Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

MatrixNet: Learning over symmetry groups using learned group representations

About

Group theory has been used in machine learning to provide a theoretically grounded approach for incorporating known symmetry transformations in tasks from robotics to protein modeling. In these applications, equivariant neural networks use known symmetry groups with predefined representations to learn over geometric input data. We propose MatrixNet, a neural network architecture that learns matrix representations of group element inputs instead of using predefined representations. MatrixNet achieves higher sample efficiency and generalization over several standard baselines in prediction tasks over the several finite groups and the Artin braid group. We also show that MatrixNet respects group relations allowing generalization to group elements of greater word length than in the training set.

Lucas Laird, Circe Hsu, Asilata Bapat, Robin Walters• 2025

Related benchmarks

TaskDatasetResultRank
Braid Action PredictionJordan-Hölder multiplicities Group B3
MSE Epoch 500.002
7
Order predictionS10 order prediction
CE Loss3.00e-4
6
Group order predictionFinite group order prediction (multiple groups)
CE Loss0.03
4
Showing 3 of 3 rows

Other info

Code

Follow for update