CAFU: Constrained Alignment and Filtered Uniformity for Denoising Recommendation

Authors

  • Xinzhe Jiang Anhui University
  • Lei Sang Anhui University
  • Yi Zhang Anhui University
  • Kaibin Wang Swinburne University of Technology
  • Yiwen Zhang Anhui University

DOI:

https://doi.org/10.1609/aaai.v40i17.38517

Abstract

In recommender systems, recent advances highlight the critical role of alignment and uniformity (AU) in representation learning. Specifically, AU-based methods pull positive user-item pairs closer (alignment) and spread the overall representation distribution (uniformity), typically relying on observed positive samples. Despite their effectiveness, exist methods face two limitations: (1) noise issues have a more severe impact on AU-based methods in the absence of negative samples, leading to the capture of spurious signals such as misclicks or non-preferential behaviors; (2) data sparsity weakens the alignment of user-item representations, hindering reliable representation learning and harming recommendations for sparse users. To tackle these issues, we propose a novel recommendation framework named Constrained Alignment and Filtered Uniformity (CAFU). CAFU enhances robustness through Filtered Uniformity (FU) and improves performance under data sparsity via Constrained Alignment (CA). Specifically, FU adopts a threshold-based strategy to eliminate unreliable samples that degrade embedding quality, thereby strengthening robustness. In parallel, CA mitigates the impact of sparsity by masking low-confidence user-item pairs based on angular distance, leading to better recommendation for sparse users. Extensive experiments on three datasets and three backbones demonstrate the effectiveness and generalization of the proposed framework.

Published

2026-03-14

How to Cite

Jiang, X., Sang, L., Zhang, Y., Wang, K., & Zhang, Y. (2026). CAFU: Constrained Alignment and Filtered Uniformity for Denoising Recommendation. Proceedings of the AAAI Conference on Artificial Intelligence, 40(17), 14955–14963. https://doi.org/10.1609/aaai.v40i17.38517

Issue

Section

AAAI Technical Track on Data Mining & Knowledge Management I