Cui Hao, Kertész János
Department of Network and Data Science, Central European University, Quellenstrasse 51, A-1100 Vienna, Austria.
EPJ Data Sci. 2021;10(1):8. doi: 10.1140/epjds/s13688-021-00263-0. Epub 2021 Feb 3.
Understanding attention dynamics on social media during pandemics could help governments minimize the effects. We focus on how COVID-19 has influenced the attention dynamics on the biggest Chinese microblogging website Sina Weibo during the first four months of the pandemic. We study the real-time Hot Search List (HSL), which provides the ranking of the most popular 50 hashtags based on the amount of Sina Weibo searches. We show how the specific events, measures and developments during the epidemic affected the emergence of different kinds of hashtags and the ranking on the HSL. A significant increase of COVID-19 related hashtags started to occur on HSL around January 20, 2020, when the transmission of the disease between humans was announced. Then very rapidly a situation was reached where COVID-related hashtags occupied 30-70% of the HSL, however, with changing content. We give an analysis of how the hashtag topics changed during the investigated time span and conclude that there are three periods separated by February 12 and March 12. In period 1, we see strong topical correlations and clustering of hashtags; in period 2, the correlations are weakened, without clustering pattern; in period 3, we see a potential of clustering while not as strong as in period 1. We further explore the dynamics of HSL by measuring the ranking dynamics and the lifetimes of hashtags on the list. This way we can obtain information about the decay of attention, which is important for decisions about the temporal placement of governmental measures to achieve permanent awareness. Furthermore, our observations indicate abnormally higher rank diversity in the top 15 ranks on HSL due to the COVID-19 related hashtags, revealing the possibility of algorithmic intervention from the platform provider.
The online version contains supplementary material available at 10.1140/epjds/s13688-021-00263-0.
了解疫情期间社交媒体上的注意力动态有助于政府将影响降至最低。我们关注新冠疫情在前四个月对中国最大的微博网站新浪微博上注意力动态的影响。我们研究实时热搜榜,它根据新浪微博搜索量提供最热门的50个话题标签的排名。我们展示了疫情期间的具体事件、措施和发展如何影响不同类型话题标签的出现以及热搜榜上的排名。2020年1月20日左右,当宣布人际间疾病传播时,与新冠病毒相关的话题标签在热搜榜上开始显著增加。然后很快就出现了新冠相关话题标签占据热搜榜30%-70%的情况,不过内容在变化。我们分析了在所调查的时间跨度内话题标签主题是如何变化的,并得出结论,有三个时期,分别以2月12日和3月12日为界。在第一阶段,我们看到话题标签有很强的主题相关性和聚类;在第二阶段,相关性减弱,没有聚类模式;在第三阶段,我们看到有聚类的可能性,但不如第一阶段强烈。我们通过测量排名动态和热搜榜上话题标签的生命周期进一步探索热搜榜的动态。通过这种方式,我们可以获得关于注意力衰减的信息,这对于决定政府措施的时间安排以实现持续关注很重要。此外,我们的观察表明,由于与新冠病毒相关的话题标签,热搜榜前15名的排名多样性异常高,这揭示了平台提供商进行算法干预的可能性。
在线版本包含可在10.1140/epjds/s13688-021-00263-0获取的补充材料。