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ReSel: N-ary Relation Extraction from Scientific Text and Tables by Learning to Retrieve and Select

Yuchen Zhuang, Yinghao Li, Junyang Zhang, Yue Yu, Yingjun Mou, Xiang Chen, Le Song, Chao Zhang

202211 citationsDOIOpen Access PDF

Abstract

We study the problem of extracting N-ary relation tuples from scientific articles. This task is challenging because the target knowledge tuples can reside in multiple parts and modalities of the document. Our proposed method ReSel decomposes this task into a two-stage procedure that first retrieves the most relevant paragraph/table and then selects the target entity from the retrieved component. For the high-level retrieval stage, ReSel designs a simple and effective feature set, which captures multi-level lexical and semantic similarities between the query and components. For the low-level selection stage, ReSel designs a cross-modal entity correlation graph along with a multi-view architecture, which models both semantic and document-structural relations between entities. Our experiments on three scientific information extraction datasets show that ReSel outperforms state-of-the-art baselines significantly.

Topics & Concepts

Computer scienceTupleRelationship extractionInformation retrievalParagraphArtificial intelligenceTask (project management)Relation (database)GraphSet (abstract data type)Natural language processingTable (database)Information extractionData miningTheoretical computer scienceWorld Wide WebProgramming languageEconomicsMathematicsManagementDiscrete mathematicsTopic ModelingAdvanced Text Analysis TechniquesData Quality and Management
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