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A sequence-to-sequence approach for document-level relation extraction

John Giorgi, Gary D. Bader, Bo Wang

202254 citationsDOIOpen Access PDF

Abstract

Motivated by the fact that many relations cross the sentence boundary, there has been increasing interest in document-level relation extraction (DocRE). DocRE requires integrating information within and across sentences, capturing complex interactions between mentions of entities. Most existing methods are pipelinebased, requiring entities as input. However, jointly learning to extract entities and relations can improve performance and be more efficient due to shared parameters and training steps. In this paper, we develop a sequence-tosequence approach, seq2rel, that can learn the subtasks of DocRE (entity extraction, coreference resolution and relation extraction) end-toend, replacing a pipeline of task-specific components. Using a simple strategy we call entity hinting, we compare our approach to existing pipeline-based methods on several popular biomedical datasets, in some cases exceeding their performance. We also report the first end-to-end results on these datasets for future comparison. Finally, we demonstrate that, under our model, an end-to-end approach outperforms a pipeline-based approach. Our code, data and trained models are available at https:

Topics & Concepts

Computer sciencePipeline (software)CoreferenceRelationship extractionSequence (biology)Task (project management)SentenceRelation (database)Information extractionNatural language processingCode (set theory)Information retrievalArtificial intelligenceNamed-entity recognitionData miningResolution (logic)Programming languageSet (abstract data type)BiologyEconomicsManagementGeneticsTopic ModelingBiomedical Text Mining and OntologiesNatural Language Processing Techniques
A sequence-to-sequence approach for document-level relation extraction | Litcius