Authors
Tien T Nguyen, Pik-Mai Hui, F Maxwell Harper, Loren Terveen, Joseph A Konstan
Publication date
2014/4/7
Book
Proceedings of the 23rd international conference on World wide web
Pages
677-686
Description
Eli Pariser coined the term 'filter bubble' to describe the potential for online personalization to effectively isolate people from a diversity of viewpoints or content. Online recommender systems - built on algorithms that attempt to predict which items users will most enjoy consuming - are one family of technologies that potentially suffers from this effect. Because recommender systems have become so prevalent, it is important to investigate their impact on users in these terms. This paper examines the longitudinal impacts of a collaborative filtering-based recommender system on users. To the best of our knowledge, it is the first paper to measure the filter bubble effect in terms of content diversity at the individual level. We contribute a novel metric to measure content diversity based on information encoded in user-generated tags, and we present a new set of methods to examine the temporal effect of recommender systems …
Total citations
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Scholar articles
TT Nguyen, PM Hui, FM Harper, L Terveen, JA Konstan - Proceedings of the 23rd international conference on …, 2014