Accelerate Monte Carlo Simulations with Restricted Boltzmann Machines

10/10/2016
by   Li Huang, et al.
0

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.

READ FULL TEXT
research
02/28/2017

Can Boltzmann Machines Discover Cluster Updates ?

Boltzmann machines are physics informed generative models with wide appl...
research
06/02/2022

Learning a Restricted Boltzmann Machine using biased Monte Carlo sampling

Restricted Boltzmann Machines are simple and powerful generative models ...
research
12/11/2017

Towards reduction of autocorrelation in HMC by machine learning

In this paper we propose new algorithm to reduce autocorrelation in Mark...
research
05/28/2021

Equilibrium and non-Equilibrium regimes in the learning of Restricted Boltzmann Machines

Training Restricted Boltzmann Machines (RBMs) has been challenging for a...
research
11/20/2020

Graph Signal Recovery Using Restricted Boltzmann Machines

We propose a model-agnostic pipeline to recover graph signals from an ex...
research
02/25/2012

Training Restricted Boltzmann Machines on Word Observations

The restricted Boltzmann machine (RBM) is a flexible tool for modeling c...
research
10/18/2018

Thermodynamics and Feature Extraction by Machine Learning

Machine learning methods are powerful in distinguishing different phases...

Please sign up or login with your details

Forgot password? Click here to reset