How to GAN event subtraction
Anja Butter, Tilman Plehn, Ramon Winterhalder
Abstract
Subtracting event samples is a common task in LHC simulation and analysis, and standard solutions tend to be inefficient. We employ generative adversarial networks to produce new event samples with a phase space distribution corresponding to added or subtracted input samples. We first illustrate for a toy example how such a network beats the statistical limitations of the training data. We then show how such a network can be used to subtract background events or to include non-local collinear subtraction events at the level of unweighted 4-vector events.
Topics & Concepts
Event (particle physics)Computer scienceSubtractionTask (project management)AlgorithmArtificial intelligenceBackground subtractionPhase (matter)MathematicsSpace (punctuation)Pattern recognition (psychology)Distribution (mathematics)Probability distributionGenerative adversarial networkSpeech recognitionNoise (video)Statistical modelSampling (signal processing)Adversarial systemParticle physics theoretical and experimental studiesHigh-Energy Particle Collisions ResearchQuantum Chromodynamics and Particle Interactions