Semantics-Aware Denoising: A PLM-Guided Sample Reweighting Strategy for Robust Recommendation
Columbia University · University of Michigan · +2 more institutions
Abstract
Implicit feedback, such as user clicks, serves as the primary data source for modern recommender systems. However, click interactions inherently contain substantial noise, including accidental clicks, clickbait-induced interactions, and exploratory browsing behaviors that do not reflect genuine user preferences. Training recommendation models with such noisy positive samples leads to degraded prediction accuracy and unreliable recommendations. In this paper, we propose SAID (Semantics- Aware Implicit Denoising), a simple yet effective framework that leverages semantic consistency between user interests and item content to identify and downweight potentially noisy interactions. Our approach constructs textual…
Citation impact
- FWCI
- 208.95
- Percentile
- 99%
- References
- 29
Authors
4Topics & keywords
- Robustness (evolution)
- Recommender system
- Consistency (knowledge bases)
- Semantic similarity
- Similarity (geometry)
- Sample (material)
- Training set
- Function (biology)