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GAMMA: A Graph and Multi-view Memory Attention Mechanism for Top-N Heterogeneous Recommendation

机译:GAMMA:用于Top-N异构推荐的图和多视图内存注意机制

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Exploiting heterogeneous information networks (HIN) to top-N recommendation has been shown to alleviate the data sparsity problem present in recommendation systems. This requires careful effort in extracting relevant knowledge from HIN. However, existing models in this setting have the following shortcomings. Mainly, they are not end-to-end, which puts the burden on the system to first learn similarity or commuting matrix offline using some manually selected meta-paths before we train for the top-N recommendation objective. Further, they do not attentively extract user-specific information from HIN, which is essential for personalization. To address these challenges, we propose an end-to-end neural network model - GAMMA (Graph and Multi-view Memory Attention mechanism). We aim to replace the offline meta-path based similarity or commuting matrix computation with a graph attention mechanism. Besides, with different semantics of items in HIN, we propose a multi-view memory attention mechanism to learn more profound user-specific item views. Experiments on three real-world datasets demonstrate the effectiveness of our model for top-N recommendation setting.
机译:利用异构信息网络(HIN)进行前N个推荐已显示出可以减轻推荐系统中存在的数据稀疏性问题。这需要从HIN中提取相关知识方面的认真努力。但是,这种设置下的现有型号具有以下缺点。主要是,它们不是端到端的,这给系统增加了负担,即在我们为top-N推荐目标进行训练之前,首先使用一些手动选择的元路径来离线学习相似性或通勤矩阵。此外,他们没有专心地从HIN中提取用户特定的信息,这对于个性化至关重要。为了解决这些挑战,我们提出了一种端到端的神经网络模型-GAMMA(图形和多视图内存注意机制)。我们旨在用图注意力机制取代基于离线元路径的相似性或通勤矩阵计算。此外,针对HIN中项目的不同语义,我们提出了一种多视图内存关注机制来学习更深入的用户特定项目视图。在三个真实世界的数据集上进行的实验证明了我们的模型对前N个推荐设置的有效性。

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