The Networked Amplification of Activist Voices: Designing an Empirical Framework for Evaluating the Success and Challenges of Information Diffusion Efforts During Hashtag Campaigns
The Networked Amplification of Activist Voices: Designing an Empirical Framework for Evaluating the Success and Challenges of Information Diffusion Efforts During Hashtag Campaigns
Liu, K.-C., Ophir, Y., Itai Himelboim, & Walter, D. (Forthcoming). “The Networked Amplification of Activist Voices: Designing an Empirical Framework for Evaluating the Success and Challenges of Information Diffusion Efforts During Hashtag Campaigns.” Accepted for publication in the International Journal of Communication.
Abstract: The hashtag campaign around #TWforWHO and #TaiwanCanHelp aimed to bring international attention to Taiwan’s exclusion from the global COVID-19 pandemic response. We use this campaign as a case study to develop and apply a social network analysis framework for evaluating hashtag campaign diffusion. We collected and analyzed a total of 121,711 tweets containing the two hashtags that were published between February 9th and May 2nd, 2020, resulting in a retweet social network created by 23,715 users. We find that on three out of four indicators of growth – increase in size, geographical spread, and inclusion of elite users – the movement showed improvement over time, but conversely, the network had become less stable. We find no evidence for major changes in the campaign’s reach following a paid advertisement in the New York Times. The suggested approach provides guidelines for future understanding and assessing of message propagation by both elites and non-elites.
Related Research
-
Bahamas International Film FestivalNate Kohn attended the Bahamas International Film Festival, November 13-17, at Baha-Mar in Nassau. He was a judge of the feature length narrative and documentary films competitions. He was also a […]
-
Ethical considerations in the integration of AI and Biometric ToolsGlenna L. Read (to be presented 2025). “Ethical considerations in the integration of AI and Biometric Tools,” as part of Wu, L., Read, G. L., Holiday, S. Wen, T., Wilson, J., […]