2021
DOI: 10.48550/arxiv.2102.06186
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Quadric Hypersurface Intersection for Manifold Learning in Feature Space

Abstract: The knowledge that data lies close to a particular submanifold of the ambient Euclidean space may be useful in a number of ways. For instance, one may want to automatically mark any point far away from the submanifold as an outlier, or to use its geodesic distance to measure similarity between points. Classical problems for manifold learning are often posed in a very high dimension, e.g. for spaces of images or spaces of representations of words. Today, with deep representation learning on the rise in areas su… Show more

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