Generative Networks for Precision Enthusiasts
High Energy Physics - Phenomenology
2023-04-26 v3 Machine Learning
Abstract
Generative networks are opening new avenues in fast event generation for the LHC. We show how generative flow networks can reach percent-level precision for kinematic distributions, how they can be trained jointly with a discriminator, and how this discriminator improves the generation. Our joint training relies on a novel coupling of the two networks which does not require a Nash equilibrium. We then estimate the generation uncertainties through a Bayesian network setup and through conditional data augmentation, while the discriminator ensures that there are no systematic inconsistencies compared to the training data.
Cite
@article{arxiv.2110.13632,
title = {Generative Networks for Precision Enthusiasts},
author = {Anja Butter and Theo Heimel and Sander Hummerich and Tobias Krebs and Tilman Plehn and Armand Rousselot and Sophia Vent},
journal= {arXiv preprint arXiv:2110.13632},
year = {2023}
}
Comments
28 pages, 14 figures