论文标题
与候选人感知用户建模有关的新闻推荐
News Recommendation with Candidate-aware User Modeling
论文作者
论文摘要
新闻推荐旨在将新闻与个性化用户兴趣相匹配。新闻建议的现有方法通常会从历史点击新闻中对用户的兴趣进行建模,而无需考虑候选新闻。但是,每个用户通常都有多个兴趣,这些方法很难将候选新闻与特定用户兴趣相匹配。在本文中,我们提出了一种用于个性化新闻推荐的候选用户建模方法,该方法可以将候选新闻纳入用户建模中,以在候选新闻和用户兴趣之间进行更好的匹配。我们提出了一个候选人意识到的自我注意力网络,该网络使用候选新闻作为模拟候选人感知的全球用户兴趣的线索。此外,我们提出了一个候选人感知的CNN网络,将候选新闻纳入本地行为上下文建模并学习候选人感知的短期用户兴趣。此外,我们使用一个候选人注意的注意网络来汇总以前点击的新闻,与候选新闻的相关性加权以构建候选人意识到的用户表示。现实世界数据集的实验显示了我们方法在改善新闻建议性能方面的有效性。
News recommendation aims to match news with personalized user interest. Existing methods for news recommendation usually model user interest from historical clicked news without the consideration of candidate news. However, each user usually has multiple interests, and it is difficult for these methods to accurately match a candidate news with a specific user interest. In this paper, we present a candidate-aware user modeling method for personalized news recommendation, which can incorporate candidate news into user modeling for better matching between candidate news and user interest. We propose a candidate-aware self-attention network that uses candidate news as clue to model candidate-aware global user interest. In addition, we propose a candidate-aware CNN network to incorporate candidate news into local behavior context modeling and learn candidate-aware short-term user interest. Besides, we use a candidate-aware attention network to aggregate previously clicked news weighted by their relevance with candidate news to build candidate-aware user representation. Experiments on real-world datasets show the effectiveness of our method in improving news recommendation performance.