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Limit theorems for sequential MCMC methods

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journal contribution
posted on 2020-08-24, 09:28 authored by Axel Finke, Arnaud Doucet, Adam M Johansen
Both sequential Monte Carlo (SMC) methods (a.k.a. ‘particle filters’) and sequential Markov chain Monte Carlo (sequential MCMC) methods constitute classes of algorithms which can be used to approximate expectations with respect to (a sequence of) probability distributions and their normalising constants. While SMC methods sample particles conditionally independently at each time step, sequential MCMC methods sample particles according to a Markov chain Monte Carlo (MCMC) kernel. Introduced over twenty years ago in [6], sequential MCMC methods have attracted renewed interest recently as they empirically outperform SMC methods in some applications. We establish an Lr-inequality (which implies a strong law of large numbers) and a central limit theorem for sequential MCMC methods and provide conditions under which errors can be controlled uniformly in time. In the context of state-space models, we also provide conditions under which sequential MCMC methods can indeed outperform standard SMC methods in terms of asymptotic variance of the corresponding Monte Carlo estimators.

Funding

Lloyd’s Register Foundation–Alan Turing Institute Programme on Data-Centric Engineering.

History

School

  • Science

Department

  • Mathematical Sciences

Published in

Advances in Applied Probability

Volume

52

Issue

2

Pages

377 - 403

Publisher

Cambridge University Press

Version

  • AM (Accepted Manuscript)

Rights holder

© Applied Probability Trust

Publisher statement

This article has been published in a revised form in Advances in Applied Probability https://doi.org/10.1017/apr.2020.9. This version is published under a Creative Commons CC-BY-NC-ND. No commercial re-distribution or re-use allowed. Derivative works cannot be distributed. © Applied Probability Trust.

Publication date

2020-07-15

Copyright date

2020

ISSN

0001-8678

eISSN

1475-6064

Language

  • en

Depositor

Axel Finke. Deposit date: 22 August 2020