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Satirical News Detection with Semantic Feature Extraction and Game-Theoretic Rough Sets

机译:具有语义特征提取和游戏理论粗糙集的讽刺新闻检测

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Satirical news detection is an important yet challenging task to prevent spread of misinformation. Many feature based and end-to-end neural nets based satirical news detection systems have been proposed and delivered promising results. Existing approaches explore comprehensive word features from satirical news articles, but lack semantic metrics using word vectors for tweet form satirical news. Moreover, the vagueness of satire and news parody determines that a news tweet can hardly be classified with a binary decision, that is, satirical or legitimate. To address these issues, we collect satirical and legitimate news tweets, and propose a semantic feature based approach. Features are extracted by exploring inconsistencies in phrases, entities, and between main and relative clauses. We apply game-theoretic rough set model to detect satirical news, in which probabilistic thresholds are derived by game equilibrium and repetition learning mechanism. Experimental results on the collected dataset show the robustness and improvement of the proposed approach compared with Pawlak rough set model and SVM.
机译:讽刺新闻检测是一个重要而挑战的任务,以防止误导传播。已经提出了许多基于特征和端到端的神经网络的讽刺新闻检测系统,并提供了有希望的结果。现有方法探讨了讽刺新闻文章的全面的单词特征,但缺乏使用字向量的语义度量,用于推文形式讽刺新闻。此外,讽刺和新闻模糊的模糊性决定了新闻推文几乎可以用二进制决定归类,即讽刺或合法。要解决这些问题,我们会收集讽刺和合法的新闻推文,并提出基于语义的方法。通过探索短语,实体和主要和相对条款之间的不一致来提取功能。我们应用游戏理论粗糙集模型来检测讽刺新闻,其中概率阈值是通过游戏均衡和重复学习机制来源的。与Pawlak粗糙集模型和SVM相比,收集数据集上的实验结果显示了所提出的方法的鲁棒性和改进。

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