论文标题
盖亚:通过加强学习公平访问的图表增强
GAEA: Graph Augmentation for Equitable Access via Reinforcement Learning
论文作者
论文摘要
通过不同的亚群来访问资源是社会和社会技术网络中普遍的问题。例如,城市基础设施网络可以使某些种族群体能够更轻松地获取高质量学校,杂货店和投票站等资源。同样,大学和组织中的社交网络可以使某些群体更容易地访问具有宝贵信息或影响力的人。在这里,我们介绍了一类新的问题,即公平访问(GAEA)的图形扩展,以通过在预算约束下编辑图形边缘来增强网络系统中的股权。我们证明了此类问题是NP-HARD,不能在$(1- \ tfrac {1} {3e})$的倍以内近似。我们为Gaea开发了原则上,样本和时间效率的马尔可夫奖励过程(MRP)机制设计框架。我们的算法在各种合成图上都优于基准。我们通过合并芝加哥市的公共人口普查,学校和运输数据集并将我们的算法应用于公交网络,以增强跨种族群体的高质量学校的公平访问,并应用我们的算法,并应用我们的算法进行了算法,从而进一步证明了现实世界网络的方法。在Facebook大学网络上进行的进一步实验产生了新的社交联系集,这将增加对性别群体中某些属性节点的公平访问。
Disparate access to resources by different subpopulations is a prevalent issue in societal and sociotechnical networks. For example, urban infrastructure networks may enable certain racial groups to more easily access resources such as high-quality schools, grocery stores, and polling places. Similarly, social networks within universities and organizations may enable certain groups to more easily access people with valuable information or influence. Here we introduce a new class of problems, Graph Augmentation for Equitable Access (GAEA), to enhance equity in networked systems by editing graph edges under budget constraints. We prove such problems are NP-hard, and cannot be approximated within a factor of $(1-\tfrac{1}{3e})$. We develop a principled, sample- and time- efficient Markov Reward Process (MRP)-based mechanism design framework for GAEA. Our algorithm outperforms baselines on a diverse set of synthetic graphs. We further demonstrate the method on real-world networks, by merging public census, school, and transportation datasets for the city of Chicago and applying our algorithm to find human-interpretable edits to the bus network that enhance equitable access to high-quality schools across racial groups. Further experiments on Facebook networks of universities yield sets of new social connections that would increase equitable access to certain attributed nodes across gender groups.