Some limit results for Markov chains indexed by trees
Peter Czuppon, Peter Pfaffelhuber

TL;DR
This paper establishes a law of large numbers for empirical measures of Markov chains indexed by trees, observed along a random walk, showing convergence to a deterministic measure under certain conditions.
Contribution
It introduces a law of large numbers for tree-indexed Markov chains observed along a random walk, linking the empirical measure convergence to the limit process.
Findings
Empirical measures converge to a deterministic measure as n increases.
Convergence occurs when the random walk on the tree converges to a Feller process.
The limit empirical measure is a delta measure at the law of the limiting process.
Abstract
We consider a sequence of Markov chains with , indexed by the full binary tree , where is the th generation of . In addition, let be a random walk on with and with , arising by observing the Markov chain along the random walk. We present a law of large numbers concerning the empirical measure process where as . Precisely, we show that if for some Feller process…
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Taxonomy
TopicsStochastic processes and statistical mechanics · Mathematical Dynamics and Fractals · Markov Chains and Monte Carlo Methods
