2021
DOI: 10.48550/arxiv.2111.14467
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What Drives Readership? An Online Study on User Interface Types and Popularity Bias Mitigation in News Article Recommendations

Abstract: Personalized news recommender systems support readers in finding the right and relevant articles in online news platforms. In this paper, we discuss the introduction of personalized, content-based news recommendations on DiePresse, a popular Austrian online news platform, focusing on two specific aspects: (i) user interface type, and (ii) popularity bias mitigation. Therefore, we conducted a two-weeks online study that started in October 2020, in which we analyzed the impact of recommendations on two user grou… Show more

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