Identifying and Characterizing New Expressions of Community Framing during Polarization

Hernan Sarmiento, Felipe Bravo-Marquez, Eduardo Graells-Garrido, Bárbara Poblete
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引用次数: 1

Abstract

Chile experienced a series of important protests between October and December 2019. This social unrest, as it was called, was fueled by social inequity and radically affected the nation's status quo. A large portion of the population demanded a new Constitution and changes to the current government, whereas another part of the population rejected these social demands. This created a highly polarized scenario evidenced through online social media interactions. Analyzing controversial issues that emerge naturally from conversations in online communities can offer a more wide-scale understanding of today's political and societal discussions. Here, we analyze group polarization in social networks by studying the 2019 Chilean social unrest. Specifically, we propose an unsupervised approach for identifying and characterizing community framing (i.e., discovering and understanding polarized concepts). Our approach is based on the sequential application of community detection, topic modeling, and word embedding methods. The novelty of having an unsupervised approach is that it facilitates the performance of scalable and objective framing analyses with minimal human intervention, as it does not require prior domain or network knowledge. Using this methodology, we observe that an apparently similar conversation topic across communities can actually have completely different meanings to each group. We noted, for instance, that while an online community linked the term gente (people) with communism and terrorism, the other associated it with police and military oppression. In this direction, our work can help to contextualize real-world social issues in online platforms, describing how users discuss similar concepts with opposing views.
极化过程中社区框架新表达的识别与表征
2019年10月至12月,智利经历了一系列重要的抗议活动。这种所谓的社会动荡是由社会不平等加剧的,并从根本上影响了国家的现状。很大一部分人要求制定一部新宪法并改变现任政府,而另一部分人则拒绝这些社会要求。这造成了一个高度两极分化的局面,这可以从在线社交媒体互动中得到证明。分析在线社区对话中自然出现的争议性问题,可以更广泛地理解当今的政治和社会讨论。本文以2019年智利社会动荡为研究对象,分析社会网络中的群体极化现象。具体来说,我们提出了一种无监督的方法来识别和表征社区框架(即发现和理解极化概念)。我们的方法是基于社区检测、主题建模和词嵌入方法的顺序应用。无监督方法的新颖之处在于,它可以在最小的人为干预下促进可扩展和客观框架分析的性能,因为它不需要事先的领域或网络知识。使用这种方法,我们观察到,在不同的社区中,一个表面上相似的话题实际上对每个群体都有完全不同的含义。例如,我们注意到,一个网络社区将“gente”(人民)一词与共产主义和恐怖主义联系在一起,而另一个社区则将其与警察和军事压迫联系在一起。在这个方向上,我们的工作可以帮助将现实世界的社会问题置于网络平台的背景下,描述用户如何用相反的观点讨论类似的概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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