Please use this identifier to cite or link to this item: https://www.um.edu.mt/library/oar/handle/123456789/135403
Title: Integrating argumentation features for enhanced propaganda detection in Arabic narratives on the Israeli war on Gaza
Authors: Nabhani, Sara
Borg, Claudia
Micallef, Kurt
Al-Khatib, Khalid
Keywords: Natural language processing (Computer science)
Israel-Hamas War, 2023-
Machine learning -- Case studies
Artificial intelligence -- Social aspects
Propaganda -- Detection -- Computer programs
Issue Date: 2025-01
Publisher: Association for Computational Linguistics
Citation: Nabhani, S., Borg, C., Micallef, K., & Al Khatib, K. (2025, January). Integrating Argumentation Features for Enhanced Propaganda Detection in Arabic Narratives on the Israeli War on Gaza. In Proceedings of the first International Workshop on Nakba Narratives as Language Resources, Abu Dhabi. 127-149.
Abstract: Propaganda significantly shapes public opinion, especially in conflict-driven contexts like the Israeli-Palestinian conflict. This study explores the integration of argumentation features, such as claims, premises, and major claims, into machine learning models to enhance the detection of propaganda techniques in Arabic media. By leveraging datasets annotated with fine-grained propaganda techniques and employing cross-lingual and multilingual NLP methods, along with GPT-4-based annotations, we demonstrate consistent performance improvements. A qualitative analysis of Arabic media narratives on the Israeli war on Gaza further reveals the model’s capability to identify diverse rhetorical strategies, offering insights into the dynamics of propaganda. These findings emphasize the potential of combining NLP with argumentation features to foster transparency and informed discourse in politically charged settings.
URI: https://aclanthology.org/2025.nakbanlp-1.14.pdf
https://www.um.edu.mt/library/oar/handle/123456789/135403
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