A case for new neural network smoothness constraints
Machine Learning
2021-07-08 v3 Machine Learning
Abstract
How sensitive should machine learning models be to input changes? We tackle the question of model smoothness and show that it is a useful inductive bias which aids generalization, adversarial robustness, generative modeling and reinforcement learning. We explore current methods of imposing smoothness constraints and observe they lack the flexibility to adapt to new tasks, they don't account for data modalities, they interact with losses, architectures and optimization in ways not yet fully understood. We conclude that new advances in the field are hinging on finding ways to incorporate data, tasks and learning into our definitions of smoothness.
Keywords
Cite
@article{arxiv.2012.07969,
title = {A case for new neural network smoothness constraints},
author = {Mihaela Rosca and Theophane Weber and Arthur Gretton and Shakir Mohamed},
journal= {arXiv preprint arXiv:2012.07969},
year = {2021}
}