Evolution of Filter Bubbles and Polarization in News Recommendation

Han Zhang, Ziwei Zhu, James Caverlee
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引用次数: 1

Abstract

Recent work in news recommendation has demonstrated that recommenders can over-expose users to articles that support their pre-existing opinions. However, most existing work focuses on a static setting or over a short-time window, leaving open questions about the long-term and dynamic impacts of news recommendations. In this paper, we explore these dynamic impacts through a systematic study of three research questions: 1) How do the news reading behaviors of users change after repeated long-term interactions with recommenders? 2) How do the inherent preferences of users change over time in such a dynamic recommender system? 3) Can the existing SOTA static method alleviate the problem in the dynamic environment? Concretely, we conduct a comprehensive data-driven study through simulation experiments of political polarization in news recommendations based on 40,000 annotated news articles. We find that users are rapidly exposed to more extreme content as the recommender evolves. We also find that a calibration-based intervention can slow down this polarization, but leaves open significant opportunities for future improvements
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新闻推荐中的过滤气泡演化与极化
最近在新闻推荐方面的研究表明,推荐器可能会让用户过多地看到支持他们已有观点的文章。然而,大多数现有的工作都集中在静态设置或短时间窗口上,留下了关于新闻推荐的长期和动态影响的悬而未决的问题。在本文中,我们通过系统研究三个研究问题来探讨这些动态影响:1)用户在与推荐者反复长期互动后,新闻阅读行为如何变化?2)在动态推荐系统中,用户的内在偏好是如何随时间变化的?3)现有的SOTA静态方法能否缓解动态环境下的问题?具体而言,我们基于4万篇带注释的新闻文章,通过新闻推荐中的政治极化模拟实验,进行了全面的数据驱动研究。我们发现,随着推荐器的发展,用户会迅速接触到更极端的内容。我们还发现,基于校准的干预可以减缓这种两极分化,但为未来的改进留下了重要的机会
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