The sudden outbreak of COVID-19 resulted in large volumes of data shared on different social media platforms. Analyzing and visualizing these data is doubtlessly essential to having a deep understanding of the pandemic's impacts on people's lives and their reactions to them. In this work, we conduct a large-scale spatiotemporal data analytic study to understand peoples' reactions to the COVID-19 pandemic during its early stages. In particular, we analyze a JSON-based dataset that is collected from news/messages/boards/blogs in English about COVID-19 over a period of 4 months, for a total of 5.2M posts. The data are collected from December 2019 to March 2020 from several social media platforms such as Facebook, LinkedIn, Pinterest, StumbleUpon and VK. Our study aims mainly to understand which implications of COVID-19 have interested social media users the most and how did they vary over time, the spatiotemporal distribution of misinformation, and the public opinion toward public figures during the pandemic. Our results can be used by many parties (e.g., governments, psychologists, etc.) to make more informative decisions, taking into account the actual interests and opinions of the people.
翻译:哥维迪-19的突然爆发导致在不同社交媒体平台上共享了大量数据。分析并直观地分析这些数据无疑对于深入了解该流行病对人们生活及其反应的影响至关重要。在这项工作中,我们开展了大规模的超时数据分析研究,以了解人们在早期对哥维迪-19大流行的反应。特别是,我们分析了一个基于JSON的数据集,该数据集是在四个月的时间内从英语新闻/信息/广告/板块/博客收集的关于哥维迪-19的数据,收集时间长达四个月,总共为5.2M 日。这些数据是从2019年12月至2020年3月从几个社交媒体平台收集的,如Facebook、LinkedIn、Pinterest、Stumbluppupon和VK。我们的研究的主要目的是了解哥维迪-19大流行大流行的哪些影响最感兴趣,以及这些影响如何随时间而变化,错误信息在瞬间传播,以及公众对大流行病中公众人物的看法。我们的成果可以被许多方面(例如政府、心理学家等)对决策的实际利益进行思考。