Research on Sensitive Text Classification Based on Knowledge Base and Hybrid Network

Yongfeng Li, Hongliang Wang, Xueting Li, Pengfei Xiu
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Abstract

Aiming at the problems that convolution neural network is not sufficient to extract text features, it is difficult to capture long text structure information and sentence semantic relationship, and neural network can only extract the surface features of text, and it is difficult to obtain the implicit features of sentences when classifying text, this paper proposes a hybrid neural network text classification method based on a knowledge base. By extracting keywords from the category text, the keyword weight is calculated according to the co-occurrence relationship, and the category keyword knowledge base is constructed. It integrates CNN and bilstm, introduces attention mechanism, enhances the ability to extract local and temporal features of text, and improves the accuracy of text classification in combination with knowledge base information. The experimental results on the CNews dataset show that compared with TextCNN, TextRCNN, BILSTM and Bert models, this model can effectively improve the accuracy of text classification.
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基于知识库和混合网络的敏感文本分类研究
针对卷积神经网络不足以提取文本特征、难以捕获长文本结构信息和句子语义关系、神经网络在对文本进行分类时只能提取文本表面特征、难以获取句子隐含特征等问题,提出了一种基于知识库的混合神经网络文本分类方法。通过从分类文本中提取关键词,根据共现关系计算关键词权重,构建分类关键词知识库。它将CNN与bilstm相结合,引入注意机制,增强了提取文本局部特征和时态特征的能力,并结合知识库信息提高了文本分类的准确率。在CNews数据集上的实验结果表明,与TextCNN、TextRCNN、BILSTM和Bert模型相比,该模型能有效提高文本分类的准确率。
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