Download PDFOpen PDF in browserStudy on Chinese Named Entity Recognition Based on Dynamic Fusion and Adversarial TrainingEasyChair Preprint 905512 pages•Date: October 24, 2022AbstractIn this paper, for Chinese named entity recognition task, we use NEZHA Chinese pre-trained language model as the word embedding layer, and then encode it with BiLSTM network architecture, and finally connect CRF layer for optimizing the output sequence, in addition, we perform dynamic fusion of each layer of NEZHA to extract the semantic information of entities more fully, and finally introduce some noise to the input data, which is used for adversarial training to improve the generalization and robustness of the model. The results show that the model and method used in this paper achieve good results in the Chinese NER task, and significantly improve the model training speed. Keyphrases: Chinese named entity recognition, NEZHA pre-trained language model, Natural Language Processing, adversarial training, dynamic fusion
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