Machine Learning Kreuzer–Skarke Calabi–Yau Threefolds

12/16/2021
by   Per Berglund, et al.
0

Using a fully connected feedforward neural network we study topological invariants of a class of Calabi–Yau manifolds constructed as hypersurfaces in toric varieties associated with reflexive polytopes from the Kreuzer–Skarke database. In particular, we find the existence of a simple expression for the Euler number that can be learned in terms of limited data extracted from the polytope and its dual.

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