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A Frustratingly Easy Approach for Entity and Relation Extraction

机译:一种令人沮丧的实体和关系提取方法

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摘要

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× speedup with a slight reduction in accuracy.
机译:端到端关系提取旨在识别命名实体并提取它们之间的关系。最近的工作通过在一个结构化预测框架中铸造它们,或通过共享表示来播放它们的两个子任务。在这项工作中,我们为实体和关系提取提供了简单的流水线方法,并在标准基准(ACE04,ACE05和Scierc)上建立了新的最先进的,从而获得了对关系的1.7%-2.8%以前的联合模型具有相同的预先培训的编码器。我们的方法基本上构建了两个独立的编码器,并且仅使用实体模型来构造关系模型的输入。通过一系列仔细的考试,我们验证了在关系模型中早期学习实体和关系,融合实体信息的独特语境表示的重要性,并结合了全局背景。最后,我们还向我们的方法提出了有效的近似,该方法只需要在推理时间内的一个实体和关系编码器的一个通过,从而实现8-16倍的加速,精度略有降低。

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