A Hybrid Model Based on Deep Convolutional Network for Medical Named Entity Recognition

Tingzhong Wang, Yongxin Zhang, Yifan Zhang, Hao Lu, Bo Yu, Shoubo Peng, Youzhong Ma, Deguang Li
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引用次数: 0

Abstract

The typical pretrained model’s feature extraction capabilities are insufficient for medical named entity identification, and it is challenging to express word polysemy, resulting in a low recognition accuracy for electronic medical records. In order to solve this problem, this paper proposes a new model that combines the BERT pretraining model and the BilSTM-CRF model. First, word embedding with semantic information is obtained by pretraining the corpus input to the BERT model. Then, the BiLSTM module is utilized to extract further features from the encoded outputs of BERT in order to account for context information and improve the accuracy of semantic coding. Then, CRF is used to modify the results of BiLSTM to screen out the annotation sequence with the largest score. Finally, extensive experimental results show that the performance of the proposed model is effectively improved compared with other models.
基于深度卷积网络的混合模型医学命名实体识别
典型的预训练模型在医学命名实体识别中特征提取能力不足,且单词多义难以表达,导致电子病历识别准确率较低。为了解决这一问题,本文提出了一种将BERT预训练模型与BilSTM-CRF模型相结合的新模型。首先,通过对输入到BERT模型中的语料库进行预训练,得到具有语义信息的词嵌入。然后,利用BiLSTM模块从BERT的编码输出中进一步提取特征,以考虑上下文信息,提高语义编码的准确性。然后,使用CRF对BiLSTM的结果进行修改,筛选出得分最大的标注序列。最后,大量的实验结果表明,与其他模型相比,该模型的性能得到了有效的提高。
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