Scientific journal paper Q1
Harnessing deep learning to monitor people’s perceptions towards climate change on social media
Ana Sofia Cardoso (Cardoso, A. S.); Catarina da Silva (Silva, C. da.); Andrea Soriano-Redondo (Soriano-Redondo, A.); Ivan Jarić (Jarić, I.); Susana Batel (Batel, S.); João Andrade Santos (Santos, J. A.); Alípio Jorge (Jorge, A.); Ana Sofia Vaz (Vaz, A. S.); et al.
Journal Title
Scientific Reports
Year (definitive publication)
2025
Language
English
Country
United Kingdom
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Abstract
Social media has become a popular stage for people’s views over climate change. Monitoring how climate change is perceived on social media is relevant for informed decision-making. This work advances the way social media users’ perceptions and reactions towards climate change can be understood over time, by implementing a scalable methodological framework grounded on natural language processing. The framework was tested in over 1771 thousand X/Twitter posts of Spanish, Portuguese, and English discourses from Southwestern Europe. The employed models were successful (i.e., > 84% success rate) in detecting relevant climate change posts. The methodology detected specific climate phenomena in users’ discourse, coinciding with the occurrence of major climatic events in the test area (e.g., wildfires, storms). The classification of sentiments, emotions, and irony was also efficient, with evaluation metrics ranging from 71 to 92%. Most users’ reactions were neutral (> 35%) or negative (> 39%), mostly associated to sentiments of anger and sadness over climate impacts. Almost a quarter of posts showed ironic content, reflecting the common use of irony in social media communication. Our exploratory study holds potential to support climate decisions based on deep learning tools from monitoring people’s perceptions towards climate issues in the online space.
Acknowledgements
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Keywords
Sentiment analysis,Emotion analysis,Environmental monitoring,Irony detection,Natural language processing,Twitter
  • Computer and Information Sciences - Natural Sciences
  • Biological Sciences - Natural Sciences
  • Psychology - Social Sciences
Funding Records
Funding Reference Funding Entity
2022.06965.PTDC Fundação para a Ciência e a Tecnologia
2020.01175.CEECIND/CP1601/CT0009 Fundação para a Ciência e a Tecnologia
UIDB/04033/2020 Fundação para a Ciência e a Tecnologia
RYC2023-043755-I Ramón y Cajal fellowship
2021.05426.BD 2021 PhD Research Studentships

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