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Introduction to Normalizing Flows for Lattice Field Theory (2101.08176v3)
Published 20 Jan 2021 in hep-lat, cond-mat.stat-mech, and cs.LG
Abstract: This notebook tutorial demonstrates a method for sampling Boltzmann distributions of lattice field theories using a class of machine learning models known as normalizing flows. The ideas and approaches proposed in arXiv:1904.12072, arXiv:2002.02428, and arXiv:2003.06413 are reviewed and a concrete implementation of the framework is presented. We apply this framework to a lattice scalar field theory and to U(1) gauge theory, explicitly encoding gauge symmetries in the flow-based approach to the latter. This presentation is intended to be interactive and working with the attached Jupyter notebook is recommended.
- Michael S. Albergo (27 papers)
- Denis Boyda (15 papers)
- Daniel C. Hackett (37 papers)
- Gurtej Kanwar (31 papers)
- Kyle Cranmer (81 papers)
- Sébastien Racanière (30 papers)
- Danilo Jimenez Rezende (27 papers)
- Phiala E. Shanahan (51 papers)