潜在Dirichlet分配
社会化媒体
饮食失调
大数据
心理学
社交网络(社会语言学)
数据科学
主题模型
领域(数学)
计算机科学
万维网
临床心理学
情报检索
数据挖掘
数学
纯数学
作者
Markus Moessner,Johannes Feldhege,Markus Wolf,Stéphanie Bauer
摘要
Abstract Objective Social media plays an important role in everyday life of young people. Numerous studies claim negative effects of social media and media in general on eating disorder risk factors. Despite the availability of big data, only few studies have exploited the possibilities so far in the field of eating disorders. Method Methods for data extraction, computerized content analysis, and network analysis will be introduced. Strategies and methods will be exemplified for an ad‐hoc dataset of 4,247 posts and 34,118 comments by 3,029 users of the proed forum on Reddit. Results Text analysis with latent Dirichlet allocation identified nine topics related to social support and eating disorder specific content. Social network analysis describes the overall communication patterns, and could identify community structures and most influential users. A linear network autocorrelation model was applied to estimate associations in language among network neighbors. The supplement contains R code for data extraction and analyses. Discussion This paper provides an introduction to investigating social media data, and will hopefully stimulate big data social media research in eating disorders. When applied in real‐time, the methods presented in this manuscript could contribute to improving the safety of ED‐related online communication.
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