RegD embeds hierarchical data in Euclidean space using arbitrary regions and a depth-based dissimilarity that emulates hyperbolic expressiveness including exponential growth.
,regn ⊆reg such that for any distincti, j∈ {1,
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RegD: Hierarchical Embeddings via Dissimilarity between Arbitrary Euclidean Regions
RegD embeds hierarchical data in Euclidean space using arbitrary regions and a depth-based dissimilarity that emulates hyperbolic expressiveness including exponential growth.