US-skepticism and transnational conspiracy in the 2024 Taiwanese presidential election
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Published:2024-05-20
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Container-title:Harvard Kennedy School Misinformation Review
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language:
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Short-container-title:HKS Misinfo Review
Author:
Chang Ho-Chun Herbert1, Wang Austin Horng-En2, Fang Yu Sunny3
Affiliation:
1. Program in Quantitative Social Science, Dartmouth College, USA 2. Department of Political Science, University of Nevada Las Vegas, USA 3. Department of Computer Science, Barnard College, USA
Abstract
Taiwan has one of the highest freedom of speech indexes while it also encounters the largest amount of foreign interference due to its contentious history with China. Because of the large influx of misinformation, Taiwan has taken a public crowdsourcing approach to combatting misinformation, using both fact-checking ChatBots and public dataset called CoFacts. Combining CoFacts with large-language models (LLM), we investigated misinformation across three platforms (Line, PTT, and Facebook) during the 2024 Taiwanese presidential elections. We found that most misinformation appears within China-friendly political groups and attacks US-Taiwan relations through visual media like images and videos. A considerable proportion of misinformation does not question U.S. foreign policy directly. Rather, it exaggerates domestic issues in the United States to create a sense of declining U.S. state capacity. Curiously, we found misinformation rhetoric that references conspiracy groups in the West.
Publisher
Shorenstein Center for Media, Politics, and Public Policy
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