🌙

社交媒体上灾害相关信息的分享

The Sharing of Disaster-Related Information on Social Media

Information Systems Frontiers · 2025
被引 3
ABS 3

中文导读

研究了社交媒体帖子中不确定性相关和自我调节相关的文本特征如何影响灾害期间的信息扩散,发现洞察、网络用语、工作和奖励四种表达会减少转发,对政府发布官方信息有启示。

Abstract

Abstract This paper explores how two types of textual features—uncertainty-related features and self-regulation-related features—affect information diffusion amid disasters. We identify four textual expressions (i.e., insight, netspeak, work, and reward) of social media posts that generate negative impacts on the diffusion of information. Against the backdrop of the COVID-19 pandemic, we conducted an econometrical study of COVID-19-related posts collected from Weibo, followed by an experiment, to examine the proposed relationships between the reposting behavior and the four textual expressions. Theoretically, we examined the potential effects of information avoidance on the sharing of information on social media during disasters. This study can improve the predictive performance in future disaster-related studies of social media. Practically, government officers are advised that these features may generate negative impacts on the reposting behavior of those who read their posts and hinder the transfer of official information and policy announcements.

社交媒体信息扩散灾害管理文本特征