Learning Physical Dynamics with Subequivariant Graph Neural Networks
–Neural Information Processing Systems
Graph Neural Networks (GNNs) have become a prevailing tool for learning physical dynamics. However, they still encounter several challenges: 1) Physical laws abide by symmetry, which is a vital inductive bias accounting for model generalization and should be incorporated into the model design. Existing simulators either consider insufficient symmetry, or enforce excessive equivariance in practice when symmetry is partially broken by gravity.
Neural Information Processing Systems
Feb-12-2025, 01:07:53 GMT