Maximally predictive ensemble dynamics from data
ORAL
Abstract
We leverage the interplay between microscopic variability and macroscopic order, fundamental to statistical physics, to extract predictive coarse-grained dynamics from data. We define a dynamical state as a sequence of measurements, partition the resulting space, and choose the sequence length to maximize predictive information. We approximate the dynamics of densities in the partitioned space through transfer operators, providing simple, yet accurate, models on multiple scales. The operator spectrum provides a principled means of timescale separation and coarse-graining. Applicable to both deterministic and stochastic systems, we illustrate our approach in the Langevin dynamics of a particle in a double-well potential and the Lorenz system. As an example where the fundamental dynamics are unknown, we consider high-resolution posture measurements of the nematode C. elegans. We show that a long-time (10's of s) ``run’' and ``pirouette’' description of navigation naturally emerges from short-time (10's of ms) posture samples.
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Presenters
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Antonio Carlos Costa
Laboratoire de Physique, École Normale Supérieure Paris
Authors
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Antonio Carlos Costa
Laboratoire de Physique, École Normale Supérieure Paris
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Tosif Ahamed
Lunenfeld-Tanenbaum Research Institute, Lunenfeld-Tanenbaum Research Institute, University of Toronto
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David Jordan
Gurdon Institute, Univeristy of Cambridge
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Greg Stephens
Physics and Astronomy, Vrije Universiteit Amsterdam, Dept. Physics, Vrije University, Vrije Univ (Free Univ), Department of Physics, Vrije Univ (Free Univ)