用于推荐系统的深度学习知识图神经网络

Gurinder Kaur, Fei Liu, Yi-Ping Phoebe Chen
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引用次数: 0

摘要

知识图谱正在成为推荐系统的最新技术。本文基于知识图来缓解数据稀疏性问题。最近已经部署了各种方法来解决这个问题,这些方法主要是尝试研究用户-项目表示,然后根据这些表示向用户推荐项目。虽然这些方法是有效的,但它们缺乏对建议的可解释性,并且不能挖掘侧面信息。在本文中,我们建议使用知识图,除了使用用户/项目交互矩阵之外,还包含有关用户和项目的附加信息。该模型的关键元素是用于协同过滤的邻域聚合。每个用户和项目都与ID嵌入相关联,ID嵌入在用户、项目及其属性的交互图中循环。我们将在各个隐藏层学习到的嵌入与有偏和结合起来,得到最终的嵌入。与基于图神经网络的协同过滤(GCF)和其他最先进的推荐方法相比,我们的模型更容易训练并获得更好的性能。我们通过使用相似的实验设置和相同的数据集,将知识图卷积网络(KGCN)与GCF和其他八种最先进的方法进行分析比较,为我们的论点提供证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A deep learning knowledge graph neural network for recommender systems

Knowledge graphs are becoming the new state-of-the-art for recommender systems. This paper is based on knowledge graphs to alleviate the problem of data sparsity. Various methods have been recently deployed to solve this problem which largely attempts to study user-item representation and then recommend items to users based on these representations. Although these methods are effective, they lack explainability for recommendations and do not mine side information. In this paper, we propose the use of knowledge graphs which includes additional information about users and items in addition to the use of a user/item interaction matrix. The vital element of our model is neighbourhood aggregation for collaborative filtering. Every user and item are associated with an ID embedding, which is circulated on the interaction graph for users, items, and their attributes. We obtain the final embeddings by combining the embeddings learned at various hidden layers with a biased sum. Our model is easier to train and achieves better performance compared to graph neural network-based collaborative filtering (GCF) and other state-of-the-art recommender methods. We provide evidence for our argument by analytically comparing the knowledge graph convolution network (KGCN) with GCF and eight other state-of-the-art methods, using similar experimental settings and the same datasets.

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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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