Aligning Recommendations with User Popularity Preferences
AI 摘要
该论文研究推荐系统中的流行度偏差问题,并提出了一种个性化的缓解方法SPREE。
主要贡献
- 提出了Popularity Quantile Calibration框架,用于衡量用户流行度偏好和推荐流行度之间的偏差
- 提出了SPREE方法,一种基于激活引导的序列推荐个性化流行度偏差缓解方法
- 实验证明SPREE能有效改善用户层面的流行度对齐,同时保持推荐质量
方法论
通过量化用户历史行为的流行度偏好,并利用激活引导技术,自适应地调整模型激活,实现个性化的流行度偏差缓解。
原文摘要
Popularity bias is a pervasive problem in recommender systems, where recommendations disproportionately favor popular items. This not only results in "rich-get-richer" dynamics and a homogenization of visible content, but can also lead to misalignment of recommendations with individual users' preferences for popular or niche content. This work studies popularity bias through the lens of user-recommender alignment. To this end, we introduce Popularity Quantile Calibration, a measurement framework that quantifies misalignment between a user's historical popularity preference and the popularity of their recommendations. Building on this notion of popularity alignment, we propose SPREE, an inference-time mitigation method for sequential recommenders based on activation steering. SPREE identifies a popularity direction in representation space and adaptively steers model activations based on an estimate of each user's personal popularity bias, allowing both the direction and magnitude of steering to vary across users. Unlike global debiasing approaches, SPREE explicitly targets alignment rather than uniformly reducing popularity. Experiments across multiple datasets show that SPREE consistently improves user-level popularity alignment while preserving recommendation quality.