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Novelty Detection Meets Collider Physics

<!--HTML-->Novelty detection is the machine learning task to recognize data, which belong to an unknown pattern. Complementary to supervised learning, it allows to analyze data model-independently. We demonstrate the potential role of novelty detection in collider physics, using autoencoder-ba...

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Autor principal: Li, Ying-Ying
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:http://cds.cern.ch/record/2672175
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author Li, Ying-Ying
author_facet Li, Ying-Ying
author_sort Li, Ying-Ying
collection CERN
description <!--HTML-->Novelty detection is the machine learning task to recognize data, which belong to an unknown pattern. Complementary to supervised learning, it allows to analyze data model-independently. We demonstrate the potential role of novelty detection in collider physics, using autoencoder-based deep neural network. Explicitly, we develop a set of density-based novelty evaluators, which are sensitive to the clustering of unknown-pattern testing data or new-physics signal events, for the design of detection algorithms. We also explore the influence of the known-pattern data fluctuations, arising from non-signal regions, on detection sensitivity. Strategies to address it are proposed. The algorithms are applied to detecting fermionic di-top partner and resonant di-top productions at LHC, and exotic Higgs decays of two specific modes at a future e+e− collider. With parton-level analysis, we conclude that potentially the new-physics benchmarks can be recognized with high efficiency.
id cern-2672175
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2019
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spelling cern-26721752022-11-02T22:33:37Zhttp://cds.cern.ch/record/2672175engLi, Ying-YingNovelty Detection Meets Collider Physics3rd IML Machine Learning WorkshopLPCC Workshops<!--HTML-->Novelty detection is the machine learning task to recognize data, which belong to an unknown pattern. Complementary to supervised learning, it allows to analyze data model-independently. We demonstrate the potential role of novelty detection in collider physics, using autoencoder-based deep neural network. Explicitly, we develop a set of density-based novelty evaluators, which are sensitive to the clustering of unknown-pattern testing data or new-physics signal events, for the design of detection algorithms. We also explore the influence of the known-pattern data fluctuations, arising from non-signal regions, on detection sensitivity. Strategies to address it are proposed. The algorithms are applied to detecting fermionic di-top partner and resonant di-top productions at LHC, and exotic Higgs decays of two specific modes at a future e+e− collider. With parton-level analysis, we conclude that potentially the new-physics benchmarks can be recognized with high efficiency.oai:cds.cern.ch:26721752019
spellingShingle LPCC Workshops
Li, Ying-Ying
Novelty Detection Meets Collider Physics
title Novelty Detection Meets Collider Physics
title_full Novelty Detection Meets Collider Physics
title_fullStr Novelty Detection Meets Collider Physics
title_full_unstemmed Novelty Detection Meets Collider Physics
title_short Novelty Detection Meets Collider Physics
title_sort novelty detection meets collider physics
topic LPCC Workshops
url http://cds.cern.ch/record/2672175
work_keys_str_mv AT liyingying noveltydetectionmeetscolliderphysics
AT liyingying 3rdimlmachinelearningworkshop