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Machine Learning and LHC Event Generation

Authors :
Butter, Anja
Plehn, Tilman
Schumann, Steffen
Badger, Simon
Caron, Sascha
Cranmer, Kyle
Di Bello, Francesco Armando
Dreyer, Etienne
Forte, Stefano
Ganguly, Sanmay
Gonçalves, Dorival
Gross, Eilam
Heimel, Theo
Heinrich, Gudrun
Heinrich, Lukas
Held, Alexander
Höche, Stefan
Howard, Jessica N.
Ilten, Philip
Isaacson, Joshua
Janßen, Timo
Jones, Stephen
Kado, Marumi
Kagan, Michael
Kasieczka, Gregor
Kling, Felix
Kraml, Sabine
Krause, Claudius
Krauss, Frank
Kröninger, Kevin
Barman, Rahool Kumar
Luchmann, Michel
Magerya, Vitaly
Maitre, Daniel
Malaescu, Bogdan
Maltoni, Fabio
Martini, Till
Mattelaer, Olivier
Nachman, Benjamin
Pitz, Sebastian
Rojo, Juan
Schwartz, Matthew
Shih, David
Siegert, Frank
Stegeman, Roy
Stienen, Bob
Thaler, Jesse
Verheyen, Rob
Whiteson, Daniel
Winterhalder, Ramon
Zupan, Jure
Butter, Anja
Plehn, Tilman
Schumann, Steffen
Badger, Simon
Caron, Sascha
Cranmer, Kyle
Di Bello, Francesco Armando
Dreyer, Etienne
Forte, Stefano
Ganguly, Sanmay
Gonçalves, Dorival
Gross, Eilam
Heimel, Theo
Heinrich, Gudrun
Heinrich, Lukas
Held, Alexander
Höche, Stefan
Howard, Jessica N.
Ilten, Philip
Isaacson, Joshua
Janßen, Timo
Jones, Stephen
Kado, Marumi
Kagan, Michael
Kasieczka, Gregor
Kling, Felix
Kraml, Sabine
Krause, Claudius
Krauss, Frank
Kröninger, Kevin
Barman, Rahool Kumar
Luchmann, Michel
Magerya, Vitaly
Maitre, Daniel
Malaescu, Bogdan
Maltoni, Fabio
Martini, Till
Mattelaer, Olivier
Nachman, Benjamin
Pitz, Sebastian
Rojo, Juan
Schwartz, Matthew
Shih, David
Siegert, Frank
Stegeman, Roy
Stienen, Bob
Thaler, Jesse
Verheyen, Rob
Whiteson, Daniel
Winterhalder, Ramon
Zupan, Jure
Publication Year :
2022

Abstract

First-principle simulations are at the heart of the high-energy physics research program. They link the vast data output of multi-purpose detectors with fundamental theory predictions and interpretation. This review illustrates a wide range of applications of modern machine learning to event generation and simulation-based inference, including conceptional developments driven by the specific requirements of particle physics. New ideas and tools developed at the interface of particle physics and machine learning will improve the speed and precision of forward simulations, handle the complexity of collision data, and enhance inference as an inverse simulation problem.<br />Comment: Review article based on a Snowmass 2021 contribution

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1425540909
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.21468.SciPostPhys.14.4.079