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Characterizing networks of propaganda on twitter: a case study

机译:在推特上表征宣传网络:案例研究

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The daily exposure of social media users to propaganda and disinformation campaigns has reinvigorated the need to investigate the local and global patterns of diffusion of different (mis)information content on social media. Echo chambers and influencers are often deemed responsible of both the polarization of users in online social networks and the success of propaganda and disinformation campaigns. This article adopts a data-driven approach to investigate the structuration of communities and propaganda networks on Twitter in order to assess the correctness of these imputations. In particular, the work aims at characterizing networks of propaganda extracted from a Twitter dataset by combining the information gained by three different classification approaches, focused respectively on (i) using Tweets content to infer the “polarization” of users around a specific topic, (ii) identifying users having an active role in the diffusion of different propaganda and disinformation items, and (iii) analyzing social ties to identify topological clusters and users playing a “central” role in the network. The work identifies highly partisan community structures along political alignments; furthermore, centrality metrics proved to be very informative to detect the most active users in the network and to distinguish users playing different roles; finally, polarization and clustering structure of the retweet graphs provided useful insights about relevant properties of users exposure, interactions, and participation to different propaganda items.
机译:社会媒体用户对宣传和消毒活动的日常暴露已经重振了调查社交媒体上不同(MIS)信息内容的本地和全球扩散模式的必要性。回声室和影响者通常被视为在线社交网络中用户的极化以及宣传和消毒活动的成功。本文采用数据驱动方法来调查Twitter上的社区和宣传网络的结构,以评估这些避免的正确性。特别地,该工作旨在通过组合通过三种不同的分类方法所获得的信息,在(i)上使用推文内容来推断特定主题围绕用户的“极化”来表征从Twitter DataSet中提取的宣传网络。 ii)识别在不同宣传和消毒项目的扩散中具有积极作用的用户,(iii)分析社会关系,以识别在网络中扮演“中央”角色的拓扑集群和用户。这项工作沿政治一致识别高度党派社区结构;此外,集中度指标证明是对网络中最活跃的用户进行非常丰富的信息,并区分用户扮演不同角色的用户;最后,转发图的极化和聚类结构提供了有关用户暴露,交互和参与不同宣传项目的相关性质的有用见解。

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