Abstract
AbstractIn this paper we show how to apply classical probabilistic tools for partial sums$\sum _{j=0}^{n-1}\varphi \circ \tau ^j$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 $-mixing base maps and expanding-on-average random fiber maps. All of the results are new even in the uniformly expanding case. The main novelty here (in contrast to [2]) is that the random maps are not independent, they do not preserve the same measure and the observable$\varphi $depends also on the base space. For stretched exponentially${\alpha }$-mixing base maps our proofs are based on multiple correlation estimates, which make the classical method of cumulants applicable. For$\phi $- or$\psi $-mixing base maps, we obtain an ASIP and maximal and concentration inequalities by establishing an$L^\infty $convergence of the iterates${\mathcal K}^{\,n}$of a certain transfer operator${\mathcal K}$with respect to a certain sub-${\sigma }$-algebra, which yields an appropriate (reverse) martingale-coboundary decomposition.
Publisher
Cambridge University Press (CUP)
Subject
Applied Mathematics,General Mathematics