Fast solution to the fair ranking problem using the Sinkhorn algorithm

Yuki Uehara, Shunnosuke Ikeda, Naoki Nishimura, Koya Ohashi, Yilin Li, Jie Yang, Deddy Jobson, Xingxia Zha, Takeshi Matsumoto, Noriyoshi Sukegawa, Yuichi Takano
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Abstract

In two-sided marketplaces such as online flea markets, recommender systems for providing consumers with personalized item rankings play a key role in promoting transactions between providers and consumers. Meanwhile, two-sided marketplaces face the problem of balancing consumer satisfaction and fairness among items to stimulate activity of item providers. Saito and Joachims (2022) devised an impact-based fair ranking method for maximizing the Nash social welfare based on fair division; however, this method, which requires solving a large-scale constrained nonlinear optimization problem, is very difficult to apply to practical-scale recommender systems. We thus propose a fast solution to the impact-based fair ranking problem. We first transform the fair ranking problem into an unconstrained optimization problem and then design a gradient ascent method that repeatedly executes the Sinkhorn algorithm. Experimental results demonstrate that our algorithm provides fair rankings of high quality and is about 1000 times faster than application of commercial optimization software.
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使用 Sinkhorn 算法快速解决公平排序问题
在网上跳蚤市场等双面市场中,为消费者提供个性化商品排名的推荐系统在促进供应商和消费者之间的交易中发挥着关键作用。同时,双面市场面临着如何平衡消费者满意度和物品间公平性以刺激物品提供者活跃度的问题。Saito 和 Joachims(2022)设计了一种基于影响的公平排名方法,用于在公平划分的基础上最大化纳什社会福利;然而,这种方法需要求解一个大规模的受限非线性优化问题,很难应用于实际规模的推荐系统。因此,我们提出了一种快速解决基于影响的公平排名问题的方法。我们首先将公平排名问题转化为无约束优化问题,然后设计了一种梯度上升方法,该方法可重复执行 Sinkhorn 算法。实验结果表明,我们的算法能提供高质量的公平排名,而且比应用商业优化软件快 1000 倍左右。
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