Document-level relation extraction based on sememe knowledge-enhanced abstract meaning representation and reasoning

被引:0
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作者
Qihui Zhao
Tianhan Gao
Nan Guo
机构
[1] Northeastern University,Software College
[2] Northeastern University,School of Computer Science and Engineering
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关键词
Document-level relation extraction; Graph neural networks; Sememe computation; Abstract meaning representation; Long-tailed task;
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摘要
Document-level relation extraction is a challenging task in information extraction, as it involves identifying semantic relations between entities that are dispersed throughout a document. Existing graph-based approaches often rely on simplistic methods to construct text graphs, which do not provide enough lexical and semantic information to accurately predict the relations between entity pairs. In this paper, we introduce a document-level relation extraction method called SKAMRR (Sememe Knowledge-enhanced Abstract Meaning Representation and Reasoning). First, we generate document-level abstract meaning representation graphs using rules and acquire entity nodes’ features through sufficient information propagation. Next, we construct inference graphs for entity pairs and utilize graph neural networks to obtain their representations for relation classification. Additionally, we propose the global adaptive loss to address the issue of long-tailed data. We conduct extensive experiments on four datasets DocRE, CDR, GDA, and HacRED. Our model achieves competitive results and its performance outperforms previous state-of-the-art methods on four datasets.
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页码:6553 / 6566
页数:13
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