2023
DOI: 10.1109/access.2023.3328396
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Rumor Spreading Model Considering the Roles of Online Social Networks and Information Overload

Jinlong Fu,
Yan Song,
Yike Feng

Abstract: Online social networks have become important channels for spreading rumors, and the spreading process in online social networks is influenced by many factors. This study focuses on the problem of rumor spreading through indirect contact, such as non-following/non-friend relationships due to the role of social networks, and considers the phenomenon of rumor isolation from users due to information overload on social networks. The SMQIR rumor-spreading model with five user groups was developed by introducing two … Show more

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Cited by 1 publication
(1 citation statement)
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References 72 publications
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“…Khan et al [41] focused on visual user-generated content verification in journalism, reflecting the growing importance of visual content in the realm of fake news. Fu et al [42] examined rumor spreading models considering the roles of online social networks and information overload, providing insights into the behavioral aspects of misinformation dissemination operations. Further extending the scope of research, Wang et al [43], Hu et al [44], and Wang et al [45] explored various aspects of multi-modal fake news detection, including the use of transformer networks and causal inference.…”
Section: Related Studymentioning
confidence: 99%
“…Khan et al [41] focused on visual user-generated content verification in journalism, reflecting the growing importance of visual content in the realm of fake news. Fu et al [42] examined rumor spreading models considering the roles of online social networks and information overload, providing insights into the behavioral aspects of misinformation dissemination operations. Further extending the scope of research, Wang et al [43], Hu et al [44], and Wang et al [45] explored various aspects of multi-modal fake news detection, including the use of transformer networks and causal inference.…”
Section: Related Studymentioning
confidence: 99%