论文标题
在COVID-19时代的假新闻议程:通过核实内容来识别趋势
Fake news agenda in the era of COVID-19: Identifying trends through fact-checking content
论文作者
论文摘要
社交媒体的兴起激发了我们社会中虚假信息的空前循环。在危机时期,例如19日大流行时,它甚至更为明显。事实核对的工作大大扩展,并被吹捧为假新闻最有希望的解决方案之一,尤其是在这样的时代。几项研究报道了西方社会的事实检查组织的发展,尽管对全球南方的关注很少。在这里,为了填补这一空白,我们引入了一种新型的马尔可夫风格的计算方法,用于识别推文中的主题。与其他主题建模方法相反,我们的方法群群主题及其在预定义的时间窗口中的当前演变。通过这些,我们从Twitter帐户中收集了两个巴西事实检查媒体的数据,并在整个大流行期间两周介绍了这些举措的主题。通过比较这些组织,我们可以确定它们共享的相似性和差异。我们的方法导致了一项重要的技术,可以在各种情况下将主题聚类,包括不良的情况 - 相同的信息过多。特别是,数据清楚地揭示了在此期间政治与健康危机之间的复杂交织在一起。我们认为,我们认为,我们认为,该模型适合主题建模和未来研究的议程。
The rise of social media has ignited an unprecedented circulation of false information in our society. It is even more evident in times of crises, such as the COVID-19 pandemic. Fact-checking efforts have expanded greatly and have been touted as among the most promising solutions to fake news, especially in times like these. Several studies have reported the development of fact-checking organizations in Western societies, albeit little attention has been given to the Global South. Here, to fill this gap, we introduce a novel Markov-inspired computational method for identifying topics in tweets. In contrast to other topic modeling approaches, our method clusters topics and their current evolution in a predefined time window. Through these, we collected data from Twitter accounts of two Brazilian fact-checking outlets and presented the topics debunked by these initiatives in fortnights throughout the pandemic. By comparing these organizations, we could identify similarities and differences in what was shared by them. Our method resulted in an important technique to cluster topics in a wide range of scenarios, including an infodemic -- a period overabundance of the same information. In particular, the data clearly revealed a complex intertwining between politics and the health crisis during this period. We conclude by proposing a generic model which, in our opinion, is suitable for topic modeling and an agenda for future research.