Graph learning is a popular approach for performing machine learning on graph-structured data. It has revolutionized the machine learning ability to model graph data to address downstream tasks. Its application is wide due to the availability of graph data ranging from all types of networks to information systems. Most graph learning methods assume that the graph is static and its complete structure is known during training. This limits their applicability since they cannot be applied to problems where the underlying graph grows over time and/or new tasks emerge incrementally. Such applications require a lifelong learning approach that can learn the graph continuously and accommodate new information whilst retaining previously learned knowledge. Lifelong learning methods that enable continuous learning in regular domains like images and text cannot be directly applied to continuously evolving graph data, due to its irregular structure. As a result, graph lifelong learning is gaining attention from the research community. This survey paper provides a comprehensive overview of recent advancements in graph lifelong learning, including the categorization of existing methods, and the discussions of potential applications and open research problems.
翻译:图表学习是一种在图表结构数据上进行机器学习的流行方法,它使模拟图形数据以完成下游任务的机器学习能力发生了革命性的变化,由于从各种网络到信息系统的图表数据提供情况,应用范围很广。大多数图表学习方法假定,图表是静态的,其完整结构在培训期间是已知的。这限制了其适用性,因为它们不能应用于基本图表随着时间和/或新任务逐渐增加的问题。这些应用需要终身学习方法,可以不断学习图表,并容纳新信息,同时保留以前学到的知识。允许在图像和文字等常规领域不断不断学习的终身学习方法,不能直接用于不断演变的图表数据,因为其结构不正常。结果,图表终身学习正在引起研究界的注意。本调查文件全面概述了图表终身学习的最新进展,包括现有方法的分类,以及潜在应用和开放研究问题的讨论。