Cross-Platform Multimodal Misinformation: Taxonomy, Characteristics and Detection for Textual Posts and Videos

Nicholas Micallef, Marcelo Sandoval-Castañeda, Adir Cohen, M. Ahamad, Srijan, Kumar, Nasir D. Memon
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引用次数: 13

Abstract

Social media posts that direct users to YouTube videos are one of the most effective techniques for spreading misinformation. However, it has been observed that such posts rarely get deleted or flagged. Since multi-modal misinformation that leads to compelling videos has more impact than using just textual content, it is important to characterize and detect such textual post and video pairs to prevent users from becoming victims of misinformation. To address this gap, we build a taxonomy of how links to YouTube videos are used on social media platforms. We then use pairs of posts and videos annotated with this taxonomy to test several classification models built using cross-platform features. Our work reveals several characteristics of post-video pairs, in terms of how posts and videos are related to each other, the type of content they share, and their collective outcome. In addition, we find that traditional approaches to misinformation detection that rely only on text from posts miss a significant number of post-video pairs that contain misinformation. More importantly, we find that to reduce the spread of misinformation via post-video pairs, classifiers would be more effective if they are designed to use data and features from multiple diverse platforms.
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跨平台多模态错误信息:文本帖子和视频的分类、特征和检测
将用户引向YouTube视频的社交媒体帖子是传播错误信息最有效的技术之一。然而,据观察,这类帖子很少被删除或标记。由于导致引人注目的视频的多模态错误信息比仅使用文本内容具有更大的影响,因此表征和检测此类文本帖子和视频对以防止用户成为错误信息的受害者非常重要。为了解决这一差距,我们建立了一个YouTube视频链接在社交媒体平台上使用的分类。然后,我们使用带有该分类法注释的帖子和视频对来测试使用跨平台特性构建的几个分类模型。我们的工作揭示了后视频配对的几个特征,包括帖子和视频如何相互关联,它们共享的内容类型以及它们的集体结果。此外,我们发现仅依赖于帖子文本的传统错误信息检测方法错过了大量包含错误信息的后视频对。更重要的是,我们发现,为了减少通过后视频对传播的错误信息,如果分类器被设计为使用来自多个不同平台的数据和特征,那么分类器将更加有效。
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