Graph cut problems form a fundamental problem type in combinatorial optimization, and are a central object of study in both theory and practice. In addition, the study of fairness in Algorithmic Design and Machine Learning has recently received significant attention, with many different notions proposed and analyzed in a variety of contexts. In this paper we initiate the study of fairness for graph cut problems by giving the first fair definitions for them, and subsequently we demonstrate appropriate algorithmic techniques that yield a rigorous theoretical analysis. Specifically, we incorporate two different definitions of fairness, namely demographic and probabilistic individual fairness, in a particular cut problem modeling disaster containment scenarios. Our results include a variety of approximation algorithms with provable theoretical guarantees.
翻译:图表切除问题在组合优化中形成了一个根本性的问题类型,并且是理论和实践两方面研究的中心对象。此外,对算法设计和机器学习的公平性研究最近受到极大关注,在不同背景下提出了许多不同的概念并进行了分析。在本文中,我们通过给图表切除问题给出第一个公平的定义,开始了对公平性的研究,随后我们展示了适当的算法技术,从而得出了严格的理论分析。具体地说,我们纳入了两个不同的公平性定义,即人口和概率个人公平,在对灾害控制情景进行特定削减问题的模型模型分析中。我们的结果包括各种近似算法,并有可行的理论保证。