使用卷积神经网络进行文本分类

L. E. Sapozhnikova, O. Gordeeva
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引用次数: 3

摘要

本文提出了一种基于卷积神经网络的文本分类方法。阐述了文本分类问题,描述了求解该问题的卷积神经网络的结构和参数,给出了求解的步骤和分类的结果。利用训练好的卷积网络对互联网信息门户网站的新闻消息文本进行分类。使用开放的word2vec模型生成文本的语义预处理和词到属性向量的翻译。分析了分类质量对神经网络参数的依赖关系。使用该网络可以获得约84%的分类准确率。在分类准确率的估计中,检查文本是否属于语义相似类组。这种方法允许在文本主题和训练样本和控制样本中的分类类数量不相等的情况下分析新闻消息。
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Text classification using convolutional neural network
In this article, the method of text classification using a convolutional neural network is presented. The problem of text classification is formulated, the architecture and the parameters of a convolutional neural network for solving the problem are described, the steps of the solution and the results of classification are given. The convolutional network which was used was trained to classify the texts of the news messages of Internet information portals. The semantic preprocessing of the text and the translation of words into attribute vectors are generated using the open word2vec model. The analysis of the dependence of the classification quality on the parameters of the neural network is presented. The using of the network allowed obtaining a classification accuracy of about 84%. In the estimation of the accuracy of the classification, the texts were checked to belong to the group of semantically similar classes. This approach allowed analyzing news messages in cases where the text themes and the number of classification classes in the training and control samples do not equal.
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