Publication | Open Access
Physics-inspired machine learning of localized intensive properties
18
Citations
43
References
2023
Year
EngineeringMachine LearningComputational ChemistryChemistryMolecular ComputingMolecular DesignMany Electronic PropertiesNon-local InteractionData SciencePhysic Aware Machine LearningPhysics-informed Machine LearningBiophysicsComputational Learning TheoryPhysicsPhysical ChemistryMolecular MechanicQuantum ChemistryComputational ScienceLocalized Intensive PropertiesNatural SciencesMolecular PropertyOrbital Weighted AverageMultiscale Modeling
Machine learning (ML) has been widely applied to chemical property prediction, most prominently for the energies and forces in molecules and materials. The strong interest in predicting energies in particular has led to a 'local energy'-based paradigm for modern atomistic ML models, which ensures size-extensivity and a linear scaling of computational cost with system size. However, many electronic properties (such as excitation energies or ionization energies) do not necessarily scale linearly with system size and may even be spatially localized. Using size-extensive models in these cases can lead to large errors. In this work, we explore different strategies for learning intensive and localized properties, using HOMO energies in organic molecules as a representative test case. In particular, we analyze the pooling functions that atomistic neural networks use to predict molecular properties, and suggest an orbital weighted average (OWA) approach that enables the accurate prediction of orbital energies and locations.
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