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Progress in developing a hybrid deep learning algorithm for identifying and locating primary vertices

<!--HTML-->The locations of proton-proton collision points in LHC experiments are called primary vertices (PVs). Preliminary results of a hybrid deep learning algorithm for identifying and locating these, targeting the Run 3 incarnation of LHCb, have been described at conferences in 2019 and 2...

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Autor principal: Akar, Simon
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:http://cds.cern.ch/record/2767234
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author Akar, Simon
author_facet Akar, Simon
author_sort Akar, Simon
collection CERN
description <!--HTML-->The locations of proton-proton collision points in LHC experiments are called primary vertices (PVs). Preliminary results of a hybrid deep learning algorithm for identifying and locating these, targeting the Run 3 incarnation of LHCb, have been described at conferences in 2019 and 2020. In the past year we have made significant progress in a variety of related areas. Using two newer Kernel Density Estimators (KDEs) as input feature sets improves the fidelity of the models, as does using full LHCb simulation rather than the “toy Monte Carlo" originally (and still) used to develop models. We have also built a deep learning model to calculate the KDEs from track information. Connecting a tracks-to-KDE model to a KDE-to-hists model used to find PVs provides a proof-of-concept that a single deep learning model can use track information to find PVs with high efficiency and high fidelity. We have studied a variety of models systematically to understand how variations in their architectures affect performance. While the studies reported here are specific to the LHCb geometry and operating conditions, the results suggest that the same approach could be used by the ATLAS and CMS experiments.
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spelling cern-27672342022-11-02T22:25:38Zhttp://cds.cern.ch/record/2767234engAkar, SimonProgress in developing a hybrid deep learning algorithm for identifying and locating primary vertices25th International Conference on Computing in High Energy & Nuclear PhysicsConferences<!--HTML-->The locations of proton-proton collision points in LHC experiments are called primary vertices (PVs). Preliminary results of a hybrid deep learning algorithm for identifying and locating these, targeting the Run 3 incarnation of LHCb, have been described at conferences in 2019 and 2020. In the past year we have made significant progress in a variety of related areas. Using two newer Kernel Density Estimators (KDEs) as input feature sets improves the fidelity of the models, as does using full LHCb simulation rather than the “toy Monte Carlo" originally (and still) used to develop models. We have also built a deep learning model to calculate the KDEs from track information. Connecting a tracks-to-KDE model to a KDE-to-hists model used to find PVs provides a proof-of-concept that a single deep learning model can use track information to find PVs with high efficiency and high fidelity. We have studied a variety of models systematically to understand how variations in their architectures affect performance. While the studies reported here are specific to the LHCb geometry and operating conditions, the results suggest that the same approach could be used by the ATLAS and CMS experiments.oai:cds.cern.ch:27672342021
spellingShingle Conferences
Akar, Simon
Progress in developing a hybrid deep learning algorithm for identifying and locating primary vertices
title Progress in developing a hybrid deep learning algorithm for identifying and locating primary vertices
title_full Progress in developing a hybrid deep learning algorithm for identifying and locating primary vertices
title_fullStr Progress in developing a hybrid deep learning algorithm for identifying and locating primary vertices
title_full_unstemmed Progress in developing a hybrid deep learning algorithm for identifying and locating primary vertices
title_short Progress in developing a hybrid deep learning algorithm for identifying and locating primary vertices
title_sort progress in developing a hybrid deep learning algorithm for identifying and locating primary vertices
topic Conferences
url http://cds.cern.ch/record/2767234
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