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Mass-decorrelated Xbb Tagger using Adversarial Neural Network

One key task performed by the ATLAS experiment at the LHC is the Xbb tagging, which refers to the identification of Higgs bosons decaying into bottom quark pairs ($H$ → $b$$\bar{b}$. Deep neural networks (DNN) have been adopted to develop Xbb taggers. While DNN-based taggers are generally performan...

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Autor principal: Chen, Shihlung
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:http://cds.cern.ch/record/2799494
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author Chen, Shihlung
author_facet Chen, Shihlung
author_sort Chen, Shihlung
collection CERN
description One key task performed by the ATLAS experiment at the LHC is the Xbb tagging, which refers to the identification of Higgs bosons decaying into bottom quark pairs ($H$ → $b$$\bar{b}$. Deep neural networks (DNN) have been adopted to develop Xbb taggers. While DNN-based taggers are generally performant in signal vs. background classification, they tend to have high jet mass correlation, which is undesired as it sculpts the jet mass distribution of the background to resemble that of the signal. One technique to minimize jet mass correlation is the training of an adversarial neural network (ANN). In this study we demonstrate the application of ANN training to develop two mass-decorrelated Xbb taggers (Hbb vs. Dijet and Hbb vs. Top). The performance is evaluated with metrics for classification power and jet mass correlation
id cern-2799494
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2022
record_format invenio
spelling cern-27994942022-01-14T21:12:26Zhttp://cds.cern.ch/record/2799494engChen, ShihlungMass-decorrelated Xbb Tagger using Adversarial Neural NetworkDetectors and Experimental TechniquesOne key task performed by the ATLAS experiment at the LHC is the Xbb tagging, which refers to the identification of Higgs bosons decaying into bottom quark pairs ($H$ → $b$$\bar{b}$. Deep neural networks (DNN) have been adopted to develop Xbb taggers. While DNN-based taggers are generally performant in signal vs. background classification, they tend to have high jet mass correlation, which is undesired as it sculpts the jet mass distribution of the background to resemble that of the signal. One technique to minimize jet mass correlation is the training of an adversarial neural network (ANN). In this study we demonstrate the application of ANN training to develop two mass-decorrelated Xbb taggers (Hbb vs. Dijet and Hbb vs. Top). The performance is evaluated with metrics for classification power and jet mass correlationCERN-THESIS-2019-430oai:cds.cern.ch:27994942022-01-13T13:36:31Z
spellingShingle Detectors and Experimental Techniques
Chen, Shihlung
Mass-decorrelated Xbb Tagger using Adversarial Neural Network
title Mass-decorrelated Xbb Tagger using Adversarial Neural Network
title_full Mass-decorrelated Xbb Tagger using Adversarial Neural Network
title_fullStr Mass-decorrelated Xbb Tagger using Adversarial Neural Network
title_full_unstemmed Mass-decorrelated Xbb Tagger using Adversarial Neural Network
title_short Mass-decorrelated Xbb Tagger using Adversarial Neural Network
title_sort mass-decorrelated xbb tagger using adversarial neural network
topic Detectors and Experimental Techniques
url http://cds.cern.ch/record/2799494
work_keys_str_mv AT chenshihlung massdecorrelatedxbbtaggerusingadversarialneuralnetwork