2023
DOI: 10.1038/s41598-023-40474-1
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A hybrid attention and dilated convolution framework for entity and relation extraction and mining

Yuxiang Shan,
Hailiang Lu,
Weidong Lou

Abstract: Mining entity and relation from unstructured text is important for knowledge graph construction and expansion. Recent approaches have achieved promising performance while still suffering from inherent limitations, such as the computation efficiency and redundancy of relation prediction. In this paper, we propose a novel hybrid attention and dilated convolution network (HADNet), an end-to-end solution for entity and relation extraction and mining. HADNet designs a novel encoder architecture integrated with an a… Show more

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