English

Machine Learning Universal Bosonic Functionals

Quantum Physics 2022-01-19 v3 Computational Physics

Abstract

The one-body reduced density matrix γ\gamma plays a fundamental role in describing and predicting quantum features of bosonic systems, such as Bose-Einstein condensation. The recently proposed reduced density matrix functional theory for bosonic ground states establishes the existence of a universal functional F[γ]\mathcal{F}[\gamma] that recovers quantum correlations exactly. Based on a novel decomposition of γ\gamma, we have developed a method to design reliable approximations for such universal functionals: our results suggest that for translational invariant systems the constrained search approach of functional theories can be transformed into an unconstrained problem through a parametrization of an Euclidian space. This simplification of the search approach allows us to use standard machine-learning methods to perform a quite efficient computation of both F[γ]\mathcal{F}[\gamma] and its functional derivative. For the Bose-Hubbard model, we present a comparison between our approach and Quantum Monte Carlo.

Keywords

Cite

@article{arxiv.2104.03208,
  title  = {Machine Learning Universal Bosonic Functionals},
  author = {Jonathan Schmidt and Matteo Fadel and Carlos L. Benavides-Riveros},
  journal= {arXiv preprint arXiv:2104.03208},
  year   = {2022}
}

Comments

13 pages, 6 figures; close to the published version