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Data-Driven Refinement of Electronic Energies from Two-Electron Reduced-Density-Matrix Theory.

Grier M JonesRun R LiA Eugene DePrince IiiKonstantinos D Vogiatzis
Published in: The journal of physical chemistry letters (2023)
The exponential computational cost of describing strongly correlated electrons can be mitigated by adopting a reduced-density matrix (RDM)-based description of the electronic structure. While variational two-electron RDM (v2RDM) methods can enable large-scale calculations on such systems, the quality of the solution is limited by the fact that only a subset of known necessary N -representability constraints can be applied to the 2RDM in practical calculations. Here, we demonstrate that violations of partial three-particle (T1 and T2) N -representability conditions, which can be evaluated with knowledge of only the 2RDM, can serve as physics-based features in a machine-learning (ML) protocol for improving energies from v2RDM calculations that consider only two-particle (PQG) conditions. Proof-of-principle calculations demonstrate that the model yields substantially improved energies relative to reference values from configuration-interaction-based calculations.
Keyphrases
  • density functional theory
  • molecular dynamics
  • machine learning
  • molecular dynamics simulations
  • healthcare
  • randomized controlled trial
  • monte carlo
  • deep learning
  • quality improvement
  • big data