Please use this identifier to cite or link to this item: https://repositorio.consejodecomunicacion.gob.ec//handle/CONSEJO_REP/7279
Title: User Perceptions and Trust of Explainable Machine Learning Fake News Detectors
Other Titles: International Journal of Communication
Authors: Shin, Jieun
Cham-Olmsted, Sylvia
Keywords: fake
news
media
Issue Date: 2022
Publisher: International Journal of Communication
Citation: Shin, J., and Chan-Olmsted, S. (2022). User Perceptions and Trust of Explainable Machine Learning Fake News Detectors. International Journal Of Communication, 17, 23. Retrieved from https://ijoc.org/index.php/ijoc/article/view/19534/4009
Abstract: The goal of the study was to explore the factors that explain users’ trust and usage intent of the leading explainable artificial intelligence (AI) fake news detection technology. Toward this end, we examined the relationships between various human factors and software-related factors using a survey. The regression models showed that users’ trust levels in the software were influenced by both individuals’ inherent characteristics and their perceptions of the AI application. Users’ adoption intention was ultimately influenced by trust in the detector, which explained a significant amount of the variance. We also found that trust levels were higher when users perceived the application to be highly competent at detecting fake news, be highly collaborative, and have more power in working autonomously. Our findings indicate that trust is a focal element in determining users’ behavioral intentions. We argue that identifying positive heuristics of fake news detection technology is critical for facilitating the diffusion of AI-based detection systems in fact-checking.
URI: https://repositorio.consejodecomunicacion.gob.ec//handle/CONSEJO_REP/7279
ISSN: 1932-8036
Appears in Collections:Documentos internacionales sobre libertad de expresión y derechos conexos

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