Higher-Rank Irreducible Cartesian Tensors for Equivariant Message Passing
About
The ability to perform fast and accurate atomistic simulations is crucial for advancing the chemical sciences. By learning from high-quality data, machine-learned interatomic potentials achieve accuracy on par with ab initio and first-principles methods at a fraction of their computational cost. The success of machine-learned interatomic potentials arises from integrating inductive biases such as equivariance to group actions on an atomic system, e.g., equivariance to rotations and reflections. In particular, the field has notably advanced with the emergence of equivariant message passing. Most of these models represent an atomic system using spherical tensors, tensor products of which require complicated numerical coefficients and can be computationally demanding. Cartesian tensors offer a promising alternative, though state-of-the-art methods lack flexibility in message-passing mechanisms, restricting their architectures and expressive power. This work explores higher-rank irreducible Cartesian tensors to address these limitations. We integrate irreducible Cartesian tensor products into message-passing neural networks and prove the equivariance and traceless property of the resulting layers. Through empirical evaluations on various benchmark data sets, we consistently observe on-par or better performance than that of state-of-the-art spherical and Cartesian models.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Force Prediction | MD17 revised (test) | Force MAE (Aspirin)6.67 | 19 | |
| Interatomic potential modeling | Ta-V-Cr-W 1.0 (Original splits Overall) | E-RMSE (meV/atom)1.38 | 10 | |
| Interatomic potential modeling | Ta-V-Cr-W Deformed Structures (Overall) 1.0 | Energy RMSE (meV/atom)2.65 | 10 | |
| Energy and force prediction | 3BPA (Dihedral slices) | Energy RMSE9.82 | 10 | |
| Interatomic Potential Prediction | MD22 Stachyose (test) | Energy MAE0.053 | 8 | |
| Interatomic Potential Prediction | MD22 Ac-Ala3-NHMe (test) | Energy MAE0.068 | 8 | |
| Interatomic Potential Prediction | MD22 DHA (test) | Energy MAE0.08 | 8 | |
| Interatomic Potential Prediction | MD22 AT-AT (test) | Energy MAE0.057 | 8 | |
| Interatomic Potential Prediction | MD22 AT-AT-CG-CG (test) | Energy MAE0.045 | 8 | |
| Energy Prediction | rMD17 revised (test) | Aspirin Energy14.84 | 8 |