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A Novel Table-to-Graph Generation Approach for Document-Level Joint Entity and Relation Extraction

Ruoyu Zhang, Yanzeng Li, Lei Zou

202320 citationsDOIOpen Access PDF

Abstract

Document-level relation extraction (DocRE) aims to extract relations among entities within a document, which is crucial for applications like knowledge graph construction. Existing methods usually assume that entities and their mentions are identified beforehand, which falls short of real-world applications. To overcome this limitation, we propose TaG, a novel table-to-graph generation model for joint extractionof entities and relations at document-level. To enhance the learning of task dependencies, TaG induces a latent graph among mentions, with different types of edges indicating different task information, which is further broadcast with a relational graph convolutional network. To alleviate the error propagation problem, we adapt the hierarchical agglomerative clustering algorithm to back-propagate task information at decoding stage. Experiments on the benchmark dataset, DocRED, demonstrate that TaG surpasses previous methods by a large margin and achieves state-of-the-art results.

Topics & Concepts

Computer scienceRelationship extractionGraphClustering coefficientCluster analysisMargin (machine learning)Hierarchical clusteringKnowledge graphArtificial intelligenceRelation (database)Data miningInformation retrievalTheoretical computer scienceMachine learningSemantic Web and OntologiesTopic ModelingData Quality and Management
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