JOURNAL ARTICLE

Graph Learning Augmented Heterogeneous Graph Neural Network for Social Recommendation

Yiming ZhangLingfei WuQi ShenYitong PangZhihua WeiFangli XuEthan ChangBo Long

Year: 2023 Journal:   ACM Transactions on Recommender Systems Vol: 1 (4)Pages: 1-22   Publisher: Association for Computing Machinery

Abstract

Social recommendation based on social network has achieved great success in improving the performance of the recommendation system. Since social network (user-user relations) and user-item interactions are both naturally represented as graph-structured data, Graph Neural Networks (GNNs) have thus been widely applied for social recommendation. Despite the superior performance of existing GNNs-based methods, there are still several severe limitations: (i) Few existing GNNs-based methods have considered a single heterogeneous global graph which takes into account user-user relations, user-item interactions, and item-item similarities simultaneously. That may lead to a lack of complex semantic information and rich topological information when encoding users and items based on GNN. (ii) Furthermore, previous methods tend to overlook the reliability of the original user-user relations which may be noisy and incomplete. (iii) More importantly, the item-item connections established by a few existing methods merely using initial rating attributes or extra attributes (such as category) of items, may be inaccurate or sub-optimal with respect to social recommendation. In order to address these issues, we propose an end-to-end heterogeneous global graph learning framework, namely Graph Learning Augmented Heterogeneous Graph Neural Network (GL-HGNN) for social recommendation. GL-HGNN aims to learn a heterogeneous global graph that makes full use of user-user relations, user-item interactions and item-item similarities in a unified perspective. To this end, we design a Graph Learner (GL) method to learn and optimize user-user and item-item connections separately. Moreover, we employ a Heterogeneous Graph Neural Network (HGNN) to capture the high-order complex semantic relations from our learned heterogeneous global graph. To scale up the computation of graph learning, we further present the Anchor-based Graph Learner (AGL) to reduce computational complexity. Extensive experiments on four real-world datasets demonstrate the effectiveness of our model.

Keywords:
Computer science Graph Recommender system Social network (sociolinguistics) Information retrieval Theoretical computer science Artificial intelligence Machine learning World Wide Web Social media

Metrics

24
Cited By
14.23
FWCI (Field Weighted Citation Impact)
71
Refs
0.98
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Recommender Systems and Techniques
Physical Sciences →  Computer Science →  Information Systems
Advanced Graph Neural Networks
Physical Sciences →  Computer Science →  Artificial Intelligence
Topic Modeling
Physical Sciences →  Computer Science →  Artificial Intelligence

Related Documents

DISSERTATION

Heterogeneous Graph Neural Network Music Recommendation

Dean Cochran

University:   Zenodo (CERN European Organization for Nuclear Research) Year: 2022
JOURNAL ARTICLE

Heterogeneous Graph Neural Network Music Recommendation

Cochran, Dean

Journal:   Zenodo (CERN European Organization for Nuclear Research) Year: 2022
BOOK-CHAPTER

Heterogeneous Graph Neural Network-Based Software Developer Recommendation

Zhixiong YeZhiyong FengJianmao XiaoYuqing GaoGuodong FanHuwei ZhangShizhan Chen

Lecture notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engineering Year: 2022 Pages: 433-452
JOURNAL ARTICLE

Adversarial Heterogeneous Graph Neural Network for Robust Recommendation

Lei SangMin XuShengsheng QianXindong Wu

Journal:   IEEE Transactions on Computational Social Systems Year: 2023 Vol: 10 (5)Pages: 2660-2671
JOURNAL ARTICLE

Heterogeneous Graph Neural Network for Privacy-Preserving Recommendation

Yuecen WeiXingcheng FuQingyun SunHao PengJia WuJinyan WangXianxian Li

Journal:   2022 IEEE International Conference on Data Mining (ICDM) Year: 2022 Pages: 528-537
© 2026 ScienceGate Book Chapters — All rights reserved.