In recent years, many recommender systems using network embedding (NE) such as graph neural networks (GNNs) have been extensively studied in the sense of improving recommendation accuracy. However, such attempts have focused mostly on utilizing only the information of positive user-item interactions with high ratings. Thus, there is a challenge on how to make use of low rating scores for representing users' preferences since low ratings can be still informative in designing NE-based recommender systems. In this study, we present SiReN, a new sign-aware recommender system based on GNN models. Specifically, SiReN has three key components: 1) constructing a signed bipartite graph for more precisely representing users' preferences, which is split into two edge-disjoint graphs with positive and negative edges each, 2) generating two embeddings for the partitioned graphs with positive and negative edges via a GNN model and a multi-layer perceptron (MLP), respectively, and then using an attention model to obtain the final embeddings, and 3) establishing a sign-aware Bayesian personalized ranking (BPR) loss function in the process of optimization. Through comprehensive experiments, we empirically demonstrate that SiReN consistently outperforms state-of-the-art NE-aided recommendation methods.
翻译:近年来,对许多使用网络嵌入(NE)的推荐系统,如图形神经网络(GNN)进行了广泛的研究,以提高建议准确性;然而,这种尝试主要侧重于仅利用用户项目互动与高评级的积极用户项目互动信息;因此,在如何使用低评分来代表用户偏好方面存在着挑战,因为低评分仍可用于设计基于NE的建议系统。在本研究中,我们介绍了SiREN,一个基于GNN模型的新信号认知推荐系统。具体地说,SiREN有三个关键组成部分:1)为更准确地代表用户偏好建立一个签字的双方图,该图分为两个边缘偏离图,每个偏差图各有正负边缘;2)为分别通过GNNN模型和多层透视仪(MLP)设计正负边缘的分隔图生成两个嵌入两个嵌入点,然后使用关注模型获得最后嵌入,以及3)建立一个信号觉巴伊西亚个人化排名(BPRN),在优化过程中持续展示Si-NEAARE的全面实验方法。