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Multi-granularity sequential neural network for document-level biomedical relation extraction

机译:用于文档级生物医学关系提取的多粒度顺序神经网络

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摘要

Document-level biomedical relation extraction aims to extract the relation between multiple mentions of entities throughout an entire document. However, most methods suffer from longdistance context dependency and complex semantics causing by numerous biomedical entities and inter-sentence relations. In this paper, we propose a multi-granularity sequential network (MGSN) for document-level relation extraction to solve above problems. The proposed method learns to extract the document-level entity relation by the accumulation of document-level information and entity-level information including global and local entity information. In addition, some target entity pairs that reflect target entity relations can be extracted and paid more attention by CNN-based bi-affine structure. Experimental results on three document-level biomedical datasets demonstrate the effectiveness of the proposed model.
机译:文档级生物医学关系提取旨在提取整个文档整个文件的多个提升之间的关系。 然而,大多数方法遭受了长度的上下文依赖性和复杂的语义,导致了许多生物医学实体和际际关系。 在本文中,我们提出了一种用于文档级关系提取的多粒度顺序网络(MGSN)以解决上述问题。 该方法的学习通过包括全局和本地实体信息的文档级信息和实体级信息的累积来提取文档级实体关系。 另外,可以通过基于CNN的双仿射结构来提取和获得更多的目标实体对,以反映目标实体关系的重视。 三个文件级生物医学数据集的实验结果证明了所提出的模型的有效性。

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