EMNLP2025

MemeIntel: Explainable Detection of Propagandistic and Hateful Memes

Mohamed Bayan Kmainasi, Abul Hasnat, Md. Arid Hasan, Ali Ezzat Shahroor, Firoj Alam

被引用 1 次

摘要

The proliferation of multimodal content on social media presents significant challenges in understanding and moderating complex, contextdependent issues such as misinformation, hate speech, and propaganda. While efforts have been made to develop resources and propose new methods for automatic detection, limited attention has been given to jointly modeling label detection and the generation of explanationbased rationales, which often leads to degraded classification performance when trained simultaneously. To address this challenge, we introduce MemeXplain, an explanation-enhanced dataset for propagandistic memes in Arabic and hateful memes in English, making it the first large-scale resource for these tasks. To solve these tasks, we propose a multistage optimization approach and train Vision-Language Models (VLMs). Our results show that this strategy significantly improves both label detection and explanation generation quality over the base model, outperforming the current state-of-the-art with an absolute improvement of ∼ 1.4% (Acc) on ArMeme and ∼ 2.2% (Acc) on Hateful Memes. For reproducibility and future research, we aim to make the MemeXplain dataset and scripts publicly available. 1 * The contribution was made while the author was a contributor at the Qatar Computing Research Institute. † Equal contribution. ‡ Corresponding author.