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Deep generative modelling of the canonical ensemble with differentiable thermal properties

ORAL

Abstract

It is a long-standing challenge to accurately and efficiently compute thermodynamic quantities of many-body systems at thermal equilibrium. The conventional methods, e.g., Markov chain Monte Carlo (MCMC), require many steps to equilibrate. The recently developed deep learning methods can perform direct sampling, but only work on single trained temperature point. Here, we propose a variational method for canonical ensembles with differentiable temperature, which gives thermodynamic quantities as continuous functions of temperature akin to an analytical solution. Using a generative model, the free energy is estimated and minimized in a continuous temperature range. At optimal, this model is a Boltzmann distribution with temperature dependence. This method requires no dataset, and works with arbitrary explicit density generative models. We applied our method to study the phase transitions (PTs) in the Ising and XY models, and showed that our direct-sampling simulations are as accurate as MCMC, but more efficient. Moreover, our differentiable free energy aligns closely with the exact one to the second-order derivative, indicating the variational model captured the subtle thermal transitions at the PTs. The functional dependence on external parameters along with the exceptional fitting ability of deep learning models sheds light on the direct simulation of physical systems.

Publication: Deep generative modelling of canonical ensemble with differentiable thermal properties, arXiv:2404.18404

Presenters

  • Shuo-Hui Li

    The Hong Kong University of Science and Technology

Authors

  • Shuo-Hui Li

    The Hong Kong University of Science and Technology

  • Yao-Wen Zhang

    The Hong Kong University of Science and Technology

  • Ding Pan

    The Hong Kong University of Science and Technology (HKUST)