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Papers/A Frustratingly Easy Approach for Entity and Relation Extr...

A Frustratingly Easy Approach for Entity and Relation Extraction

Zexuan Zhong, Danqi Chen

2020-10-24NAACL 2021 4Structured PredictionRelation ExtractionMulti-Task LearningJoint Entity and Relation ExtractionNamed Entity Recognition (NER)
PaperPDFCode(official)Code

Abstract

End-to-end relation extraction aims to identify named entities and extract relations between them. Most recent work models these two subtasks jointly, either by casting them in one structured prediction framework, or performing multi-task learning through shared representations. In this work, we present a simple pipelined approach for entity and relation extraction, and establish the new state-of-the-art on standard benchmarks (ACE04, ACE05 and SciERC), obtaining a 1.7%-2.8% absolute improvement in relation F1 over previous joint models with the same pre-trained encoders. Our approach essentially builds on two independent encoders and merely uses the entity model to construct the input for the relation model. Through a series of careful examinations, we validate the importance of learning distinct contextual representations for entities and relations, fusing entity information early in the relation model, and incorporating global context. Finally, we also present an efficient approximation to our approach which requires only one pass of both entity and relation encoders at inference time, achieving an 8-16$\times$ speedup with a slight reduction in accuracy.

Results

TaskDatasetMetricValueModel
Relation ExtractionACE 2005NER Micro F190.9Ours: cross-sentence ALB
Relation ExtractionACE 2005RE Micro F169.4Ours: cross-sentence ALB
Relation ExtractionACE 2004NER Micro F190.3Ours: cross-sentence ALB
Relation ExtractionACE 2004RE Micro F166.1Ours: cross-sentence ALB
Relation ExtractionACE 2004RE+ Micro F162.2Ours: cross-sentence ALB
Relation ExtractionACE 2005Relation F162.2Ours: cross-sentence ALB
Relation ExtractionSciERCEntity F168.9Ours: cross-sentence
Relation ExtractionSciERCRE+ Micro F136.7Ours: cross-sentence
Relation ExtractionSciERCRelation F150.1Ours: cross-sentence
Information ExtractionACE 2005Relation F162.2Ours: cross-sentence ALB
Information ExtractionSciERCEntity F168.9Ours: cross-sentence
Information ExtractionSciERCRE+ Micro F136.7Ours: cross-sentence
Information ExtractionSciERCRelation F150.1Ours: cross-sentence
Named Entity Recognition (NER)ACE 2004F190.3Ours: cross-sentence ALB
Named Entity Recognition (NER)ACE 2005F190.9Ours: cross-sentence ALB
Named Entity Recognition (NER)SciERCF168.2Ours: cross-sentence

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