Jet diffusion versus JetGPT – Modern networks for the LHC
Anja Butter, Nathan Huetsch, Sofia Palacios Schweitzer, Tilman Plehn, Peter Sorrenson, Jonas Spinner
Abstract
We introduce two diffusion models and an autoregressive transformer for LHC physics simulations. Bayesian versions allow us to control the networks and capture training uncertainties. After illustrating their different density estimation methods for simple toy models, we discuss their advantages for Z plus jets event generation. While diffusion networks excel through their precision, the transformer scales best with the phase space dimensionality. Given the different training and evaluation speed, we expect LHC physics to benefit from dedicated use cases for normalizing flows, diffusion models, and autoregressive transformers.
Topics & Concepts
Jet (fluid)Large Hadron ColliderDiffusionPhysicsEnvironmental scienceMechanicsNuclear physicsThermodynamicsParticle physics theoretical and experimental studiesHigh-Energy Particle Collisions ResearchParticle Detector Development and Performance