Countering Mainstream Bias via End-to-End Adaptive Local Learning: Conclusion and References
2024-8-22 05:0:21 Author: hackernoon.com(查看原文) 阅读量:2 收藏

In this study, we aim to address the mainstream bias in recommender systems that niche users who possess special and minority interests receive overly low utility from recommendation models. We identify two root causes of this bias: the discrepancy modeling problem and the unsynchronized learning problem. Toward debiasing, we devise an end-to-end adaptive local learning framework: we first propose a loss-driven Mixture-of-Experts module to counteract the discrepancy modeling problem, and then we develop an adaptive weight module to fight against the unsynchronized learning problem. Extensive experiments show the outstanding performance of our proposed method on both niche and mainstream users and overall performance compared to SOTA alternatives.

Acknowledgements. This research was funded in part by 4-VA, a collaborative partnership for advancing the Commonwealth of Virginia.

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