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Correlation analysis of law-related news combining bidirectional attention flow of news title and body

机译:与法律相关新闻的相关分析结合新闻标题和身体的双向关注流动

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摘要

Correlation analysis of law-related news is a task to of dividing news into law-related or law-unrelated news, which is the basis of public opinion analysis. Public opinion news consists of the title and the body. The title describes the theme of the news, and the body describes the content of the news. They are equally important and interdependent in the analysis of lawrelated news. Therefore, we make full use of the dependence between the title and the body and propose a learning method that combines the bidirectional attention flow of the title and the body. This method encodes the title and the body respectively by using a bidirectional gated recurrent unit (BiGRU) to obtain the word-level feature matrix of the title and the word-level feature matrix of the body. Then it further extracts the law relevant key features from the body feature matrix, to obtain the word-level feature representation of the body. Finally, we combine the word-level feature representation of the title and the body to build bidirectional attention flow. In this way, the information of the two is fully integrated and interacted to improve the accuracy of the legal correlation analysis of news. To verify the validity of the method in this paper, we conducted experiments on the analysis of law-related news. The results show that our method has achieved good results. Compared with the baseline method, the F1 values of our method is increased by 2.2%, which strongly proves that the interaction between title and body has a good supporting effect on news text classification.
机译:法律相关新闻的相关性分析是将新闻分为法律相关新闻和法律无关新闻的任务,是舆论分析的基础。舆论新闻由标题和正文组成。标题描述了新闻的主题,正文描述了新闻的内容。在分析与法律有关的新闻时,它们同样重要,相互依存。因此,我们充分利用标题和身体之间的依赖关系,提出了一种结合标题和身体双向注意流的学习方法。该方法利用双向选通递归单元(BiGRU)对标题和正文分别进行编码,得到标题的词级特征矩阵和正文的词级特征矩阵。然后进一步从人体特征矩阵中提取与规律相关的关键特征,得到人体的词级特征表示。最后,我们结合标题和正文的词级特征表示来构建双向注意流。通过这种方式,二者的信息被充分整合和交互,以提高新闻法律相关性分析的准确性。为了验证本文方法的有效性,我们对法律相关新闻进行了分析实验。结果表明,该方法取得了良好的效果。与基线方法相比,我们的方法的F1值增加了2.2%,这有力地证明了标题和正文之间的交互作用对新闻文本分类有很好的支持作用。

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