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Traditional Chinese Medicine knowledge Service based on Semi-Supervised BERT-BiLSTM-CRF Model

机译:基于半监控BERT-BILSTM-CRF模型的中医药知识服务

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Most of Traditional Chinese Medicine (TCM) data and ancient records exist in the form of books. The unstructured medical information is the foundation for building TCM knowledge service. The existing methods are not accurate enough to solve TCM named entity recognition and require a lot of manual labeling data. This paper proposes a semi-supervised embedded Semi-BERT-BiLSTM-CRF model. Based on the book “Diagnosis of Traditional Chinese Medicine in Traditional Chinese Medicine”, we select the physical features from the cleaned-up text information according to the characteristics of Chinese medicine classics, and then use a small amount of labeled data to train the BERT-BiLSTM-CRF model. The obtained model is used to predict unlabeled data and obtain pseudo-label data. The pseudo-label and labeled data are used as a training set for model training. Experiments show that TCM entity recognition accuracy of this method reaches 81.24%, which effectively improves the TCM entity recognition accuracy and reduces the manual labeling work. The results of this research can be applied to scenarios such as auxiliary diagnosis of TCM and expert system after subsequent improvement and transformation.
机译:大多数中医(TCM)数据和古代记录以书籍为存在。非结构化的医学信息是建立TCM知识服务的基础。现有方法不足以解决TCM命名实体识别,并需要大量的手动标记数据。本文提出了一个半监督嵌入式半BERT-BILSTM-CRF模型。根据本书“中药中的中医诊断”,根据中药经典的特点,选择清理文本信息的物理特征,然后使用少量标记的数据来训练伯特-Bilstm-CRF模型。所获得的模型用于预测未标记的数据并获得伪标签数据。伪标签和标记数据用作模型培训的培训。实验表明,该方法的TCM实体识别准确性达到81.24%,有效提高了TCM实体识别精度,并减少了手动标签工作。该研究的结果可以应用于后续改进和转换后的中医诊断等方案。

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