High Energy Physics - Phenomenology · Physics
Machine Learning and LHC Event Generation
Anja Butter, Tilman Plehn, Steffen Schumann, Simon Badger +47
2023-04-26
High Energy Physics - Phenomenology · Physics
How to GAN away Detector Effects
Marco Bellagente, Anja Butter, Gregor Kasieczka, Tilman Plehn +1
2022-12-06
High Energy Physics - Phenomenology · Physics
Generative Networks for Precision Enthusiasts
Anja Butter, Theo Heimel, Sander Hummerich, Tobias Krebs +3
2023-04-26
High Energy Physics - Phenomenology · Physics
How to GAN Event Unweighting
Mathias Backes, Anja Butter, Tilman Plehn, Ramon Winterhalder
2021-04-28
Data Analysis, Statistics and Probability · Physics
Generative Models for Fast Calorimeter Simulation.LHCb case
Viktoria Chekalina, Elena Orlova, Fedor Ratnikov, Dmitry Ulyanov +2
2019-10-02
High Energy Physics - Experiment · Physics
LHC analysis-specific datasets with Generative Adversarial Networks
Bobak Hashemi, Nick Amin, Kaustuv Datta, Dominick Olivito +1
2019-01-17
High Energy Physics - Phenomenology · Physics
Understanding Event-Generation Networks via Uncertainties
Marco Bellagente, Manuel Haußmann, Michel Luchmann, Tilman Plehn
2022-12-07
Instrumentation and Detectors · Physics
Fast Data-Driven Simulation of Cherenkov Detectors Using Generative Adversarial Networks
Artem Maevskiy, Denis Derkach, Nikita Kazeev, Andrey Ustyuzhanin +2
2020-07-28
High Energy Physics - Phenomenology · Physics
Modern Machine Learning for LHC Physicists
Tilman Plehn, Anja Butter, Barry Dillon, Theo Heimel +2
2025-04-25
Social and Information Networks · Computer Science
Leveraging advances in machine learning for the robust classification and interpretation of networks
Raima Carol Appaw, Nicholas Fountain-Jones, Michael A. Charleston
2024-06-13
High Energy Physics - Phenomenology · Physics
Invertible Networks or Partons to Detector and Back Again
Marco Bellagente, Anja Butter, Gregor Kasieczka, Tilman Plehn +4
2020-11-18
Instrumentation and Detectors · Physics
Towards Reliable Neural Generative Modeling of Detectors
Lucio Anderlini, Matteo Barbetti, Denis Derkach, Nikita Kazeev +2
2023-03-01
High Energy Physics - Phenomenology · Physics
Extrapolating Jet Radiation with Autoregressive Transformers
Anja Butter, François Charton, Javier Mariño Villadamigo, Ayodele Ore +2
2026-01-13
High Energy Physics - Phenomenology · Physics
How to Understand Limitations of Generative Networks
Ranit Das, Luigi Favaro, Theo Heimel, Claudius Krause +2
2024-01-31
High Energy Physics - Phenomenology · Physics
Normalizing Flows for High-Dimensional Detector Simulations
Florian Ernst, Luigi Favaro, Claudius Krause, Tilman Plehn +1
2025-03-06
High Energy Physics - Phenomenology · Physics
Fast, accurate, and precise detector simulation with vision transformers
Luigi Favaro, Andrea Giammanco, Claudius Krause
2026-01-27
High Energy Physics - Experiment · Physics
Particle Generative Adversarial Networks for full-event simulation at the LHC and their application to pileup description
Jesus Arjona Martinez, Thong Q Nguyen, Maurizio Pierini, Maria Spiropulu +1
2020-07-22
High Energy Physics - Phenomenology · Physics
Forecasting Generative Amplification
Henning Bahl, Sascha Diefenbacher, Nina Elmer, Tilman Plehn +1
2025-10-17
Computational Physics · Physics
Exploring Generative Physics Models with Scientific Priors in Inertial Confinement Fusion
Rushil Anirudh, Jayaraman J. Thiagarajan, Shusen Liu, Peer-Timo Bremer +1
2019-10-07
High Energy Physics - Phenomenology · Physics
A survey of machine learning-based physics event generation
Yasir Alanazi, N. Sato, Pawel Ambrozewicz, Astrid N. Hiller Blin +4
2021-12-30