Which Emotions of Social Media Users Lead to Dissemination of Fake News: Sentiment Analysis Towards Covid -19 Vaccine
Author:
ER Maide Feyza1ORCID, BAYRAKDAR YILMAZ Yonca2ORCID
Affiliation:
1. BANDIRMA ONYEDİ EYLÜL ÜNİVERSİTESİ 2. ÇANAKKALE ONSEKİZ MART ÜNİVERSİTESİ
Abstract
The use of social media as a news source is quite common today. However, the fact that the news encountered on social media are accepted as true without questioning or checking their validity is one of the main reasons for the dissemination of fake news. For the social media ecosystem, the question arises as to which emotion is more effec-tive in spreading fake news, as the accuracy and validity of the news are under the control of opinions and emo-tions rather than evidence-based data. From this point of view, our study investigates whether there is a relation-ship between users’ reaction to the news and the prevalence of the news. In our study, sentiment analysis was conducted on the reactions of Twitter users to fake news about the COVID-19 vaccine between December 31, 2019 and July 30, 2022. To fully assess whether there is a relationship between the reactions and the prevalence of the news, the spread of real news published in the same period in addition to fake news is also taken into considera-tion. Fake and real news comments, which were selected in different degrees of prevalence from the most to the least, were examined comparatively. In the study, where text mining techniques were used for text pre-processing, analysis was carried out with NLP techniques. In 83% of the fake news datasets and 91% of the overall news datasets considered in the study, negative emotion was more dominant than other emotions, and it was observed that as negative comments increased, fake news spread more as well as real news. While neutral comments have no effect on prevalence, users who comment on fake news for fun significantly increase the prevalence. Finally, to reveal bot activity NLP techniques were applied.
Publisher
Canakkale Onsekiz Mart University
Reference35 articles.
1. Agarwal, A., Xie, B., Vovsha, I., Rambow, O., & Passonneau, R. J. (2011, June). Sentiment analysis of twitter data. In Proceedings of the workshop on language in social media (LSM 2011) (pp. 30-38). 2. Alonso, M. A., Vilares, D., Gómez-Rodríguez, C., & Vilares, J. (2021). Sentiment analysis for fake news detection. Electronics, 10(11), 1348. 3. Anoop, K., Deepak, P., & Lajish, V. L. (2020). Emotion cognizance improves health fake news identification. In IDEAS (p. 24). 4. Antonakaki, D., Fragopoulou, P., & Ioannidis, S. (2021). A survey of Twitter research: Data model, graph structure, sentiment analysis and attacks. Expert Systems with Applications, 164, 114006. 5. Bird, S., Klein, E., & Loper, E. (2009). Natural language processing with Python: analyzing text with the natural language toolkit. O'Reilly Media, Inc..
Bodaghi, A., & Goliaei, S. (2018). A novel model for rumor spreading on social networks with considering the influence of dissenting opinions. Advances in Complex Systems, 21(06n07), 1850011.
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|