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arxiv: 2203.00520 · v1 · pith:VG5U4VXG · submitted 2022-03-01 · physics.comp-ph · cs.LG· hep-ex· hep-ph

Particle-based Fast Jet Simulation at the LHC with Variational Autoencoders

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classification physics.comp-ph cs.LGhep-exhep-ph
keywords simulationconstituentsfastvariationalautoencodersdeepdetectorjets
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We study how to use Deep Variational Autoencoders for a fast simulation of jets of particles at the LHC. We represent jets as a list of constituents, characterized by their momenta. Starting from a simulation of the jet before detector effects, we train a Deep Variational Autoencoder to return the corresponding list of constituents after detection. Doing so, we bypass both the time-consuming detector simulation and the collision reconstruction steps of a traditional processing chain, speeding up significantly the events generation workflow. Through model optimization and hyperparameter tuning, we achieve state-of-the-art precision on the jet four-momentum, while providing an accurate description of the constituents momenta, and an inference time comparable to that of a rule-based fast simulation.

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