Entropy (Aug 2021)

The Information Loss of a Stochastic Map

  • James Fullwood,
  • Arthur J. Parzygnat

DOI
https://doi.org/10.3390/e23081021
Journal volume & issue
Vol. 23, no. 8
p. 1021

Abstract

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We provide a stochastic extension of the Baez–Fritz–Leinster characterization of the Shannon information loss associated with a measure-preserving function. This recovers the conditional entropy and a closely related information-theoretic measure that we call conditional information loss. Although not functorial, these information measures are semi-functorial, a concept we introduce that is definable in any Markov category. We also introduce the notion of an entropic Bayes’ rule for information measures, and we provide a characterization of conditional entropy in terms of this rule.

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