基于区域邻域嵌入的中文电子病历文本分类方法

Fangce Guo, Tiandeng Wu, Xinyu Jin
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引用次数: 1

摘要

在自然语言处理(NLP)领域,基于词嵌入的模型在许多任务中得到了广泛的应用,并取得了巨大的成功,被认为对文本分类的发展具有重要的推动作用。本文提出了区域相邻嵌入(area -邻域嵌入,RAE)来构建一个有效的模型。RAE利用上下文权重单元(CWU)结合不同区域的相邻词捕获浅层上下文信息,并增加自注意单元(SAU)学习深层语义理解。我们的RAE模型有两个特点。首先,RAE利用轻量级网络对嵌入进行区域化。其次,我们注重嵌入的区域化,而不忽视与局部嵌入的联系。在此基础上,我们可以将提出的RAE模型作为桥梁连接到传统的词嵌入和下游神经网络,后者能够进行更深层次的特征提取。本文将RAE引入到中文电子病历的分类任务中。实验表明,采用该方法的结构性能优于普通结构本身。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Method Based on Region-adjacent Embedding for Text Classification of Chinese Electronic Medical Records
In the field of natural language processing (NLP), word-embedding-based models have been widely applied in many tasks with great success, which are believed to make significant promotion to the development of text classification. We propose the region-adjacent embedding (RAE) to construct an effective model in this paper. RAE makes use of the context weight unit (CWU) combining adjacent words from different region to capture shalow-level context information and adds a self-attention unit (SAU) to learn deep-level semantic understandings. Our RAE model has two characteristics. First, RAE utilizes a lightweight network to regionalize the embeddings. Second, we pay attention to regionalization of embeddings without neglecting the connection with local embeddings. Based on this, we can connect the proposed RAE model acting as a bridge to the traditional word embeddings and downstream neural networks which are capable of deeper feature extraction. In this paper, we introduce RAE to the classification task on Chinese electronic medical records. The experiments show that structures with our method perform better than the plain structures themselves.
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