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Large-Margin Classification in Hyperbolic Space

About

Representing data in hyperbolic space can effectively capture latent hierarchical relationships. With the goal of enabling accurate classification of points in hyperbolic space while respecting their hyperbolic geometry, we introduce hyperbolic SVM, a hyperbolic formulation of support vector machine classifiers, and elucidate through new theoretical work its connection to the Euclidean counterpart. We demonstrate the performance improvement of hyperbolic SVM for multi-class prediction tasks on real-world complex networks as well as simulated datasets. Our work allows analytic pipelines that take the inherent hyperbolic geometry of the data into account in an end-to-end fashion without resorting to ill-fitting tools developed for Euclidean space.

Hyunghoon Cho, Benjamin DeMeo, Jian Peng, Bonnie Berger• 2018

Related benchmarks

TaskDatasetResultRank
Subtree ClassificationWordNet worker.n.01 (test)
F1 Score54
10
Subtree ClassificationWordNet animal.n.01 (test)
F1 Score53
10
Subtree ClassificationWordNet group.n.01 (test)
F1 Score52
10
Subtree ClassificationWordNet mammal.n.01 (test)
F1 Score39
10
Node ClassificationKarate
F1 Score95
4
Node ClassificationPolBlogs
F1 Score92
4
Node ClassificationFootball
F1 Score30
4
Node ClassificationPolbooks
F1 Score83
4
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