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Quenched invariance principle for long range random walks in balanced random environments (2007.03391v2)

Published 7 Jul 2020 in math.PR

Abstract: We establish via a probabilistic approach the quenched invariance principle for a class of long range random walks in independent (but not necessarily identically distributed) balanced random environments, with the transition probability from $x$ to $y$ on average being comparable to $|x-y|{-(d+\alpha)}$ with $\alpha\in (0,2]$. We use the martingale property to estimate exit time from balls and establish tightness of the scaled processes, and apply the uniqueness of the martingale problem to identify the limiting process. When $\alpha\in (0,1)$, our approach works even for non-balanced cases. When $\alpha=2$, under a diffusive with the logarithmic perturbation scaling, we show that the limit of scaled processes is a Brownian motion.

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