| Literature DB >> 33543980 |
Li Li1, Stephan Hoyer1, Ryan Pederson2, Ruoxi Sun1, Ekin D Cubuk1, Patrick Riley1, Kieron Burke2,3.
Abstract
Including prior knowledge is important for effective machine learning models in physics and is usually achieved by explicitly adding loss terms or constraints on model architectures. Prior knowledge embedded in the physics computation itself rarely draws attention. We show that solving the Kohn-Sham equations when training neural networks for the exchange-correlation functional provides an implicit regularization that greatly improves generalization. Two separations suffice for learning the entire one-dimensional H_{2} dissociation curve within chemical accuracy, including the strongly correlated region. Our models also generalize to unseen types of molecules and overcome self-interaction error.Year: 2021 PMID: 33543980 DOI: 10.1103/PhysRevLett.126.036401
Source DB: PubMed Journal: Phys Rev Lett ISSN: 0031-9007 Impact factor: 9.161