Finite-Time Lyapunov Exponents of Deep Neural Networks
Journal article, 2024

We compute how small input perturbations affect the output of deep neural networks, exploring an analogy between deep feed-forward networks and dynamical systems, where the growth or decay of local perturbations is characterized by finite-time Lyapunov exponents. We show that the maximal exponent forms geometrical structures in input space, akin to coherent structures in dynamical systems. Ridges of large positive exponents divide input space into different regions that the network associates with different classes. These ridges visualize the geometry that deep networks construct in input space, shedding light on the fundamental mechanisms underlying their learning capabilities.

Lyapunov methods

Feedforward neural networks

Differential equations

Lyapunov functions

Deep neural networks

Author

L. Storm

University of Gothenburg

Hampus Linander

Chalmers, Mathematical Sciences, Algebra and geometry

University of Gothenburg

J. Bec

CNRS

Université Paris PSL

K. Gustavsson

University of Gothenburg

Bernhard Mehlig

University of Gothenburg

Physical Review Letters

0031-9007 (ISSN) 1079-7114 (eISSN)

Vol. 132 5 057301

Subject Categories

Computational Mathematics

Information Science

DOI

10.1103/PhysRevLett.132.057301

PubMed

38364126

More information

Latest update

2/16/2024