Cho Sho, Hisamitsu Shohei, Jin Hongshan, Toyoda Masashi, Yoshinaga Naoki
The University of Tokyo, Bunkyo-ku, Tokyo, Japan.
Institute of Industrial Science, The University of Tokyo, Bunkyo-ku, Tokyo, Japan.
PLoS One. 2024 Dec 31;19(12):e0299935. doi: 10.1371/journal.pone.0299935. eCollection 2024.
To prevent widespread epidemics such as influenza or measles, it is crucial to reach a broad acceptance of vaccinations while addressing vaccine hesitancy and refusal. To gain a deeper understanding of Japan's sharp increase in COVID-19 vaccination coverage, we performed an analysis on the posts of Twitter users to investigate the formation of users' stances toward COVID-19 vaccines and information-sharing actions through the formation. We constructed a dataset of all Japanese posts mentioning vaccines for five months since the beginning of the vaccination campaign in Japan and carried out a stance detection task for all the users who wrote the posts by training an original deep neural network. Investigating the users' stance formations using this large dataset, it became clear that some neutral users became pro-vaccine, while almost no neutral users became anti-vaccine in Japan. Our examination of their information-sharing activities during a period prior to and subsequent to their stance formation clarified that users with certain types and specific types of websites were referred to. We hope that our results contribute to the increase in coverage of 2nd and further doses and following vaccinations in the future.
为防止流感或麻疹等大规模流行病的发生,在解决疫苗犹豫和拒绝问题的同时,广泛接受疫苗接种至关重要。为了更深入地了解日本新冠疫苗接种覆盖率的急剧上升,我们对推特用户的帖子进行了分析,以通过其形成过程来调查用户对新冠疫苗的态度形成以及信息分享行为。我们构建了一个自日本疫苗接种运动开始以来五个月内所有提及疫苗的日语帖子的数据集,并通过训练一个原创的深度神经网络,对所有撰写这些帖子的用户进行了立场检测任务。利用这个大型数据集调查用户的立场形成情况后发现,在日本,一些中立用户变成了支持疫苗接种的用户,而几乎没有中立用户变成反对疫苗接种的用户。我们对他们在立场形成之前和之后一段时间内的信息分享活动进行的检查表明,他们会参考某些类型和特定类型的网站。我们希望我们的研究结果有助于未来提高第二剂及后续剂量疫苗的接种覆盖率。