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A Divergence Formula for Randomness and Dimension (0811.1825v1)

Published 12 Nov 2008 in cs.CC, cs.IT, and math.IT

Abstract: If $S$ is an infinite sequence over a finite alphabet $\Sigma$ and $\beta$ is a probability measure on $\Sigma$, then the {\it dimension} of $ S$ with respect to $\beta$, written $\dim\beta(S)$, is a constructive version of Billingsley dimension that coincides with the (constructive Hausdorff) dimension $\dim(S)$ when $\beta$ is the uniform probability measure. This paper shows that $\dim\beta(S)$ and its dual $\Dim\beta(S)$, the {\it strong dimension} of $S$ with respect to $\beta$, can be used in conjunction with randomness to measure the similarity of two probability measures $\alpha$ and $\beta$ on $\Sigma$. Specifically, we prove that the {\it divergence formula} [ \dim\beta(R) = \Dim\beta(R) =\frac{\CH(\alpha)}{\CH(\alpha) + \D(\alpha || \beta)} ] holds whenever $\alpha$ and $\beta$ are computable, positive probability measures on $\Sigma$ and $R \in \Sigma\infty$ is random with respect to $\alpha$. In this formula, $\CH(\alpha)$ is the Shannon entropy of $\alpha$, and $\D(\alpha||\beta)$ is the Kullback-Leibler divergence between $\alpha$ and $\beta$. We also show that the above formula holds for all sequences $R$ that are $\alpha$-normal (in the sense of Borel) when $\dim\beta(R)$ and $\Dim\beta(R)$ are replaced by the more effective finite-state dimensions $\dimfs\beta(R)$ and $\Dimfs\beta(R)$. In the course of proving this, we also prove finite-state compression characterizations of $\dimfs\beta(S)$ and $\Dimfs\beta(S)$.

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