基于Bi-RNN-LSTM-RNN-CRF的中文电子病历命名实体识别

Chenquan Dai, Xiaobin Zhuang, Jiaxin Cai
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摘要

基于主流深度学习模型BiLSTM-CRF,建立电子病历命名实体识别模型Bi-RNN-LSTM-RNN-CRF。首先采集电子病历数据集,然后通过单词向量工具将字符转换成向量,输入双向RNN-LSTM-RNN层进行训练,然后将训练结果输入CRF层,计算损失函数得到预测结果,并记录该过程所花费的时间。最后,对传统的BiLSTM-CRF模型重复上述步骤,比较两种模型的结果。实验结果表明,Bi-RNN-LSTM-RNN-CRF模型的F1值可达到97.80%,识别效果略逊于BiLSTM-CRF。
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Chinese Electronic Medical Record Named Entity Recognition Based on Bi-RNN-LSTM-RNN-CRF
Based on the mainstream deep learning model BiLSTM-CRF, the electronic medical record named entity recognition model Bi-RNN-LSTM-RNN-CRF is established. First collect the electronic medical record data set, then convert the characters into vectors through the word vector tool, enter them into the bidirectional RNN-LSTM-RNN layer for training, and then enter the training results into the CRF layer, calculate the loss function to obtain the prediction results, and record the time that the process took.Finally, repeat the above steps with the traditional BiLSTM-CRF model to compare the results of the two models. Experimental results show that the F1 value of the Bi-RNN-LSTM-RNN-CRF model can reach 97.80%, and the recognition effect is slightly inferior to that of BiLSTM-CRF.
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