愤怒的数字街道:在使用自然语言处理的混合媒体事件中识别根茎极端主义信息

Teija Sederholm, Petri Jääskeläinen, Milla Lonka, A. Huhtinen
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引用次数: 0

摘要

本研究探讨了如何利用人工智能(AI)的一种自然语言处理(NLP),在小语言区域发生的混合媒体事件中识别极端信息。一个混合媒体事件聚集了媒体环境的各个方面的关注:主流媒体,社交媒体,即时通讯应用程序和边缘社区。混合媒体活动呼吁人们关注现实世界和网络世界的参与和活动。在媒体事件的阴暗面,媒体景观可以成为各种虚假信息、仇恨言论和阴谋论的渠道。此外,像4chan这样的边缘社区也在混合媒体活动中传播仇恨言论和复制内容。从理论的角度来看,物理世界和信息网络之间的这种联系在本质上可以看作是根茎状的,因为信息的传播不考虑传统的等级制度。结果是,当个人参与一个大型媒体活动时,不同观点的意识就会像病毒一样传播开来,各种话题都可能被发布到网上进行讨论。此外,在根茎上下文中,不同类型的论点可以相互扭曲,“复制粘贴”,并创造出非常多样化的新评论含义。网络空间中的极端言论可能会对现实世界产生影响。本文的重点是展示一个案例研究的结果,该研究是关于三个不同的演员团体在芬兰独立日参加示威活动时在网上发布的信息。在本研究中,从Twitter和Telegram收集了两个数据集,并使用自然语言处理(NLP)对极端媒体索引标签的消息进行分类。三个演员团体被确定参与了示威活动,他们被贴上了极右翼、反法西斯和阴谋论者的标签。根据极端主义媒体索引提供的定义,使用NLP对信息进行计算分析。该分析显示了人工智能技术如何帮助识别包含极端主义内容的信息,并批准在小语种地区使用暴力。根茎模型在边缘、极端内容和温和讨论之间的联系是有效的。这篇文章是与极端主义网络和在线暗网环境中的犯罪有关的大型项目的一部分。
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Digital Streets of Rage: Identifying Rhizomatic Extremist Messages During a Hybrid Media Event using Natural Language Processing
This research explores how to identify extreme messages during a hybrid media event happening in a small language area by utilizing natural language processing (NLP), a type of artificial intelligence (AI). A hybrid media event gathers attention all sides of the media environment: mainstream media, social media, instant messaging apps and fringe communities. Hybrid media events call attention for participation and activities both in the physical world and online. On the darker side of media events, the media landscape can act as a channel for all kinds of disinformation, hate speech and conspiracy theories. In addition, fringe communities such as 4chan also spread hate speech and duplicated content during hybrid media events. From theoretical point of view, this connection between the physical world and information networks can be seen as rhizomatic in nature, because information spreads without regard to a traditional hierarchy. The result is that when individuals participate in a big media event, there is a viral awareness of different viewpoints and all kind of topics may be posted online for discussion. In addition, in rhizomatic context different kind of arguments can twist each other, “copy and paste”, and create very diversity meanings of new comments. The role of extremist speech in online spaces can have effects in physical world. The focus of this paper is to present the findings of a case study on messages posted online by three different actor groups who participated in demonstrations organized on Finnish Independence Day. In this research, two data sets were collected from Twitter and Telegram and Natural Language Processing (NLP) was used to classify messages using extremist media index labels. Three actor groups were identified as participating in the demonstrations, and they were labelled as: far-right, antifascists and conspiracists. Computational analysis was done by using NLP to categorize the messages based upon the definitions provided by the extremist media index. The analysis shows how AI technology can help identifying messages which include extremist content and approve the use of violence in a small language area. The model of rhizome was valid in making the connections between fringe, extremist content and moderate discussion visible. This article is part of larger project related to extremist networks and criminality in online darknet environments.
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