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Learning New Physics from an Imperfect Machine
We show how to deal with uncertainties on the Standard Model predictions in an agnostic new physics search strategy that exploits artificial neural networks. Our approach builds directly on the specific Maximum Likelihood ratio treatment of uncertainties as nuisance parameters for hypothesis testing...
Autores principales: | , , , , |
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Lenguaje: | eng |
Publicado: |
2021
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Materias: | |
Acceso en línea: | https://dx.doi.org/10.1140/epjc/s10052-022-10226-y http://cds.cern.ch/record/2791774 |
_version_ | 1780972327052247040 |
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author | d'Agnolo, Raffaele Tito Grosso, Gaia Pierini, Maurizio Wulzer, Andrea Zanetti, Marco |
author_facet | d'Agnolo, Raffaele Tito Grosso, Gaia Pierini, Maurizio Wulzer, Andrea Zanetti, Marco |
author_sort | d'Agnolo, Raffaele Tito |
collection | CERN |
description | We show how to deal with uncertainties on the Standard Model predictions in an agnostic new physics search strategy that exploits artificial neural networks. Our approach builds directly on the specific Maximum Likelihood ratio treatment of uncertainties as nuisance parameters for hypothesis testing that is routinely employed in high-energy physics. After presenting the conceptual foundations of our method, we first illustrate all aspects of its implementation and extensively study its performances on a toy one-dimensional problem. We then show how to implement it in a multivariate setup by studying the impact of two typical sources of experimental uncertainties in two-body final states at the LHC. |
id | cern-2791774 |
institution | Organización Europea para la Investigación Nuclear |
language | eng |
publishDate | 2021 |
record_format | invenio |
spelling | cern-27917742023-08-19T02:40:27Zdoi:10.1140/epjc/s10052-022-10226-yhttp://cds.cern.ch/record/2791774engd'Agnolo, Raffaele TitoGrosso, GaiaPierini, MaurizioWulzer, AndreaZanetti, MarcoLearning New Physics from an Imperfect Machinehep-phParticle Physics - PhenomenologyWe show how to deal with uncertainties on the Standard Model predictions in an agnostic new physics search strategy that exploits artificial neural networks. Our approach builds directly on the specific Maximum Likelihood ratio treatment of uncertainties as nuisance parameters for hypothesis testing that is routinely employed in high-energy physics. After presenting the conceptual foundations of our method, we first illustrate all aspects of its implementation and extensively study its performances on a toy one-dimensional problem. We then show how to implement it in a multivariate setup by studying the impact of two typical sources of experimental uncertainties in two-body final states at the LHC.We show how to deal with uncertainties on the Standard Model predictions in an agnostic new physics search strategy that exploits artificial neural networks. Our approach builds directly on the specific Maximum Likelihood ratio treatment of uncertainties as nuisance parameters for hypothesis testing that is routinely employed in high-energy physics. After presenting the conceptual foundations of our method, we first illustrate all aspects of its implementation and extensively study its performances on a toy one-dimensional problem. We then show how to implement it in a multivariate setup by studying the impact of two typical sources of experimental uncertainties in two-body final states at the LHC.arXiv:2111.13633oai:cds.cern.ch:27917742021-11-26 |
spellingShingle | hep-ph Particle Physics - Phenomenology d'Agnolo, Raffaele Tito Grosso, Gaia Pierini, Maurizio Wulzer, Andrea Zanetti, Marco Learning New Physics from an Imperfect Machine |
title | Learning New Physics from an Imperfect Machine |
title_full | Learning New Physics from an Imperfect Machine |
title_fullStr | Learning New Physics from an Imperfect Machine |
title_full_unstemmed | Learning New Physics from an Imperfect Machine |
title_short | Learning New Physics from an Imperfect Machine |
title_sort | learning new physics from an imperfect machine |
topic | hep-ph Particle Physics - Phenomenology |
url | https://dx.doi.org/10.1140/epjc/s10052-022-10226-y http://cds.cern.ch/record/2791774 |
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