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Published January 18, 2023 | Version 1.0
Dataset Open

Data: Learning Lattice Quantum Field Theories with Equivariant Continuous Flows

  • 1. University of Amsterdam
  • 2. University of Amsterdam, Qualcomm AI Research
  • 3. Qualcomm AI Research
  • 4. University of Amsterdam, Academia Sinica

Description

Network parameters of continuous normalizing flows trained for the \(\varphi^4\) theory.

Corresponding article: Learning Lattice Quantum Field Theories with Equivariant Continuous Flows [2207.00283]

Abstract: We propose a novel machine learning method for sampling from the high-dimensional probability distributions of Lattice Field Theories, which is based on a single neural ODE layer and incorporates the full symmetries of the problem. We test our model on the \(\varphi^4\) theory, showing that it systematically outperforms previously proposed flow-based methods in sampling efficiency, and the improvement is especially pronounced for larger lattices. Furthermore, we demonstrate that our model can learn a continuous family of theories at once, and the results of learning can be transferred to larger lattices. Such generalizations further accentuate the advantages of machine learning methods.

Files

all-parameters.zip

Files (46.8 MB)

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md5:c578c3a82a4dc7905d0f08e886d23d7d
23.4 MB Preview Download
md5:bf467020546963b0b020aeca00271bcf
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md5:32fc02c67842947d75185c72122d5c7a
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md5:46ea86fab8b3e28bebcc3cb969abf8af
12.7 MB Download
md5:1e9fa0a6169a2c892b812bd2e1598a8a
48.1 kB Download
md5:98741109d245d1b0c7d1360f4b0f2b31
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md5:4d72007d8a292ad2f1d37c5dd44fe662
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md5:d15db9919929576a56ef24d063bec80a
21.3 kB Download
md5:8a81006851f77bc5a4f2223f639312da
839.1 kB Download

Additional details

Related works

Is supplement to
Preprint: arXiv:2207.00283 (arXiv)