Reducing Cross-Topic Political Homogenization in Content-Based News Recommendation

K. Shivaram, Ping Liu, Matthew Shapiro, M. Bilgic, A. Culotta
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Abstract

Content-based news recommenders learn words that correlate with user engagement and recommend articles accordingly. This can be problematic for users with diverse political preferences by topic — e.g., users that prefer conservative articles on one topic but liberal articles on another. In such instances, recommenders can have a homogenizing effect by recommending articles with the same political lean on both topics, particularly if both topics share salient, politically polarized terms like “far right” or “radical left.” In this paper, we propose attention-based neural network models to reduce this homogenization effect by increasing attention on words that are topic specific while decreasing attention on polarized, topic-general terms. We find that the proposed approach results in more accurate recommendations for simulated users with such diverse preferences.
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减少基于内容的新闻推荐中的跨话题政治同质化
基于内容的新闻推荐器学习与用户参与度相关的单词,并相应地推荐文章。这对于根据主题有不同政治偏好的用户来说可能是有问题的——例如,用户在一个主题上喜欢保守的文章,但在另一个主题上喜欢自由的文章。在这种情况下,推荐器可以通过推荐在两个主题上具有相同政治倾向的文章来产生同质化效果,特别是如果两个主题都有明显的、政治上两极分化的术语,如“极右翼”或“激进左翼”。在本文中,我们提出了基于注意力的神经网络模型,通过增加对主题特定词的关注,同时减少对极化、主题一般术语的关注,来减少这种同质化效应。我们发现所提出的方法可以为具有不同偏好的模拟用户提供更准确的推荐。
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