记忆注意力感知推荐系统

Lei Zheng, Chun-Ta Lu, Lifang He, Sihong Xie, V. Noroozi, He Huang, Philip S. Yu
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引用次数: 29

摘要

本文研究了用户兴趣多样性建模问题。以前的方法通常学习一个固定的用户表示,它在表示用户的不同兴趣方面能力有限。为了模拟用户的不同兴趣,我们提出了一个记忆注意感知推荐系统(MARS)。MARS利用记忆组件和一种新的注意机制来学习深度自适应用户表示。MARS以端到端方式进行训练,自适应地总结用户的兴趣。在实验中,在召回率和平均精度方面,MARS在三个真实数据集上优于七种最先进的方法。我们还证明了MARS在解释其推荐结果方面具有很强的可解释性,这在许多推荐场景中都很重要。
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MARS: Memory Attention-Aware Recommender System
In this paper, we study the problem of modeling users' diverse interests. Previous methods usually learn a fixed user representation, which has a limited ability to represent distinct interests of a user. In order to model users' various interests, we propose a Memory Attention-aware Recommender System (MARS). MARS utilizes a memory component and a novel attentional mechanism to learn deep adaptive user representations. Trained in an end-to-end fashion, MARS adaptively summarizes users' interests. In the experiments, MARS outperforms seven state-of-the-art methods on three real-world datasets in terms of recall and mean average precision. We also demonstrate that MARS has a great interpretability to explain its recommendation results, which is important in many recommendation scenarios.
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