The thesis identifies theoretical, empirical, and conceptual flaws in offline fairness measures for recommender systems and contributes new evaluation methods and practical guidelines.
Online Certification of Preference-Based Fairness for Personalized Recommender Sys- tems.Proceedings of the AAAI Conference on Artificial Intelligence, 36(6): 6532–6540, 6 2022
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Offline Evaluation Measures of Fairness in Recommender Systems
The thesis identifies theoretical, empirical, and conceptual flaws in offline fairness measures for recommender systems and contributes new evaluation methods and practical guidelines.