Despite recommender systems play a key role in network content platforms, mining the user's interests is still a significant challenge. Existing works predict the user interest by utilizing user behaviors, i.e., clicks, views, etc., but current solutions are ineffective when users perform unsettled activities. The latter ones involve new users, which have few activities of any kind, and sparse users who have low-frequency behaviors. We uniformly describe both these user-types as "cold users", which are very common but often neglected in network content platforms. To address this issue, we enhance the representation of the user interest by combining his social interest, e.g., friendship, following bloggers, interest groups, etc., with the activity behaviors. Thus, in this work, we present a novel algorithm entitled SocialNet, which adopts a two-stage method to progressively extract the coarse-grained and fine-grained social interest. Our technique then concatenates SocialNet's output with the original user representation to get the final user representation that combines behavior interests and social interests. Offline experiments on Tencent video's recommender system demonstrate the superiority over the baseline behavior-based model. The online experiment also shows a significant performance improvement in clicks and view time in the real-world recommendation system. The source code is available at https://github.com/Social4Rec/SocialNet.
翻译:尽管推荐者系统在网络内容平台中发挥着关键作用,但挖掘用户利益仍然是一个重大挑战。现有的作品通过使用用户行为(例如,点击、观点等)预测用户兴趣,但当用户开展不固定的活动时,目前的解决办法是无效的。后者涉及新用户,其活动种类不多,用户种类稀少,行为频率低。我们统一将这些用户类型描述为“冷用户”,这些用户类型非常常见,但在网络内容平台中常常被忽视。为解决这一问题,我们通过将用户的社会利益(例如,友谊、跟踪博客、兴趣团体等)与活动行为相结合,来增加用户兴趣的代表权。因此,在这项工作中,我们提出了一个名为“社会网”的新算法,它采用两阶段方法逐步提取粗化和微微的社交行为。我们的技术将社会网产出与原始用户代表相结合,以获得将行为利益和社会利益相结合的最后用户代表。在Tencent视频的离线实验中,在推荐者/利益团体等活动中,我们展示了名为“社会网络”的新的算法,在网上测试源中,也展示了真实的比值。