社会化媒体
媒介素养
计算机科学
读写能力
定性分析
数据科学
定性研究
万维网
社会学
教育学
社会科学
作者
Christine Wusylko,Lauren Weisberg,Raymond A. Opoku,Brian Abramowitz,Jessica Williams,Wanli Xing,Teresa Vu,Michelle Vu
标识
DOI:10.1080/15391523.2023.2266518
摘要
Social media has the unique capacity to expose many learners to media literacy instruction via targeted campaigns. Investigating learner engagement and reaction to these efforts may be a fruitful endeavor for researchers that can inform the design of future campaigns. However, the massive datasets associated with social media posts are difficult, and often impossible, to analyze with traditional qualitative methods. This study seeks to address this problem by leveraging machine learning techniques to collect and analyze Big Data from two different media literacy campaigns on the youth-oriented social media platform TikTok. Specifically, we explore the ways topic modeling, sentiment analysis, and network analysis can provide insight into learner engagement with these campaigns and discuss limitations and implications for stakeholders interested in utilizing these approaches.
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