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A GA-based algorithm meets the fair ranking problem

机译:基于GA的算法符合公平排名问题

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Ranking items is a vital component in almost every application dealing with selecting the most suitable items among a pool of candidates. Yet, specific individuals or groups may be systematically disadvantaged in getting the opportunity of appearing on the ranking list. The fair ranking problem aims at mitigating the bias imposed on protected groups (i.e., disadvantaged groups) while preserving the total quality of the ranking list as high as possible. FA*IR is one of the existing algorithms, which finds the exact solutions for only one protected group, considering a given minimum number of protected items at every prefix of a ranking list. However, when an item belongs to more than two protected groups achieving optimal solutions gets more difficult. This paper proposes an algorithm called FARGO, a fair ranking algorithm based on the genetic algorithm (GA) enhanced by the simulated annealing (SA) that is able to handle any number of protected groups. A new objective function is also proposed by incorporating the main goals of the problem, which is utilized as FARGO's fitness function. Furthermore, a novel evaluation metric named Expected Gain Ratio (EGR) is introduced to assess a fair ranking algorithm's output. Experimental results on real-world datasets demonstrate that FARGO attains comparative performance with FA*IR for one protected group and finds near-optimal solutions for more than one protected group in terms of NDCG and EGR. Note that involving other concepts such as exposure is not a matter of this paper and can be an interesting subject for further studies.
机译:排名项目是几乎每个应用程序的重要组成部分,处理在候选人池中选择最合适的项目。然而,在获得排名列表上的机会时,可以系统地缺失特定的个人或团体。公平排名问题旨在减轻对受保护群体(即弱势群体)施加的偏见,同时保留尽可能高的排名清单的总质量。 FA * IR是现有算法之一,它仅考虑排名列表的每个前缀的给定最小受保护项目的确切解决方案。但是,当一个项目属于超过两个保护的组时,实现最佳解决方案变得更加困难。本文提出了一种称为FARGO的算法,该算法是基于遗传算法(GA)的分级排名算法,其能够处理任何数量的保护组的模拟退火(SA)。还通过纳入问题的主要目标来提出新的客观函数,该主要目标被用作Fargo的健身功能。此外,引入了名为预期增益比(EGR)的新型评估度量以评估公平排名算法的输出。现实世界数据集的实验结果表明,对于一个保护组,法戈对FA * IR进行了比较表现,并在NDCG和EGR方面为多于一个受保护的群体寻找近最佳解决方案。注意,涉及其他概念,如曝光,这不是本文的问题,并且可以是进一步研究的有趣主题。

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