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Moduli-dependent Calabi-Yau and SU(3)-structure metrics from Machine Learning

We use machine learning to approximate Calabi-Yau and SU(3)-structure metrics, including for the first time complex structure moduli dependence. Our new methods furthermore improve existing numerical approximations in terms of accuracy and speed. Knowing these metrics has numerous applications, rang...

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Detalles Bibliográficos
Autores principales: Anderson, Lara B., Gerdes, Mathis, Gray, James, Krippendorf, Sven, Raghuram, Nikhil, Ruehle, Fabian
Lenguaje:eng
Publicado: 2020
Materias:
Acceso en línea:https://dx.doi.org/10.1007/JHEP05(2021)013
http://cds.cern.ch/record/2747157
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author Anderson, Lara B.
Gerdes, Mathis
Gray, James
Krippendorf, Sven
Raghuram, Nikhil
Ruehle, Fabian
author_facet Anderson, Lara B.
Gerdes, Mathis
Gray, James
Krippendorf, Sven
Raghuram, Nikhil
Ruehle, Fabian
author_sort Anderson, Lara B.
collection CERN
description We use machine learning to approximate Calabi-Yau and SU(3)-structure metrics, including for the first time complex structure moduli dependence. Our new methods furthermore improve existing numerical approximations in terms of accuracy and speed. Knowing these metrics has numerous applications, ranging from computations of crucial aspects of the effective field theory of string compactifications such as the canonical normalizations for Yukawa couplings, and the massive string spectrum which plays a crucial role in swampland conjectures, to mirror symmetry and the SYZ conjecture. In the case of SU(3) structure, our machine learning approach allows us to engineer metrics with certain torsion properties. Our methods are demonstrated for Calabi-Yau and SU(3)-structure manifolds based on a one-parameter family of quintic hypersurfaces in ℙ$^{4}$.
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language eng
publishDate 2020
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spelling cern-27471572023-10-04T08:17:01Zdoi:10.1007/JHEP05(2021)013http://cds.cern.ch/record/2747157engAnderson, Lara B.Gerdes, MathisGray, JamesKrippendorf, SvenRaghuram, NikhilRuehle, FabianModuli-dependent Calabi-Yau and SU(3)-structure metrics from Machine Learninghep-thParticle Physics - TheoryWe use machine learning to approximate Calabi-Yau and SU(3)-structure metrics, including for the first time complex structure moduli dependence. Our new methods furthermore improve existing numerical approximations in terms of accuracy and speed. Knowing these metrics has numerous applications, ranging from computations of crucial aspects of the effective field theory of string compactifications such as the canonical normalizations for Yukawa couplings, and the massive string spectrum which plays a crucial role in swampland conjectures, to mirror symmetry and the SYZ conjecture. In the case of SU(3) structure, our machine learning approach allows us to engineer metrics with certain torsion properties. Our methods are demonstrated for Calabi-Yau and SU(3)-structure manifolds based on a one-parameter family of quintic hypersurfaces in ℙ$^{4}$.We use machine learning to approximate Calabi-Yau and SU(3)-structure metrics, including for the first time complex structure moduli dependence. Our new methods furthermore improve existing numerical approximations in terms of accuracy and speed. Knowing these metrics has numerous applications, ranging from computations of crucial aspects of the effective field theory of string compactifications such as the canonical normalizations for Yukawa couplings, and the massive string spectrum which plays a crucial role in swampland conjectures, to mirror symmetry and the SYZ conjecture. In the case of SU(3) structure, our machine learning approach allows us to engineer metrics with certain torsion properties. Our methods are demonstrated for Calabi-Yau and SU(3)-structure manifolds based on a one-parameter family of quintic hypersurfaces in $\mathbb{P}^4.$arXiv:2012.04656CERN-TH-2020-205oai:cds.cern.ch:27471572020-12-08
spellingShingle hep-th
Particle Physics - Theory
Anderson, Lara B.
Gerdes, Mathis
Gray, James
Krippendorf, Sven
Raghuram, Nikhil
Ruehle, Fabian
Moduli-dependent Calabi-Yau and SU(3)-structure metrics from Machine Learning
title Moduli-dependent Calabi-Yau and SU(3)-structure metrics from Machine Learning
title_full Moduli-dependent Calabi-Yau and SU(3)-structure metrics from Machine Learning
title_fullStr Moduli-dependent Calabi-Yau and SU(3)-structure metrics from Machine Learning
title_full_unstemmed Moduli-dependent Calabi-Yau and SU(3)-structure metrics from Machine Learning
title_short Moduli-dependent Calabi-Yau and SU(3)-structure metrics from Machine Learning
title_sort moduli-dependent calabi-yau and su(3)-structure metrics from machine learning
topic hep-th
Particle Physics - Theory
url https://dx.doi.org/10.1007/JHEP05(2021)013
http://cds.cern.ch/record/2747157
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