Cargando…
MLPF: Efficient machine-learned particle-flow reconstruction using graph neural networks
In general-purpose particle detectors, the particle-flow algorithm may be used to reconstruct a comprehensive particle-level view of the event by combining information from the calorimeters and the trackers, significantly improving the detector resolution for jets and the missing transverse momentum...
Autores principales: | , , , , |
---|---|
Lenguaje: | eng |
Publicado: |
2021
|
Materias: | |
Acceso en línea: | https://dx.doi.org/10.1140/epjc/s10052-021-09158-w http://cds.cern.ch/record/2750781 |
_version_ | 1780969143489527808 |
---|---|
author | Pata, Joosep Duarte, Javier Vlimant, Jean-Roch Pierini, Maurizio Spiropulu, Maria |
author_facet | Pata, Joosep Duarte, Javier Vlimant, Jean-Roch Pierini, Maurizio Spiropulu, Maria |
author_sort | Pata, Joosep |
collection | CERN |
description | In general-purpose particle detectors, the particle-flow algorithm may be used to reconstruct a comprehensive particle-level view of the event by combining information from the calorimeters and the trackers, significantly improving the detector resolution for jets and the missing transverse momentum. In view of the planned high-luminosity upgrade of the CERN Large Hadron Collider (LHC), it is necessary to revisit existing reconstruction algorithms and ensure that both the physics and computational performance are sufficient in an environment with many simultaneous proton–proton interactions (pileup). Machine learning may offer a prospect for computationally efficient event reconstruction that is well-suited to heterogeneous computing platforms, while significantly improving the reconstruction quality over rule-based algorithms for granular detectors. We introduce MLPF, a novel, end-to-end trainable, machine-learned particle-flow algorithm based on parallelizable, computationally efficient, and scalable graph neural network optimized using a multi-task objective on simulated events. We report the physics and computational performance of the MLPF algorithm on a Monte Carlo dataset of top quark–antiquark pairs produced in proton–proton collisions in conditions similar to those expected for the high-luminosity LHC. The MLPF algorithm improves the physics response with respect to a rule-based benchmark algorithm and demonstrates computationally scalable particle-flow reconstruction in a high-pileup environment. |
id | cern-2750781 |
institution | Organización Europea para la Investigación Nuclear |
language | eng |
publishDate | 2021 |
record_format | invenio |
spelling | cern-27507812023-09-27T08:01:45Zdoi:10.1140/epjc/s10052-021-09158-whttp://cds.cern.ch/record/2750781engPata, JoosepDuarte, JavierVlimant, Jean-RochPierini, MaurizioSpiropulu, MariaMLPF: Efficient machine-learned particle-flow reconstruction using graph neural networksstat.MLMathematical Physics and Mathematicsphysics.ins-detDetectors and Experimental Techniqueshep-exParticle Physics - Experimentcs.LGComputing and Computersphysics.data-anOther Fields of PhysicsIn general-purpose particle detectors, the particle-flow algorithm may be used to reconstruct a comprehensive particle-level view of the event by combining information from the calorimeters and the trackers, significantly improving the detector resolution for jets and the missing transverse momentum. In view of the planned high-luminosity upgrade of the CERN Large Hadron Collider (LHC), it is necessary to revisit existing reconstruction algorithms and ensure that both the physics and computational performance are sufficient in an environment with many simultaneous proton–proton interactions (pileup). Machine learning may offer a prospect for computationally efficient event reconstruction that is well-suited to heterogeneous computing platforms, while significantly improving the reconstruction quality over rule-based algorithms for granular detectors. We introduce MLPF, a novel, end-to-end trainable, machine-learned particle-flow algorithm based on parallelizable, computationally efficient, and scalable graph neural network optimized using a multi-task objective on simulated events. We report the physics and computational performance of the MLPF algorithm on a Monte Carlo dataset of top quark–antiquark pairs produced in proton–proton collisions in conditions similar to those expected for the high-luminosity LHC. The MLPF algorithm improves the physics response with respect to a rule-based benchmark algorithm and demonstrates computationally scalable particle-flow reconstruction in a high-pileup environment.In general-purpose particle detectors, the particle-flow algorithm may be used to reconstruct a comprehensive particle-level view of the event by combining information from the calorimeters and the trackers, significantly improving the detector resolution for jets and the missing transverse momentum. In view of the planned high-luminosity upgrade of the CERN Large Hadron Collider (LHC), it is necessary to revisit existing reconstruction algorithms and ensure that both the physics and computational performance are sufficient in an environment with many simultaneous proton-proton interactions (pileup). Machine learning may offer a prospect for computationally efficient event reconstruction that is well-suited to heterogeneous computing platforms, while significantly improving the reconstruction quality over rule-based algorithms for granular detectors. We introduce MLPF, a novel, end-to-end trainable, machine-learned particle-flow algorithm based on parallelizable, computationally efficient, and scalable graph neural networks optimized using a multi-task objective on simulated events. We report the physics and computational performance of the MLPF algorithm on a Monte Carlo dataset of top quark-antiquark pairs produced in proton-proton collisions in conditions similar to those expected for the high-luminosity LHC. The MLPF algorithm improves the physics response with respect to a rule-based benchmark algorithm and demonstrates computationally scalable particle-flow reconstruction in a high-pileup environment.arXiv:2101.08578oai:cds.cern.ch:27507812021-01-21 |
spellingShingle | stat.ML Mathematical Physics and Mathematics physics.ins-det Detectors and Experimental Techniques hep-ex Particle Physics - Experiment cs.LG Computing and Computers physics.data-an Other Fields of Physics Pata, Joosep Duarte, Javier Vlimant, Jean-Roch Pierini, Maurizio Spiropulu, Maria MLPF: Efficient machine-learned particle-flow reconstruction using graph neural networks |
title | MLPF: Efficient machine-learned particle-flow reconstruction using graph neural networks |
title_full | MLPF: Efficient machine-learned particle-flow reconstruction using graph neural networks |
title_fullStr | MLPF: Efficient machine-learned particle-flow reconstruction using graph neural networks |
title_full_unstemmed | MLPF: Efficient machine-learned particle-flow reconstruction using graph neural networks |
title_short | MLPF: Efficient machine-learned particle-flow reconstruction using graph neural networks |
title_sort | mlpf: efficient machine-learned particle-flow reconstruction using graph neural networks |
topic | stat.ML Mathematical Physics and Mathematics physics.ins-det Detectors and Experimental Techniques hep-ex Particle Physics - Experiment cs.LG Computing and Computers physics.data-an Other Fields of Physics |
url | https://dx.doi.org/10.1140/epjc/s10052-021-09158-w http://cds.cern.ch/record/2750781 |
work_keys_str_mv | AT patajoosep mlpfefficientmachinelearnedparticleflowreconstructionusinggraphneuralnetworks AT duartejavier mlpfefficientmachinelearnedparticleflowreconstructionusinggraphneuralnetworks AT vlimantjeanroch mlpfefficientmachinelearnedparticleflowreconstructionusinggraphneuralnetworks AT pierinimaurizio mlpfefficientmachinelearnedparticleflowreconstructionusinggraphneuralnetworks AT spiropulumaria mlpfefficientmachinelearnedparticleflowreconstructionusinggraphneuralnetworks |