AI RESEARCH
Learning Geometry and Topology via Multi-Chart Flows
arXiv CS.LG
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ArXi:2505.24665v2 Announce Type: replace Real world data often lie on low-dimensional Riemannian manifolds embedded in high-dimensional spaces. This motivates learning degenerate normalizing flows that map between the ambient space and a low-dimensional latent space. However, if the manifold has a non-trivial topology, it can never be correctly learned using a single flow. Instead multiple flows must be `glued together'. In this paper, we first propose the general