The recent introduction of machine learning techniques, especially normalizing flows, for the sampling of lattice gauge theories has shed some hope on improving the sampling efficiency of the traditional hybrid Monte Carlo (HMC) algorithm. In this work we study a modified HMC algorithm that draws on the seminal work on trivializing flows by Lüscher. Autocorrelations are reduced by sampling from a simpler action that is related to the original action by an invertible mapping realised through Normalizing Flows models with a minimal set of training parameters. We test the algorithm in a $$\phi ^{4}$$ theory in 2D where we observe reduced autocorrelation times compared with HMC, and demonstrate that the training can be done at small unphysical ...
We propose a modification of the Hybrid Monte Carlo (HMC) algorithm that overcomes the topological f...
Network parameters of continuous normalizing flows trained for the \(\varphi^4\) theory. Correspond...
Deep Learning is becoming a standard tool across science and industry to optimally solve a variety o...
The recent introduction of machine learning techniques, especially normalizing flows, for the sampli...
Discretizing fields on a spacetime lattice is the only known general and non-perturbative regulator ...
We test a recent proposal to use approximate trivializing maps in a field theory to speed up Hybrid ...
AbstractWe test a recent proposal to use approximate trivializing maps in a field theory to speed up...
We propose Continual Repeated Annealed Flow Transport Monte Carlo (CRAFT), a method that combines a ...
We study the consequences of mode-collapse of normalizing flows in the context of lattice field theo...
Normalizing flows are a class of deep generative models that provide a promising route to sample lat...
We propose Continual Repeated Annealed Flow Transport Monte Carlo (CRAFT), a method that combines a ...
The thesis research involves the application of machine learning (ML) to various parts of a Monte Ca...
Many problems in the physical sciences, machine learning, and statistical inference necessitate samp...
We define a class of machine-learned flow-based sampling algorithms for lattice gauge theories that ...
We test a recent proposal to use approximate trivializing maps in a field theory to speed up Hybrid ...
We propose a modification of the Hybrid Monte Carlo (HMC) algorithm that overcomes the topological f...
Network parameters of continuous normalizing flows trained for the \(\varphi^4\) theory. Correspond...
Deep Learning is becoming a standard tool across science and industry to optimally solve a variety o...
The recent introduction of machine learning techniques, especially normalizing flows, for the sampli...
Discretizing fields on a spacetime lattice is the only known general and non-perturbative regulator ...
We test a recent proposal to use approximate trivializing maps in a field theory to speed up Hybrid ...
AbstractWe test a recent proposal to use approximate trivializing maps in a field theory to speed up...
We propose Continual Repeated Annealed Flow Transport Monte Carlo (CRAFT), a method that combines a ...
We study the consequences of mode-collapse of normalizing flows in the context of lattice field theo...
Normalizing flows are a class of deep generative models that provide a promising route to sample lat...
We propose Continual Repeated Annealed Flow Transport Monte Carlo (CRAFT), a method that combines a ...
The thesis research involves the application of machine learning (ML) to various parts of a Monte Ca...
Many problems in the physical sciences, machine learning, and statistical inference necessitate samp...
We define a class of machine-learned flow-based sampling algorithms for lattice gauge theories that ...
We test a recent proposal to use approximate trivializing maps in a field theory to speed up Hybrid ...
We propose a modification of the Hybrid Monte Carlo (HMC) algorithm that overcomes the topological f...
Network parameters of continuous normalizing flows trained for the \(\varphi^4\) theory. Correspond...
Deep Learning is becoming a standard tool across science and industry to optimally solve a variety o...