Accelerate Monte Carlo Simulations with Restricted Boltzmann Machines

ORAL

Abstract

Despite their exceptional flexibility and popularity, the Monte Carlo methods often suffer from slow mixing times for challenging statistical physics problems. We present a general strategy to overcome this difficulty by adopting ideas and techniques from the machine learning community. We fit the unnormalized probability of the physical model to a feedforward neural network and reinterpret the architecture as a restricted Boltzmann machine. Then, exploiting its feature detection ability, we utilize the restricted Boltzmann machine for efficient Monte Carlo updates and to speed up the simulation of the original physical system. We implement these ideas for the Falicov-Kimball model and demonstrate improved acceptance ratio and autocorrelation time near the phase transition point.

Presenters

  • Li Huang

    China Academy of Engineering Physics

Authors

  • Li Huang

    China Academy of Engineering Physics

  • Lei Wang

    Institute of Physics, Chinese Academy of Science, Chinese Academy of Sciences, Institute of Physics, Chinese Academy of Sciences