Assessing Individual and Community Vulnerability to Fake News in Social Networks
Bhavtosh Rath, Wei Gao, Jaideep Srivastava

TL;DR
This paper introduces a novel community health assessment model based on computational trust to evaluate individual and community vulnerability to fake news spread in social networks, emphasizing community structure influence.
Contribution
It proposes new metrics leveraging community structures and trust concepts to assess vulnerability to fake news, filling a gap in content-focused models.
Findings
Metrics outperform on fake news spreading networks
Community structure influences vulnerability levels
Model effectively distinguishes between false and true information spread
Abstract
The plague of false information, popularly called fake news has affected lives of news consumers ever since the prevalence of social media. Thus understanding the spread of false information in social networks has gained a lot of attention in the literature. While most proposed models do content analysis of the information, no much work has been done by exploring the community structures that also play an important role in determining how people get exposed to it. In this paper we base our idea on Computational Trust in social networks to propose a novel Community Health Assessment model against fake news. Based on the concepts of neighbor, boundary and core nodes of a community, we propose novel evaluation metrics to quantify the vulnerability of nodes (individual-level) and communities (group-level) to spreading false information. Our model hypothesizes that if the boundary nodes…
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Taxonomy
TopicsMisinformation and Its Impacts · Spam and Phishing Detection · Complex Network Analysis Techniques
