Digital Activism Masked―The Fridays for Future Movement and the “Global Day of Climate Action”: Testing Social Function and Framing Typologies of Claims on Twitter

Ana Fernández-Zubieta, J. Guevara, Rafael Caballero Roldan, José Manuel Robles
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Abstract

This article analyzed the Fridays for Future (FFF) movement and its online mobilization around the Global Day of Climate Action on 25 September 2020. Due to the COVID-19 pandemic, this event is a unique opportunity to study digital activism as marchers were considered not appropriate. Using Twitter’s API with keywords “#climateStrike”, and “#FridaysForFuture”, we collected 111,844 unique tweets and retweets from 47,892 unique users. We used two typologies based on social media activism and framing literature to understand the main function of tweets (information opinion, mobilization, and blame) and their framing (diagnosis, prognosis, and motivational). We also analyzed its relationship and tested its automated classification potential. To do so we manually coded a randomly selected sample of 950 tweets that were used as input for the automated classification process (SVM algorithm with balancing classification techniques). We found that the automated classification of the COVID-19 pandemic appeared to not increase the mobilization function of tweets, as the frequencies of mobilization tweets were low. We also found a balanced diversity of framing tasks, with an important number of tweets that envisaged solutions to legislation and policy changes. COVID-related tweets were less frequently prognostically framed. We found that both typologies were not independent. Tweets with a blaming function tended to be framed in a prognostic way and therefore were related to possible solutions. The automated data classification model performed well, especially across social function typology and the “other” category. This indicated that these tools could help researchers working with social media data to process the information across categories that are currently mainly processed manually.
蒙面数字行动主义--"未来星期五运动 "和 "全球气候行动日":测试推特上的社会功能和诉求类型框架
本文分析了未来星期五(FFF)运动及其在2020年9月25日全球气候行动日前后的在线动员。由于新冠肺炎大流行,这次活动是研究数字运动的独特机会,因为游行被认为是不合适的。使用Twitter的API,关键词是“# climateststrike”和“#FridaysForFuture”,我们从47,892个独立用户那里收集了111,844条独立推文和转发。我们使用基于社交媒体行动主义和框架文献的两种类型来理解推文的主要功能(信息意见、动员和指责)及其框架(诊断、预测和激励)。我们还分析了它们之间的关系,并测试了它们的自动分类潜力。为此,我们手动编码了一个随机选择的950条tweet样本,这些tweet用作自动分类过程(带有平衡分类技术的SVM算法)的输入。我们发现,COVID-19大流行的自动分类似乎没有增加推文的动员功能,因为动员推文的频率很低。我们还发现了框架任务的平衡多样性,其中有大量推文设想了立法和政策变化的解决方案。与冠状病毒相关的推文不太经常被预测。我们发现这两种类型学并不是独立的。带有责备功能的推文往往是以一种预测的方式构建的,因此与可能的解决方案有关。自动数据分类模型表现良好,特别是在社会功能类型学和“其他”类别中。这表明,这些工具可以帮助研究人员处理社交媒体数据,以跨类别处理信息,目前主要是手动处理。
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