Fake news is a severe problem in social media. In this paper, we present an empirical study on visual, textual, and multimodal models for the tasks of claim, claim check-worthiness, and conspiracy detection, all of which are related to fake news detection. Recent work suggests that images are more influential than text and often appear alongside fake text. To this end, several multimodal models have been proposed in recent years that use images along with text to detect fake news on social media sites like Twitter. However, the role of images is not well understood for claim detection, specifically using transformer-based textual and multimodal models. We investigate state-of-the-art models for images, text (Transformer-based), and multimodal information for four different datasets across two languages to understand the role of images in the task of claim and conspiracy detection.
翻译:假消息是社交媒体上的一个严重问题。 在本文中,我们提出了一份关于直观、文字和多式联运模式的经验性研究,用于索赔、索赔核实和密谋探测等任务,所有这些都与假新闻探测有关。最近的工作表明,图像比文字更有影响力,往往与假文字同时出现。为此,近年来提出了若干多种模式模式,利用图像和文字在Twitter等社交媒体网站上探测假消息。然而,图像的作用并没有被很好地理解为索赔的探测,特别是使用变压器的文本和多式联运模式。我们调查了图像、文本(基于 Transext-based)和多式信息的最新模型,用于两种语言的四种不同数据集,以了解图像在索赔和阴谋探测任务中的作用。