Nature Communications (Jan 2023)
Electronic excited states in deep variational Monte Carlo
Abstract
Deep neural networks can learn and represent nearly exact electronic ground states. Here, the authors advance this approach to excited states, achieving high accuracy across a range of atoms and molecules, opening up the possibility to model many excited-state processes.