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Super-Resolving Normalising Flows for Lattice Field Theories

Authors :
Bauer, Marc
Kapust, Renzo
Pawlowski, Jan M.
Temmen, Finn L.
Publication Year :
2024

Abstract

We propose a renormalisation group inspired normalising flow that combines benefits from traditional Markov chain Monte Carlo methods and standard normalising flows to sample lattice field theories. Specifically, we use samples from a coarse lattice field theory and learn a stochastic map to the targeted fine theory. The devised architecture allows for systematic improvements and efficient sampling on lattices as large as $128 \times 128$ in all phases when only having sampling access on a $4\times 4$ lattice. This paves the way for reaping the benefits of traditional MCMC methods on coarse lattices while using normalising flows to learn transformations towards finer grids, aligning nicely with the intuition of super-resolution tasks. Moreover, by optimising the base distribution, this approach allows for further structural improvements besides increasing the expressivity of the model.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.12842
Document Type :
Working Paper