Multi-task learning for electronic structure to predict and explore molecular potential energy surfaces
We refine the OrbNet model to accurately predict energy, forces, and other response properties for molecules using a graph neural-network architecture based on features from low-cost approximated quantum operators in the symmetry-adapted atomic orbital basis. The model is end-to-end differentiable d...
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Zusammenfassung: | We refine the OrbNet model to accurately predict energy, forces, and other
response properties for molecules using a graph neural-network architecture
based on features from low-cost approximated quantum operators in the
symmetry-adapted atomic orbital basis. The model is end-to-end differentiable
due to the derivation of analytic gradients for all electronic structure terms,
and is shown to be transferable across chemical space due to the use of
domain-specific features. The learning efficiency is improved by incorporating
physically motivated constraints on the electronic structure through multi-task
learning. The model outperforms existing methods on energy prediction tasks for
the QM9 dataset and for molecular geometry optimizations on conformer datasets,
at a computational cost that is thousand-fold or more reduced compared to
conventional quantum-chemistry calculations (such as density functional theory)
that offer similar accuracy. |
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DOI: | 10.48550/arxiv.2011.02680 |