‘Generative Adversarial Symmetry Discovery’

“Despite the success of equivariant neural networks in scientific applications, they require knowing the symmetry group a priori. However, it may be difficult to know which symmetry to use as an inductive bias in practice. Enforcing the wrong symmetry could even hurt the performance. In this paper, we propose a framework, LieGAN, to automatically discover equivariances from a dataset using a paradigm akin to generative adversarial training.”

Read the paper and see the full list of authors in ArXiv.

View on Site: ‘Generative Adversarial Symmetry Discovery’
,