My Friends, Editors, Algorithms, and I: Examining audience attitudes to news selection

Prompted by the ongoing development of content personalization by social networks and mainstream news brands, and recent debates about balancing algorithmic and editorial selection, this study explores what audiences think about news selection mechanisms and why. Analysing data from a 26-country sur...

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Veröffentlicht in:Digital journalism 2019-04, Vol.7 (4), p.447-469
Hauptverfasser: Thurman, Neil, Moeller, Judith, Helberger, Natali, Trilling, Damian
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container_issue 4
container_start_page 447
container_title Digital journalism
container_volume 7
creator Thurman, Neil
Moeller, Judith
Helberger, Natali
Trilling, Damian
description Prompted by the ongoing development of content personalization by social networks and mainstream news brands, and recent debates about balancing algorithmic and editorial selection, this study explores what audiences think about news selection mechanisms and why. Analysing data from a 26-country survey (N = 53,314), we report the extent to which audiences believe story selection by editors and story selection by algorithms are good ways to get news online and, using multi-level models, explore the relationships that exist between individuals' characteristics and those beliefs. The results show that, collectively, audiences believe algorithmic selection guided by a user's past consumption behaviour is a better way to get news than editorial curation. There are, however, significant variations in these beliefs at the individual level. Age, trust in news, concerns about privacy, mobile news access, paying for news, and six other variables had effects. Our results are partly in line with current general theory on algorithmic appreciation, but diverge in our findings on the relative appreciation of algorithms and experts, and in how the appreciation of algorithms can differ according to the data that drive them. We believe this divergence is partly due to our study's focus on news, showing algorithmic appreciation has context-specific characteristics.
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source Taylor & Francis:Master (3349 titles)
subjects algorithms
collaborative filtering
gatekeeping
journalistic curation
news selection
personalization
recommender systems
user tracking
title My Friends, Editors, Algorithms, and I: Examining audience attitudes to news selection
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