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Published November 20, 2012 | Published + Supplemental Material
Journal Article Open

Generalized entropies and logarithms and their duality relations

Abstract

For statistical systems that violate one of the four Shannon–Khinchin axioms, entropy takes a more general form than the Boltzmann–Gibbs entropy. The framework of superstatistics allows one to formulate a maximum entropy principle with these generalized entropies, making them useful for understanding distribution functions of non-Markovian or nonergodic complex systems. For such systems where the composability axiom is violated there exist only two ways to implement the maximum entropy principle, one using escort probabilities, the other not. The two ways are connected through a duality. Here we show that this duality fixes a unique escort probability, which allows us to derive a complete theory of the generalized logarithms that naturally arise from the violation of this axiom. We then show how the functional forms of these generalized logarithms are related to the asymptotic scaling behavior of the entropy.

Additional Information

© 2012 National Academy of Sciences. Freely available online through the PNAS open access option. Contributed by Murray Gell-Mann, September 28, 2012 (sent for review August 6, 2012) R.H. and S.T. thank the Santa Fe Institute and M.G.-M. thanks the Aspen Center for Physics for their hospitality. Support for this work was provided in part by National Science Foundation Grant 1066293, Insight Venture Partners, and the Bryan J. and June B. Zwan Foundation (M.G.-M.). The authors declare no conflict of interest. This article contains supporting information online at www.pnas.org/lookup/suppl/doi:10.1073/pnas.1216885109/-/DCSupplemental.

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