Harnessing Data Asymmetry: Manifold Learning in the Finsler World
arXiv cs.LG / 3/13/2026
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Key Points
- The paper proposes using Finsler geometry, an asymmetric generalisation of Riemannian geometry, to capture asymmetric relationships in data for manifold learning.
- It develops a Finsler manifold learning pipeline and adapts asymmetric embedding methods such as Finsler t-SNE and Finsler Umap.
- Experiments on synthetic and large real datasets show the approach uncovers information like density hierarchies that traditional symmetric methods miss, with embeddings that outperform Euclidean-based counterparts.
- This work broadens the applicability of asymmetric embedders beyond directed data, potentially improving data visualization and analysis workflows.
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