English

Lipschitz Bounded Equilibrium Networks

Machine Learning 2020-10-06 v1 Computer Vision and Pattern Recognition Systems and Control Systems and Control Optimization and Control Machine Learning

Abstract

This paper introduces new parameterizations of equilibrium neural networks, i.e. networks defined by implicit equations. This model class includes standard multilayer and residual networks as special cases. The new parameterization admits a Lipschitz bound during training via unconstrained optimization: no projections or barrier functions are required. Lipschitz bounds are a common proxy for robustness and appear in many generalization bounds. Furthermore, compared to previous works we show well-posedness (existence of solutions) under less restrictive conditions on the network weights and more natural assumptions on the activation functions: that they are monotone and slope restricted. These results are proved by establishing novel connections with convex optimization, operator splitting on non-Euclidean spaces, and contracting neural ODEs. In image classification experiments we show that the Lipschitz bounds are very accurate and improve robustness to adversarial attacks.

Keywords

Cite

@article{arxiv.2010.01732,
  title  = {Lipschitz Bounded Equilibrium Networks},
  author = {Max Revay and Ruigang Wang and Ian R. Manchester},
  journal= {arXiv preprint arXiv:2010.01732},
  year   = {2020}
}

Comments

Conference submission, 19 pages

R2 v1 2026-06-23T19:01:35.095Z