Electron-Passing Neural Networks for Atomic Charge Prediction in Systems with Arbitrary Molecular Charge

21 September 2020, Version 1
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

Atomic charges are critical quantities in molecular mechanics and molecular dynamics, but obtaining these quantities requires heuristic choices based on atom-typing or relatively expensive quantum mechanical methods to generate a density to be partitioned. Most machine learning efforts in this domain ignore total molecular charges, relying on overfitting and arbitrary rescaling in order to match the total system charge. Here we introduce the electron-passing neural network (EPNN), a fast, accurate neural network atomic charge partitioning model that conserves total molecular charge by construction. EPNNs predict atomic charges very similar to those obtained by partitioning quantum mechanical densities, but at such a small fraction of the cost that they can be easily computed for large biomolecules. Charges from this method may be used directly for molecular mechanics, as features for cheminformatics, or as input to any neural network potential.

Keywords

machine learning
graph neural networks
neural networks
charge transfer
polarization
atomic charge

Supplementary materials

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epnn chemrxiv SI
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