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Machine Learning and Algebraic Approaches towards Complete Matter Spectra in 4d F-theory

Motivated by engineering vector-like (Higgs) pairs in the spectrum of 4d F-theory compactifications, we combine machine learning and algebraic geometry techniques to analyze line bundle cohomologies on families of holomorphic curves. To quantify jumps of these cohomologies, we first generate 1.8 mil...

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Autores principales: Bies, Martin, Cvetič, Mirjam, Donagi, Ron, Lin, Ling, Liu, Muyang, Ruehle, Fabian
Lenguaje:eng
Publicado: 2020
Materias:
Acceso en línea:https://dx.doi.org/10.1007/JHEP01(2021)196
http://cds.cern.ch/record/2722689
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author Bies, Martin
Cvetič, Mirjam
Donagi, Ron
Lin, Ling
Liu, Muyang
Ruehle, Fabian
author_facet Bies, Martin
Cvetič, Mirjam
Donagi, Ron
Lin, Ling
Liu, Muyang
Ruehle, Fabian
author_sort Bies, Martin
collection CERN
description Motivated by engineering vector-like (Higgs) pairs in the spectrum of 4d F-theory compactifications, we combine machine learning and algebraic geometry techniques to analyze line bundle cohomologies on families of holomorphic curves. To quantify jumps of these cohomologies, we first generate 1.8 million pairs of line bundles and curves embedded in dP$_{3}$, for which we compute the cohomologies. A white-box machine learning approach trained on this data provides intuition for jumps due to curve splittings, which we use to construct additional vector-like Higgs-pairs in an F-Theory toy model. We also find that, in order to explain quantitatively the full dataset, further tools from algebraic geometry, in particular Brill-Noether theory, are required. Using these ingredients, we introduce a diagrammatic way to express cohomology jumps across the parameter space of each family of matter curves, which reflects a stratification of the F-theory complex structure moduli space in terms of the vector-like spectrum. Furthermore, these insights provide an algorithmically efficient way to estimate the possible cohomology dimensions across the entire parameter space.
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spelling cern-27226892023-10-04T05:59:27Zdoi:10.1007/JHEP01(2021)196http://cds.cern.ch/record/2722689engBies, MartinCvetič, MirjamDonagi, RonLin, LingLiu, MuyangRuehle, FabianMachine Learning and Algebraic Approaches towards Complete Matter Spectra in 4d F-theorymath.AGMathematical Physics and Mathematicshep-thParticle Physics - TheoryMotivated by engineering vector-like (Higgs) pairs in the spectrum of 4d F-theory compactifications, we combine machine learning and algebraic geometry techniques to analyze line bundle cohomologies on families of holomorphic curves. To quantify jumps of these cohomologies, we first generate 1.8 million pairs of line bundles and curves embedded in dP$_{3}$, for which we compute the cohomologies. A white-box machine learning approach trained on this data provides intuition for jumps due to curve splittings, which we use to construct additional vector-like Higgs-pairs in an F-Theory toy model. We also find that, in order to explain quantitatively the full dataset, further tools from algebraic geometry, in particular Brill-Noether theory, are required. Using these ingredients, we introduce a diagrammatic way to express cohomology jumps across the parameter space of each family of matter curves, which reflects a stratification of the F-theory complex structure moduli space in terms of the vector-like spectrum. Furthermore, these insights provide an algorithmically efficient way to estimate the possible cohomology dimensions across the entire parameter space.Motivated by engineering vector-like (Higgs) pairs in the spectrum of 4d F-theory compactifications, we combine machine learning and algebraic geometry techniques to analyze line bundle cohomologies on families of holomorphic curves. To quantify jumps of these cohomologies, we first generate 1.8 million pairs of line bundles and curves embedded in $dP_3$, for which we compute the cohomologies. A white-box machine learning approach trained on this data provides intuition for jumps due to curve splittings, which we use to construct additional vector-like Higgs-pairs in an F-Theory toy model. We also find that, in order to explain quantitatively the full dataset, further tools from algebraic geometry, in particular Brill--Noether theory, are required. Using these ingredients, we introduce a diagrammatic way to express cohomology jumps across the parameter space of each family of matter curves, which reflects a stratification of the F-theory complex structure moduli space in terms of the vector-like spectrum. Furthermore, these insights provide an algorithmically efficient way to estimate the possible cohomology dimensions across the entire parameter space.arXiv:2007.00009UPR-1305-TCERN-TH-2020-111oai:cds.cern.ch:27226892020-06-30
spellingShingle math.AG
Mathematical Physics and Mathematics
hep-th
Particle Physics - Theory
Bies, Martin
Cvetič, Mirjam
Donagi, Ron
Lin, Ling
Liu, Muyang
Ruehle, Fabian
Machine Learning and Algebraic Approaches towards Complete Matter Spectra in 4d F-theory
title Machine Learning and Algebraic Approaches towards Complete Matter Spectra in 4d F-theory
title_full Machine Learning and Algebraic Approaches towards Complete Matter Spectra in 4d F-theory
title_fullStr Machine Learning and Algebraic Approaches towards Complete Matter Spectra in 4d F-theory
title_full_unstemmed Machine Learning and Algebraic Approaches towards Complete Matter Spectra in 4d F-theory
title_short Machine Learning and Algebraic Approaches towards Complete Matter Spectra in 4d F-theory
title_sort machine learning and algebraic approaches towards complete matter spectra in 4d f-theory
topic math.AG
Mathematical Physics and Mathematics
hep-th
Particle Physics - Theory
url https://dx.doi.org/10.1007/JHEP01(2021)196
http://cds.cern.ch/record/2722689
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