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Examining Untempered Social Media: Analyzing Cascades of Polarized Conversations

机译:检查脾气暴躁的社交媒体:分析两极分化的对话

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Online social media, periodically serves as a platform for cascading polarizing topics of conversation. The inherent community structure present in online social networks (ho-mophily) and the advent of fringe outlets like Gab have created online “echo chambers” that amplify the effects of polarization, which fuels detrimental behavior. Recently, in October 2018, Gab made headlines when it was revealed that Robert Bowers, the individual behind the Pittsburgh Synagogue massacre, was an active member of this social media site and used it to express his anti-Semitic views and discuss conspiracy theories. Thus to address the need of automated data-driven analyses of such fringe outlets, this research proposes novel methods to discover topics that are prevalent in Gab and how they cascade within the network. Specifically, using approximately 34 million posts, and 3.7 million cascading conversation threads with close to 300k users; we demonstrate that there are essentially five cascading patterns that manifest in Gab and the most “viral” ones begin with an echo-chamber pattern and grow out to the entire network. Also, we empirically show, through two models viz. Susceptible-Infected and Bass, how the cascades structurally evolve from one of the five patterns to the other based on the topic of the conversation with upto 84% accuracy.
机译:在线社交媒体定期充当层叠两极分化的话题的平台。在线社交网络中的固有社区结构(同质性)和诸如Gab之类的边缘商店的出现,创造了在线“回声室”,放大了极化的影响,加剧了有害的行为。最近,在2018年10月,Gab成为头条新闻,当时透露匹兹堡犹太教堂大屠杀背后的个人Robert Bowers是该社交媒体网站的活跃成员,并用它来表达他的反犹太主义观点并讨论阴谋论。因此,为了满足对此类边缘出口进行自动数据驱动分析的需求,本研究提出了新颖的方法来发现Gab中普遍存在的主题以及它们如何在网络中级联。具体来说,使用了约3400万个帖子和370万个级联对话线程,接近30万用户;我们证明,Gab中基本上有五种级联模式,最“病毒”的模式以回声腔模式开始,并扩展到整个网络。另外,我们通过两个模型来经验显示。易受感染和低音,根据对话的主题,级联如何从五个模式中的一种演变为另一种,准确度高达84%。

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