MACRec: A Multi-View Subspace Alignment Framework for Contrastive Sampling Calibration in Recommendation

Authors

  • Junping Liu Wuhan Textile University
  • Mingchao Yu Wuhan Textile University
  • Xinrong Hu Wuhan Textile University
  • Rui Yan Renmin University of China
  • Wanqing Li University of Wollongong
  • Jie Yang University of Wollongong
  • Yi Guo Western Sydney University

DOI:

https://doi.org/10.1609/aaai.v40i18.38560

Abstract

Graph Contrastive Learning (GCL) has proven effective in mitigating data sparsity and enhancing representation learning for recommendation. Yet, most GCL frameworks indiscriminately treat all non-anchor nodes as negatives during contrastive sampling, often leading to the false negative problem where semantically similar nodes are incorrectly repelled. Previous attempts to mitigate this issue rely on predetermined heuristics or local neighborhood mining, which struggle to reliably identify false negatives. More critically, they often overlook authentic user-item interactions for anchoring sample relationships. As a result, this paper presents MACRec, a Multi-View subspace-Alignment framework designed to Calibrate contrastive sampling in GCLbased Recommendation. MACRec comprises three core components: (1) a Multi-View Affinity (MVA) module that captures consistent semantic relations across multiple augmentations via self-expression modeling; (2) a Cross-Subspace Alignment (CSA) mechanism that leverages authentic useritem behavioral interactions to enforce semantic consistency across user and item subspaces; and (3) a Calibrationbased Contrastive Reweighting (CCR) strategy to dynamically down-weight potential false negatives during the contrastive learning process. Extensive experiments on three realworld benchmarks demonstrate that MACRec consistently improves performance across various augmentation backbones, achieving up to 14.55% relative gains.

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Published

2026-03-14

How to Cite

Liu, J., Yu, M., Hu, X., Yan, R., Li, W., Yang, J., & Guo, Y. (2026). MACRec: A Multi-View Subspace Alignment Framework for Contrastive Sampling Calibration in Recommendation. Proceedings of the AAAI Conference on Artificial Intelligence, 40(18), 15342–15350. https://doi.org/10.1609/aaai.v40i18.38560

Issue

Section

AAAI Technical Track on Data Mining & Knowledge Management II