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Multi-relational Poincar\'e Graph Embeddings

About

Hyperbolic embeddings have recently gained attention in machine learning due to their ability to represent hierarchical data more accurately and succinctly than their Euclidean analogues. However, multi-relational knowledge graphs often exhibit multiple simultaneous hierarchies, which current hyperbolic models do not capture. To address this, we propose a model that embeds multi-relational graph data in the Poincar\'e ball model of hyperbolic space. Our Multi-Relational Poincar\'e model (MuRP) learns relation-specific parameters to transform entity embeddings by M\"obius matrix-vector multiplication and M\"obius addition. Experiments on the hierarchical WN18RR knowledge graph show that our Poincar\'e embeddings outperform their Euclidean counterpart and existing embedding methods on the link prediction task, particularly at lower dimensionality.

Ivana Bala\v{z}evi\'c, Carl Allen, Timothy Hospedales• 2019

Related benchmarks

TaskDatasetResultRank
Link PredictionFB15k-237
MRR33.5
280
Link PredictionWN18RR
Hits@1056.6
175
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