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The slow regime of randomly biased walks on trees (1501.07700v3)

Published 30 Jan 2015 in math.PR

Abstract: We are interested in the randomly biased random walk on the supercritical Galton--Watson tree. Our attention is focused on a slow regime when the biased random walk $(X_n)$ is null recurrent, making a maximal displacement of order of magnitude $(\log n)3$ in the first $n$ steps. We study the localization problem of $X_n$ and prove that the quenched law of $X_n$ can be approximated by a certain invariant probability depending on $n$ and the random environment. As a consequence, we establish that upon the survival of the system, $\frac{|X_n|}{(\log n)2}$ converges in law to some non-degenerate limit on $(0, \infty)$ whose law is explicitly computed.

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