Abstract
Qualitative and quantitative orbital properties such as bonding/antibonding character, localization, and orbital energies are critical to how chemists understand reactivity, catalysis, and excited-state behavior. Despite this, representations of orbitals in deep learning models have been very underdeveloped relative to representations of molecular geometries and Hamiltonians. Here, we apply state-of-the-art equivariant deep learning architectures to the task of assigning global labels to orbitals, namely energies and characterizations, given the molecular coefficients from Hartree-Fock or density functional theory. The architecture we have developed, the Cartesian Equivariant Orbital Network CEONet, shows how molecular orbital coefficients are readily featurized as equivariant node features common to all graph-based machine learned potentials. We find that CEONet performs well at predicting difficult quantitative labels such as the orbital energy. Furthermore, we find that the CEONet representation provides an intuitive latent space for differentiating orbital character for the qualitative assignment of e.g. bonding or antibonding character. In addition to providing a useful representation for further integrating deep learning with electronic structure theory, we expect CEONet to be useful for automatizing and interpreting the results of advanced electronic structure methods such as complete active space self-consistent field theory.
Supplementary materials
Title
Supporting Information
Description
Brief supporting information on error of CEONet and different models used
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