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LHCb Topological Trigger Reoptimization

The main b-physics trigger algorithm used by the LHCb experiment is the so-called topological trigger. The topological trigger selects vertices which are a) detached from the primary proton-proton collision and b) compatible with coming from the decay of a b-hadron. In the LHC Run 1, this trigger, w...

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Autores principales: Likhomanenko, Tatiana, Ilten, Philip, Khairullin, Egor, Rogozhnikov, Alex, Ustyuzhanin, Andrey, Williams, Mike
Lenguaje:eng
Publicado: 2015
Materias:
Acceso en línea:https://dx.doi.org/10.1088/1742-6596/664/8/082025
http://cds.cern.ch/record/2019813
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author Likhomanenko, Tatiana
Ilten, Philip
Khairullin, Egor
Rogozhnikov, Alex
Ustyuzhanin, Andrey
Williams, Mike
author_facet Likhomanenko, Tatiana
Ilten, Philip
Khairullin, Egor
Rogozhnikov, Alex
Ustyuzhanin, Andrey
Williams, Mike
author_sort Likhomanenko, Tatiana
collection CERN
description The main b-physics trigger algorithm used by the LHCb experiment is the so-called topological trigger. The topological trigger selects vertices which are a) detached from the primary proton-proton collision and b) compatible with coming from the decay of a b-hadron. In the LHC Run 1, this trigger, which utilized a custom boosted decision tree algorithm, selected a nearly 100% pure sample of b-hadrons with a typical efficiency of 60-70%; its output was used in about 60% of LHCb papers. This talk presents studies carried out to optimize the topological trigger for LHC Run 2. In particular, we have carried out a detailed comparison of various machine learning classifier algorithms, e.g., AdaBoost, MatrixNet and neural networks. The topological trigger algorithm is designed to select all "interesting" decays of b-hadrons, but cannot be trained on every such decay. Studies have therefore been performed to determine how to optimize the performance of the classification algorithm on decays not used in the training. Methods studied include cascading, ensembling and blending techniques. Furthermore, novel boosting techniques have been implemented that will help reduce systematic uncertainties in Run 2 measurements. We demonstrate that the reoptimized topological trigger is expected to significantly improve on the Run 1 performance for a wide range of b-hadron decays.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2015
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spelling cern-20198132022-08-10T13:00:44Zdoi:10.1088/1742-6596/664/8/082025http://cds.cern.ch/record/2019813engLikhomanenko, TatianaIlten, PhilipKhairullin, EgorRogozhnikov, AlexUstyuzhanin, AndreyWilliams, MikeLHCb Topological Trigger ReoptimizationParticle Physics - ExperimentDetectors and Experimental TechniquesThe main b-physics trigger algorithm used by the LHCb experiment is the so-called topological trigger. The topological trigger selects vertices which are a) detached from the primary proton-proton collision and b) compatible with coming from the decay of a b-hadron. In the LHC Run 1, this trigger, which utilized a custom boosted decision tree algorithm, selected a nearly 100% pure sample of b-hadrons with a typical efficiency of 60-70%; its output was used in about 60% of LHCb papers. This talk presents studies carried out to optimize the topological trigger for LHC Run 2. In particular, we have carried out a detailed comparison of various machine learning classifier algorithms, e.g., AdaBoost, MatrixNet and neural networks. The topological trigger algorithm is designed to select all "interesting" decays of b-hadrons, but cannot be trained on every such decay. Studies have therefore been performed to determine how to optimize the performance of the classification algorithm on decays not used in the training. Methods studied include cascading, ensembling and blending techniques. Furthermore, novel boosting techniques have been implemented that will help reduce systematic uncertainties in Run 2 measurements. We demonstrate that the reoptimized topological trigger is expected to significantly improve on the Run 1 performance for a wide range of b-hadron decays.The main b-physics trigger algorithm used by the LHCb experiment is the so- called topological trigger. The topological trigger selects vertices which are a) detached from the primary proton-proton collision and b) compatible with coming from the decay of a b-hadron. In the LHC Run 1, this trigger, which utilized a custom boosted decision tree algorithm, selected a nearly 100% pure sample of b-hadrons with a typical efficiency of 60-70%, its output was used in about 60% of LHCb papers. This talk presents studies carried out to optimize the topological trigger for LHC Run 2. In particular, we have carried out a detailed comparison of various machine learning classifier algorithms, e.g., AdaBoost, MatrixNet and neural networks. The topological trigger algorithm is designed to select all ’interesting” decays of b-hadrons, but cannot be trained on every such decay. Studies have therefore been performed to determine how to optimize the performance of the classification algorithm on decays not used in the training. Methods studied include cascading, ensembling and blending techniques. Furthermore, novel boosting techniques have been implemented that will help reduce systematic uncertainties in Run 2 measurements. We demonstrate that the reoptimized topological trigger is expected to significantly improve on the Run 1 performance for a wide range of b-hadron decays.The main b-physics trigger algorithm used by the LHCb experiment is the so-called topological trigger. The topological trigger selects vertices which are a) detached from the primary proton-proton collision and b) compatible with coming from the decay of a b-hadron. In the LHC Run 1, this trigger, which utilized a custom boosted decision tree algorithm, selected a nearly 100% pure sample of b-hadrons with a typical efficiency of 60-70%; its output was used in about 60% of LHCb papers. This talk presents studies carried out to optimize the topological trigger for LHC Run 2. In particular, we have carried out a detailed comparison of various machine learning classifier algorithms, e.g., AdaBoost, MatrixNet and neural networks. The topological trigger algorithm is designed to select all "interesting" decays of b-hadrons, but cannot be trained on every such decay. Studies have therefore been performed to determine how to optimize the performance of the classification algorithm on decays not used in the training. Methods studied include cascading, ensembling and blending techniques. Furthermore, novel boosting techniques have been implemented that will help reduce systematic uncertainties in Run 2 measurements. We demonstrate that the reoptimized topological trigger is expected to significantly improve on the Run 1 performance for a wide range of b-hadron decays.arXiv:1510.00572oai:cds.cern.ch:20198132015-10-02
spellingShingle Particle Physics - Experiment
Detectors and Experimental Techniques
Likhomanenko, Tatiana
Ilten, Philip
Khairullin, Egor
Rogozhnikov, Alex
Ustyuzhanin, Andrey
Williams, Mike
LHCb Topological Trigger Reoptimization
title LHCb Topological Trigger Reoptimization
title_full LHCb Topological Trigger Reoptimization
title_fullStr LHCb Topological Trigger Reoptimization
title_full_unstemmed LHCb Topological Trigger Reoptimization
title_short LHCb Topological Trigger Reoptimization
title_sort lhcb topological trigger reoptimization
topic Particle Physics - Experiment
Detectors and Experimental Techniques
url https://dx.doi.org/10.1088/1742-6596/664/8/082025
http://cds.cern.ch/record/2019813
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AT khairullinegor lhcbtopologicaltriggerreoptimization
AT rogozhnikovalex lhcbtopologicaltriggerreoptimization
AT ustyuzhaninandrey lhcbtopologicaltriggerreoptimization
AT williamsmike lhcbtopologicaltriggerreoptimization