Loading...
Thumbnail Image
Item

NarratEX Dataset: Explaining the Dominant Narratives in News Texts

Guimarães, Nuno
Silvano, Purificação
Campos, Ricardo
Jorge, Alipio
Pacheco, Ana Filipa
Dimitrov, Dimitar Iliyanov
Nikolaidis, Nikolaos
Yangarber, Roman
Sartori, Elisa
Stefanovitch, Nicolas
... show 3 more
Research Projects
Organizational Units
Journal Issue
Abstract
We present NarratEX, a dataset designed for the task of explaining the choice of the Dominant Narrative in a news article, and intended to support the research community in addressing challenges such as discourse polarization and propaganda detection. Our dataset comprises 1,056 news articles in four languages, Bulgarian, English, Portuguese, and Russian, covering two globally significant topics: the Ukraine-Russia War (URW) and Climate Change (CC). Each article is manually annotated with a dominant narrative and sub-narrative labels, and an explanation justifying the chosen labels. We describe the dataset, the process of its creation, and its characteristics. We present experiments with two new proposed tasks: Explaining Dominant Narrative based on Text, which involves writing a concise paragraph to justify the choice of the dominant narrative and sub-narrative of a given text, and Inferring Dominant Narrative from Explanation, which involves predicting the appropriate dominant narrative category based on an explanatory text. The proposed dataset is a valuable resource for advancing research on detecting and mitigating manipulative content, while promoting a deeper understanding of how narratives influence public discourse.
Citation
N. Guimarães, P. Silvano, R. Campos, A. Jorge, A.F. Pacheco, D.I. Dimitrov, N. Nikolaidis, R. Yangarber, E. Sartori, N. Stefanovitch, P. Nakov, J. Piskorski, G. Da San Martino, "NarratEX Dataset: Explaining the Dominant Narratives in News Texts," 2025, pp. 20408-20434.
Source
Conference
Findings of the Association for Computational Linguistics: EMNLP 2025
Keywords
Subjects
Source
Findings of the Association for Computational Linguistics: EMNLP 2025
Publisher
Association for Computational Linguistics
Full-text link