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Global observables for random walks: law of large numbers (1902.11071v2)

Published 28 Feb 2019 in math.PR

Abstract: We consider the sums $T_N=\sum_{n=1}N F(S_n)$ where $S_n$ is a random walk on $\mathbb Zd$ and $F:\mathbb Zd\to \mathbb R$ is a global observable, that is, a bounded function which admits an average value when averaged over large cubes. We show that $T_N$ always satisfies the weak Law of Large Numbers but the strong law fails in general except for one dimensional walks with drift. Under additional regularity assumptions on $F$, we obtain the Strong Law of Large Numbers and estimate the rate of convergence. The growth exponents which we obtain turn out to be optimal in two special cases: for quasiperiodic observables and for random walks in random scenery.

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