Identifying equivalent Calabi–Yau topologies: A discrete challenge from math and physics for machine learning

02/15/2022
by   Vishnu Jejjala, et al.
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We review briefly the characteristic topological data of Calabi–Yau threefolds and focus on the question of when two threefolds are equivalent through related topological data. This provides an interesting test case for machine learning methodology in discrete mathematics problems motivated by physics.

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