Fake news is a major challenge in social media, particularly in the health domain where it can lead to severe consequences for both individuals and society as a whole. To contribute to combating this problem, we present a novel solution for improving the accuracy of detecting fake health news, utilizing a fine-Tuned BERT model that integrates both user-and content-related socio-contextual information. Specifically, this information is combined with the textual content itself to form a socio-contextual input sequence for the BERT model. By fine-Tuning such a model with respect to the health misinformation detection task, the resulting classifier can accurately predict the category to which each piece of content belongs, i.e., either "real health news"or "fake health news". We validate our solution through a series of experiments conducted on distinct publicly available datasets constituted by health-related tweets. These results illustrate the superiority of the proposed solution compared to the standard BERT baseline model and other advanced models. Indeed, they show that the integration of socio-contextual information in the detection process positively contributes to increasing the overall accuracy of the fake health news detection task. The study also suggests, in a preliminary way, how such information could be used for the explainability of the model itself.

Upadhyay, R., Pasi, G., Viviani, M. (2023). Leveraging Socio-contextual Information in BERT for Fake Health News Detection in Social Media. In Proceedings of the 2023 Workshop on Open Challenges in Online Social Networks, OASIS 2023, Held in conjunction with the 34th ACM conference on Hypertext and Social Media, HT 2023 (pp.38-46). Association for Computing Machinery, Inc [10.1145/3599696.3612902].

Leveraging Socio-contextual Information in BERT for Fake Health News Detection in Social Media

Upadhyay, R;Pasi, G;Viviani, M
2023

Abstract

Fake news is a major challenge in social media, particularly in the health domain where it can lead to severe consequences for both individuals and society as a whole. To contribute to combating this problem, we present a novel solution for improving the accuracy of detecting fake health news, utilizing a fine-Tuned BERT model that integrates both user-and content-related socio-contextual information. Specifically, this information is combined with the textual content itself to form a socio-contextual input sequence for the BERT model. By fine-Tuning such a model with respect to the health misinformation detection task, the resulting classifier can accurately predict the category to which each piece of content belongs, i.e., either "real health news"or "fake health news". We validate our solution through a series of experiments conducted on distinct publicly available datasets constituted by health-related tweets. These results illustrate the superiority of the proposed solution compared to the standard BERT baseline model and other advanced models. Indeed, they show that the integration of socio-contextual information in the detection process positively contributes to increasing the overall accuracy of the fake health news detection task. The study also suggests, in a preliminary way, how such information could be used for the explainability of the model itself.
slide + paper
BERT; Classification; Fake News; Health Misinformation; Social Context; Social Media; Transformers;
English
2023 Workshop on Open Challenges in Online Social Networks, OASIS 2023, Held in conjunction with the 34th ACM conference on Hypertext and Social Media, HT 2023 - 4 September 2023
2023
Guidi, B; Michienzi, A; Ricci, L
Proceedings of the 2023 Workshop on Open Challenges in Online Social Networks, OASIS 2023, Held in conjunction with the 34th ACM conference on Hypertext and Social Media, HT 2023
9798400702259
2023
38
46
none
Upadhyay, R., Pasi, G., Viviani, M. (2023). Leveraging Socio-contextual Information in BERT for Fake Health News Detection in Social Media. In Proceedings of the 2023 Workshop on Open Challenges in Online Social Networks, OASIS 2023, Held in conjunction with the 34th ACM conference on Hypertext and Social Media, HT 2023 (pp.38-46). Association for Computing Machinery, Inc [10.1145/3599696.3612902].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/440719
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