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Dynamic Evolution of Public’s Positive Emotions and Risk Perception for the COVID-19 Pandemic: A Case Study of Hubei Province of China

机译:Covid-19大流行的公共情感与风险感知的动态演变 - 以湖北省湖北省为例

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The spread of COVID-19 pandemic and the participation of Internet information are continually changing the public’s positive emotions and risk perception. However, relatively little is known about the underlying mechanism of how the COVID-19 dynamic situation affects the public’s risk perception and emotions. This study uses the social risk amplification framework (SRAF) as the theoretical basis to collect and analyze Hubei Province data from January 20 to April 8, 2020, including the number of newly diagnosed people per day, the proportion of positive emotional posts in Weibo, and the Baidu search index (BSI). The autoregressive integrated moving average (ARIMAbased time-series prediction model is used to analyze the dynamic evolution laws and fluctuation trends of Weibo positive emotions and risk perception during the development of the pandemic. The conclusion of the study is that positive emotions are negatively correlated with risk perception, the severity of the pandemic situation is negatively correlated with positive emotions, and the severity of the pandemic situation is positively correlated with risk perception. The public has a keen response to the dynamics of the pandemic situation and the government’s decision-making behavior, which is manifested by the significant changes in positive emotions and risk perception in the corresponding period. The research results can provide a reference for government departments to guide the public to establish an objective risk perception and maintain positive and stable emotions in similar catastrophes.
机译:Covid-19大流行的传播和互联网信息的参与是不断改变公众的积极情绪和风险感知。然而,关于Covid-19动态形势如何影响公众风险感知和情绪的潜在机制,相对较少。本研究利用社会风险扩增框架(SRAF)作为从2020年1月20日至4月8日收集和分析湖北省数据的理论依据,包括每天新诊断的人数,微博中积极情绪岗位的比例,和百度搜索索引(BSI)。自回归综合移动平均线(arimabed时间序列预测模型用于分析大流行发展期间微博积极情绪和风险感知的动态演化法律和波动趋势。该研究的结论是积极情绪与阳性情绪呈负相关风险感知,大流行情况的严重程度与积极情绪呈负相关,大流行情况的严重程度与风险感知呈正相关。公众对大流行情况的动态和政府的决策行为有敏锐的回应,这表明在相应期间的积极情绪和风险感知的重大变化。研究结果可以为政府部门提供参考,以指导公众在类似灾难中建立客观风险感知并保持积极和稳定的情绪。

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