Event generation with normalizing flows
Christina Gao, Stefan Höche, Joshua Isaacson, Claudius Krause, H. Schulz
Abstract
We present a novel integrator based on normalizing flows which can be used to improve the unweighting efficiency of Monte Carlo event generators for collider physics simulations. In contrast to machine learning approaches based on surrogate models, our method generates the correct result even if the underlying neural networks are not optimally trained. We exemplify the new strategy using the example of Drell-Yan type processes at the LHC, both at leading and partially at next-to-leading order QCD.
Topics & Concepts
Event (particle physics)Computer scienceGeologyPhysicsQuantum mechanicsParticle physics theoretical and experimental studiesAdvanced Data Storage TechnologiesDistributed and Parallel Computing Systems