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Cormorant: Covariant Molecular Neural Networks

About

We propose Cormorant, a rotationally covariant neural network architecture for learning the behavior and properties of complex many-body physical systems. We apply these networks to molecular systems with two goals: learning atomic potential energy surfaces for use in Molecular Dynamics simulations, and learning ground state properties of molecules calculated by Density Functional Theory. Some of the key features of our network are that (a) each neuron explicitly corresponds to a subset of atoms; (b) the activation of each neuron is covariant to rotations, ensuring that overall the network is fully rotationally invariant. Furthermore, the non-linearity in our network is based upon tensor products and the Clebsch-Gordan decomposition, allowing the network to operate entirely in Fourier space. Cormorant significantly outperforms competing algorithms in learning molecular Potential Energy Surfaces from conformational geometries in the MD-17 dataset, and is competitive with other methods at learning geometric, energetic, electronic, and thermodynamic properties of molecules on the GDB-9 dataset.

Brandon Anderson, Truong-Son Hy, Risi Kondor• 2019

Related benchmarks

TaskDatasetResultRank
Molecular property predictionQM9 (test)
mu38
174
Molecular property predictionQM9
Cv0.026
70
Molecular property predictionQM9 2014 (test)
Dipole Moment (mu)0.038
20
Property PredictionQM9 random (test)
alpha (bohr^3)0.085
11
Atomization energy predictionQM9 original (test)
MAE (meV)22
11
Molecular property predictionQM9 110K molecules (train)
Dipole Moment (μ)0.038
9
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