cs.AI updates on arXiv.org 10月07日 12:16
新型实体知识增强方法提升疫情命名实体识别
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本文提出一种针对COVID-19疫情命名实体识别的新型实体知识增强方法,解决了社交媒体上疫情文本非正式且标注不足、领域知识要求高等问题,实验结果表明该方法在完全监督和少样本设置下均能提升NER性能。

arXiv:2510.04001v1 Announce Type: cross Abstract: The COVID-19 pandemic causes severe social and economic disruption around the world, raising various subjects that are discussed over social media. Identifying pandemic-related named entities as expressed on social media is fundamental and important to understand the discussions about the pandemic. However, there is limited work on named entity recognition on this topic due to the following challenges: 1) COVID-19 texts in social media are informal and their annotations are rare and insufficient to train a robust recognition model, and 2) named entity recognition in COVID-19 requires extensive domain-specific knowledge. To address these issues, we propose a novel entity knowledge augmentation approach for COVID-19, which can also be applied in general biomedical named entity recognition in both informal text format and formal text format. Experiments carried out on the COVID-19 tweets dataset and PubMed dataset show that our proposed entity knowledge augmentation improves NER performance in both fully-supervised and few-shot settings. Our source code is publicly available: https://github.com/kkkenshi/LLM-EKA/tree/master

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命名实体识别 实体知识增强 疫情数据 NER性能提升
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