The Str(AI)ght Scoop: Artificial Intelligence Cues Reduce Perceptions of Hostile Media Bias

2021 ◽  
pp. 1-20
Author(s):  
Joshua Cloudy ◽  
Jaime Banks ◽  
Nicholas David Bowman
2020 ◽  
Vol 0 (0) ◽  
Author(s):  
Laia Castro ◽  
David Nicolas Hopmann ◽  
Lilach Nir

AbstractSince Eveland and Shah (2003) published their seminal study on the impact of social networks on media bias perceptions in the US, little has been researched about the interpersonal antecedents of hostile media perceptions. In this study we address this gap by investigating the role of safe, or like-minded, political discussions on individuals’ likelihood to perceive media as hostile. We use survey data from more than 5,000 individuals in Germany. Our findings reveal that like-minded discussions increase one’s likelihood to perceive media as hostile; yet, only among those more politically engaged and ideologically on the left. The significance and theoretical implications of the results are discussed in the concluding section.


2012 ◽  
Vol 77 (5) ◽  
pp. 420-437 ◽  
Author(s):  
Brooke Weberling McKeever ◽  
Daniel Riffe ◽  
Francesca Dillman Carpentier

2021 ◽  
pp. 073953292110470
Author(s):  
Sherice Gearhart ◽  
Alexander Moe ◽  
Derrick Holland

News outlets rely on social media to freely distribute content, offering a venue for users to comment on news. This exposes individuals to user comments prior to reading news articles, which can influence perceptions of news content. A 2 × 2 between-subject experiment (N = 690) tested the hostile media bias theory via the influence of comments seen before viewing a news story on perceptions of bias and credibility. Results show that user comments induce hostile media perceptions.


2021 ◽  
pp. 146144482110341
Author(s):  
Mikhaila N. Calice ◽  
Luye Bao ◽  
Isabelle Freiling ◽  
Emily Howell ◽  
Michael A. Xenos ◽  
...  

The use of artificial intelligence-based algorithms for the curation of news content by social media platforms like Facebook and Twitter has upended the gatekeeping role long held by traditional news outlets. This has caused some US policymakers to argue that platforms are skewing news diets against them, and such claims are beginning to take hold among some voters. In a nationally representative survey experiment, we explore whether traditional models of media bias perceptions extend to beliefs about algorithmic news bias. We find that partisan cues effectively shape individuals’ attitudes about algorithmic news bias but have asymmetrical effects. Specifically, whereas in-group directional partisan cues stimulate bias perceptions for members of both parties, Democrats, but not Republicans, also respond to out-group cues. We conclude with a discussion about the implications for the formation of attitudes about new technologies and the potential for polarization.


2019 ◽  
Vol 63 (3) ◽  
pp. 374-392 ◽  
Author(s):  
Brian E. Weeks ◽  
Dam Hee Kim ◽  
Lauren B. Hahn ◽  
Trevor H. Diehl ◽  
Nojin Kwak

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