Reducing COVID-19 Misinformation Spread by Introducing Information Diffusion Delay Using Agent-based Modeling

Mustafa Alassad, Nitin Agarwal
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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 six key communities (nodes) and identified information exchange (links) within the network. We measured the response time to COVID-19 misinformation spread in the network and employed a cybernetic organizational method to monitor the Twitter network. The overall misinformation mitigation strategy was evaluated, and agents were allocated to interact with the network based on the measured response time and feedback. The proposed model prioritized the communities based on the agents response times at the operational level. It then optimized agent allocation to limit the spread of COVID19 related misinformation from different communities, improved the information diffusion delay threshold to up to 3 minutes, and ultimately enhanced the mitigation process to reduce misinformation spread across the entire network.
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利用代理建模引入信息扩散延迟,减少 COVID-19 误报传播
随着冠状病毒大流行(COVID-19)的爆炸性增长,社交媒体上的错误信息已发展成为一种全球现象,具有广泛而有害的社会影响。尽管最近在检测社交媒体网络上的 COVID-19 错误信息方面取得了进展并做出了努力,但由于事实检查或注释的复杂性、多样性、多模态性和高成本,这项任务仍然充满挑战。在这项研究中,我们引入了一种基于代理的系统化和多学科建模方法,以限制 COVID-19 错误信息的传播,并解释用户和社区在演化的在线(或离线)社交媒体网络中的动态行为。我们的模型被应用于与 2020 年 5 月密歇根州针对 COVID-19 封锁的武装抗议示威相关的 Twitter 网络。我们利用单中值问题将 Twitter 网络分为六个关键社区(节点),并确定了网络内的信息交换(链接)。我们测量了 COVID-19 错误信息在该网络中传播的响应时间,并采用控制论组织方法监控推特网络。我们评估了整体的错误信息缓解策略,并根据测得的响应时间和反馈分配了与网络互动的代理。所提出的模型根据代理在操作层面的响应时间确定了社区的优先级。然后,它优化了代理分配,以限制来自不同社区的与 COVID19 相关的错误信息的传播,将信息扩散延迟阈值提高到最多 3 分钟,并最终增强了缓解过程,以减少整个网络中的错误信息传播。
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