论文标题
基于长尾会话的建议
Long-tail Session-based Recommendation
论文作者
论文摘要
基于会话的建议侧重于基于匿名会议的用户操作的预测,这是缺乏用户历史数据的必要方法。但是,现有的基于会话的建议方法都没有明确考虑长尾建议,这在改善推荐的多样性和产生偶然性方面起着重要作用。由于在基于会话的推荐方案(例如电子商务,音乐和电视节目推荐)中,长尾项目的分布很普遍,因此应对基于长尾会话的推荐提出更多关注。在本文中,我们提出了一种新型的网络体系结构,即尾网,以提高长尾建议性能,同时与其他方法相比保持竞争精度的性能。我们首先根据点击频率将项目分为短头(流行)和长尾(小境)项目。然后,将小说提出并在尾网中应用,以确定两种类型的项目之间的用户偏好,以软调整和个性化建议。与最先进的作品相比,两个现实世界数据集的广泛实验验证了我们方法的优势。
Session-based recommendation focuses on the prediction of user actions based on anonymous sessions and is a necessary method in the lack of user historical data. However, none of the existing session-based recommendation methods explicitly takes the long-tail recommendation into consideration, which plays an important role in improving the diversity of recommendation and producing the serendipity. As the distribution of items with long-tail is prevalent in session-based recommendation scenarios (e.g., e-commerce, music, and TV program recommendations), more attention should be put on the long-tail session-based recommendation. In this paper, we propose a novel network architecture, namely TailNet, to improve long-tail recommendation performance, while maintaining competitive accuracy performance compared with other methods. We start by classifying items into short-head (popular) and long-tail (niche) items based on click frequency. Then a novel is proposed and applied in TailNet to determine user preference between two types of items, so as to softly adjust and personalize recommendations. Extensive experiments on two real-world datasets verify the superiority of our method compared with state-of-the-art works.