Monotonic and Robust Neural Networks

ORAL

Abstract

The Lipschitz constant of the map between the input and output space represented by a neural network is a natural metric for assessing the robustness of the model. We present a new method to constrain the Lipschitz constant of dense deep learning models that can also be generalized to other architectures. The method relies on a simple weight normalization scheme during training that ensures the Lipschitz constant of every layer is below an upper limit specified by the analyst. A simple residual connection can then be used to make the model monotonic in any subset of its inputs, which is useful in scenarios where domain knowledge dictates such dependence. Examples can be found in algorithmic fairness requirements or, as presented here, in the classification of the decays of subatomic particles produced at the CERN Large Hadron Collider. Our normalization is minimally constraining and allows the underlying architecture to maintain higher expressiveness compared to other techniques which aim to either control the Lipschitz constant of the model or ensure its monotonicity. We show how the algorithm was used to train a powerful, robust, and interpretable discriminator for heavy-flavor decays in the LHCb real-time data-processing system.

*IAIFI NSF grant PHY-2019786 and NSF grant OAC-2004645

Publication: Machine Learning and the Physical Sciences Workshop at the 35th Conference on Neural Information Processing Systems (NeurIPS)
https://arxiv.org/abs/2112.00038

Presenters

  • Ouail Kitouni

    • Massachusetts Institute of Technology MI

Authors

  • Ouail Kitouni

    • Massachusetts Institute of Technology MI
  • Mike Williams

    • Massachusetts Institute of Technology MIT
  • Niklas Nolte

    • Massachusetts Institute of Technology