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Identification of new long-lived particles using deep neural networks

We present the development of a deep neural network for identifying generic displaced jets arising from the decays of exotic long-lived particles in data recorded by the CMS detector at the CERN LHC. Various jet features including detailed information about each clustered particle candidate as well...

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Detalles Bibliográficos
Autor principal: Komm, Matthias
Lenguaje:eng
Publicado: 2020
Materias:
Acceso en línea:https://dx.doi.org/10.1051/epjconf/202024506013
http://cds.cern.ch/record/2752853
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author Komm, Matthias
author_facet Komm, Matthias
author_sort Komm, Matthias
collection CERN
description We present the development of a deep neural network for identifying generic displaced jets arising from the decays of exotic long-lived particles in data recorded by the CMS detector at the CERN LHC. Various jet features including detailed information about each clustered particle candidate as well as reconstructed secondary vertices are refined through the use of 1-dimensional convolution layers before being combined with high-level engineered features and passed through a series of fully-connected layers. The proper lifetime of the long-lived particle, cτ0, is treated as a parameter of the neural network model, which allows for hypothesis testing over several orders of magnitude ranging from cτ0 = 1 µm to 10 m. Domain adaptation by backward propagation is performed to construct domain-independent features at an intermediate layer of the network to mitiage difference between simulation and data. The training is performed by streaming ROOT trees containing O(100M) jets directly into the TensorFlow queue system, which allows for a flexible selection of input features and asynchronous preprocessing. The application of the tagger is showcased in a search for long-lived gluinos as predicted by split supersymmetric models demonstrating significant gains in sensitivity over a reference analysis.
id oai-inspirehep.net-1832186
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2020
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spelling oai-inspirehep.net-18321862021-03-01T20:16:23Zdoi:10.1051/epjconf/202024506013http://cds.cern.ch/record/2752853engKomm, MatthiasIdentification of new long-lived particles using deep neural networksComputing and ComputersParticle Physics - ExperimentWe present the development of a deep neural network for identifying generic displaced jets arising from the decays of exotic long-lived particles in data recorded by the CMS detector at the CERN LHC. Various jet features including detailed information about each clustered particle candidate as well as reconstructed secondary vertices are refined through the use of 1-dimensional convolution layers before being combined with high-level engineered features and passed through a series of fully-connected layers. The proper lifetime of the long-lived particle, cτ0, is treated as a parameter of the neural network model, which allows for hypothesis testing over several orders of magnitude ranging from cτ0 = 1 µm to 10 m. Domain adaptation by backward propagation is performed to construct domain-independent features at an intermediate layer of the network to mitiage difference between simulation and data. The training is performed by streaming ROOT trees containing O(100M) jets directly into the TensorFlow queue system, which allows for a flexible selection of input features and asynchronous preprocessing. The application of the tagger is showcased in a search for long-lived gluinos as predicted by split supersymmetric models demonstrating significant gains in sensitivity over a reference analysis.oai:inspirehep.net:18321862020
spellingShingle Computing and Computers
Particle Physics - Experiment
Komm, Matthias
Identification of new long-lived particles using deep neural networks
title Identification of new long-lived particles using deep neural networks
title_full Identification of new long-lived particles using deep neural networks
title_fullStr Identification of new long-lived particles using deep neural networks
title_full_unstemmed Identification of new long-lived particles using deep neural networks
title_short Identification of new long-lived particles using deep neural networks
title_sort identification of new long-lived particles using deep neural networks
topic Computing and Computers
Particle Physics - Experiment
url https://dx.doi.org/10.1051/epjconf/202024506013
http://cds.cern.ch/record/2752853
work_keys_str_mv AT kommmatthias identificationofnewlonglivedparticlesusingdeepneuralnetworks