School of Broadcast and Television, Communication University of China, Nanjing, China.
Comput Math Methods Med. 2022 Aug 9;2022:3964473. doi: 10.1155/2022/3964473. eCollection 2022.
Since the COVID-19 pandemic, social media has become an important arena for the public to transmit and exchange messages, feelings, opinions, and information about the epidemic. In the era of social media, many UGC contents from self-media and various information about the epidemic on social media have strong emotional colors. These contents are not only rich in resources for text sentiment analysis but also reveal the laws and characteristics of the evolution of users' emotional tendencies in public health emergencies. It even ties together the interaction between media content and society.
As the Sina Weibo platform's characteristics of communication are real-time, open, and "many-to-many," the objective of this study is to collect Weibo-blog contents tagged with the outbreak of COVID-19 in a certain metropolis in China and analyze the emotional evolution situation of Weibo-blogs of the unexpected public health emergency involved. This will provide a dynamic understanding of the mechanisms underlying the evolution of emotional conditions in the context of public health emergencies.
This paper uses a Python crawler, the SnowNLP sentiment analysis model, and correlation analysis to calculate the emotional tendencies of the event "Covid-19 outbreak in a Chinese metropolis" on the Sina Weibo platform. The study was carried out in terms of the evolutionary stages of the event and the factors which induce it.
This paper revealed characteristics of time-varying laws and dynamic propagation of users' emotional evolution in public health emergencies. (1) This study refers to the life cycle model of COVID-19, combined with the statistics of the time series of the quantities of Weibo-blog posting, and divides the law of the quantities of Weibo-blog posting changing with the event into three stages: outbreak period, stalemate period, and resolution period. (2) Users' emotional tendencies are changeable and unstable which are easily induced by various factors. (3) There is a significant positive correlation between the reported confirmed cases and the quantities of Weibo-blog posts. (4) Individual emotional tendencies will have a positive changing trend with the public's average emotional tendencies after the event occurs. (5) There is no correlation between reposts, comments, and Weibo-blog emotional tendencies.
The research found that, given staged evolution and repeated fluctuations of emotional tendencies, relevant departments should effectively use this law and set up different response plans according to different stages. In addition, what is highly coupled with users' emotional tendencies is not only the information about the virus but more large-scale infected by different intensities of emotions.
自 COVID-19 大流行以来,社交媒体已成为公众传播和交流有关疫情的信息、情感、意见和信息的重要领域。在社交媒体时代,来自自媒体的许多 UGC 内容和社交媒体上的各种疫情信息都具有强烈的情感色彩。这些内容不仅为文本情感分析提供了丰富的资源,而且揭示了用户在突发公共卫生事件中情感倾向演变的规律和特征。它甚至将媒体内容与社会的互动联系在一起。
由于微博平台的交流特点是实时、开放和“多对多”,因此本研究的目的是收集中国某大都市微博平台上标记为 COVID-19 爆发的微博内容,并分析所涉及突发公共卫生事件的微博博客情感演变情况。这将为突发公共卫生事件背景下情感状态演变机制提供动态理解。
本文使用 Python 爬虫、SnowNLP 情感分析模型和相关分析来计算微博平台上“中国大都市 COVID-19 爆发”事件的情感倾向。该研究从事件的演进阶段和诱发因素两个方面进行了研究。
本文揭示了突发公共卫生事件中用户情感演变的时变规律和动态传播特征。(1)本研究参考 COVID-19 的生命周期模型,结合微博博文发布数量的时间序列统计,将微博博文发布数量变化规律分为爆发期、僵持期和解决期三个阶段。(2)用户的情感倾向是多变和不稳定的,很容易受到各种因素的影响。(3)报告的确诊病例数与微博博文发布量呈显著正相关。(4)个体情感倾向在事件发生后会随着公众平均情感倾向呈正变化趋势。(5)转载、评论和微博博客情感倾向之间没有相关性。
研究发现,鉴于情感倾向的阶段性演变和反复波动,相关部门应有效利用这一规律,并根据不同阶段制定不同的应对计划。此外,与用户情感倾向高度相关的不仅是有关病毒的信息,还有更多不同强度的情绪感染的大规模信息。