Human Language Technology Research Institute, Department of Computer Science, The University of Texas at Dallas, Richardson, TX, USA.
J Biomed Inform. 2021 Dec;124:103955. doi: 10.1016/j.jbi.2021.103955. Epub 2021 Nov 18.
Enormous hope in the efficacy of vaccines became recently a successful reality in the fight against the COVID-19 pandemic. However, vaccine hesitancy, fueled by exposure to social media misinformation about COVID-19 vaccines became a major hurdle. Therefore, it is essential to automatically detect where misinformation about COVID-19 vaccines on social media is spread and what kind of misinformation is discussed, such that inoculation interventions can be delivered at the right time and in the right place, in addition to interventions designed to address vaccine hesitancy. This paper is addressing the first step in tackling hesitancy against COVID-19 vaccines, namely the automatic detection of known misinformation about the vaccines on Twitter, the social media platform that has the highest volume of conversations about COVID-19 and its vaccines. We present CoVaxLies, a new dataset of tweets judged relevant to several misinformation targets about COVID-19 vaccines on which a novel method of detecting misinformation was developed. Our method organizes CoVaxLies in a Misinformation Knowledge Graph as it casts misinformation detection as a graph link prediction problem. The misinformation detection method detailed in this paper takes advantage of the link scoring functions provided by several knowledge embedding methods. The experimental results demonstrate the superiority of this method when compared with classification-based methods, widely used currently.
疫苗的巨大疗效在最近抗击 COVID-19 大流行的斗争中成为了现实。然而,由于接触到有关 COVID-19 疫苗的社交媒体错误信息,疫苗犹豫成为了一个主要障碍。因此,自动检测社交媒体上 COVID-19 疫苗错误信息的传播位置和讨论的错误信息类型至关重要,以便能够在正确的时间和地点提供接种干预措施,除了旨在解决疫苗犹豫的干预措施之外。本文针对 COVID-19 疫苗犹豫的第一步,即自动检测 Twitter 上有关疫苗的已知错误信息,因为 Twitter 是有关 COVID-19 及其疫苗的对话量最高的社交媒体平台。我们提出了 CoVaxLies,这是一个新的推文数据集,这些推文与关于 COVID-19 疫苗的几个错误信息目标相关,我们针对这些推文开发了一种新的错误信息检测方法。我们的方法将 CoVaxLies 组织在一个错误信息知识图谱中,因为它将错误信息检测作为图链接预测问题。本文详细介绍的错误信息检测方法利用了几个知识嵌入方法提供的链接评分函数。实验结果表明,与当前广泛使用的基于分类的方法相比,该方法具有优越性。