Wen Wen, Liang Fangyu
IEEE Trans Neural Netw Learn Syst. 2022 May 30;PP. doi: 10.1109/TNNLS.2022.3176409.
User activities in real systems are usually time-sensitive. But, most of the existing sequential models in recommender systems neglect the time-related signals. In this article, we find that users' temporal behaviors tend to be driven by their regularly changing states, which provides a new perspective on learning users' dynamic preference. However, since the individual state is usually latent, the event space is high dimensional, and meanwhile, temporal dependency of states is personalized and complex; it is challenging to represent, model, and learn the time-evolving patterns of user's state. Focusing on these challenges, we propose a deep structured state learning (DSSL) framework, which is able to learn the representation of temporal states and the complex state dependency for time-sensitive recommendation. Extensive experiments demonstrate that the DSSL achieves competitive results on four real-world recommendation datasets. Furthermore, experiments also show some interesting rules for designing the state dependency network.
实际系统中的用户活动通常对时间敏感。但是,推荐系统中大多数现有的序列模型都忽略了与时间相关的信号。在本文中,我们发现用户的时间行为往往受其不断变化的状态驱动,这为学习用户的动态偏好提供了新的视角。然而,由于个体状态通常是潜在的,事件空间是高维的,同时状态的时间依赖性是个性化且复杂的;表示、建模和学习用户状态的时间演变模式具有挑战性。针对这些挑战,我们提出了一种深度结构化状态学习(DSSL)框架,该框架能够学习时间状态的表示以及用于时间敏感推荐的复杂状态依赖性。大量实验表明,DSSL在四个真实世界的推荐数据集上取得了有竞争力的结果。此外,实验还展示了一些设计状态依赖网络的有趣规则。