CrossDenoise: Denoising Implicit Feedback via a Lightweight Entity-Aware Synergistic Framework
CrossDenoise: Denoising Implicit Feedback via a Lightweight Entity-Aware Synergistic Framework
Recommender systems heavily rely on implicit feedback, which is inherently noisy due to false positives and negatives, severely degrading recommendation accuracy. Existing denoising strategies often overlook entity-aware modeling, suffer from high computational overhead, or demand excessive hyperparameter tuning, limiting their real-world applicability. We propose CrossDenoise, a novel and lightweight framework that addresses these challenges by disentangling noise estimation into user-, item-, and interaction-specific factors. Leveraging empirical observations that show significant heterogeneity in user and item noise propensities, CrossDenoise computes entity reputation factors (user/item reliability) via a rank-based linear mapping of average training losses. These are fused with interaction-level weights derived from an empirical cumulative distribution function (ECDF) of individual losses. This design is model-agnostic, computationally efficient, and requires only two intuitive hyperparameters. Extensive experiments on ML-1M, Yelp, and Amazon-book datasets, across GMF, NeuMF, and CDAE backbones, demonstrate that CrossDenoise consistently and significantly outperforms state-of-the-art baselines. For instance, it achieves up to 27.01% NDCG@50 gain on Yelp with NeuMF, while incurring negligible computational and memory overhead. Our analysis confirms that CrossDenoise effectively separates clean from noisy samples and remains robust under varied hyperparameter settings. It offers a practical and scalable solution for denoising implicit feedback.
Ze Liu、Xianquan Wang、Shuochen Liu、Jie Ma、Huibo Xu、Yupeng Han、Zhe Yang、Kai Zhang、Longfei Li、Jun Zhou
计算技术、计算机技术
Ze Liu,Xianquan Wang,Shuochen Liu,Jie Ma,Huibo Xu,Yupeng Han,Zhe Yang,Kai Zhang,Longfei Li,Jun Zhou.CrossDenoise: Denoising Implicit Feedback via a Lightweight Entity-Aware Synergistic Framework[EB/OL].(2025-08-14)[2025-08-24].https://arxiv.org/abs/2508.10851.点此复制
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