Density functionals for surface science: Exchange-correlation model development with Bayesian error estimation
Technical University of Denmark · SLAC National Accelerator Laboratory · +2 more institutions
Abstract
A methodology for semiempirical density functional optimization, using regularization and cross-validation methods from machine learning, is developed. We demonstrate that such methods enable well-behaved exchange-correlation approximations in very flexible model spaces, thus avoiding the overfitting found when standard least-squares methods are applied to high-order polynomial expansions. A general-purpose density functional for surface science and catalysis studies should accurately describe bond breaking and formation in chemistry, solid state physics, and surface chemistry, and should preferably also include van der Waals dispersion interactions. Such a functional necessarily compromises between describing…
Citation impact
- FWCI
- 29.08
- Percentile
- 100%
- References
- 131
Authors
8- JWJess WellendorffCorresponding
Technical University of Denmark
- KTKeld T. Lundgaard
Technical University of Denmark
- AMAndreas Møgelhøj
Technical University of Denmark, SLAC National Accelerator Laboratory, Interface (United States)
- VPVivien Petzold
Technical University of Denmark
- DDDavid D. Landis
Technical University of Denmark
Topics & keywords
- Statistical physics
- Bayesian probability
- Surface (topology)
- Estimation
- Computer science
- Bayesian inference
- Correlation
- Econometrics