LieGG: Studying Learned Lie Group Generators
Abstract
Symmetries built into a neural network have appeared to be very beneficial for a wide range of tasks as it saves the data to learn them. We depart from the position that when symmetries are not built into a model a priori, it is advantageous for robust networks to learn symmetries directly from the data to fit a task function. In this paper, we present a method to extract symmetries learned by a neural network and to evaluate the degree to which a network is invariant to them. With our method, we are able to explicitly retrieve learned invariances in a form of the generators of corresponding Lie-groups without prior knowledge of symmetries in the data. We use the proposed method to study how symmetrical properties depend on a neural network's parameterization and configuration. We found that the ability of a network to learn symmetries generalizes over a range of architectures. However, the quality of learned symmetries depends on the depth and the number of parameters.
Cite
@article{arxiv.2210.04345,
title = {LieGG: Studying Learned Lie Group Generators},
author = {Artem Moskalev and Anna Sepliarskaia and Ivan Sosnovik and Arnold Smeulders},
journal= {arXiv preprint arXiv:2210.04345},
year = {2023}
}