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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...
Autores principales: | , , , , , |
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Lenguaje: | eng |
Publicado: |
2020
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Materias: | |
Acceso en línea: | https://dx.doi.org/10.1007/JHEP05(2021)013 http://cds.cern.ch/record/2747157 |
_version_ | 1780968877592674304 |
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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$^{4}$. |
id | cern-2747157 |
institution | Organización Europea para la Investigación Nuclear |
language | eng |
publishDate | 2020 |
record_format | invenio |
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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