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Mention-centered Graph Neural Network for Document-level Relation Extraction

2021-03-15 08:19:44
Jiaxin Pan, Min Peng, Yiyan Zhang

Abstract

Document-level relation extraction aims to discover relations between entities across a whole document. How to build the dependency of entities from different sentences in a document remains to be a great challenge. Current approaches either leverage syntactic trees to construct document-level graphs or aggregate inference information from different sentences. In this paper, we build cross-sentence dependencies by inferring compositional relations between inter-sentence mentions. Adopting aggressive linking strategy, intermediate relations are reasoned on the document-level graphs by mention convolution. We further notice the generalization problem of NA instances, which is caused by incomplete annotation and worsened by fully-connected mention pairs. An improved ranking loss is proposed to attend this problem. Experiments show the connections between different mentions are crucial to document-level relation extraction, which enables the model to extract more meaningful higher-level compositional relations.

Abstract (translated)

URL

https://arxiv.org/abs/2103.08200

PDF

https://arxiv.org/pdf/2103.08200.pdf


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