Composition-Enhanced Graph Collaborative Filtering for Multi-behavior Recommendation

Daqing Wu, Xiao Luo, Zeyu Ma, Chong Chen, Pengfei Wang, Minghua Deng, Jinwen Ma
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引用次数: 3

Abstract

Rapid and accurate prediction of user preferences is the ultimate goal of today’s recommender systems. More and more researchers pay attention to multi-behavior recommender systems which utilize the auxiliary types of user-item interaction data, such as page view and add-to-cart to help estimate user preferences. Recently, graph-based methods were proposed to showcase an advanced capability in representation learning and capturing collaborative signals. However, we argue that these methods ignore the intrinsic difference between the two types of nodes in the bipartite graph and aggregate information from neighboring nodes with the same functions. Besides, these models do not fully explore the collaborative signals implied by the meta-path across different types of behavior, which causes a huge loss of the potential semantic information across behaviors. To address the above limitations, we present a unified graph model named SaGCN (short for Semantic-aware Graph Convolutional Networks). Specifically, we construct separate user-user and item-item graphs by meta-path, and apply separate aggregation and transformation functions to propagate user and item information. To perform better semantic propagation, we design a relation composition function and a semantic propagation architecture for heterogeneous collaborative filtering signals learning. Extensive experiments on two real-world datasets show that SaGCN outperforms a wide range of state-of-the-art methods in multi-behavior scenarios.
面向多行为推荐的组合增强图协同过滤
快速准确地预测用户偏好是当今推荐系统的最终目标。多行为推荐系统越来越受到研究者的关注,该系统利用辅助类型的用户-物品交互数据,如页面浏览量和添加到购物车来帮助估计用户偏好。最近,基于图的方法被提出来展示一种先进的表征学习和捕获协作信号的能力。然而,我们认为这些方法忽略了二部图中两类节点之间的内在差异,并从具有相同函数的相邻节点中聚合信息。此外,这些模型没有充分挖掘跨不同类型行为的元路径所隐含的协作信号,这导致了跨行为潜在语义信息的巨大损失。为了解决上述限制,我们提出了一个统一的图模型,名为SaGCN(语义感知图卷积网络的缩写)。具体来说,我们通过元路径构建了单独的用户-用户图和项-项图,并应用单独的聚合和转换函数来传播用户和项信息。为了更好地进行语义传播,我们设计了一个关系组合函数和异构协同过滤信号学习的语义传播体系结构。在两个真实数据集上进行的大量实验表明,在多行为场景下,SaGCN优于许多最先进的方法。
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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