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Fake News Detection Using Time Series and User Features Classification

机译:使用时间序列和用户特征分类假新闻检测

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In a scenario where more and more individuals use online social network platforms as an instrument to propagate news without any control, it is necessary to design and implement new methods and techniques that guarantee the veracity of the disseminated news. In this paper, we propose a method to classify true and false news, commonly known as fake news, which exploits time series-based features extracted from the evolution of news, and features from the users involved in the news spreading. Applying our methodology over a real Twitter dataset of precategorized true and false news, we have obtained an accuracy of 84.61% in 10-fold cross-validation, and proved experimentally that all the selected features are relevant for this classification task.
机译:在越来越多的个人使用在线社交网络平台作为乐器传播新闻的情况下,必须设计和实现保证传播新闻的真实性的新方法和技术。 在本文中,我们提出了一种对真假新闻进行分类的方法,通常称为假新闻,这些功能利用了从新闻演变中提取的时间序列的功能,以及来自涉及新闻传播的用户的功能。 在实际Twitter数据集中应用我们的方法的真实和虚假新闻,我们在10倍交叉验证中获得了84.61%的准确性,并通过实验证明所有所选功能与此分类任务相关。

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