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Chinese clinical entity recognition based on pre-trained models

机译:中国临床实体识别基于预先训练的模型

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In the Chinese clinical domain, there are problems such as blurred word boundaries, multiple meanings of one word, insufficient access to character information and a large number of unregistered words, making it more difficult to recognize named entities for this domain. In view of this, this paper proposes a glyph-based enhanced information model, using convolutional neural network and ALBERT to pre-train the language model to obtain the enhanced character information vector and also introduces an attention mechanism on the BiLSTM-CNN-CRF structure to solve the problem that the traditional model extracts features ignoring the importance and location information of words. Finally, experiments are conducted on the CCKS2018 dataset, and the results show that the model outperforms other commonly used models in Chinese clinical recognition.
机译:在中国临床域中,有些问题是模糊的字界,一个单词的多种含义,对字符信息的访问不足和大量未注册的单词,使得识别该域的命名实体更加困难。 鉴于此,本文提出了一种基于格术的增强信息模型,使用卷积神经网络和Albert预先列车语言模型来获得增强的字符信息向量,并在Bilstm-CNN-CRF结构上引入了注意力机制 为了解决传统模型提取的问题,忽略了单词的重要性和位置信息。 最后,在CCKS2018数据集上进行了实验,结果表明,该模型优于中国临床认识的其他常用模型。

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