Back to Search Start Over

Collaborative Knowledge Graph Fusion by Exploiting the Open Corpus

Authors :
Wang, Yue
Wan, Yao
Bai, Lu
Cui, Lixin
Xu, Zhuo
Li, Ming
Yu, Philip S.
Hancock, Edwin R
Wang, Yue
Wan, Yao
Bai, Lu
Cui, Lixin
Xu, Zhuo
Li, Ming
Yu, Philip S.
Hancock, Edwin R
Publication Year :
2022

Abstract

To alleviate the challenges of building Knowledge Graphs (KG) from scratch, a more general task is to enrich a KG using triples from an open corpus, where the obtained triples contain noisy entities and relations. It is challenging to enrich a KG with newly harvested triples while maintaining the quality of the knowledge representation. This paper proposes a system to refine a KG using information harvested from an additional corpus. To this end, we formulate our task as two coupled sub-tasks, namely join event extraction (JEE) and knowledge graph fusion (KGF). We then propose a Collaborative Knowledge Graph Fusion Framework to allow our sub-tasks to mutually assist one another in an alternating manner. More concretely, the explorer carries out the JEE supervised by both the ground-truth annotation and an existing KG provided by the supervisor. The supervisor then evaluates the triples extracted by the explorer and enriches the KG with those that are highly ranked. To implement this evaluation, we further propose a Translated Relation Alignment Scoring Mechanism to align and translate the extracted triples to the prior KG. Experiments verify that this collaboration can both improve the performance of the JEE and the KGF.<br />Comment: Under review by IEEE Transactions on Knowledge and Data Engineering (TKDE)

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1333778741
Document Type :
Electronic Resource