Reducing COVID-19 Misinformation Spread by Introducing Information Diffusion Delay Using Agent-based Modeling
Mustafa Alassad, Nitin Agarwal

TL;DR
This paper presents an agent-based modeling approach to reduce COVID-19 misinformation spread on social media by introducing a delay in information diffusion, optimizing agent responses, and prioritizing key communities.
Contribution
It introduces a multidisciplinary agent-based model that effectively limits misinformation spread by optimizing response times and community targeting in social media networks.
Findings
Information diffusion delay improved to 3 minutes
Optimized agent allocation reduced misinformation spread
Prioritized community response enhanced mitigation effectiveness
Abstract
With the explosive growth of the Coronavirus Pandemic (COVID-19), misinformation on social media has developed into a global phenomenon with widespread and detrimental societal effects. Despite recent progress and efforts in detecting COVID-19 misinformation on social media networks, this task remains challenging due to the complexity, diversity, multi-modality, and high costs of fact-checking or annotation. In this research, we introduce a systematic and multidisciplinary agent-based modeling approach to limit the spread of COVID-19 misinformation and interpret the dynamic actions of users and communities in evolutionary online (or offline) social media networks. Our model was applied to a Twitter network associated with an armed protest demonstration against the COVID-19 lockdown in Michigan state in May, 2020. We implemented a one-median problem to categorize the Twitter network into…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Misinformation and Its Impacts
