The maximum entropy of a metric space

August 29, 2019 Β· Declared Dead Β· πŸ› arXiv.org

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Authors Tom Leinster, Emily Roff arXiv ID 1908.11184 Category math.MG Cross-listed cs.IT, math.CA, math.PR Citations 14 Venue arXiv.org Last Checked 1 month ago
Abstract
We define a one-parameter family of entropies, each assigning a real number to any probability measure on a compact metric space (or, more generally, a compact Hausdorff space with a notion of similarity between points). These entropies generalise the Shannon and RΓ©nyi entropies of information theory. We prove that on any space X, there is a single probability measure maximising all these entropies simultaneously. Moreover, all the entropies have the same maximum value: the maximum entropy of X. As X is scaled up, the maximum entropy grows; its asymptotics determine geometric information about X, including the volume and dimension. We also study the large-scale limit of the maximising measure itself, arguing that it should be regarded as the canonical or uniform measure on X. Primarily we work not with entropy itself but its exponential, called diversity and (in its finite form) used as a measure of biodiversity. Our main theorem was first proved in the finite case by Leinster and Meckes.
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