Hyper-partisan misinformation has become a major public concern. In order to examine what type of misinformation label can mitigate hyper-partisan misinformation sharing on social media, we conducted a 4 (label type: algorithm, community, third-party fact-checker, and no label) X 2 (post ideology: liberal vs. conservative) between-subjects online experiment (N = 1,677) in the context of COVID-19 health information. The results suggest that for liberal users, all labels reduced the perceived accuracy and believability of fake posts regardless of the posts' ideology. In contrast, for conservative users, the efficacy of the labels depended on whether the posts were ideologically consistent: algorithmic labels were more effective in reducing the perceived accuracy and believability of fake conservative posts compared to community labels, whereas all labels were effective in reducing their belief in liberal posts. Our results shed light on the differing effects of various misinformation labels dependent on people's political ideology.
翻译:超党派错误信息已成为公众关注的一个主要问题。 为了研究哪类错误信息标签可以减少社交媒体上的极端党派错误信息共享,我们在COVID-19健康信息中开展了4类(标签类型:算法、社区、第三方事实审查员,无标签)X 2类(后意识形态:自由与保守)在线实验(N=1 677),结果显示,对于自由用户来说,所有标签降低了假文章的准确性和可信赖性,而不管这些文章的意识形态如何。 相反,对于保守用户来说,这些标签的效力取决于这些文章在意识形态上是否一致:算法标签在降低人们所察觉的与社区标签相比的虚假保守文章的准确性和可信任性方面更为有效,而所有标签都有效地降低了他们对自由职位的信仰。我们的结果揭示了各种错误标签对人民政治意识形态的不同影响。