Finding Density Functionals with Machine Learning
University of California, Irvine · ETH Zurich · +2 more institutions
Indexed inarxivcrossrefpubmed
Abstract
Machine learning is used to approximate density functionals. For the model problem of the kinetic energy of noninteracting fermions in 1D, mean absolute errors below 1 kcal/mol on test densities similar to the training set are reached with fewer than 100 training densities. A predictor identifies if a test density is within the interpolation region. Via principal component analysis, a projected functional derivative finds highly accurate self-consistent densities. The challenges for application of our method to real electronic structure problems are discussed.
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Keywords
- Computer science
- Machine learning
- Statistical physics
- Artificial intelligence
- Physics
UN Sustainable Development Goals
- Affordable and clean energy
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