Graph Neural Networks (GNNs) have become powerful tools in modeling graph-structured data in recommender systems. However, real-life recommendation scenarios usually involve heterogeneous relationships (e.g., social-aware user influence, knowledge-aware item dependency) which contains fruitful information to enhance the user preference learning. In this paper, we study the problem of heterogeneous graph-enhanced relational learning for recommendation. Recently, contrastive self-supervised learning has become successful in recommendation. In light of this, we propose a Heterogeneous Graph Contrastive Learning (HGCL), which is able to incorporate heterogeneous relational semantics into the user-item interaction modeling with contrastive learning-enhanced knowledge transfer across different views. However, the influence of heterogeneous side information on interactions may vary by users and items. To move this idea forward, we enhance our heterogeneous graph contrastive learning with meta networks to allow the personalized knowledge transformer with adaptive contrastive augmentation. The experimental results on three real-world datasets demonstrate the superiority of HGCL over state-of-the-art recommendation methods. Through ablation study, key components in HGCL method are validated to benefit the recommendation performance improvement. The source code of the model implementation is available at the link https://github.com/HKUDS/HGCL.
翻译:内建图网络(GNNs)已成为建议者系统中建模图形结构数据模型的有力工具。然而,现实生活建议情景通常涉及多种关系(例如社会觉识用户影响、知识觉识项目依赖性),包含丰富的信息,以加强用户偏好学习。在本文中,我们研究了多元图形强化关系学习的问题。最近,对比式自我监督学习在建议中取得了成功。鉴于此,我们提议了一种超异性图表对比学习(HGCL),它能够将多元关系语义纳入用户-项目互动模型,在不同观点中进行对比性学习强化知识转移。然而,多元侧信息对用户和项目互动的影响可能因用户和项目而不同而不同。为了推进这一想法,我们用元网络加强我们混杂的图形对比学习,使个人化知识转换器与适应性对比增强。三种真实世界数据集的实验结果显示HGCL优于状态/艺术建议系统。通过一个可验证的ASB/HML 工具的SBSBS/SBSUD 执行工具的关键链接方法。</s>