UNI-MB - logo
UMNIK - logo
 
E-viri
Recenzirano Odprti dostop
  • Equivariant Flow-Based Samp...
    Kanwar, Gurtej; Albergo, Michael S.; Boyda, Denis; Cranmer, Kyle; Hackett, Daniel C.; Racanière, Sébastien; Rezende, Danilo Jimenez; Shanahan, Phiala E.

    Physical review letters, 09/2020, Letnik: 125, Številka: 12
    Journal Article

    We define a class of machine-learned flow-based sampling algorithms for lattice gauge theories that are gauge invariant by construction. We demonstrate the application of this framework to U(1) gauge theory in two spacetime dimensions, and find that, at small bare coupling, the approach is orders of magnitude more efficient at sampling topological quantities than more traditional sampling procedures such as hybrid Monte Carlo and heat bath.