Sequential Recommendation with User Memory Networks

Xu Chen, Hongteng Xu, Yongfeng Zhang, Jiaxi Tang, Yixin Cao, Zheng Qin, H. Zha
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引用次数: 421

Abstract

User preferences are usually dynamic in real-world recommender systems, and a user»s historical behavior records may not be equally important when predicting his/her future interests. Existing recommendation algorithms -- including both shallow and deep approaches -- usually embed a user»s historical records into a single latent vector/representation, which may have lost the per item- or feature-level correlations between a user»s historical records and future interests. In this paper, we aim to express, store, and manipulate users» historical records in a more explicit, dynamic, and effective manner. To do so, we introduce the memory mechanism to recommender systems. Specifically, we design a memory-augmented neural network (MANN) integrated with the insights of collaborative filtering for recommendation. By leveraging the external memory matrix in MANN, we store and update users» historical records explicitly, which enhances the expressiveness of the model. We further adapt our framework to both item- and feature-level versions, and design the corresponding memory reading/writing operations according to the nature of personalized recommendation scenarios. Compared with state-of-the-art methods that consider users» sequential behavior for recommendation, e.g., sequential recommenders with recurrent neural networks (RNN) or Markov chains, our method achieves significantly and consistently better performance on four real-world datasets. Moreover, experimental analyses show that our method is able to extract the intuitive patterns of how users» future actions are affected by previous behaviors.
用户内存网络的顺序推荐
在现实世界的推荐系统中,用户的偏好通常是动态的,用户的历史行为记录在预测他/她未来的兴趣时可能并不同等重要。现有的推荐算法——包括浅层和深层方法——通常将用户的历史记录嵌入到单个潜在向量/表示中,这可能会丢失用户历史记录与未来兴趣之间的每个项目或特征级别的相关性。在本文中,我们的目标是以一种更明确、动态和有效的方式来表达、存储和操作用户历史记录。为此,我们在推荐系统中引入了记忆机制。具体来说,我们设计了一个集成了协同过滤的记忆增强神经网络(MANN)来进行推荐。通过利用MANN中的外部存储矩阵,我们显式地存储和更新用户的历史记录,从而增强了模型的表现力。我们进一步将我们的框架调整为项目级和功能级版本,并根据个性化推荐场景的性质设计相应的内存读/写操作。与考虑用户顺序行为进行推荐的最先进方法(例如,使用循环神经网络(RNN)或马尔可夫链的顺序推荐)相比,我们的方法在四个真实数据集上取得了显著且持续的更好性能。此外,实验分析表明,我们的方法能够提取出用户未来行为如何受到先前行为影响的直观模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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