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Semi-Supervised Noisy Label Learning for Chinese Clinical Named Entity Recognition 被引量:2
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作者 zhucong li Zhen Gan +5 位作者 Baoli Zhang Yubo Chen Jing Wan Kang liu Jun Zhao Shengping liu 《Data Intelligence》 2021年第3期389-401,共13页
This paper describes our approach for the Chinese clinical named entity recognition(CNER) task organized by the 2020 China Conference on Knowledge Graph and Semantic Computing(CCKS) competition. In this task, we need ... This paper describes our approach for the Chinese clinical named entity recognition(CNER) task organized by the 2020 China Conference on Knowledge Graph and Semantic Computing(CCKS) competition. In this task, we need to identify the entity boundary and category labels of six entities from Chinese electronic medical record(EMR). We constructed a hybrid system composed of a semi-supervised noisy label learning model based on adversarial training and a rule post-processing module. The core idea of the hybrid system is to reduce the impact of data noise by optimizing the model results. Besides, we used post-processing rules to correct three cases of redundant labeling, missing labeling, and wrong labeling in the model prediction results. Our method proposed in this paper achieved strict criteria of 0.9156 and relax criteria of 0.9660 on the final test set, ranking first. 展开更多
关键词 Named entity recognition Electronic medical record Noisy label learning SEMI-SUPERVISED Adversarial training
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