Propaganda to Hate: A Multimodal Analysis of Arabic Memes with Multi-Agent LLMs

Firoj Alam, Md. Rafiul Biswas, Uzair Shah, Wajdi Zaghouani, Georgios Mikros
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Abstract

In the past decade, social media platforms have been used for information dissemination and consumption. While a major portion of the content is posted to promote citizen journalism and public awareness, some content is posted to mislead users. Among different content types such as text, images, and videos, memes (text overlaid on images) are particularly prevalent and can serve as powerful vehicles for propaganda, hate, and humor. In the current literature, there have been efforts to individually detect such content in memes. However, the study of their intersection is very limited. In this study, we explore the intersection between propaganda and hate in memes using a multi-agent LLM-based approach. We extend the propagandistic meme dataset with coarse and fine-grained hate labels. Our finding suggests that there is an association between propaganda and hate in memes. We provide detailed experimental results that can serve as a baseline for future studies. We will make the experimental resources publicly available to the community.
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从宣传到仇恨:利用多代理 LLM 对阿拉伯语备忘录进行多模态分析
在过去十年中,社交媒体平台被用于信息传播和消费。虽然大部分内容是为了促进公民新闻和提高公众意识而发布的,但也有一些内容是为了引导用户而发布的。在文字、图片和视频等不同内容类型中,memes(文字叠加在图片上)尤为盛行,可作为宣传、仇恨和幽默的有力载体。在目前的文献中,已经有人在努力单独检测memes 中的此类内容。然而,对它们之间交叉关系的研究却非常有限。在本研究中,我们使用基于多代理 LLM 的方法来探索记忆体中宣传与仇恨的交集。我们用粗粒度和细粒度的仇恨标签扩展了宣传性备忘录数据集。我们的发现表明,记忆体中的宣传和仇恨之间存在关联。我们提供了详细的实验结果,可作为未来研究的基线。我们将向社会公开实验资源。
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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