Fairness in data-driven decision-making studies scenarios where individuals from certain population segments may be unfairly treated when being considered for loan or job applications, access to public resources, or other types of services. In location-based applications, decisions are based on individual whereabouts, which often correlate with sensitive attributes such as race, income, and education. While fairness has received significant attention recently, e.g., in machine learning, there is little focus on achieving fairness when dealing with location data. Due to their characteristics and specific type of processing algorithms, location data pose important fairness challenges. We introduce the concept of spatial data fairness to address the specific challenges of location data and spatial queries. We devise a novel building block to achieve fairness in the form of fair polynomials. Next, we propose two mechanisms based on fair polynomials that achieve individual spatial fairness, corresponding to two common location-based decision-making types: distance-based and zone-based. Extensive experimental results on real data show that the proposed mechanisms achieve spatial fairness without sacrificing utility.
翻译:数据驱动决策研究的公平性,即某些人口部分的个人在考虑出借或就业申请、获得公共资源或其他类型的服务时可能受到不公平待遇,在基于地点的应用中,决定基于个人下落,这往往与种族、收入和教育等敏感属性有关。虽然公平性最近受到极大关注,例如在机器学习方面,但在处理地点数据时很少注重公平性。由于其特点和特定类型的处理算法,地点数据构成重要的公平性挑战。我们引入空间数据公平性概念,以应对地点数据和空间查询方面的具体挑战。我们设计了一个新的构件,以实现公平性多面体形式的公平性。接下来,我们提出两个基于公平性的多边机制,实现个人空间公平性,相当于两种共同的基于地点的决策类型:远程和基于区域的决策。关于真实数据的广泛实验结果显示,拟议的机制在不牺牲效用的情况下实现了空间公平性。