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Modeling hadronization using machine learning

P. Ilten, Tony Menzo, Ahmed Youssef, Jure Zupan

2023SciPost Physics30 citationsDOIOpen Access PDF

Abstract

We present the first steps in the development of a new class of hadronization models utilizing machine learning techniques. We successfully implement, validate, and train a conditional sliced-Wasserstein autoencoder to replicate the Pythia generated kinematic distributions of first-hadron emissions, when the Lund string model of hadronization implemented in Pythia is restricted to the emissions of pions only. The trained models are then used to generate the full hadronization chains, with an IR cutoff energy imposed externally. The hadron multiplicities and cumulative kinematic distributions are shown to match the Pythia generated ones. We also discuss possible future generalizations of our results.

Topics & Concepts

HadronizationKinematicsPionComputer scienceParticle physicsHadronPhysicsStatistical physicsClassical mechanicsParticle physics theoretical and experimental studiesHigh-Energy Particle Collisions ResearchQuantum Chromodynamics and Particle Interactions
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