论文标题
心理计量学分析和情绪耦合在COVID-19 Indodemic期间印度的国家公告与Twitter之间的情绪耦合
Psychometric Analysis and Coupling of Emotions Between State Bulletins and Twitter in India during COVID-19 Infodemic
论文作者
论文摘要
COVID-19 Infodemic的传播速度比大流行本身更快。跨越潮流的错误信息对人们的健康和治理体系构成了重大威胁。由于社交媒体是最大的信息来源,因此管理不仅需要减轻错误信息,而且还需要对其产生的心理模式的早期理解。在COVID-19危机期间,仅Twitter的策划活动页面的使用量增加了45%,自2020年3月6日以来,其直接消息使用情况增加了30%。在这项研究中,我们分析了与Indial和Indial India Covid-19的正式公告相关的官方Bleartins Infodins的心理测量影响和偶联。我们以心理语言镜头来查看这两个来源,并量化了两者之间的程度和耦合。我们修改了基于Skip-Gram的开源词典构建器,以有效捕获与健康相关的情绪。然后,我们能够在社交媒体和官方公告中捕捉与健康相关情绪的时间进化。使用格兰杰的因果关系,对从官方公告中提取的情绪和社交媒体中提取的情绪的时间序列之间的铅滞后关系的分析表明,国家公告正在领导社交媒体,例如医疗紧急情况。还讨论了与决策者和积极参与缓解错误信息的沟通者潜在相关的进一步见解。我们的论文还推出了CoronaindiadataSet2,这是印度国家和州一级的首个基于社交媒体的COVID-19数据集,拥有超过560万个国家和260万个州级的推文。最后,我们将发现作为Covibes,这是一种交互式Web应用程序,该应用程序捕获了在国家和州一级在Coronaindiadataset上捕获的心理测量见解。
COVID-19 infodemic has been spreading faster than the pandemic itself. The misinformation riding upon the infodemic wave poses a major threat to people's health and governance systems. Since social media is the largest source of information, managing the infodemic not only requires mitigating of misinformation but also an early understanding of psychological patterns resulting from it. During the COVID-19 crisis, Twitter alone has seen a sharp 45% increase in the usage of its curated events page, and a 30% increase in its direct messaging usage, since March 6th 2020. In this study, we analyze the psychometric impact and coupling of the COVID-19 infodemic with the official bulletins related to COVID-19 at the national and state level in India. We look at these two sources with a psycho-linguistic lens of emotions and quantified the extent and coupling between the two. We modified path, a deep skip-gram based open-sourced lexicon builder for effective capture of health-related emotions. We were then able to capture the time-evolution of health-related emotions in social media and official bulletins. An analysis of lead-lag relationships between the time series of extracted emotions from official bulletins and social media using Granger's causality showed that state bulletins were leading the social media for some emotions such as Medical Emergency. Further insights that are potentially relevant for the policymaker and the communicators actively engaged in mitigating misinformation are also discussed. Our paper also introduces CoronaIndiaDataset2, the first social media based COVID-19 dataset at national and state levels from India with over 5.6 million national and 2.6 million state-level tweets. Finally, we present our findings as COVibes, an interactive web application capturing psychometric insights captured upon the CoronaIndiaDataset, both at a national and state level.