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Machine Learning String Standard Models

We study machine learning of phenomenologically relevant properties of string compactifications, which arise in the context of heterotic line bundle models. Both supervised and unsupervised learning are considered. We find that, for a fixed compactification manifold, relatively small neural networks...

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Detalles Bibliográficos
Autores principales: Deen, Rehan, He, Yang-Hui, Lee, Seung-Joo, Lukas, Andre
Lenguaje:eng
Publicado: 2020
Materias:
Acceso en línea:https://dx.doi.org/10.1103/PhysRevD.105.046001
http://cds.cern.ch/record/2715331
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author Deen, Rehan
He, Yang-Hui
Lee, Seung-Joo
Lukas, Andre
author_facet Deen, Rehan
He, Yang-Hui
Lee, Seung-Joo
Lukas, Andre
author_sort Deen, Rehan
collection CERN
description We study machine learning of phenomenologically relevant properties of string compactifications, which arise in the context of heterotic line bundle models. Both supervised and unsupervised learning are considered. We find that, for a fixed compactification manifold, relatively small neural networks are capable of distinguishing consistent line bundle models with the correct gauge group and the correct chiral asymmetry from random models without these properties. The same distinction can also be achieved in the context of unsupervised learning, using an autoencoder. Learning nontopological properties, specifically the number of Higgs multiplets, turns out to be more difficult, but is possible using sizeable networks and feature-enhanced datasets.
id cern-2715331
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2020
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spelling cern-27153312023-10-04T08:58:26Zdoi:10.1103/PhysRevD.105.046001http://cds.cern.ch/record/2715331engDeen, RehanHe, Yang-HuiLee, Seung-JooLukas, AndreMachine Learning String Standard Modelsstat.MLMathematical Physics and Mathematicsmath.AGMathematical Physics and Mathematicshep-thParticle Physics - TheoryWe study machine learning of phenomenologically relevant properties of string compactifications, which arise in the context of heterotic line bundle models. Both supervised and unsupervised learning are considered. We find that, for a fixed compactification manifold, relatively small neural networks are capable of distinguishing consistent line bundle models with the correct gauge group and the correct chiral asymmetry from random models without these properties. The same distinction can also be achieved in the context of unsupervised learning, using an autoencoder. Learning nontopological properties, specifically the number of Higgs multiplets, turns out to be more difficult, but is possible using sizeable networks and feature-enhanced datasets.We study machine learning of phenomenologically relevant properties of string compactifications, which arise in the context of heterotic line bundle models. Both supervised and unsupervised learning are considered. We find that, for a fixed compactification manifold, relatively small neural networks are capable of distinguishing consistent line bundle models with the correct gauge group and the correct chiral asymmetry from random models without these properties. The same distinction can also be achieved in the context of unsupervised learning, using an auto-encoder. Learning non-topological properties, specifically the number of Higgs multiplets, turns out to be more difficult, but is possible using sizeable networks and feature-enhanced data sets.arXiv:2003.13339CERN-TH-2020-050CTPU-PTC-20-06oai:cds.cern.ch:27153312020-03-30
spellingShingle stat.ML
Mathematical Physics and Mathematics
math.AG
Mathematical Physics and Mathematics
hep-th
Particle Physics - Theory
Deen, Rehan
He, Yang-Hui
Lee, Seung-Joo
Lukas, Andre
Machine Learning String Standard Models
title Machine Learning String Standard Models
title_full Machine Learning String Standard Models
title_fullStr Machine Learning String Standard Models
title_full_unstemmed Machine Learning String Standard Models
title_short Machine Learning String Standard Models
title_sort machine learning string standard models
topic stat.ML
Mathematical Physics and Mathematics
math.AG
Mathematical Physics and Mathematics
hep-th
Particle Physics - Theory
url https://dx.doi.org/10.1103/PhysRevD.105.046001
http://cds.cern.ch/record/2715331
work_keys_str_mv AT deenrehan machinelearningstringstandardmodels
AT heyanghui machinelearningstringstandardmodels
AT leeseungjoo machinelearningstringstandardmodels
AT lukasandre machinelearningstringstandardmodels