Identifying political perspective in news media has become an important task due to the rapid growth of political commentary and the increasingly polarized ideologies. Previous approaches only focus on leveraging the semantic information and leaves out the rich social and political context that helps individuals understand political stances. In this paper, we propose a perspective detection method that incorporates external knowledge of real-world politics. Specifically, we construct a contemporary political knowledge graph with 1,071 entities and 10,703 triples. We then build a heterogeneous information network for each news document that jointly models article semantics and external knowledge in knowledge graphs. Finally, we apply gated relational graph convolutional networks and conduct political perspective detection as graph-level classification. Extensive experiments show that our method achieves the best performance and outperforms state-of-the-art methods by 5.49%. Numerous ablation studies further bear out the necessity of external knowledge and the effectiveness of our graph-based approach.
翻译:由于政治评论的迅速增长和日益两极化的意识形态,在新闻媒体中确定政治观点已成为一项重要任务。以前的做法只是侧重于利用语义信息,而忽略了有助于个人理解政治立场的丰富的社会和政治背景。在本文中,我们提出了一种将现实世界政治的外部知识纳入其中的观点探测方法。具体地说,我们用1,071个实体和10,703个三倍来构建一个当代政治知识图表。然后,我们为每份新闻文件建立一个多样化的信息网络,共同在知识图表中模拟文章的语义和外部知识。最后,我们应用了门形关系图表共振动网络和进行政治视角探测,作为图表级分类。广泛的实验表明,我们的方法取得了最佳的绩效,以5.49%的速度超越了最先进的方法。许多反动研究进一步证明了外部知识的必要性和我们基于图表的方法的有效性。