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TransEdge: Translating Relation-contextualized Embeddings for Knowledge Graphs

About

Learning knowledge graph (KG) embeddings has received increasing attention in recent years. Most embedding models in literature interpret relations as linear or bilinear mapping functions to operate on entity embeddings. However, we find that such relation-level modeling cannot capture the diverse relational structures of KGs well. In this paper, we propose a novel edge-centric embedding model TransEdge, which contextualizes relation representations in terms of specific head-tail entity pairs. We refer to such contextualized representations of a relation as edge embeddings and interpret them as translations between entity embeddings. TransEdge achieves promising performance on different prediction tasks. Our experiments on benchmark datasets indicate that it obtains the state-of-the-art results on embedding-based entity alignment. We also show that TransEdge is complementary with conventional entity alignment methods. Moreover, it shows very competitive performance on link prediction.

Zequn Sun, Jiacheng Huang, Wei Hu, Muchao Chen, Lingbing Guo, Yuzhong Qu• 2020

Related benchmarks

TaskDatasetResultRank
Entity AlignmentDBP15K FR-EN
Hits@10.7101
184
Entity AlignmentDBP15K ZH-EN
H@173.51
166
Entity AlignmentDBP15K JA-EN
Hits@10.719
149
Entity AlignmentDBP15K JA-EN (test)
Hits@171.9
149
Entity AlignmentDBP15K ZH-EN (test)
Hits@173.5
134
Entity AlignmentDBP15K FR-EN (test)
Hits@171
133
Entity AlignmentDBP15K
Runtime (s)3.63e+3
59
Entity AlignmentSRPRS
Time cost (s)1.21e+3
59
Entity AlignmentSRPRS DE-EN (test)
Hits@10.556
57
Entity AlignmentSRPRS FR-EN (test)
Hits@10.4
57
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