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Named Entity Recognition in Traditional Chinese Medicine Clinical Cases Combining BiLSTM-CRF with Knowledge Graph

机译:BiLSTM-CRF与知识图谱相结合的中医临床案例中的命名实体识别

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Named entity recognition in Traditional Chinese Medicine (TCM) clinical cases is a fundamental and crucial task for follow-up work. In recent years, deep learning approaches have achieved remarkable results in named entity recognition and other natural language processing tasks. However, these methods cannot effectively solve the problem of low recognition rate of rare words, which is common in TCM held. In this paper, we propose TCMKG-LSTM-CRF model that utilizes knowledge graph information to strength the learning ability and recognize rare words. This model introduces knowledge attention vector model to implement attention mechanism between hidden vector of neural networks and knowledge graph candidate vectors and consider influence from previous word. The experiment results prove the effectiveness of our model.
机译:在中医(TCM)临床案例中,命名实体识别是后续工作的基本且至关重要的任务。近年来,深度学习方法在命名实体识别和其他自然语言处理任务中取得了显著成果。但是,这些方法不能有效地解决稀有单词识别率低的问题,这在中医学中很普遍。在本文中,我们提出了TCMKG-LSTM-CRF模型,该模型利用知识图信息来增强学习能力并识别稀有单词。该模型引入了知识注意向量模型,以实现神经网络的隐藏向量和知识图候选向量之间的注意机制,并考虑来自先前单词的影响。实验结果证明了该模型的有效性。

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