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Physics-Conditioned Diffusion Models for Lattice Gauge Theory

8 February 2025
Qianteng Zhu
Gert Aarts
Wei Wang
K. Zhou
L. Wang
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Abstract

We develop diffusion models for simulating lattice gauge theories, where stochastic quantization is explicitly incorporated as a physical condition for sampling. We demonstrate the applicability of this novel sampler to U(1) gauge theory in two spacetime dimensions and find that a model trained at a small inverse coupling constant can be extrapolated to larger inverse coupling regions without encountering the topological freezing problem. Additionally, the trained model can be employed to sample configurations on different lattice sizes without requiring further training. The exactness of the generated samples is ensured by incorporating Metropolis-adjusted Langevin dynamics into the generation process. Furthermore, we demonstrate that this approach enables more efficient sampling of topological quantities compared to traditional algorithms such as Hybrid Monte Carlo and Langevin simulations.

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@article{zhu2025_2502.05504,
  title={ Physics-Conditioned Diffusion Models for Lattice Gauge Theory },
  author={ Qianteng Zhu and Gert Aarts and Wei Wang and Kai Zhou and Lingxiao Wang },
  journal={arXiv preprint arXiv:2502.05504},
  year={ 2025 }
}
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