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arXiv:0706.1520 [math.PR]AbstractReferencesReviewsResources

On dynamical bit sequences

Davar Khoshnevisan, David A. Levin, Pedro J. Mendez-Hernandez

Published 2007-06-11, updated 2009-06-09Version 2

Let X^{(k)}(t) = (X_1(t), ..., X_k(t)) denote a k-vector of i.i.d. random variables, each taking the values 1 or 0 with respective probabilities p and 1-p. As a process indexed by non-negative t, $X^{(k)}(t)$ is constructed--following Benjamini, Haggstrom, Peres, and Steif (2003)--so that it is strong Markov with invariant measure ((1-p)\delta_0+p\delta_1)^k. We derive sharp estimates for the probability that ``X_1(t)+...+X_k(t)=k-\ell for some t in F,'' where F \subset [0,1] is nonrandom and compact. We do this in two very different settings: (i) Where \ell is a constant; and (ii) Where \ell=k/2, k is even, and p=q=1/2. We prove that the probability is described by the Kolmogorov capacitance of F for case (i) and Howroyd's 1/2-dimensional box-dimension profiles for case (ii). We also present sample-path consequences, and a connection to capacities that answers a question of Benjamini et. al. (2003)

Comments: 25 pages. This a substantial revision of an earlier paper. The material has been reorganized, and Theorem 1.3 is new
Categories: math.PR
Subjects: 60J25, 60J05, 60Fxx, 28A78, 28C20
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