Litcius/Paper detail

A Positive Resampler for Monte Carlo events with negative weights

Jeppe R. Andersen, Christian Gütschow, Andreas Maier, Stefan Prestel

2020The European Physical Journal C24 citationsDOIOpen Access PDF

Abstract

Abstract We propose the Positive Resampler to solve the problem associated with event samples from state-of-the-art predictions for scattering processes at hadron colliders typically involving a sizeable number of events contributing with negative weight. The proposed method guarantees positive weights for all physical distributions, and a correct description of all observables. A desirable side product of the method is the possibility to reduce the size of event samples produced by General Purpose Event Generators, thus lowering the resource demands for subsequent computing-intensive event processing steps. We demonstrate the viability and efficiency of our approach by considering its application to a next-to-leading order + parton shower merged prediction for the production of a W boson in association with multiple jets.

Topics & Concepts

Event (particle physics)Monte Carlo methodProduct (mathematics)Computer scienceParton showerMathematicsAlgorithmParticle physicsPhysicsStatistical physicsProduction (economics)PartonStatisticsScatteringReliability (semiconductor)BosonHadronResource (disambiguation)Order (exchange)Data miningEvent generatorFrequentist inferenceParticle physics theoretical and experimental studiesQuantum Chromodynamics and Particle InteractionsRadiation Detection and Scintillator Technologies
A Positive Resampler for Monte Carlo events with negative weights | Litcius