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Title Auditing Algorithmic Bias on Twitter
Authors Nathan Bartley, Andrés Abeliuk, Emilio Ferrara, Kristina Lerman
Publication date 2021
Abstract Digital media platforms are reshaping our habits, how we
access
information, and how we interact with others. As a result, algorithms used
by platforms, for example, to recommend content, play an increasingly
important role in our access to information. Due to practical difficulties
of accessing how platforms present content to their users, relatively little
is known about how recommendation algorithms affect the information people
receive. In this paper we implement a sock-puppet audit, a computational
framework to audit black-box social media systems so as to quantify the
impact of algorithmic curation on the information people see. We evaluate
this framework by conducting a study on Twitter. We demonstrate that
Twitter's timeline curation algorithms skew the popularity and novelty of
content people see and increase the inequality of their exposure to
friends' tweets. Our work provides evidence that algorithmic curation of
content systematically distorts the information people see.
Pages 65-73
Conference name ACM Web Science Conference
Publisher ACM Press (New York, NY, USA)
Reference URL View reference page