Fighting disinformation with artificial intelligence: fundamentals, advances and challenges
Metadatos
Mostrar el registro completo del ítemEditorial
Profesional de la Información
Materia
Journalism Disinformation Computing Artificial intelligence AI Machine learning Datasets Natural language processing NLP Social network analysis Deep fakes Large language models
Fecha
2023-06-17Referencia bibliográfica
Montoro-Montarroso, A., Cantón-Correa, J., Rosso, P., Chulvi, B., Panizo-Lledot, í ngel, Huertas-Tato, J., … Gómez-Romero, J. (2023). Fighting disinformation with artificial intelligence: fundamentals, advances and challenges. Profesional De La información, 32(3). [https://doi.org/10.3145/epi.2023.may.22]
Patrocinador
European Commission, project Iberifier (Iberian Digital Media Research and Fact-Checking Hub); The call CEF-TC-2020–2 (European Digital Media Observatory), grant number 2020-EU-IA-0252Resumen
Internet and social media have revolutionised the way news is distributed and consumed. However, the constant flow of massive amounts of content has made it difficult to discern between truth and falsehood, especially in online platforms plagued with malicious actors who create and spread harmful stories. Debunking disinformation is costly, which has put artificial intelligence (AI) and, more specifically, machine learning (ML) in the spotlight as a solution to this problem. This work revises recent literature on AI and ML techniques to combat disinformation, ranging from automatic classification to feature extraction, as well as their role in creating realistic synthetic content. We conclude that ML advances have been mainly focused on automatic classification and scarcely adopted outside research labs due to their dependence on limited-scope datasets. Therefore, research efforts should be redirected towards developing AI-based systems that are reliable and trustworthy in supporting humans in early disinformation detection instead of fully automated solutions.Â