JOURNAL ARTICLE

Enhancing Knowledge-Aware Recommendation with Dual-Graph Contrastive Learning

Jinchao HuangZhipu XieHan ZhangBin YangChong DiRunhe Huang

Year: 2024 Journal:   Information Vol: 15 (9)Pages: 534-534   Publisher: Multidisciplinary Digital Publishing Institute

Abstract

Incorporating knowledge graphs as auxiliary information to enhance recommendation systems can improve the representations learning of users and items. Recommendation methods based on knowledge graphs can introduce user–item interaction learning into the item graph, focusing only on learning the node vector representations within a single graph; alternatively, they can treat user–item interactions and item graphs as two separate graphs and learn from each graph individually. Learning from two graphs has natural advantages in exploring original information and interaction information, but faces two main challenges: (1) in complex graph connection scenarios, how to adequately mine the self-information of each graph, and (2) how to merge interaction information from the two graphs while ensuring that user–item interaction information predominates. Existing methods do not thoroughly explore the simultaneous mining of self-information from both graphs and effective interaction information, leading to the loss of valuable insights. Considering the success of contrastive learning in mining self-information and auxiliary information, this paper proposes a dual-graph contrastive learning recommendation method based on knowledge graphs (KGDC) to explore a more accurate representations of users and items in recommendation systems based on external knowledge graphs. In the learning process within the self-graph, KGDC strengthens and represents the information of different connecting edges in both graphs, and extracts the existing information more fully. In interactive information learning, KGDC reinforces the interaction relationship between users and items in the external knowledge graph, realizing the leading role of the main task. We conducted a series of experiments on three standard datasets, and the results show that the proposed method can achieve better results.

Keywords:
Computer science Dual (grammatical number) Knowledge graph Graph Artificial intelligence Natural language processing Theoretical computer science Linguistics

Metrics

0
Cited By
0.00
FWCI (Field Weighted Citation Impact)
36
Refs
0.23
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Topics

Recommender Systems and Techniques
Physical Sciences →  Computer Science →  Information Systems
Advanced Graph Neural Networks
Physical Sciences →  Computer Science →  Artificial Intelligence
Expert finding and Q&A systems
Physical Sciences →  Computer Science →  Information Systems

Related Documents

BOOK-CHAPTER

Enhancing Knowledge-Aware Recommendation with Contrastive Learning

Xinyue ZhangHui Gao

Lecture notes in computer science Year: 2023 Pages: 123-137
JOURNAL ARTICLE

Knowledge graph contrastive learning for recommendation via knowledge-aware reasoning

Junyan GuoKai YangWenqian Zhao

Journal:   Expert Systems with Applications Year: 2025 Vol: 306 Pages: 130900-130900
JOURNAL ARTICLE

Enhancing knowledge-aware recommendation with a cross-view contrastive learning

Ge ZhaoShuaishuai ZuZhisheng YangLi Li

Journal:   Neural Computing and Applications Year: 2024 Vol: 37 (3)Pages: 1693-1708
JOURNAL ARTICLE

Diffusion-Augmented Graph Contrastive Learning for Knowledge-Aware Recommendation

Jing ZhangXiaoqian JiangYouxuan WangShunmeng MengCangqi Zhou

Journal:   IEEE Transactions on Neural Networks and Learning Systems Year: 2025 Vol: PP Pages: 1-13
© 2026 ScienceGate Book Chapters — All rights reserved.