Graph-based Recommendation using Graph Neural Networks

Marco Dossena, Christopher Irwin, L. Portinale
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Abstract

Graph based recommendation strategies are recently gaining momentum in connection with the availability of new Graph Neural Network (GNN) architectures. In fact, the interactions between users and products in a recommender system can be naturally expressed in terms of a bipartite graph, where nodes corresponding to users are connected with nodes corresponding to products trough edges representing a user action on the product (usually a purchase). GNNs can then be exploited and trained in order to predict the existence of a specific edge between unconnected users and products, highlighting the interest for a potential purchase of a given product by a given user. In the present paper, we will present an experimental analysis of different GNN architectures in the context of recommender systems. We analyze the impact of different kind of layers such as convolutional, attentional and message-passing, as well as the influence of different embedding size on the performance on the link prediction task. We will also examine the behavior of two of such architectures (the ones relying on the presence of node features) with respect to both transductive and inductive situations.
使用图神经网络的基于图的推荐
随着新的图神经网络(GNN)架构的可用性,基于图的推荐策略最近获得了发展势头。实际上,在推荐系统中,用户与产品之间的交互可以很自然地用二部图来表示,其中用户对应的节点与产品对应的节点通过表示用户对产品的操作(通常是购买)的边相连接。然后可以利用和训练gnn,以预测未连接的用户和产品之间存在特定边缘,突出显示给定用户对特定产品的潜在购买兴趣。在本文中,我们将在推荐系统的背景下对不同的GNN架构进行实验分析。我们分析了卷积层、注意力层和消息传递层等不同类型的层对链路预测任务性能的影响,以及不同嵌入大小对链路预测任务性能的影响。我们还将研究两种这样的架构(依赖于节点特征的存在)在转导和归纳情况下的行为。
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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