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Named entity recognition method in health preserving field based on BERT

机译:基于BERT的健康保存场命名实体识别方法

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With the aging of the population development, people pay more attention to health preserving. In order to build a knowledge graph of health-preserving field, named entity recognition is required first. In the health-preserving field, due to there is no publicly available data sets, building corpus by getting data from websites and defining seven types of entities. Considering the complexity and ambiguity of data, a named entity recognition method based on BERT in the health-preserving field is proposed. Because BERT can generate different vectors for the same word and make full use of context semantic. CNN can extract local features and BILSTM can capture long distance characteristics. Finally selecting the best sentence through the conditional random field. By comparing with other models in the same data set, it is verified that the new model is better in precision, recall andF1score, reaching the optimal value of 87.84%, which can meet the task requirements in the health-preserving field.
机译:随着人口发展的老龄化,人们更加注重保健保存。为了构建保健领域的知识图,首先需要命名实体识别。在保健领域,由于没有公开的数据集,通过从网站获取数据并定义七种类型的实体来构建语料库。考虑到数据的复杂性和歧义,提出了一种基于健康保存字段中BERT的命名实体识别方法。因为BERT可以为相同的单词生成不同的vector,并充分利用上下文语义。 CNN可以提取本地特征,BILSTM可以捕获长距离特性。最后通过条件随机字段选择最佳句子。通过与同一数据集中的其他模型进行比较,验证了新模型的精度更好,召回AndF1Score,达到了87.84%的最佳值,可以满足保健领域的任务要求。

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