HybridGNN-SR: Combining Unsupervised and Supervised Graph Learning for Session-based Recommendation

Kai Deng, Jiajin Huang, Jin Qin
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引用次数: 1

Abstract

Session-based recommendation aims to predict the next item that a user may visit in the current session. By constructing a session graph, Graph Neural Networks (GNNs) are employed to capture the connectivity among items in the session graph for recommendation. The existing session-based recommendation methods with GNNs usually formulate the recommendation problem as the classification problem, and then use a specific uniform loss to learn session graph representations. Such supervised learning methods only consider the classification loss, which is insufficient to capture the node features from graph structured data. As unsupervised graph learning methods emphasize the graph structure, this paper proposes the HybridGNN-SR model to combine the unsupervised and supervised graph learning to represent the item transition pattern in a session from the view of graph. Specifically, in the part of unsupervised learning, we propose to combine Variational Graph Auto-Encoder (VGAE) with Mutual Information to represent nodes in a session graph; in the part of supervised learning, we employ a routing algorithm to extract higher conceptual features of a session for recommendation, which takes dependencies among items in the session into consideration. Through extensive experiments on three public datasets, we demonstrate that HybridGNN-SR outperforms a number of state-of-the-art methods on session-based recommendation by integrating the strengths of the unsupervised and supervised graph learning methods.
HybridGNN-SR:结合无监督和监督图学习的基于会话的推荐
基于会话的推荐旨在预测用户在当前会话中可能访问的下一个项目。通过构造会话图,利用图神经网络(graph Neural Networks, gnn)捕捉会话图中项目之间的连通性进行推荐。现有的基于会话的gnn推荐方法通常将推荐问题表述为分类问题,然后使用特定的均匀损失来学习会话图表示。这种监督学习方法只考虑分类损失,不足以从图结构数据中捕获节点特征。由于无监督图学习方法强调图结构,本文提出了HybridGNN-SR模型,将无监督和有监督图学习相结合,从图的角度来表示会话中的项目转移模式。具体而言,在无监督学习部分,我们提出将变分图自编码器(VGAE)与互信息相结合来表示会话图中的节点;在监督学习部分,我们采用路由算法提取会话的更高概念特征进行推荐,该算法考虑了会话中项目之间的依赖关系。通过在三个公共数据集上的广泛实验,我们证明了HybridGNN-SR通过整合无监督和有监督图学习方法的优势,在基于会话的推荐方面优于许多最先进的方法。
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