Happenstance: Utilizing Semantic Search to Track Russian State Media Narratives about the Russo-Ukrainian War on Reddit

Hans W. A. Hanley, Deepak Kumar, Zakir Durumeric
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引用次数: 4

Abstract

In the buildup to and in the weeks following the Russian Federation’s invasion of Ukraine, Russian state media outlets output torrents of misleading and outright false information. In this work, we study this coordinated information campaign in order to understand the most prominent state media narratives touted by the Russian government to English-speaking audiences. To do this, we first perform sentence-level topic analysis using the large-language model MPNet on articles published by ten different pro-Russian propaganda websites including the new Russian “fact-checking” website waronfakes.com. Within this ecosystem, we show that smaller websites like katehon.com were highly effective at publishing topics that were later echoed by other Russian sites. After analyzing this set of Russian information narratives, we then analyze their correspondence with narratives and topics of discussion on r/Russia and 10 other political subreddits. Using MPNet and a semantic search algorithm, we map these subreddits’ comments to the set of topics extracted from our set of Russian websites, finding that 39.6% of r/Russia comments corresponded to narratives from pro-Russian propaganda websites compared to 8.86% on r/politics.
偶然:利用语义搜索追踪俄罗斯国家媒体在Reddit上关于俄罗斯-乌克兰战争的叙述
在俄罗斯联邦入侵乌克兰之前和之后的几周里,俄罗斯官方媒体发布了大量误导性和彻头彻尾的虚假信息。在这项工作中,我们研究这种协调的信息运动,以了解俄罗斯政府向英语观众吹捧的最突出的国家媒体叙述。为了做到这一点,我们首先使用大语言模型MPNet对10个不同的亲俄宣传网站(包括新的俄罗斯“事实核查”网站waronfakes.com)发表的文章进行句子级主题分析。在这个生态系统中,我们发现像katehon.com这样的小网站在发布话题方面非常有效,这些话题后来得到了其他俄罗斯网站的回应。在分析了这组俄罗斯信息叙事之后,我们分析了它们与r/Russia和其他10个政治子reddit上的叙事和讨论主题的对应关系。使用MPNet和语义搜索算法,我们将这些子reddit的评论映射到从我们的俄罗斯网站集合中提取的主题集,发现r/Russia的评论中有39.6%对应于亲俄宣传网站的叙述,而r/politics的这一比例为8.86%。
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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