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Document-level Relation Extraction via Separate Relation Representation and Logical Reasoning

Heyan Huang, Changsen Yuan, Qian Liu, Yixin Cao

2023ACM Transactions on Information Systems19 citationsDOIOpen Access PDF

Abstract

Document-level relation extraction (RE) extends the identification of entity/mentions’ relation from the single sentence to the long document. It is more realistic and poses new challenges to relation representation and reasoning skills. In this article, we propose a novel model, SRLR , using S eparate Relation R epresentation and L ogical R easoning considering the indirect relation representation and complex reasoning of evidence sentence problems. Specifically, we first expand the judgment of relational facts from the entity-level to the mention-level, highlighting fine-grained information to capture the relation representation for the entity pair. Second, we propose a logical reasoning module to identify evidence sentences and conduct relational reasoning. Extensive experiments on two publicly available benchmark datasets demonstrate the effectiveness of our proposed SRLR as compared to 19 baseline models. Further ablation study also verifies the effects of the key components.

Topics & Concepts

Relation (database)Computer scienceRelationship extractionRepresentation (politics)Benchmark (surveying)SentenceNatural language processingKey (lock)Artificial intelligenceIdentification (biology)Information retrievalData miningGeographyBiologyPolitical scienceGeodesyLawBotanyPoliticsComputer securityTopic ModelingNatural Language Processing TechniquesAdvanced Text Analysis Techniques
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