Understanding Event-Generation Networks via Uncertainties
Marco Bellagente, Manuel Haußmann, Michel Luchmann, Tilman Plehn
Abstract
Following the growing success of generative neural networks in LHC simulations, the crucial question is how to control the networks and assign uncertainties to their event output. We show how Bayesian normalizing flows or invertible networks capture uncertainties from the training and turn them into an uncertainty on the event weight. Fundamentally, the interplay between density and uncertainty estimates indicates that these networks learn functions in analogy to parameter fits rather than binned event counts.
Topics & Concepts
Event (particle physics)AnalogyComputer scienceArtificial neural networkInvertible matrixArtificial intelligenceGenerative grammarBayesian networkBayesian probabilityProbabilistic logicMathematicsPhysicsLinguisticsPure mathematicsQuantum mechanicsPhilosophyParticle physics theoretical and experimental studiesComputational Physics and Python ApplicationsHigh-Energy Particle Collisions Research