Back to Search Start Over

LTP-MMF: Towards Long-term Provider Max-min Fairness Under Recommendation Feedback Loops

Authors :
Xu, Chen
Ye, Xiaopeng
Xu, Jun
Zhang, Xiao
Shen, Weiran
Wen, Ji-Rong
Publication Year :
2023

Abstract

Multi-stakeholder recommender systems involve various roles, such as users, providers. Previous work pointed out that max-min fairness (MMF) is a better metric to support weak providers. However, when considering MMF, the features or parameters of these roles vary over time, how to ensure long-term provider MMF has become a significant challenge. We observed that recommendation feedback loops (named RFL) will influence the provider MMF greatly in the long term. RFL means that recommender system can only receive feedback on exposed items from users and update recommender models incrementally based on this feedback. When utilizing the feedback, the recommender model will regard unexposed item as negative. In this way, tail provider will not get the opportunity to be exposed, and its items will always be considered as negative samples. Such phenomenons will become more and more serious in RFL. To alleviate the problem, this paper proposes an online ranking model named Long-Term Provider Max-min Fairness (named LTP-MMF). Theoretical analysis shows that the long-term regret of LTP-MMF enjoys a sub-linear bound. Experimental results on three public recommendation benchmarks demonstrated that LTP-MMF can outperform the baselines in the long term.<br />Comment: arXiv admin note: text overlap with arXiv:2303.06660

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2308.05902
Document Type :
Working Paper