Journalistic interventions matter: Understanding how Americans perceive fact-checking labels

Author:

Jia Chenyan1,Lee Taeyoung2

Affiliation:

1. College of Arts, Media and Design, Northeastern University, USA

2. Jack J. Valenti School of Communication, University of Houston, USA

Abstract

While algorithms and crowdsourcing have been increasingly used to debunk or label misinformation on social media, such tasks might be most effective when performed by professional fact checkers or journalists. Drawing on a national survey (N = 1,003), we found that U.S. adults evaluated fact-checking labels created by professional fact-checkers as more effective than labels by algorithms and other users. News media labels were perceived as more effective than user labels but not statistically different from labels by fact checkers and algorithms. There was no significant difference between labels created by users and algorithms. These findings have implications for platforms and fact-checking practitioners, underscoring the importance of journalistic professionalism in fact-checking.

Funder

University of Texas at Austin

Publisher

Shorenstein Center for Media, Politics, and Public Policy

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