通过个性化重新排名实现机会主义的多方面公平

Nasim Sonboli, Farzad Eskandanian, R. Burke, Weiwen Liu, B. Mobasher
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引用次数: 34

摘要

随着推荐系统变得越来越普遍,并进入就业和住房等具有更大社会影响的领域,研究人员已经开始寻求确保这些系统产生的结果公平的方法。这项工作主要集中在开发公平性指标与推荐准确性共同优化的推荐方法上。然而,之前的工作在很大程度上忽略了个人偏好如何限制算法产生公平推荐的能力。此外,除了少数例外,研究人员只考虑了相对于单一敏感特征或属性(如种族或性别)衡量公平的情况。在本文中,我们提出了一种公平感知推荐的重新排序方法,该方法在多个公平维度上学习个人偏好,并使用它们来增强推荐结果中的提供者公平性。具体来说,我们表明我们的机会主义和指标不可知的方法比之前的重新排名方法在准确性和公平性之间实现了更好的权衡,并且在多个公平维度上做到了这一点。
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Opportunistic Multi-aspect Fairness through Personalized Re-ranking
As recommender systems have become more widespread and moved into areas with greater social impact, such as employment and housing, researchers have begun to seek ways to ensure fairness in the results that such systems produce. This work has primarily focused on developing recommendation approaches in which fairness metrics are jointly optimized along with recommendation accuracy. However, the previous work had largely ignored how individual preferences may limit the ability of an algorithm to produce fair recommendations. Furthermore, with few exceptions, researchers have only considered scenarios in which fairness is measured relative to a single sensitive feature or attribute (such as race or gender). In this paper, we present a re-ranking approach to fairness-aware recommendation that learns individual preferences across multiple fairness dimensions and uses them to enhance provider fairness in recommendation results. Specifically, we show that our opportunistic and metric-agnostic approach achieves a better trade-off between accuracy and fairness than prior re-ranking approaches and does so across multiple fairness dimensions.
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