• Open Access

Information flow and causality as rigorous notions ab initio

X. San Liang
Phys. Rev. E 94, 052201 – Published 1 November 2016

Abstract

Information flow or information transfer the widely applicable general physics notion can be rigorously derived from first principles, rather than axiomatically proposed as an ansatz. Its logical association with causality is firmly rooted in the dynamical system that lies beneath. The principle of nil causality that reads, an event is not causal to another if the evolution of the latter is independent of the former, which transfer entropy analysis and Granger causality test fail to verify in many situations, turns out to be a proven theorem here. Established in this study are the information flows among the components of time-discrete mappings and time-continuous dynamical systems, both deterministic and stochastic. They have been obtained explicitly in closed form, and put to applications with the benchmark systems such as the Kaplan-Yorke map, Rössler system, baker transformation, Hénon map, and stochastic potential flow. Besides unraveling the causal relations as expected from the respective systems, some of the applications show that the information flow structure underlying a complex trajectory pattern could be tractable. For linear systems, the resulting remarkably concise formula asserts analytically that causation implies correlation, while correlation does not imply causation, providing a mathematical basis for the long-standing philosophical debate over causation versus correlation.

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  • Received 23 June 2016
  • Revised 30 September 2016

DOI:https://doi.org/10.1103/PhysRevE.94.052201

Published by the American Physical Society under the terms of the Creative Commons Attribution 3.0 License. Further distribution of this work must maintain attribution to the author(s) and the published article's title, journal citation, and DOI.

Published by the American Physical Society

Physics Subject Headings (PhySH)

Statistical Physics & ThermodynamicsGeneral PhysicsNetworksNonlinear DynamicsQuantum Information, Science & Technology

Authors & Affiliations

X. San Liang*

  • Nanjing Institute of Meteorology, Nanjing 210044, China and China Institute for Advanced Study, Beijing 100081, China

  • *sanliang@courant.nyu.edu

Article Text

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Issue

Vol. 94, Iss. 5 — November 2016

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