论文标题
图形开采中的公平性:调查
Fairness in Graph Mining: A Survey
论文作者
论文摘要
多年来,图形挖掘算法在无数领域中发挥了重要作用。但是,尽管在各种图形分析任务上表现出色,但这些算法中的大多数都缺乏公平的考虑。结果,在以人为本的应用中剥削时,它们可能导致对某些人群的歧视。最近,算法公平性已在基于图的应用中进行了广泛的研究。与对独立和相同分布(I.I.D.)数据的算法公平性相反,图挖掘中的公平性具有独家背景,分类法和实现技术。在这项调查中,我们在公平图挖掘的背景下提供了现有文献的全面,最新的介绍。具体而言,我们在图表上提出了一种新颖的公平概念分类法,这阐明了它们的联系和差异。我们进一步介绍了现有技术的有组织摘要,以促进图形挖掘中的公平性。最后,我们总结了这个新兴研究领域中广泛使用的数据集,并就当前的研究挑战和开放问题提供了见解,旨在鼓励跨繁殖思想和进一步的进步。
Graph mining algorithms have been playing a significant role in myriad fields over the years. However, despite their promising performance on various graph analytical tasks, most of these algorithms lack fairness considerations. As a consequence, they could lead to discrimination towards certain populations when exploited in human-centered applications. Recently, algorithmic fairness has been extensively studied in graph-based applications. In contrast to algorithmic fairness on independent and identically distributed (i.i.d.) data, fairness in graph mining has exclusive backgrounds, taxonomies, and fulfilling techniques. In this survey, we provide a comprehensive and up-to-date introduction of existing literature under the context of fair graph mining. Specifically, we propose a novel taxonomy of fairness notions on graphs, which sheds light on their connections and differences. We further present an organized summary of existing techniques that promote fairness in graph mining. Finally, we summarize the widely used datasets in this emerging research field and provide insights on current research challenges and open questions, aiming at encouraging cross-breeding ideas and further advances.