Author:
Matamoros-Fernandez Ariadna,Gray Joanne Elizabeth,Bartolo Louisa,Burgess Jean,Suzor Nicolas
Abstract
YouTube’s ‘up next’ feature algorithmically suggests videos to watch
after a video that is currently playing. This feature has been criticised for limiting
users’ exposure to diverse media content and information sources; meanwhile, YouTube has
reported that they have implemented technical and policy changes to address these concerns.
Yet, there is limited data to support either the existing concerns or YouTube’s claims.
Drawing on the concept of platform observability, this paper combines computational and
qualitative methods to investigate the types of content YouTube’s ‘up next’ feature
amplifies over time, using three search terms associated with sociocultural issues where
concerns have been raised about YouTube’s role: ‘coronavirus’, ‘feminism’ and ‘beauty’. Over
six weeks, we collected the videos (and their metadata) that were highly ranked in the
search results for each keyword, as well as the top-ranked recommendations associated with
each video, repeating the exercise for three steps in the recommendation chain. We then
examined patterns in the recommended videos (and channels) for each query and their
variation over time. We found evidence of YouTube's stated efforts to boost ‘authoritative’
media outlets, but at the same time, misleading and controversial content continues to be
recommended. We also found that while algorithmic recommendations offer diversity in videos
over time, there are clear ‘winners’ at the channel level that are given a visibility boost
in YouTube’s 'up next' feature. These impacts were attenuated differently depending on the
nature of the search topic.
Publisher
University of Illinois Libraries
Cited by
1 articles.
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