Lie Group Symmetry Discovery and Enforcement Using Vector Fields
By: Ben Shaw , Sasidhar Kunapuli , Abram Magner and more
Potential Business Impact:
Teaches computers to find hidden patterns faster.
Symmetry-informed machine learning can exhibit advantages over machine learning which fails to account for symmetry. Additionally, recent attention has been given to continuous symmetry discovery using vector fields which serve as infinitesimal generators for Lie group symmetries. In this paper, we extend the notion of non-affine symmetry discovery to functions defined by neural networks. We further extend work in this area by introducing symmetry enforcement of smooth models using vector fields. Finally, we extend work on symmetry discovery using vector fields by providing both theoretical and experimental material on the restriction of the symmetry search space to infinitesimal isometries.
Similar Papers
SO(3)-Equivariant Neural Networks for Learning Vector Fields on Spheres
Machine Learning (CS)
Helps computers understand weather patterns on Earth.
Symmetry-preserving neural networks in lattice field theories
High Energy Physics - Lattice
Teaches computers to understand physics rules better.
Discovering Symbolic Differential Equations with Symmetry Invariants
Machine Learning (CS)
Finds hidden rules of nature in messy data.