At the age of big data, recommender systems have shown remarkable success as a key means of information filtering in our daily life. Recent years have witnessed the technical development of recommender systems, from perception learning to cognition reasoning which intuitively build the task of recommendation as the procedure of logical reasoning and have achieve significant improvement. However, the logical statement in reasoning implicitly admits irrelevance of ordering, even does not consider time information which plays an important role in many recommendation tasks. Furthermore, recommendation model incorporated with temporal context would tend to be self-attentive, i.e., automatically focus more (less) on the relevance (irrelevance), respectively. To address these issues, in this paper, we propose a Time-aware Self-Attention with Neural Collaborative Reasoning (TiSANCR) based recommendation model, which integrates temporal patterns and self-attention mechanism into reasoning-based recommendation. Specially, temporal patterns represented by relative time, provide context and auxiliary information to characterize the user's preference in recommendation, while self-attention is leveraged to distill informative patterns and suppress irrelevances. Therefore, the fusion of self-attentive temporal information provides deeper representation of user's preference. Extensive experiments on benchmark datasets demonstrate that the proposed TiSANCR achieves significant improvement and consistently outperforms the state-of-the-art recommendation methods.
翻译:在大数据时代,推荐者系统已经显示出惊人的成功,成为我们日常生活中信息过滤的关键手段;近年来,建议者系统的技术发展,从感知学习到认知推理,直觉地将建议的任务构建为逻辑推理程序,并取得了显著的改进;然而,逻辑推理的逻辑说明隐含地承认与订购无关,甚至不考虑在许多建议任务中发挥重要作用的时间信息;此外,与时间背景结合的建议模式往往自我注意,即自动更多地(非)关注相关性(无关性),为了解决这些问题,我们在本文件中提议采用基于时间意识的自我注意作为逻辑推理程序,将时间模式和自我注意机制纳入基于推理的建议;特别是,相对时间模式,提供背景和辅助信息,说明用户在建议中的偏好,同时利用自我注意来保留信息信息模式,压制不相干的相关性(无关性)。因此,为了解决这些问题,我们提议采用基于神经协作解释的自我意识自觉意识自我注意,从而能够持续地展示更深层次的自我偏重度,从而展示了拟议的基础数据格式。