback that these algorithms no longer target the true posterior distribution. We introduce a new family of Monte Carlo methods based upon a multi-dimensional version of the Zig-Zag process of Bierkens and Roberts (2015), a continuous time piecewise deterministic Markov process. While traditional MCMC methods are reversible by construction (a property which is known to inhibit rapid convergence) the Zig-Zag process offers a flexible non-reversible alternative which we observe to often have favourable convergence properties. We show how the Zig-Zag process can be simulated without discretisation error, and give conditions for the process to be ergodic. Most importantly, we introduce a sub-sampling version of the Zig-Zag process that is an example of an exact approximate scheme, i.e. the resulting approximate process still has the posterior as its stationary distribution. Furthermore, if we use a control-variate idea to reduce the variance of our unbiased estimator, then the Zig-Zag process can be super-efficient: after an initial pre-processing step, essentially independent samples from the posterior distribution are obtained at a computational cost which does not depend on the size of the data.
| Original language | English |
|---|---|
| Pages (from-to) | 1288-1320 |
| Number of pages | 33 |
| Journal | Annals of Statistics |
| Volume | 47 |
| Issue number | 3 |
| DOIs | |
| Publication status | Published - 13/02/2019 |
User-defined Keywords
- stat.CO
- math.PR
- 65C60, 65C05, 62F15, 60J25
Projects
- 1 Finished
-
Intractable Likelihood: New Challenges From Modern Applications (iLike)
Fearnhead, P. (Principal Investigator)
1/01/13 → 30/06/18
Project: Research
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