In the realm of Natural Language Processing (NLP), common approaches for handling human disagreement consist of aggregating annotators' viewpoints to establish a single ground truth. However, prior studies show that disregarding individual opinions can lead to the side-effect of under-representing minority perspectives, especially in subjective tasks, where annotators may systematically disagree because of their preferences. Recognizing that labels reflect the diverse backgrounds, life experiences, and values of individuals, this study proposes a new multi-perspective approach using soft labels to encourage the development of the next generation of perspective-aware models—more inclusive and pluralistic. We conduct an extensive analysis across diverse subjective text classification tasks including hate speech, irony, abusive language, and stance detection, to highlight the importance of capturing human disagreements, often overlooked by traditional aggregation methods. Results show that the multi-perspective approach not only better approximates human label distributions, as measured by Jensen-Shannon Divergence (JSD), but also achieves superior classification performance (higher F1-scores), outperforming traditional approaches. However, our approach exhibits lower confidence in tasks like irony and stance detection, likely due to the inherent subjectivity present in the texts. Lastly, leveraging Explainable AI (XAI), we explore model uncertainty and uncover meaningful insights into model predictions. All implementation details are available at our github repo.

Perspectives in Play: A Multi-Perspective Approach for More Inclusive NLP Systems

Muscato, Benedetta
;
Gezici, Gizem;Giannotti, Fosca
2025

Abstract

In the realm of Natural Language Processing (NLP), common approaches for handling human disagreement consist of aggregating annotators' viewpoints to establish a single ground truth. However, prior studies show that disregarding individual opinions can lead to the side-effect of under-representing minority perspectives, especially in subjective tasks, where annotators may systematically disagree because of their preferences. Recognizing that labels reflect the diverse backgrounds, life experiences, and values of individuals, this study proposes a new multi-perspective approach using soft labels to encourage the development of the next generation of perspective-aware models—more inclusive and pluralistic. We conduct an extensive analysis across diverse subjective text classification tasks including hate speech, irony, abusive language, and stance detection, to highlight the importance of capturing human disagreements, often overlooked by traditional aggregation methods. Results show that the multi-perspective approach not only better approximates human label distributions, as measured by Jensen-Shannon Divergence (JSD), but also achieves superior classification performance (higher F1-scores), outperforming traditional approaches. However, our approach exhibits lower confidence in tasks like irony and stance detection, likely due to the inherent subjectivity present in the texts. Lastly, leveraging Explainable AI (XAI), we explore model uncertainty and uncover meaningful insights into model predictions. All implementation details are available at our github repo.
2025
Settore INFO-01/A - Informatica
Thirty-Fourth International Joint Conference on Artificial Intelligence (IJCAI-25)
Montreal, Canada; Guangzhou, China
16-22 agosto 2025; 29-31 agosto 2025
Proceedings of the Thirty-Fourth International Joint Conference on Artificial Intelligence
International Joint Conferences on Artificial Intelligence Organization (IJCAI)
Natural Language Processing: General; AI Ethics, Trust, Fairness: General; Humans and AI: General; Uncertainty in AI: General
   PNRR Partenariati Estesi - FAIR - Future artificial intelligence research.
   Ministero della pubblica istruzione, dell'università e della ricerca

   Science and technology for the explanation of AI decision making
   XAI
   European Commission
   H2020
   834756
This work has been supported by the European Union under ERC-2018-ADG GA 834756 (XAI), the Partnership Extended PE00000013 - “FAIR - Future Artificial Intelligence Research” - Spoke 1 “Human-centered AI”.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11384/158647
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