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arxiv: 1811.05993 · v2 · pith:QGG4VY7Gnew · submitted 2018-11-14 · ✦ hep-th · hep-ph

Deep learning in the heterotic orbifold landscape

classification ✦ hep-th hep-ph
keywords chartmodelsorbifoldautoencoderdeepfertileheteroticislands
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We use deep autoencoder neural networks to draw a chart of the heterotic $\mathbb{Z}_6$-II orbifold landscape. Even though the autoencoder is trained without knowing the phenomenological properties of the $\mathbb{Z}_6$-II orbifold models, we are able to identify fertile islands in this chart where phenomenologically promising models cluster. Then, we apply a decision tree to our chart in order to extract the defining properties of the fertile islands. Based on this information we propose a new search strategy for phenomenologically promising string models.

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