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Identifying features of health misinformation on social media sites: an exploratory analysis

误传 社会化媒体 计算机科学 互联网隐私 心理学 万维网 计算机安全
作者
Shuai Zhang,Feicheng Ma,Yunmei Liu,Wenjing Pian
出处
期刊:Library Hi Tech [Emerald Publishing Limited]
卷期号:40 (5): 1384-1401 被引量:21
标识
DOI:10.1108/lht-09-2020-0242
摘要

Purpose The purpose of this paper is to explore the features of health misinformation on social media sites (SMSs). The primary goal of the study is to investigate the salient features of health misinformation and to develop a tool of features to help users and social media companies identify health misinformation. Design/methodology/approach Empirical data include 1,168 pieces of health information that were collected from WeChat, a dominant SMS in China, and the obtained data were analyzed through a process of open coding, axial coding and selective coding. Then chi-square test and analysis of variance (ANOVA) were adopted to identify salient features of health misinformation. Findings The findings show that the features of health misinformation on SMSs involve surface features, semantic features and source features, and there are significant differences in the features of health misinformation between different topics. In addition, the list of features was developed to identify health misinformation on SMSs. Practical implications This study raises awareness of the key features of health misinformation on SMSs. It develops a list of features to help users distinguish health misinformation as well as help social media companies filter health misinformation. Originality/value Theoretically, this study contributes to the academic discourse on health misinformation on SMSs by exploring the features of health misinformation. Methodologically, the paper serves to enrich the literature around health misinformation and SMSs that have hitherto mostly drawn data from health websites.
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