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 groups, i.e., anonymous and subscribed users, and three user interface types, i.e., on a desktop, mobile and tablet device. With respect to user interface types, we find that the probability of a recommendation to be seen is the highest for desktop devices, while the probability of interacting with recommendations is the highest for mobile devices. With respect to popularity bias mitigation, we find that personalized, content-based news recommendations can lead to a more balanced distribution of news articles' readership popularity in the case of anonymous users. Apart from that, we find that significant events (e.g., the COVID-19 lockdown announcement in Austria and the Vienna terror attack) influence the general consumption behavior of popular articles for both, anonymous and subscribed users.
翻译:个人化新闻建议系统支持读者在在线新闻平台中找到正确和相关的文章。在本文中,我们讨论在奥地利流行的在线新闻平台DiePresse上推出个性化、基于内容的新闻建议,重点是两个具体方面:(一) 用户界面类型,和(二) 减少偏差,因此,我们开展了为期两周的在线研究,从2020年10月开始,我们分析了建议对两个用户群体的影响,即匿名用户和订阅用户,以及三种用户界面类型,即台式、移动和平板设备的影响。关于用户界面类型,我们发现,对台式设备而言,看到建议的可能性最高,与建议互动的可能性最高,对移动设备而言最高。关于减少偏差,我们发现个性化、基于内容的新闻建议可以导致更均衡地传播匿名用户对新闻文章读者的受欢迎程度。除此之外,我们发现重大事件(例如奥地利的COVID-19封锁公告和维也纳恐怖袭击)影响用户对匿名和大众文章的普遍消费。