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Classification of Traditional Chinese Medicine Cases based on Character-level Bert and Deep Learning

机译:基于角色级伯特和深度学习的中药病例分类

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As one of the traditional cultures of our country, Traditional Chinese Medicine (TCM) has received more and more attention. As a valuable asset inherited from ancient times, TCM medical cases carry the core knowledge content of TCM. Accurate medical case classification is an important part of establishing a correct medical case diagnosis and treatment system, and is also an important part of medical assistance system. This paper proposes a new model to effectively classify medical cases. First, the multi-layer semantic expansion method is used to increase the semantic information of TCM medical cases in instance layer and attribute layer. Then, the character-level Bidirectional Encoder Representations from Transformers (Bert) model is used as a language model for text representation of the medical cases, and the results are as the input of the deep learning models. Finally, the optimized Text-Convolutional Neural Network (Text-CNN) model is used to classify TCM medical cases, and the reliability and accuracy of the whole model are verified through the comparison with the result of other text representation and classification methods.
机译:作为我国传统文化之一,中医(TCM)受到越来越多的关注。作为从古代遗传的宝贵资产,中医医疗案例携带中医的核心知识含量。准确的医疗案例分类是建立正确的医疗案例诊断和治疗系统的重要组成部分,也是医疗援助系统的重要组成部分。本文提出了一种有效分类医疗案例的新模式。首先,多层语义扩展方法用于增加实例层和属性层中TCM医疗情况的语义信息。然后,从变形金刚字符级双向编码表示(BERT)模型被用作医疗案件文本表示语言模型,其结果是作为深度学习模型的输入。最后,优化的文本卷积神经网络(Text-CNN)模型用于对TCM医疗情况进行分类,并且通过与其他文本表示和分类方法的结果进行比较来验证整个模型的可靠性和准确性。

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