Fairness of Exposure in Dynamic Recommendation
Masoud Mansoury, Bamshad Mobasher

TL;DR
This paper investigates exposure bias in dynamic recommender systems, demonstrating that static bias mitigation methods fail long-term, and proposes an adaptation that improves long-term fairness without sacrificing accuracy.
Contribution
The paper identifies the limitations of static bias mitigation methods in dynamic settings and proposes an adapted approach that ensures long-term exposure fairness in recommender systems.
Findings
Existing static bias mitigation methods fail in long-term dynamic settings.
The proposed adaptation improves long-term exposure fairness.
The solution maintains recommendation accuracy while enhancing fairness.
Abstract
Exposure bias is a well-known issue in recommender systems where the exposure is not fairly distributed among items in the recommendation results. This is especially problematic when bias is amplified over time as a few items (e.g., popular ones) are repeatedly over-represented in recommendation lists and users' interactions with those items will amplify bias towards those items over time resulting in a feedback loop. This issue has been extensively studied in the literature in static recommendation environment where a single round of recommendation result is processed to improve the exposure fairness. However, less work has been done on addressing exposure bias in a dynamic recommendation setting where the system is operating over time, the recommendation model and the input data are dynamically updated with ongoing user feedback on recommended items at each round. In this paper, we…
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Taxonomy
TopicsRecommender Systems and Techniques · Advanced Bandit Algorithms Research · Stochastic Gradient Optimization Techniques
