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Dynamical independence: Discovering emergent macroscopic processes in complex dynamical systems

Lionel BarnettSussex Centre for Consciousness Science, Department of Informatics, University of Sussex, Falmer, Brighton BN1 9QJ, United KingdomAnil K. SethCanadian Institute for Advanced Research, Program on Brain, Mind, and Consciousness, Toronto, Ontario M5G 1M1, Canada
2023en
ABI

Аннотация

We introduce a notion of emergence for macroscopic variables associated with highly multivariate microscopic dynamical processes. Dynamical independence instantiates the intuition of an emergent macroscopic process as one possessing the characteristics of a dynamical system "in its own right," with its own dynamical laws distinct from those of the underlying microscopic dynamics. We quantify (departure from) dynamical independence by a transformation-invariant Shannon information-based measure of dynamical dependence. We emphasize the data-driven discovery of dynamically independent macroscopic variables, and introduce the idea of a multiscale "emergence portrait" for complex systems. We show how dynamical dependence may be computed explicitly for linear systems in both time and frequency domains, facilitating discovery of emergent phenomena across spatiotemporal scales, and outline application of the linear operationalization to inference of emergence portraits for neural systems from neurophysiological time-series data. We discuss dynamical independence for discrete- and continuous-time deterministic dynamics, with potential application to Hamiltonian mechanics and classical complex systems such as flocking and cellular automata.

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