Autores
Yigezu Mesay Gemeda
Bade Girma Yohannis
Kolesnikova Olga
Gelbukh Alexander
Título CEthio-Fake: Cutting-Edge Approaches to Combat Fake News in Under-Resourced Languages Using Explainable AI
Tipo Congreso
Sub-tipo Indefinido
Descripción 6th International Conference on AI in Computational Linguistics, ACLing 2024
Resumen The proliferation of fake news has emerged as a significant threat to the integrity of information dissemination, particularly on social media platforms. Misinformation can spread quickly due to the ease of creating and disseminating content, affecting public opinion and sociopolitical events. Identifying false information is therefore essential to reducing its negative consequences and maintaining the reliability of online news sources. Traditional approaches to fake news detection often rely solely on content-based features, overlooking the crucial role of social context in shaping the perception and propagation of news articles. In this paper, we propose a comprehensive approach that integrates social context-based features with news content features to enhance the accuracy of fake news detection in under-resourced languages. We perform several experiments utilizing a variety of methodologies, including traditional machine learning, neural networks, ensemble learning, and transfer learning. Assessment of the outcomes of the experiments shows that the ensemble learning approach has the highest accuracy, achieving a 0.99 F1 score. Additionally, when compared with monolingual models, the fine-tuned model with the target language outperformed others, achieving a 0.94 F1 score. We analyze the functioning of the models, considering the important features that contribute to model performance, using explainable AI techniques. © 2024 Elsevier B.V.. All rights reserved.
Observaciones DOI 10.1016/j.procs.2024.10.186 Procedia Computer Science, v. 244
Lugar Hybrid, Dubai
País Emiratos Arabes Unidos
No. de páginas 133-142
Vol. / Cap.
Inicio 2024-09-21
Fin 2024-09-22
ISBN/ISSN