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Return times distribution for Markov towers with decay of correlations (1010.1029v2)

Published 5 Oct 2010 in math.DS and math.PR

Abstract: In this paper we prove two results. First we show that dynamical systems with a $\phi$-mixing measure have in the limit Poisson distributed return times almost everywhere. We use the Chen-Stein method to also obtain rates of convergence. Our theorem improves on previous results by allowing for infinite partitions and dropping the requirement that the invariant measure have finite entropy with respect to the given partition. As has been shown elsewhere, the limiting distribution at periodic points is not Poissonian (but compound Poissonian). Here we show that for all non-periodic points the return times are in the limit Poisson distributed. In the second part we prove that Lai-Sang Young's Markov Towers have Poisson distributed return times if the correlations decay for observables that are H\"older continous and $\mathscr{L}\infty$ bounded.

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