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Network-based Fake News Detection: A Pattern-driven Approach

机译:基于网络的假新闻检测:模式驱动方法

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摘要

Fake news gains has gained significant momentum, strongly motivating the need for fake news research. Many fake news detection approaches have thus been proposed, where most of them heavily rely on news content. However, network-based clues revealed when analyzing news propagation on social networks is an information that has hardly been comprehensively explored or used for fake news detection. We bridge this gap by proposing a network-based pattern-driven fake news detection approach. We aim to study the patterns of fake news in social networks, which refer to the news being spread, spreaders of the news and relationships among the spreaders. Empirical evidence and interpretations on the existence of such patterns are provided based on social psychological theories. These patterns are then represented at various network levels (i.e., node-level, ego-level, triad-level, community-level and the overall network) for being further utilized to detect fake news. The proposed approach enhances the explain ability in fake news feature engineering. Experiments conducted on real-world data demonstrate that the proposed approach can outperform the state of the arts.
机译:假新闻收益取得了显着的势头,强烈激励假新闻研究。因此提出了许多假新闻检测方法,其中大多数人都依赖新闻内容。然而,在社交网络上分析新闻传播时揭示了基于网络的线索是几乎没有全面探索或用于假新闻检测的信息。我们通过提出基于网络的模式驱动的假新闻检测方法来弥合这个差距。我们的目标是研究社交网络中的假新闻模式,这指的是传播的新闻,新闻和吊具之间的关系。基于社会心理学理论提供了对存在此类模式的经验证据和解释。然后在各种网络级别(即,节点级,自我级,三合一,社区级别,社区级别,社区级别和整体网络)表示这些模式,以进一步用于检测假新闻。拟议的方法提高了假新闻功能工程中的解释能力。对现实世界数据进行的实验表明,该方法可以优于现有技术。

著录项

  • 来源
    《SIGKDD explorations》 |2019年第2期|共13页
  • 作者

    Xinyi Zhou; Reza Zafarani;

  • 作者单位

    Data Lab EECS Department Syracuse University;

    Data Lab EECS Department Syracuse University;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 TP274.2;
  • 关键词

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