Ergodicity and Accuracy of Optimal Particle Filters for Bayesian Data Assimilation
David Kelly, Andrew M Stuart

TL;DR
This paper investigates the accuracy and ergodicity of optimal particle filters in Bayesian data assimilation, especially with a small fixed number of particles, providing theoretical insights into their performance without relying on large particle limits.
Contribution
It demonstrates that key accuracy and ergodicity properties are inherited by optimal particle filters for any fixed number of particles, including Gaussianized variants, extending understanding beyond large particle asymptotics.
Findings
Optimal particle filters inherit accuracy and ergodicity properties for fixed particle numbers.
Gaussianized optimal particle filters show favorable theoretical properties compared to standard filters.
Large particle number consistency results are established through recursive distribution updates.
Abstract
For particle filters and ensemble Kalman filters it is of practical importance to understand how and why data assimilation methods can be effective when used with a fixed small number of particles, since for many large-scale applications it is not practical to deploy algorithms close to the large particle limit asymptotic. In this paper we address this question for particle filters and, in particular, study their accuracy (in the small noise limit) and ergodicity (for noisy signal and observation) without appealing to the large particle number limit. We first overview the accuracy and minorization properties for the true filtering distribution, working in the setting of conditional Gaussianity for the dynamics-observation model. We then show that these properties are inherited by optimal particle filters for any fixed number of particles, and use the minorization to establish ergodicity…
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