FairSort: Learning to Fair Rank for Personalized Recommendations in Two-Sided Platforms
FairSort: Learning to Fair Rank for Personalized Recommendations in Two-Sided Platforms
Traditional recommendation systems focus on maximizing user satisfaction by suggesting their favourite items. This user-centric approach may lead to unfair exposure distribution among the providers. On the contrary, a provider-centric design might become unfair to the users. Therefore, this paper proposes a re-ranking model FairSort to find a trade-off solution among user-side fairness, provider-side fairness, and personalized recommendations utility. Previous works habitually treat this issue as a knapsack problem, incorporating both-side fairness as constraints. In this paper, we adopt a novel perspective, treating each recommendation list as a runway rather than a knapsack. In this perspective, each item on the runway gains a velocity and runs within a specific time, achieving re-ranking for both-side fairness. Meanwhile, we ensure the Minimum Utility Guarantee for personalized recommendations by designing a Binary Search approach. This can provide more reliable recommendations compared to the conventional greedy strategy based on the knapsack problem. We further broaden the applicability of FairSort, designing two versions for online and offline recommendation scenarios. Theoretical analysis and extensive experiments on real-world datasets indicate that FairSort can ensure more reliable personalized recommendations while considering fairness for both the provider and user.
Xiao Xue、Hongyue Wu、Guodong Fan、Jianmao Xiao、Hongqi Chen、Guoli Wu、Zhiyong Feng、Shizhan Chen、Jingyu Li
计算技术、计算机技术
Xiao Xue,Hongyue Wu,Guodong Fan,Jianmao Xiao,Hongqi Chen,Guoli Wu,Zhiyong Feng,Shizhan Chen,Jingyu Li.FairSort: Learning to Fair Rank for Personalized Recommendations in Two-Sided Platforms[EB/OL].(2024-11-30)[2025-08-17].https://arxiv.org/abs/2412.00424.点此复制
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