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Introduction to Normalizing Flows for Lattice Field Theory
20 January 2021
M. S. Albergo
D. Boyda
D. Hackett
G. Kanwar
Kyle Cranmer
S. Racanière
Danilo Jimenez Rezende
P. Shanahan
AI4CE
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Papers citing
"Introduction to Normalizing Flows for Lattice Field Theory"
32 / 32 papers shown
Title
Group-Equivariant Diffusion Models for Lattice Field Theory
Octavio Vega
J. Komijani
Aida El-Khadra
M. Marinković
DiffM
228
0
0
30 Oct 2025
Neural Triangular Transport Maps: A New Approach Towards Sampling in Lattice QCD
Andrey Bryutkin
Youssef Marzouk
159
0
0
15 Oct 2025
NeuMC -- a package for neural sampling for lattice field theories
SoftwareX (SoftwareX), 2025
Piotr Bialas
P. Korcyl
T. Stebel
Dawid Zapolski
208
1
0
14 Mar 2025
Fast and Unified Path Gradient Estimators for Normalizing Flows
International Conference on Learning Representations (ICLR), 2024
Lorenz Vaitl
Ludwig Winkler
Lorenz Richter
Pan Kessel
212
5
0
23 Mar 2024
Multi-Lattice Sampling of Quantum Field Theories via Neural Operator-based Flows
Bálint Máté
Franccois Fleuret
AI4CE
222
1
0
01 Jan 2024
Sampling Multimodal Distributions with the Vanilla Score: Benefits of Data-Based Initialization
International Conference on Learning Representations (ICLR), 2023
Frederic Koehler
T. Vuong
DiffM
SyDa
164
10
0
03 Oct 2023
Diffusion Models as Stochastic Quantization in Lattice Field Theory
Journal of High Energy Physics (JHEP), 2023
Lei Wang
Gert Aarts
Kai Zhou
DiffM
198
23
0
29 Sep 2023
Accelerating Markov Chain Monte Carlo sampling with diffusion models
Computer Physics Communications (CPC), 2023
N. Hunt-Smith
W. Melnitchouk
F. Ringer
Nobuo Sato
A. Thomas
M. J. White
DiffM
159
28
0
04 Sep 2023
Training normalizing flows with computationally intensive target probability distributions
Computer Physics Communications (CPC), 2023
P. Białas
P. Korcyl
T. Stebel
176
5
0
25 Aug 2023
Sampling the lattice Nambu-Goto string using Continuous Normalizing Flows
M. Caselle
E. Cellini
A. Nada
194
18
0
03 Jul 2023
Mutual information of spin systems from autoregressive neural networks
Physical Review E (PRE), 2023
P. Białas
P. Korcyl
T. Stebel
134
4
0
26 Apr 2023
Fluctuation without dissipation: Microcanonical Langevin Monte Carlo
Symposium on Advances in Approximate Bayesian Inference (AABI), 2023
Jakob Robnik
U. Seljak
265
10
0
31 Mar 2023
Geometrical aspects of lattice gauge equivariant convolutional neural networks
J. Aronsson
David I. Müller
Daniel Schuh
155
10
0
20 Mar 2023
SE(3) diffusion model with application to protein backbone generation
International Conference on Machine Learning (ICML), 2023
Jason Yim
Brian L. Trippe
Valentin De Bortoli
Emile Mathieu
Arnaud Doucet
Regina Barzilay
Tommi Jaakkola
DiffM
361
276
0
05 Feb 2023
Learning Interpolations between Boltzmann Densities
Bálint Máté
Franccois Fleuret
389
37
0
18 Jan 2023
Simulating first-order phase transition with hierarchical autoregressive networks
Physical Review E (Phys. Rev. E), 2022
P. Białas
Paul A. Czarnota
P. Korcyl
T. Stebel
135
4
0
09 Dec 2022
Aspects of scaling and scalability for flow-based sampling of lattice QCD
European Physical Journal A (EPJ A), 2022
Ryan Abbott
M. S. Albergo
Aleksandar Botev
D. Boyda
Kyle Cranmer
...
Ali Razavi
Danilo Jimenez Rezende
F. Romero-López
P. Shanahan
Julian M. Urban
208
40
0
14 Nov 2022
Deformations of Boltzmann Distributions
Bálint Máté
Franccois Fleuret
OT
161
2
0
25 Oct 2022
Learning Lattice Quantum Field Theories with Equivariant Continuous Flows
SciPost Physics (SciPost Phys.), 2022
Mathis Gerdes
P. D. Haan
Corrado Rainone
Roberto Bondesan
Miranda C. N. Cheng
AI4CE
296
51
0
01 Jul 2022
Path-Gradient Estimators for Continuous Normalizing Flows
International Conference on Machine Learning (ICML), 2022
Lorenz Vaitl
K. Nicoli
Shinichi Nakajima
Pan Kessel
146
14
0
17 Jun 2022
Gradient estimators for normalising flows
P. Białas
P. Korcyl
T. Stebel
BDL
107
3
0
02 Feb 2022
Continual Repeated Annealed Flow Transport Monte Carlo
International Conference on Machine Learning (ICML), 2022
A. G. Matthews
Michael Arbel
Danilo Jimenez Rezende
Arnaud Doucet
OT
336
65
0
31 Jan 2022
Stochastic normalizing flows as non-equilibrium transformations
Journal of High Energy Physics (JHEP), 2022
M. Caselle
E. Cellini
A. Nada
M. Panero
207
38
0
21 Jan 2022
LeapfrogLayers: A Trainable Framework for Effective Topological Sampling
Sam Foreman
Xiao-Yong Jin
James C. Osborn
133
9
0
02 Dec 2021
Analysis of autocorrelation times in Neural Markov Chain Monte Carlo simulations
Physical Review E (PRE), 2021
P. Białas
P. Korcyl
T. Stebel
134
12
0
19 Nov 2021
Lattice gauge symmetry in neural networks
Matteo Favoni
A. Ipp
David I. Müller
Daniel Schuh
AI4CE
116
0
0
08 Nov 2021
Machine learning spectral functions in lattice QCD
S.-Y. Chen
H. Ding
Yifan Zhang
G. Papp
C.-B. Yang
226
20
0
26 Oct 2021
Embedded-model flows: Combining the inductive biases of model-free deep learning and explicit probabilistic modeling
International Conference on Learning Representations (ICLR), 2021
Gianluigi Silvestri
Emily Fertig
David A. Moore
L. Ambrogioni
BDL
TPM
AI4CE
309
4
0
12 Oct 2021
Scaling Up Machine Learning For Quantum Field Theory with Equivariant Continuous Flows
P. D. Haan
Corrado Rainone
Miranda C. N. Cheng
Roberto Bondesan
AI4CE
160
36
0
06 Oct 2021
A deep generative model for probabilistic energy forecasting in power systems: normalizing flows
Applied Energy (Appl. Energy), 2021
Jonathan Dumas
Antoine Wehenkel
Bertrand Cornélusse
Antonio Sutera
AI4TS
338
93
0
17 Jun 2021
A Probabilistic Forecast-Driven Strategy for a Risk-Aware Participation in the Capacity Firming Market: extended version
IEEE Transactions on Sustainable Energy (IEEE Trans. Sustain. Energy), 2021
Jonathan Dumas
Colin Cointe
Antoine Wehenkel
Antonio Sutera
X. Fettweis
Bertrand Cornélusse
122
10
0
28 May 2021
Deep Learning Hamiltonian Monte Carlo
Sam Foreman
Xiao-Yong Jin
James C. Osborn
82
16
0
07 May 2021
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