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JEDI-net: a jet identification algorithm based on interaction networks

Eric A. Moreno, Olmo Cerri, Javier M. Duarte, Harvey B. Newman, Thong Q. Nguyen, Avikar Periwal, Maurizio Pierini, Aidana Serikova, Maria Spiropulu, Jean-Roch Vlimant

2020The European Physical Journal C118 citationsDOIOpen Access PDF

Abstract

Abstract We investigate the performance of a jet identification algorithm based on interaction networks (JEDI-net) to identify all-hadronic decays of high-momentum heavy particles produced at the LHC and distinguish them from ordinary jets originating from the hadronization of quarks and gluons. The jet dynamics are described as a set of one-to-one interactions between the jet constituents. Based on a representation learned from these interactions, the jet is associated to one of the considered categories. Unlike other architectures, the JEDI-net models achieve their performance without special handling of the sparse input jet representation, extensive pre-processing, particle ordering, or specific assumptions regarding the underlying detector geometry. The presented models give better results with less model parameters, offering interesting prospects for LHC applications.

Topics & Concepts

HadronizationJet (fluid)Large Hadron ColliderRepresentation (politics)AlgorithmIdentification (biology)Set (abstract data type)PhysicsParticle physicsDetectorComputer scienceParticle identificationSystem identificationStatistical physicsQuarkData setParticle (ecology)Nuclear physicsDynamics (music)Mixing (physics)MathematicsArtificial neural networkTopology (electrical circuits)Particle physics theoretical and experimental studiesHigh-Energy Particle Collisions ResearchComputational Physics and Python Applications
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