English

Knowledge-refined Denoising Network for Robust Recommendation

Information Retrieval 2023-05-01 v1

Abstract

Knowledge graph (KG), which contains rich side information, becomes an essential part to boost the recommendation performance and improve its explainability. However, existing knowledge-aware recommendation methods directly perform information propagation on KG and user-item bipartite graph, ignoring the impacts of \textit{task-irrelevant knowledge propagation} and \textit{vulnerability to interaction noise}, which limits their performance. To solve these issues, we propose a robust knowledge-aware recommendation framework, called \textit{Knowledge-refined Denoising Network} (KRDN), to prune the task-irrelevant knowledge associations and noisy implicit feedback simultaneously. KRDN consists of an adaptive knowledge refining strategy and a contrastive denoising mechanism, which are able to automatically distill high-quality KG triplets for aggregation and prune noisy implicit feedback respectively. Besides, we also design the self-adapted loss function and the gradient estimator for model optimization. The experimental results on three benchmark datasets demonstrate the effectiveness and robustness of KRDN over the state-of-the-art knowledge-aware methods like KGIN, MCCLK, and KGCL, and also outperform robust recommendation models like SGL and SimGCL.

Keywords

Cite

@article{arxiv.2304.14987,
  title  = {Knowledge-refined Denoising Network for Robust Recommendation},
  author = {Xinjun Zhu and Yuntao Du and Yuren Mao and Lu Chen and Yujia Hu and Yunjun Gao},
  journal= {arXiv preprint arXiv:2304.14987},
  year   = {2023}
}
R2 v1 2026-06-28T10:20:59.206Z