Generative networks for precision enthusiasts
Anja Butter, Theo Heimel, Sander Hummerich, Tobias Krebs, Tilman Plehn, Armand Rousselot, Sophia Vent
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.
Topics & Concepts
DiscriminatorComputer scienceGenerative grammarEvent (particle physics)KinematicsArtificial intelligenceMachine learningCoupling (piping)Bayesian networkProbabilistic logicEngineeringClassical mechanicsPhysicsMechanical engineeringDetectorTelecommunicationsQuantum mechanicsParticle physics theoretical and experimental studiesComputational Physics and Python ApplicationsGaussian Processes and Bayesian Inference