Popularity Bias
Popularity bias in recommender systems, where popular items disproportionately dominate recommendations, is a significant research area aiming to create fairer and more diverse systems. Current research focuses on mitigating this bias through various techniques, including modifying existing recommender architectures (e.g., collaborative filtering, matrix factorization) and employing novel approaches like contrastive learning and causal inference to disentangle item quality from popularity. Addressing popularity bias is crucial for improving the accuracy and diversity of recommendations, promoting equitable exposure for all items, and enhancing the overall user experience across various applications, from online content platforms to music streaming services.
Papers
Advancing Cultural Inclusivity: Optimizing Embedding Spaces for Balanced Music Recommendations
Armin Moradi, Nicola Neophytou, Golnoosh Farnadi
Balancing User Preferences by Social Networks: A Condition-Guided Social Recommendation Model for Mitigating Popularity Bias
Xin He, Wenqi Fan, Ruobing Wang, Yili Wang, Ying Wang, Shirui Pan, Xin Wang