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  • title: Modeling Heterogeneous Hierarchies with Relation-specific Cones
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            Modeling Heterogeneous Hierarchies with Relation-specific Cones
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            Modeling Heterogeneous Hierarchies with Relation-specific Cones

            Dec 6, 2021

            Speakers

            YB

            Yushi Bai

            Sprecher:in · 0 Follower:innen

            RY

            Rex Ying

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            HR

            Hongyu Ren

            Sprecher:in · 1 Follower:in

            About

            Hierarchical relations are prevalent and indispensable for organizing human knowledge captured by a knowledge graph (KG). The key property of hierarchical relations is that they induce a partial ordering over the entities, which needs to be modeled in order to allow for hierarchical reasoning. However, current KG embeddings can model only a single global hierarchy (single global partial ordering) and fail to model multiple heterogeneous hierarchies that exist in a single KG. Here we present ConE…

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            NeurIPS 2021

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