A Knowledge-Aware Recommender with Attention-Enhanced Dynamic Convolutional Network

Yi Liu, Bohan Li, Yalei Zang, Aoran Li, Hongzhi Yin
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引用次数: 6

Abstract

Sequential recommendation systems seek to learn users' preferences to predict their next actions based on the items engaged recently. Static behavior of users requires a long time to form, but short-term interactions with items usually meet some actual needs in reality and are more variable. RNN-based models are always constrained by the strong order assumption and are hard to model the complex and changeable data flexibly. Most of the CNN-based models are limited to the fixed convolutional kernel. All these methods are suboptimal when modeling the dynamics of item-to-item transitions. It is difficult to describe the items with complex relations and extract the fine-grained user preferences from the interaction sequence. To address these issues, we propose a knowledge-aware sequential recommender with the attention-enhanced dynamic convolutional network (KAeDCN). Our model combines the dynamic convolutional network with attention mechanisms to capture changing dependencies in the sequence. Meanwhile, we enhance the representations of items with Knowledge Graph (KG) information through an information fusion module to capture the fine-grained user preferences. The experiments on four public datasets demonstrate that KAeDCN outperforms most of the state-of-the-art sequential recommenders. Furthermore, experimental results also prove that KAeDCN can enhance the representations of items effectively and improve the extractability of sequential dependencies.
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基于注意力增强动态卷积网络的知识感知推荐
顺序推荐系统试图学习用户的偏好,根据最近参与的项目预测他们的下一步行动。用户的静态行为需要很长时间才能形成,而与物品的短期交互通常能满足现实中的一些实际需求,且变化较大。基于rnn的模型总是受到强序假设的约束,难以灵活地对复杂多变的数据进行建模。大多数基于cnn的模型都局限于固定卷积核。在对物品到物品转换的动态建模时,所有这些方法都不是最优的。描述具有复杂关系的项目和从交互序列中提取细粒度的用户偏好是困难的。为了解决这些问题,我们提出了一种基于注意力增强动态卷积网络(KAeDCN)的知识感知顺序推荐器。我们的模型结合了动态卷积网络和注意力机制来捕捉序列中变化的依赖关系。同时,我们通过一个信息融合模块增强知识图(KG)信息对项目的表示,以捕获细粒度的用户偏好。在四个公共数据集上的实验表明,KAeDCN优于大多数最先进的顺序推荐。此外,实验结果还证明了KAeDCN可以有效地增强项目的表征,提高序列依赖的可提取性。
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