We study the consequences of mode-collapse of normalizing flows in the context of lattice field theory. Normalizing flows allow for independent sampling. For this reason, it is hoped that they can avoid the tunneling problem of local-update MCMC algorithms for multi-modal distributions. In this work, we first point out that the tunneling problem is also present for normalizing flows but is shifted from the sampling to the training phase of the algorithm. Specifically, normalizing flows often suffer from mode-collapse for which the training process assigns vanishingly low probability mass to relevant modes of the physical distribution. This may result in a significant bias when the flow is used as a sampler in a Markov-Chain or with Importan...
Recent works leveraging learning to enhance sampling have shown promising results, in particular by ...
We analyse biased ensembles of trajectories for a two-dimensional system of particles, evolving by L...
Fields in cosmology, such as the matter distribution, are observed by experiments up to experimental...
Estimating the free energy, as well as other thermodynamic observables, is a key task in lattice fie...
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 ...
Normalizing flows are a class of deep generative models that provide a promising route to sample lat...
Network parameters of continuous normalizing flows trained for the \(\varphi^4\) theory. Correspond...
We present a machine-learning model based on normalizing flows that is trained to sample from the is...
We explain how to use diffusion models to learn inverse renormalization group flows of statistical a...
Calculations of topological observables in lattice gauge theories with traditional Monte Carlo algor...
There are many cases in collider physics and elsewhere where a calibration dataset is used to predic...
This paper studies the cooperative learning of two generative flow models, in which the two models a...
Estimating the free energy, as well as other thermodynamic observables, is a key task in lattice fie...
Restricted Boltzmann Machines are simple and powerful generative models that can encode any complex ...
Recent works leveraging learning to enhance sampling have shown promising results, in particular by ...
We analyse biased ensembles of trajectories for a two-dimensional system of particles, evolving by L...
Fields in cosmology, such as the matter distribution, are observed by experiments up to experimental...
Estimating the free energy, as well as other thermodynamic observables, is a key task in lattice fie...
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 ...
Normalizing flows are a class of deep generative models that provide a promising route to sample lat...
Network parameters of continuous normalizing flows trained for the \(\varphi^4\) theory. Correspond...
We present a machine-learning model based on normalizing flows that is trained to sample from the is...
We explain how to use diffusion models to learn inverse renormalization group flows of statistical a...
Calculations of topological observables in lattice gauge theories with traditional Monte Carlo algor...
There are many cases in collider physics and elsewhere where a calibration dataset is used to predic...
This paper studies the cooperative learning of two generative flow models, in which the two models a...
Estimating the free energy, as well as other thermodynamic observables, is a key task in lattice fie...
Restricted Boltzmann Machines are simple and powerful generative models that can encode any complex ...
Recent works leveraging learning to enhance sampling have shown promising results, in particular by ...
We analyse biased ensembles of trajectories for a two-dimensional system of particles, evolving by L...
Fields in cosmology, such as the matter distribution, are observed by experiments up to experimental...