Do not blame it on the algorithm An empirical assessment of multiple recommender systems and their impact on content diversity

Open Access
Authors
Publication date 2018
Journal Information Communication and Society
Volume | Issue number 21 | 7
Pages (from-to) 959-977
Organisations
  • Faculty of Social and Behavioural Sciences (FMG) - Amsterdam School of Communication Research (ASCoR)
  • Faculty of Law (FdR) - Institute for Information Law (IViR)
Abstract

In the debate about filter bubbles caused by algorithmic news recommendation, the conceptualization of the two core concepts in this debate, diversity and algorithms, has received little attention in social scientific research. This paper examines the effect of multiple recommender systems on different diversity dimensions. To this end, it maps different values that diversity can serve, and a respective set of criteria that characterizes a diverse information offer in this particular conception of diversity. We make use of a data set of simulated article recommendations based on actual content of one of the major Dutch broadsheet newspapers and its users (N=21,973 articles, N=500 users). We find that all of the recommendation logics under study proved to lead to a rather diverse set of recommendations that are on par with human editors and that basing recommendations on user histories can substantially increase topic diversity within a recommendation set.

Document type Article
Note In special issue: Digital Media, Political Polarization and Challenges to Democracy
Language English
Published at https://doi.org/10.1080/1369118X.2018.1444076
Other links https://www.scopus.com/pages/publications/85042904860
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Do not blame it on the algorithm (Final published version)
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