Particle Monte Carlo methods for Lattice Field Theory
By: David Yallup
Potential Business Impact:
Faster computer simulations for science problems.
High-dimensional multimodal sampling problems from lattice field theory (LFT) have become important benchmarks for machine learning assisted sampling methods. We show that GPU-accelerated particle methods, Sequential Monte Carlo (SMC) and nested sampling, provide a strong classical baseline that matches or outperforms state-of-the-art neural samplers in sample quality and wall-clock time on standard scalar field theory benchmarks, while also estimating the partition function. Using only a single data-driven covariance for tuning, these methods achieve competitive performance without problem-specific structure, raising the bar for when learned proposals justify their training cost.
Similar Papers
Bouncy particle sampler with infinite exchanging parallel tempering
Machine Learning (CS)
Makes computer predictions more accurate with faster sampling.
Reinforced sequential Monte Carlo for amortised sampling
Machine Learning (CS)
Helps computers learn complex patterns faster.
Particle Hamiltonian Monte Carlo
Computation
Helps computers understand complex patterns better.