Information loss under coarse graining: A geometric approach

ORAL

Abstract

We use information geometry, in which the local distance between models measures their distinguishability from data, to quantify the flow of information under the renormalization group. We show that information about relevant parameters is preserved, with distances along relevant directions maintained under flow. By contrast, irrelevant parameters become less distinguishable under the flow, with distances along irrelevant directions contracting according to renormalization group exponents. We develop a covariant formalism to understand the contraction of the model manifold. We then apply our tools to understand the emergence of the diffusion equation and more general statistical systems described by a free energy. Our results give an information-theoretic justification of universality in terms of the flow of the model manifold under coarse-graining.

*AR and JPS were supported by NSF DMR 1312160 and DMR 1719490. BBM was supported by NSF PHY 0957573 and a Lewis-Sigler Fellowship.

Presenters

  • Archishman Raju

    • Cornell University
    • Centre for Studies in Physics and Biology, Rockefeller University

Authors

  • Archishman Raju

    • Cornell University
    • Centre for Studies in Physics and Biology, Rockefeller University
  • James Patarasp Sethna

    • Cornell University
  • Benjamin Machta

    • Systems Biology Institute, Yale University
    • Yale University
    • Dept. of Physics and Systems Biology Institute, Yale University