Recent years have seen the rapid development of fairness-aware machine learning in mitigating unfairness or discrimination in decision-making in a wide range of applications. However, much less attention has been paid to the fairness-aware multi-objective optimization, which is indeed commonly seen in real life, such as fair resource allocation problems and data driven multi-objective optimization problems. This paper aims to illuminate and broaden our understanding of multi-objective optimization from the perspective of fairness. To this end, we start with a discussion of user preferences in multi-objective optimization and then explore its relationship to fairness in machine learning and multi-objective optimization. Following the above discussions, representative cases of fairness-aware multiobjective optimization are presented, further elaborating the importance of fairness in traditional multi-objective optimization, data-driven optimization and federated optimization. Finally, challenges and opportunities in fairness-aware multi-objective optimization are addressed. We hope that this article makes a small step forward towards understanding fairness in the context of optimization and promote research interest in fairness-aware multi-objective optimization.
翻译:近些年来,公平意识机器学习在减少广泛应用中决策中的不公平或歧视方面迅速发展,然而,对公平意识多目标优化的注意却少得多,这在现实生活中确实很普遍,例如公平的资源分配问题和数据驱动的多目标优化问题。本文件旨在从公平角度阐明和扩大我们对多目标优化的理解。为此,我们首先从多目标优化的角度来讨论用户偏好,然后探讨其与机器学习和多目标优化中的公平性的关系。在上述讨论之后,提出了公平意识多目标优化的典型案例,进一步阐述了在传统的多目标优化、数据驱动优化和联合优化中公平性的重要性。最后,讨论了公平意识多目标优化的挑战和机会。我们希望,这一文章在了解公平性优化和增进研究对公平性认识多目标优化的兴趣方面向前迈出了小步。我们希望,这一文章能为了解公平性、优化和增进研究对公平意识多目标优化的兴趣而向前迈出了小步。