Modeling Information Narrative Detection and Evolution on Telegram during the Russia-Ukraine War

Patrick Gerard, Svitlana Volkova, Louis Penafiel, Kristina Lerman, Tim Weninger
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Abstract

Following the Russian Federation's full-scale invasion of Ukraine in February 2022, a multitude of information narratives emerged within both pro-Russian and pro-Ukrainian communities online. As the conflict progresses, so too do the information narratives, constantly adapting and influencing local and global community perceptions and attitudes. This dynamic nature of the evolving information environment (IE) underscores a critical need to fully discern how narratives evolve and affect online communities. Existing research, however, often fails to capture information narrative evolution, overlooking both the fluid nature of narratives and the internal mechanisms that drive their evolution. Recognizing this, we introduce a novel approach designed to both model narrative evolution and uncover the underlying mechanisms driving them. In this work we perform a comparative discourse analysis across communities on Telegram covering the initial three months following the invasion. First, we uncover substantial disparities in narratives and perceptions between pro-Russian and pro-Ukrainian communities. Then, we probe deeper into prevalent narratives of each group, identifying key themes and examining the underlying mechanisms fueling their evolution. Finally, we explore influences and factors that may shape the development and spread of narratives.
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俄乌战争期间 Telegram 上的信息叙事检测和演变建模
俄罗斯联邦于 2022 年 2 月全面入侵乌克兰后,亲俄和亲乌网络社区内出现了大量的信息叙事。随着冲突的发展,信息叙事也在不断调整,并影响着当地和全球社区的看法和态度。不断演变的信息环境(IE)的这一动态性质突出表明,我们亟需全面了解叙事如何演变并影响网络社区。然而,现有的研究往往无法捕捉到信息叙事的演变,忽略了叙事的流动性以及推动叙事演变的内部机制。认识到这一点后,我们引入了一种新颖的方法,旨在对叙事演变进行建模,并揭示驱动叙事演变的内在机制。在这项工作中,我们对 Telegram 上的社区进行了比较话语分析,分析范围涵盖了入侵后的最初三个月。首先,我们发现了亲俄和亲乌克兰社区在叙事和认知上的巨大差异。然后,我们深入探讨了每个群体的普遍叙事,确定了关键主题,并研究了推动其演变的潜在机制。最后,我们探讨了可能影响叙事发展和传播的影响因素。
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