The information bottleneck learns spectral properties of dynamical systems

ORAL

Abstract

A common task across the physical sciences is that of model reduction: given a high-dimensional and complex description of a full system, how does one reduce it to a small number of important collective variables? Here we investigate model reduction for dynamical systems using the information bottleneck framework. We show that the optimal compression of a system's state is achieved by encoding spectral properties of its transfer operator. After demonstrating this in analytically-tractable examples, we show our findings hold also in variational compression schemes using experimental fluids data. These results shed light into the latent variables in certain neural network architectures, and show the practical utility of information-based loss functions.

* M.S. acknowledges support from a MRSEC-funded Graduate Research Fellowship (DMR-2011854).

Presenters

  • Matthew Schmitt

    University of Chicago

Authors

  • Matthew Schmitt

    University of Chicago

  • Maciej Koch-Janusz

    Haiqu Inc.

  • Michel Fruchart

    ESPCI, Gulliver, Université PSL, CNRS, Gulliver, ESPCI Paris, Université PSL, CNRS, University of Chicago; ESPCI Paris

  • Daniel Seara

    University of Chicago

  • Vincenzo Vitelli

    University of Chicago