Nuno Guimarães


2025

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PolyNarrative: A Multilingual, Multilabel, Multi-domain Dataset for Narrative Extraction from News Articles
Nikolaos Nikolaidis | Nicolas Stefanovitch | Purificação Silvano | Dimitar Iliyanov Dimitrov | Roman Yangarber | Nuno Guimarães | Elisa Sartori | Ion Androutsopoulos | Preslav Nakov | Giovanni Da San Martino | Jakub Piskorski
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)

We present polyNarrative, a new multilingual dataset of news articles, annotated for narratives. Narratives are overt or implicit claims, recurring across articles and languages, promoting a specific interpretation or viewpoint on an ongoing topic, often propagating mis/disinformation. We developed two-level taxonomies with coarse- and fine-grained narrative labels for two domains: (i) climate change and (ii) the military conflict between Ukraine and Russia. We collected news articles in four languages (Bulgarian, English, Portuguese, and Russian) related to the two domains and manually annotated them at the paragraph level. We make the dataset publicly available, along with experimental results of several strong baselines that assign narrative labels to news articles at the paragraph or the document level. We believe that this dataset will foster research in narrative detection and enable new research directions towards more multi-domain and highly granular narrative related tasks.

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Enhancing an Annotation Scheme for Clinical Narratives in Portuguese through Human Variation Analysis
Ana Luisa Fernandes | Purificação Silvano | António Leal | Nuno Guimarães | Rita Rb-Silva | Luís Filipe Cunha | Alípio Jorge
Proceedings of the 19th Linguistic Annotation Workshop (LAW-XIX-2025)

The development of a robust annotation scheme and corresponding guidelines is crucial for producing annotated datasets that advance both linguistic and computational research. This paper presents a case study that outlines a methodology for designing an annotation scheme and its guidelines, specifically aimed at representing morphosyntactic and semantic information regarding temporal features, as well as medical information in medical reports written in Portuguese. We detail a multi-step process that includes reviewing existing frameworks, conducting an annotation experiment to determine the optimal approach, and designing a model based on these findings. We validated the approach through a pilot experiment where we assessed the reliability and applicability of the annotation scheme and guidelines. In this experiment, two annotators independently annotated a patient’s medical report consisting of six documents using the proposed model, while a curator established the ground truth. The analysis of inter-annotator agreement and the annotation results enabled the identification of sources of human variation and provided insights for further refinement of the annotation scheme and guidelines.

2024

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Perfil Público: Automatic Generation and Visualization of Author Profiles for Digital News Media
Nuno Guimarães | Ricardo Campos | Alípio Jorge
Proceedings of the 16th International Conference on Computational Processing of Portuguese - Vol. 2