论文标题
通过社交媒体检测因1909年大流行而引起的主题和情感动态
Detecting Topic and Sentiment Dynamics Due to COVID-19 Pandemic Using Social Media
论文作者
论文摘要
新型冠状病毒病(Covid-19)的爆发极大地影响了全球人的日常生活。政府已采取紧急措施和政策(例如,锁定,社会距离)来应对这种高度传染病。但是,由于长期严格的社会隔离规则,人们的心理健康也处于危险之中。因此,对政策制定者做出适当的决定,监测各种事件和主题的人们的心理健康将是非常必要的。另一方面,社交媒体已被广泛用作人们发表和分享个人观点和感受的渠道。大规模的社交媒体帖子(例如,推文)为在这个大流行时期推断人们的心理健康提供了理想的数据源。在这项工作中,我们提出了一个新颖的框架,以分析大规模社交媒体帖子中Covid-19引起的主题和情感动态。基于在两周内与COVID-19相关的1300万条推文的收集,我们发现在研究期间,积极的情绪比负面情绪高于负面情绪。当缩小主题级分析时,我们发现Covid-19的不同方面已不断讨论并显示出可比的情感极性。诸如``保持安全的家''之类的主题以积极的情绪为主。其他主题``人死亡''始终表现出负面情绪。总体而言,提出的框架基于对主题级情感动态的分析显示了有见地的发现。
The outbreak of the novel Coronavirus Disease (COVID-19) has greatly influenced people's daily lives across the globe. Emergent measures and policies (e.g., lockdown, social distancing) have been taken by governments to combat this highly infectious disease. However, people's mental health is also at risk due to the long-time strict social isolation rules. Hence, monitoring people's mental health across various events and topics will be extremely necessary for policy makers to make the appropriate decisions. On the other hand, social media have been widely used as an outlet for people to publish and share their personal opinions and feelings. The large scale social media posts (e.g., tweets) provide an ideal data source to infer the mental health for people during this pandemic period. In this work, we propose a novel framework to analyze the topic and sentiment dynamics due to COVID-19 from the massive social media posts. Based on a collection of 13 million tweets related to COVID-19 over two weeks, we found that the positive sentiment shows higher ratio than the negative sentiment during the study period. When zooming into the topic-level analysis, we find that different aspects of COVID-19 have been constantly discussed and show comparable sentiment polarities. Some topics like ``stay safe home" are dominated with positive sentiment. The others such as ``people death" are consistently showing negative sentiment. Overall, the proposed framework shows insightful findings based on the analysis of the topic-level sentiment dynamics.