Conditional ergodicity in infinite dimension
Xin Thomson Tong, Ramon van Handel

TL;DR
This paper develops measure-theoretic methods to establish conditional ergodicity in infinite-dimensional Markov chains, with applications to nonlinear filters, stochastic PDEs, spin systems, and delay equations.
Contribution
It introduces new measure-theoretic tools and local zero-two laws to analyze conditional ergodicity in infinite-dimensional Markov processes, extending classical Harris chain results.
Findings
Established local zero-two laws for infinite-dimensional chains
Proved inheritance of local ergodicity under conditioning
Applied results to stochastic PDEs, spin systems, and delay equations
Abstract
The goal of this paper is to develop a general method to establish conditional ergodicity of infinite-dimensional Markov chains. Given a Markov chain in a product space, we aim to understand the ergodic properties of its conditional distributions given one of the components. Such questions play a fundamental role in the ergodic theory of nonlinear filters. In the setting of Harris chains, conditional ergodicity has been established under general nondegeneracy assumptions. Unfortunately, Markov chains in infinite-dimensional state spaces are rarely amenable to the classical theory of Harris chains due to the singularity of their transition probabilities, while topological and functional methods that have been developed in the ergodic theory of infinite-dimensional Markov chains are not well suited to the investigation of conditional distributions. We must therefore develop new…
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