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A Bayesian approach to particle identification in ALICE

<!--HTML-->Among the LHC experiments, ALICE has unique particle identification (PID) capabilities exploiting different types of detectors. During Run 1, a Bayesian approach to PID was developed and intensively tested. It facilitates the combination of information from different sub-systems....

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Detalles Bibliográficos
Autor principal: Antonioli, Pietro
Lenguaje:eng
Publicado: 2016
Materias:
Acceso en línea:http://cds.cern.ch/record/2147992
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author Antonioli, Pietro
author_facet Antonioli, Pietro
author_sort Antonioli, Pietro
collection CERN
description <!--HTML-->Among the LHC experiments, ALICE has unique particle identification (PID) capabilities exploiting different types of detectors. During Run 1, a Bayesian approach to PID was developed and intensively tested. It facilitates the combination of information from different sub-systems. The adopted methodology and formalism as well as the performance of the Bayesian PID approach for charged pions, kaons and protons in the central barrel of ALICE will be reviewed. Results are presented with PID performed via measurements of specific energy loss (dE/dx) and time-of-flight using information from the TPC and TOF detectors, respectively. Methods to extract priors from data and to compare PID efficiencies and misidentification probabilities in data and Monte Carlo using high-purity samples of identified particles will be presented. Bayesian PID results were found consistent with previous measurements published by ALICE. The Bayesian PID approach gives a higher signal-to-background ratio and a similar or larger statistical significance when compared with standard PID selections, despite a reduced identification efficiency. Future potential applications of the technique will be discussed.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2016
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spelling cern-21479922022-11-02T22:33:08Zhttp://cds.cern.ch/record/2147992engAntonioli, PietroA Bayesian approach to particle identification in ALICEA Bayesian approach to particle identification in ALICELHC Seminar<!--HTML-->Among the LHC experiments, ALICE has unique particle identification (PID) capabilities exploiting different types of detectors. During Run 1, a Bayesian approach to PID was developed and intensively tested. It facilitates the combination of information from different sub-systems. The adopted methodology and formalism as well as the performance of the Bayesian PID approach for charged pions, kaons and protons in the central barrel of ALICE will be reviewed. Results are presented with PID performed via measurements of specific energy loss (dE/dx) and time-of-flight using information from the TPC and TOF detectors, respectively. Methods to extract priors from data and to compare PID efficiencies and misidentification probabilities in data and Monte Carlo using high-purity samples of identified particles will be presented. Bayesian PID results were found consistent with previous measurements published by ALICE. The Bayesian PID approach gives a higher signal-to-background ratio and a similar or larger statistical significance when compared with standard PID selections, despite a reduced identification efficiency. Future potential applications of the technique will be discussed.oai:cds.cern.ch:21479922016
spellingShingle LHC Seminar
Antonioli, Pietro
A Bayesian approach to particle identification in ALICE
title A Bayesian approach to particle identification in ALICE
title_full A Bayesian approach to particle identification in ALICE
title_fullStr A Bayesian approach to particle identification in ALICE
title_full_unstemmed A Bayesian approach to particle identification in ALICE
title_short A Bayesian approach to particle identification in ALICE
title_sort bayesian approach to particle identification in alice
topic LHC Seminar
url http://cds.cern.ch/record/2147992
work_keys_str_mv AT antoniolipietro abayesianapproachtoparticleidentificationinalice
AT antoniolipietro bayesianapproachtoparticleidentificationinalice