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Collective Entity Alignment via Adaptive Features

About

Entity alignment (EA) identifies entities that refer to the same real-world object but locate in different knowledge graphs (KGs), and has been harnessed for KG construction and integration. When generating EA results, current solutions treat entities independently and fail to take into account the interdependence between entities. To fill this gap, we propose a collective EA framework. We first employ three representative features, i.e., structural, semantic and string signals, which are adapted to capture different aspects of the similarity between entities in heterogeneous KGs. In order to make collective EA decisions, we formulate EA as the classical stable matching problem, which is further effectively solved by deferred acceptance algorithm. Our proposal is evaluated on both cross-lingual and mono-lingual EA benchmarks against state-of-the-art solutions, and the empirical results verify its effectiveness and superiority.

Weixin Zeng, Xiang Zhao, Jiuyang Tang, Xuemin Lin• 2019

Related benchmarks

TaskDatasetResultRank
Entity AlignmentDBP15K JA-EN (test)
Hits@186.3
149
Entity AlignmentDBP15K ZH-EN (test)
Hits@178.7
134
Entity AlignmentDBP15K FR-EN (test)
Hits@197.2
133
Entity AlignmentSRPRS FR-EN (test)
Hits@10.962
57
Entity AlignmentSRPRS DE-EN (test)
Hits@10.971
57
Entity AlignmentSRPRS EN-DE (test)
Hits@10.971
12
Entity AlignmentSRPRS EN-FR (test)
Hits@196.2
12
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