论文标题
Twitter的大规模数据集关于在当前的Covid-19 Omicron Wave期间有关在线学习的大规模数据集
A Large-Scale Dataset of Twitter Chatter about Online Learning during the Current COVID-19 Omicron Wave
论文作者
论文摘要
据报道是COVID-19的COVID-19 Omicron变体,这是Covid-19的最免疫异性变体,导致全球Covid-19病例的激增。这导致世界各地的学校,大学和大学过渡到在线学习。结果,诸如Twitter之类的社交媒体平台正在以推文的形式看到与在线学习相关的对话的增加。挖掘此类推文来开发数据集,可以作为与分析兴趣,观点,观点,观点,观点,态度,态度和对在线学习的反馈有关在Omicron变体引起的COVID-19案例中的兴趣,观点,观点,观点,态度和反馈有关的数据资源。因此,这项工作提出了自2021年11月COVID-19的第一个检测到的covid-19 Omicron变体以来的大规模开放式Twitter Twitter数据集,该数据集于2021年11月被发现的案例。科学数据管理。该论文还简要概述了大数据,数据挖掘,自然语言处理及其相关学科领域中的一些潜在应用,并在此Omicron浪潮中特别关注在线学习,可以通过使用此数据集研究,探索和研究。
The COVID-19 Omicron variant, reported to be the most immune evasive variant of COVID-19, is resulting in a surge of COVID-19 cases globally. This has caused schools, colleges, and universities in different parts of the world to transition to online learning. As a result, social media platforms such as Twitter are seeing an increase in conversations related to online learning in the form of tweets. Mining such tweets to develop a dataset can serve as a data resource for different applications and use-cases related to the analysis of interest, views, opinions, perspectives, attitudes, and feedback towards online learning during the current surge of COVID-19 cases caused by the Omicron variant. Therefore, this work presents a large-scale open-access Twitter dataset of conversations about online learning from different parts of the world since the first detected case of the COVID-19 Omicron variant in November 2021. The dataset is compliant with the privacy policy, developer agreement, and guidelines for content redistribution of Twitter, as well as with the FAIR principles (Findability, Accessibility, Interoperability, and Reusability) principles for scientific data management. The paper also briefly outlines some potential applications in the fields of Big Data, Data Mining, Natural Language Processing, and their related disciplines, with a specific focus on online learning during this Omicron wave that may be studied, explored, and investigated by using this dataset.