论文标题

图表上的分布概括:调查

Out-Of-Distribution Generalization on Graphs: A Survey

论文作者

Li, Haoyang, Wang, Xin, Zhang, Ziwei, Zhu, Wenwu

论文摘要

在学术界和行业中,都对图形机学习进行了广泛的研究。尽管以大量新兴方法和技术蓬勃发展,但大多数文献都基于分布假设,即测试和训练图数据的分布相同。但是,在许多现实图形方案中,几乎无法满足这种分布假设,当存在测试和训练图数据之间存在分布时,模型性能会大大降低。为了解决这个关键问题,超越分布假设的图表上的分布(OOD)概括已经取得了长足的进步,并引起了研究界的不断关注。在本文中,我们对图表进行了全面调查OOD概括,并详细介绍了该领域最新进展。首先,我们提供了图形上OOD概括的形式问题定义。其次,我们根据概念上不同的角度(即数据,模型和学习策略)将现有方法分为三个类,即基于它们在Graph Machine学习管道中的位置,然后针对每个类别进行详细讨论。我们还回顾了与图形上的OOD概括有关的理论,并介绍了常用的图形数据集以进行彻底评估。最后,我们分享对未来研究方向的见解。据我们所知,本文是图形上OOD概括的首次系统和全面的综述。

Graph machine learning has been extensively studied in both academia and industry. Although booming with a vast number of emerging methods and techniques, most of the literature is built on the in-distribution hypothesis, i.e., testing and training graph data are identically distributed. However, this in-distribution hypothesis can hardly be satisfied in many real-world graph scenarios where the model performance substantially degrades when there exist distribution shifts between testing and training graph data. To solve this critical problem, out-of-distribution (OOD) generalization on graphs, which goes beyond the in-distribution hypothesis, has made great progress and attracted ever-increasing attention from the research community. In this paper, we comprehensively survey OOD generalization on graphs and present a detailed review of recent advances in this area. First, we provide a formal problem definition of OOD generalization on graphs. Second, we categorize existing methods into three classes from conceptually different perspectives, i.e., data, model, and learning strategy, based on their positions in the graph machine learning pipeline, followed by detailed discussions for each category. We also review the theories related to OOD generalization on graphs and introduce the commonly used graph datasets for thorough evaluations. Finally, we share our insights on future research directions. This paper is the first systematic and comprehensive review of OOD generalization on graphs, to the best of our knowledge.

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