Cutting through the noise to motivate people: A comprehensive analysis of COVID-19 social media posts de/motivating vaccination

Ashiqur Rahman , Ehsan Mohammadi , Hamed Alhoori
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Abstract

The COVID-19 pandemic exposed significant weaknesses in the healthcare information system. The overwhelming volume of misinformation on social media and other socioeconomic factors created extraordinary challenges to motivate people to take proper precautions and get vaccinated. In this context, our work explored a novel direction by analyzing an extensive dataset collected over two years, identifying the topics de/motivating the public about COVID-19 vaccination. We analyzed these topics based on time, geographic location, and political orientation. We noticed that while the motivating topics remain the same over time and geographic location, the demotivating topics change rapidly. We also identified that intrinsic motivation, rather than external mandate, is more advantageous to inspire the public. This study addresses scientific communication and public motivation in social media. It can help public health officials, policymakers, and social media platforms develop more effective messaging strategies to cut through the noise of misinformation and educate the public about scientific findings.

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穿透噪音,激发人们的积极性:全面分析 COVID-19 社交媒体上关于疫苗接种的帖子
COVID-19 大流行暴露了医疗保健信息系统的重大缺陷。社交媒体上铺天盖地的错误信息和其他社会经济因素给激励人们采取适当的预防措施和接种疫苗带来了巨大挑战。在这种情况下,我们的工作探索了一个新的方向,通过分析两年来收集的大量数据集,确定了促使公众接种 COVID-19 疫苗的话题。我们根据时间、地理位置和政治倾向对这些话题进行了分析。我们注意到,虽然激励性话题在时间和地理位置上保持不变,但抑制性话题却变化迅速。我们还发现,内在动力比外在授权更有利于激励公众。本研究探讨了社交媒体中的科学传播和公众激励。它可以帮助公共卫生官员、政策制定者和社交媒体平台制定更有效的信息传播策略,以穿过错误信息的噪音,向公众宣传科学发现。
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