TikTok Engagement Traces Over Time and Health Risky Behaviors: Combining Data Linkage and Computational Methods
Clicks: 19
ID: 282119
2024
Digital technologies and social algorithms are revolutionizing the media
landscape, altering how we select and consume health information. Extending the
selectivity paradigm with research on social media engagement, the convergence
perspective, and algorithmic impact, this study investigates how individuals'
liked TikTok videos on various health-risk topics are associated with their
vaping and drinking behaviors. Methodologically, we relied on data linkage to
objectively measure selective engagement on social media, which involves
combining survey self-reports with digital traces from TikTok interactions for
the consented respondents (n = 166). A computational analysis of 13,724
health-related videos liked by these respondents from 2020 to 2023 was
conducted. Our findings indicate that users who initially liked
drinking-related content on TikTok are inclined to favor more of such videos
over time, with their likes on smoking, drinking, and fruit and vegetable
videos influencing their self-reported vaping and drinking behaviors. Our study
highlights the methodological value of combining digital traces, computational
analysis, and self-reported data for a more objective examination of social
media consumption and engagement, as well as a more ecologically valid
understanding of social media's behavioral impact.
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Authors | Xinyan Zhao; Chau-Wai Wong |
Journal | arXiv |
Year | 2024 |
DOI | DOI not found |
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