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Public risk perception and emotion on Twitter during the Covid-19 pandemic

机译:在Covid-19流行病中,Twitter上的公共风险感知和情感

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Successful navigation of the Covid-19 pandemic is predicated on public cooperation with safety measures and appropriate perception of risk, in which emotion and attention play important roles. Signatures of public emotion and attention are present in social media data, thus natural language analysis of this text enables near-to-real-time monitoring of indicators of public risk perception. We compare key epidemiological indicators of the progression of the pandemic with indicators of the public perception of the pandemic constructed from $$sim 20$$ million unique Covid-19-related tweets from 12 countries posted between 10th March and 14th June 2020. We find evidence of psychophysical numbing: Twitter users increasingly fixate on mortality, but in a decreasingly emotional and increasingly analytic tone. Semantic network analysis based on word co-occurrences reveals changes in the emotional framing of Covid-19 casualties that are consistent with this hypothesis. We also find that the average attention afforded to national Covid-19 mortality rates is modelled accurately with the Weber–Fechner and power law functions of sensory perception. Our parameter estimates for these models are consistent with estimates from psychological experiments, and indicate that users in this dataset exhibit differential sensitivity by country to the national Covid-19 death rates. Our work illustrates the potential utility of social media for monitoring public risk perception and guiding public communication during crisis scenarios.
机译:Covid-19大流行的成功导航是通过与安全措施的公共合作以及对风险的适当感知来实现的,在这种情况下,情感和注意力发挥重要作用。社交媒体数据中存在公众情感和关注的签名,因此本文的自然语言分析能够实现接近实时监测公共风险感知指标。我们比较大流行进程的关键流行病学指标与公众对来自的大流行病的指标,从$$ sim 20 000澳元百万美元的独特Covid-19相关推文,从12个国家和2020年6月14日发布。我们寻找心理物理麻木的证据:Twitter用户越来越多地定影死亡率,但以一种逐渐变得越来越情绪化,越来越多的分析音调。基于单词共同发生的语义网络分析显示了与该假设一致的Covid-19伤亡人员的情绪框架的变化。我们还发现,与国家Covid-19死亡率提供的平均注意力与感官感知的Weber-Fechner和权力律职能准确建模。我们对这些模型的参数估计与心理实验的估计一致,并表明该数据集中的用户对国家Covid-19死亡率呈现差异敏感性。我们的工作说明了社交媒体在危机情景期间监测公共风险感知和指导公共交流的潜在效用。

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