基于深度学习的虚假信息生成的社交媒体操纵意识

Clara Maathuis, Iddo Kerkhof
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引用次数: 1

摘要

作为一种通过不同的社交网络和渠道建立和加强人类交流的数字环境,社交媒体继续以惊人的速度发展和传播,很难找到或想象没有或计划没有社交媒体表现和空间的概念、技术或业务。与此同时,社交媒体成为了一个游乐场,甚至是一个战场,在这里,由清晰可信的知名的、不确定的、甚至是邪恶的实体产生的不同的、具有不同效度的想法被传播到目标受众。在预防、遏制和限制后两类实体的社会操纵影响的过程中,适当/有效的安全意识首先是至关重要和强制性的。为此,研究和从业者社区提出了一些战略、政策、方法和技术,但这些举措大多是从防御者的角度出发的,这在网络空间中是不够的,因为犯罪者在攻击中处于优势地位。因此,本研究旨在通过使用深度学习生成和分析虚假信息推文,以冒犯者的立场产生社交媒体操纵安全意识。为了实现这一目标,在数据科学方法中遵循设计科学研究方法,并在正在进行的论述中分析和定位所获得的结果,以显示这种方法的有效性及其在构建未来社交媒体操纵检测解决方案中的作用。本研究还旨在为进一步透明和负责任的建模和游戏解决方案的设计做出贡献,以建立/增强社会操纵意识,并定义专用/参与大型多领域(非)专家受众的现实网络/信息操作场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social Media Manipulation Awareness through Deep Learning based Disinformation Generation
As a digital environment introduced for establishing and enhancing human communication through different social networks and channels, social media continued to develop and spread at an incredible rate making it difficult to find or imagine a concept, technology, or business that does not have or plan to have its social media representation and space. Concurrently, social media became a playground and even a battlefield where different ideas carrying out diverse validity degrees are spread for reaching their target audiences generated by clear and trustable well-known, uncertain, or even evil aimed entities. In the stride carried out for preventing, containing, and limiting the effects of social manipulation of the last two types of entities, proper/effective security awareness is critical and mandatory in the first place. On this behalf, several strategies, policies, methods, and technologies were proposed by research and practitioner communities, but such initiatives take mostly a defender perspective, and this is not enough in cyberspace where the offender is in advantage in attack. Therefore, this research aims to produce social media manipulation security awareness taking the offender stance by generating and analysing disinformation tweets using deep learning. To reach this goal, a Design Science Research methodology is followed in a Data Science approach, and the results obtained are analysed and positioned in the ongoing discourses showing the effectiveness of such approach and its role in building future social media manipulation detection solutions. This research also intends to contribute to the design of further transparent and responsible modelling and gaming solutions for building/enhancing social manipulation awareness and the definition of realistic cyber/information operations scenarios dedicated/engaging large multi-domain (non)expert audiences.
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