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Large deviations, moment estimates and almost sure invariance principles for skew products with mixing base maps and expanding on the average fibers (2109.11073v3)

Published 22 Sep 2021 in math.DS and math.PR

Abstract: In this paper we show how to apply classical probabilistic tools for partial sums $\sum_{j=0}{n-1}\varphi\circ\tauj$ generated by a skew product $\tau$, built over a sufficiently well mixing base map and a random expanding dynamical system. Under certain regularity assumptions on the observable $\varphi$, we obtain a central limit theorem (CLT) with rates, a functional CLT, an almost sure invariance principle (ASIP), a moderate deviations principle, several exponential concentration inequalities and Rosenthal type moment estimates for skew products with $\alpha, \phi$ or $\psi$ mixing base maps and expanding on the average random fiber maps. All of the results are new even in the uniformly expanding case. The main novelty here (contrary to \cite{ANV}) is that the random maps are not independent, they do not preserve the same measure and the observable $\varphi$ depends also on the base space. For stretched exponentially $\al$-mixing base maps our proofs are based on multiple correlation estimates, which make the classical method of cumulants applicable. For $\phi$ or $\psi$ mixing base maps, we obtain an ASIP and maximal and concentration inequalities by establishing an $L\infty$ convergence of the iterates $\cKn$ of a certain transfer operator $\cK$ with respect to a certain sub-$\sig$-algebra, which yields an appropriate (reverse) martingale-coboundary decomposition.

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