JOURNAL ARTICLE

LMACL: Improving Graph Collaborative Filtering with Learnable Model Augmentation Contrastive Learning

Xinru LiuYongjing HaoLei ZhaoGuanfeng LiuVictor S. ShengPengpeng Zhao

Year: 2024 Journal:   ACM Transactions on Knowledge Discovery from Data Vol: 18 (7)Pages: 1-24   Publisher: Association for Computing Machinery

Abstract

Graph collaborative filtering (GCF) has achieved exciting recommendation performance with its ability to aggregate high-order graph structure information. Recently, contrastive learning (CL) has been incorporated into GCF to alleviate data sparsity and noise issues. However, most of the existing methods employ random or manual augmentation to produce contrastive views that may destroy the original topology and amplify the noisy effects. We argue that such augmentation is insufficient to produce the optimal contrastive view, leading to suboptimal recommendation results. In this article, we proposed a L earnable M odel A ugmentation C ontrastive L earning (LMACL) framework for recommendation, which effectively combines graph-level and node-level collaborative relations to enhance the expressiveness of collaborative filtering (CF) paradigm. Specifically, we first use the graph convolution network (GCN) as a backbone encoder to incorporate multi-hop neighbors into graph-level original node representations by leveraging the high-order connectivity in user-item interaction graphs. At the same time, we treat the multi-head graph attention network (GAT) as an augmentation view generator to adaptively generate high-quality node-level augmented views. Finally, joint learning endows the end-to-end training fashion. In this case, the mutual supervision and collaborative cooperation of GCN and GAT achieves learnable model augmentation. Extensive experiments on several benchmark datasets demonstrate that LMACL provides a significant improvement over the strongest baseline in terms of Recall and NDCG by 2.5%–3.8% and 1.6%–4.0%, respectively. Our model implementation code is available at https://github.com/LiuHsinx/LMACL .

Keywords:
Computer science Collaborative filtering Graph Encoder Attention network Theoretical computer science Artificial intelligence Machine learning Recommender system

Metrics

8
Cited By
12.22
FWCI (Field Weighted Citation Impact)
58
Refs
0.97
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
Caching and Content Delivery
Physical Sciences →  Computer Science →  Computer Networks and Communications

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