Time Matters: Sequential Recommendation with Complex Temporal Information

Wenwen Ye, Shuaiqiang Wang, Xu Chen, Xuepeng Wang, Zheng Qin, Dawei Yin
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引用次数: 63

Abstract

Incorporating temporal information into recommender systems has recently attracted increasing attention from both the industrial and academic research communities. Existing methods mostly reduce the temporal information of behaviors to behavior sequences for subsequently RNN-based modeling. In such a simple manner, crucial time-related signals have been largely neglected. This paper aims to systematically investigate the effects of the temporal information in sequential recommendations. In particular, we firstly discover two elementary temporal patterns of user behaviors: "absolute time patterns'' and "relative time patterns'', where the former highlights user time-sensitive behaviors, e.g., people may frequently interact with specific products at certain time point, and the latter indicates how time interval influences the relationship between two actions. For seamlessly incorporating these information into a unified model, we devise a neural architecture that jointly learns those temporal patterns to model user dynamic preferences. Extensive experiments on real-world datasets demonstrate the superiority of our model, comparing with the state-of-the-arts.
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时间问题:具有复杂时间信息的顺序推荐
将时间信息整合到推荐系统中近年来引起了工业界和学术界越来越多的关注。现有的方法大多是将行为的时间信息简化为行为序列,以便后续基于rnn的建模。在这种简单的方式下,关键的时间相关信号在很大程度上被忽略了。本文旨在系统地研究时序推荐中时间信息的影响。特别是,我们首先发现了用户行为的两种基本时间模式:“绝对时间模式”和“相对时间模式”,前者强调用户的时间敏感行为,例如人们可能在某个时间点频繁地与特定产品进行交互,后者则表明时间间隔如何影响两个行为之间的关系。为了将这些信息无缝地整合到一个统一的模型中,我们设计了一个神经架构,共同学习这些时间模式来模拟用户的动态偏好。在真实世界数据集上进行的大量实验表明,与最先进的模型相比,我们的模型具有优越性。
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