Nonadditive Entropies Yield Probability Distributions with Biases not Warranted by the Data

Steve Pressé, Kingshuk Ghosh, Julian Lee, and Ken A. Dill
Phys. Rev. Lett. 111, 180604 – Published 1 November 2013

Abstract

Different quantities that go by the name of entropy are used in variational principles to infer probability distributions from limited data. Shore and Johnson showed that maximizing the Boltzmann-Gibbs form of the entropy ensures that probability distributions inferred satisfy the multiplication rule of probability for independent events in the absence of data coupling such events. Other types of entropies that violate the Shore and Johnson axioms, including nonadditive entropies such as the Tsallis entropy, violate this basic consistency requirement. Here we use the axiomatic framework of Shore and Johnson to show how such nonadditive entropy functions generate biases in probability distributions that are not warranted by the underlying data.

  • Received 25 June 2013

DOI:https://doi.org/10.1103/PhysRevLett.111.180604

© 2013 American Physical Society

Authors & Affiliations

Steve Pressé1,*, Kingshuk Ghosh2, Julian Lee3, and Ken A. Dill4

  • 1Indiana University—Purdue University Indianapolis, Indianapolis, Indiana 46202, USA
  • 2Department of Physics and Astronomy, University of Denver, Denver, Colorado 80208, USA
  • 3Department of Bioinformatics and Life Science, Soongsil University, Seoul 156-743, Korea
  • 4Laufer Center for Physical and Quantitative Biology, Stony Brook University, Stony Brook, New York 11794, USA

  • *Corresponding author. stevenpresse@gmail.com

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Issue

Vol. 111, Iss. 18 — 1 November 2013

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