Limit theorems for the zig-zag process

Journal Article (2017)
Author(s)

Joris Bierkens (TU Delft - Statistics)

Andrew Duncan (Imperial College London)

Research Group
Statistics
Copyright
© 2017 G.N.J.C. Bierkens, Andrew Duncan
DOI related publication
https://doi.org/10.1017/apr.2017.22
More Info
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Publication Year
2017
Language
English
Copyright
© 2017 G.N.J.C. Bierkens, Andrew Duncan
Research Group
Statistics
Issue number
3
Volume number
49
Pages (from-to)
791-825
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Abstract

Markov chain Monte Carlo (MCMC) methods provide an essential tool in statistics for sampling from complex probability distributions. While the standard approach to MCMC involves constructing discrete-time reversible Markov chains whose transition kernel is obtained via the Metropolis-Hastings algorithm, there has been recent interest in alternative schemes based on piecewise deterministic Markov processes (PDMPs). One such approach is based on the zig-zag process, introduced in Bierkens and Roberts (2016), which proved to provide a highly scalable sampling scheme for sampling in the big data regime; see Bierkens et al. (2016). In this paper we study the performance of the zig-zag sampler, focusing on the one-dimensional case. In particular, we identify conditions under which a central limit theorem holds and characterise the asymptotic variance. Moreover, we study the influence of the switching rate on the diffusivity of the zig-zag process by identifying a diffusion limit as the switching rate tends to. Based on our results we compare the performance of the zig-zag sampler to existing Monte Carlo methods, both analytically and through simulations.

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