Uniform lower bounds on the dimension of Bernoulli convolutions
Abstract
In this note we present an algorithm to obtain a uniform lower bound on Hausdorff dimension of the stationary measure of an affine iterated function scheme with similarities, the best known example of which is Bernoulli convolution. The Bernoulli convolution measure μλ is the probability measure corresponding to the law of the random variable = Σk=0∞ kλk, where k are i.i.d. random variables assuming values -1 and 1 with equal probability and 12 < λ < 1. In particular, for Bernoulli convolutions we give a uniform lower bound H(μλ) ≥ 0.96399 for all 12<λ<1.
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