作者
Cristina Menghini, Aris Anagnostopoulos, Eli Upfal
发表日期
2019
研讨会论文
2019 IEEE International Conference on Big Data (Big Data), Los Angeles, CA, USA, December 9-12, 2019
页码范围
6154-6156
简介
Bias and polarization are not just about placing misinformation on the Web but also involve concerted efforts to change how we navigate it. One of the strongest points of Wikipedia is to allows readers to easily navigate a topic, through its hyperlinks structure. Thus, it is crucial to ensure a user to have the same probability of being exposed to knowledge that expresses different viewpoints concerning the given topic. In this work, we investigate whether the topology and polarization of a topic-induced-graph (e.g. U.S. Politics induced network) has an impact on users' navigation paths making them biased toward one of the possible topic perspectives. Modeling users behaviour and exploiting Wikipedia clickstreams, we analyze users exposure to different leaning during their sessions, thus the chance of being trapped within a knowledge bubble presenting a unique viewpoint about the topic, and differences among users …
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C Menghini, A Anagnostopoulos, E Upfal - 2019 IEEE International Conference on Big Data (Big …, 2019