English

Eigenvector continuation with subspace learning

Nuclear Theory 2018-07-18 v2 Strongly Correlated Electrons High Energy Physics - Lattice High Energy Physics - Phenomenology Numerical Analysis

Abstract

A common challenge faced in quantum physics is finding the extremal eigenvalues and eigenvectors of a Hamiltonian matrix in a vector space so large that linear algebra operations on general vectors are not possible. There are numerous efficient methods developed for this task, but they generally fail when some control parameter in the Hamiltonian matrix exceeds some threshold value. In this work we present a new technique called eigenvector continuation that can extend the reach of these methods. The key insight is that while an eigenvector resides in a linear space with enormous dimensions, the eigenvector trajectory generated by smooth changes of the Hamiltonian matrix is well approximated by a very low-dimensional manifold. We prove this statement using analytic function theory and propose an algorithm to solve for the extremal eigenvectors. We benchmark the method using several examples from quantum many-body theory.

Keywords

Cite

@article{arxiv.1711.07090,
  title  = {Eigenvector continuation with subspace learning},
  author = {Dillon Frame and Rongzheng He and Ilse Ipsen and Daniel Lee and Dean Lee and Ermal Rrapaj},
  journal= {arXiv preprint arXiv:1711.07090},
  year   = {2018}
}

Comments

Version to appear in Physical Review Letters, 4 + 6 pages (main + supplemental materials), 1 + 6 figures (main + supplemental materials)