Alleviating User-Sensitive bias with Fair Generative Sequential Recommendation Model
Yang Liu, Feng Wu, Xuefang Zhu

TL;DR
This paper introduces FairGENRec, a diffusion model-based recommendation system that reduces user-sensitive bias and improves fairness and diversity in recommendations.
Contribution
It proposes a novel diffusion model approach that incorporates sensitive feature recognition and multi-interest information to enhance fairness in sequential recommendation.
Findings
Improves recommendation fairness and diversity.
Achieves better accuracy compared to baseline models.
Demonstrates effectiveness on three real-world datasets.
Abstract
Recommendation fairness has recently attracted much attention. In the real world, recommendation systems are driven by user behavior, and since users with the same sensitive feature (e.g., gender and age) tend to have the same patterns, recommendation models can easily capture the strong correlation preference of sensitive features and thus cause recommendation unfairness. Diffusion model (DM) as a new generative model paradigm has achieved great success in recommendation systems. DM's ability to model uncertainty and represent diversity, and its modeling mechanism has a high degree of adaptability with the real-world recommendation process with bias. Therefore, we use DM to effectively model the fairness of recommendation and enhance the diversity. This paper proposes a FairGENerative sequential Recommendation model based on DM, FairGENRec. In the training phase, we inject random noise…
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Taxonomy
TopicsTechnology Adoption and User Behaviour · Privacy, Security, and Data Protection · Decision-Making and Behavioral Economics
