论文标题
质量意识的新闻建议
Quality-aware News Recommendation
论文作者
论文摘要
新闻推荐是许多在线新闻平台使用的核心技术。向用户推荐高质量新闻对于保持良好的用户体验和新闻平台的声誉很重要。但是,现有的新闻推荐方法主要旨在优化新闻点击,同时忽略他们推荐的新闻质量,这可能会导致推荐的新闻具有不知情的内容甚至点击诱饵。在本文中,我们提出了一种名为QualityRec的质量意识新闻推荐方法,可以有效地提高推荐新闻的质量。在我们的方法中,我们首先根据用户在新闻上的阅读时间的分布提出了一种有效的新闻质量评估方法。接下来,我们建议通过设计内容质量的注意网络来根据新闻语义和质量选择单击新闻,将新闻质量信息纳入用户兴趣建模。我们通过辅助新闻质量预测任务进一步训练推荐模型,以学习质量吸引的推荐模型,并添加了建议质量正规化损失,以鼓励该模型推荐高质量的新闻。两个现实世界数据集的广泛实验表明,QualityRec可以有效地提高推荐新闻的整体质量,并减少低质量新闻的建议,甚至更好地推荐精度。
News recommendation is a core technique used by many online news platforms. Recommending high-quality news to users is important for keeping good user experiences and news platforms' reputations. However, existing news recommendation methods mainly aim to optimize news clicks while ignoring the quality of news they recommended, which may lead to recommending news with uninformative content or even clickbaits. In this paper, we propose a quality-aware news recommendation method named QualityRec that can effectively improve the quality of recommended news. In our approach, we first propose an effective news quality evaluation method based on the distributions of users' reading dwell time on news. Next, we propose to incorporate news quality information into user interest modeling by designing a content-quality attention network to select clicked news based on both news semantics and qualities. We further train the recommendation model with an auxiliary news quality prediction task to learn quality-aware recommendation model, and we add a recommendation quality regularization loss to encourage the model to recommend higher-quality news. Extensive experiments on two real-world datasets show that QualityRec can effectively improve the overall quality of recommended news and reduce the recommendation of low-quality news, with even slightly better recommendation accuracy.