Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Cross-lingual Knowledge Graph Alignment via Graph Matching Neural Network

About

Previous cross-lingual knowledge graph (KG) alignment studies rely on entity embeddings derived only from monolingual KG structural information, which may fail at matching entities that have different facts in two KGs. In this paper, we introduce the topic entity graph, a local sub-graph of an entity, to represent entities with their contextual information in KG. From this view, the KB-alignment task can be formulated as a graph matching problem; and we further propose a graph-attention based solution, which first matches all entities in two topic entity graphs, and then jointly model the local matching information to derive a graph-level matching vector. Experiments show that our model outperforms previous state-of-the-art methods by a large margin.

Kun Xu, Liwei Wang, Mo Yu, Yansong Feng, Yan Song, Zhiguo Wang, Dong Yu• 2019

Related benchmarks

TaskDatasetResultRank
Entity AlignmentDBP15K FR-EN
Hits@10.8938
158
Entity AlignmentDBP15K JA-EN (test)
Hits@174
149
Entity AlignmentDBP15K ZH-EN
H@167.93
143
Entity AlignmentDBP15K ZH-EN (test)
Hits@167.9
134
Entity AlignmentDBP15K FR-EN (test)
Hits@189.4
133
Entity AlignmentDBP15K JA-EN
Hits@10.7397
126
Entity AlignmentDBP15K
Runtime (s)2.63e+4
59
Entity AlignmentSRPRS
Time cost (s)1.30e+4
59
Entity AlignmentSRPRS FR-EN (test)
Hits@10.574
57
Entity AlignmentSRPRS DE-EN (test)
Hits@10.681
57
Showing 10 of 14 rows

Other info

Follow for update