Graph machine learning has been extensively studied in both academia and industry. However, in the literature, most existing graph machine learning models are designed to conduct training with data samples in a random order, which may suffer from suboptimal performance due to ignoring the importance of different graph data samples and their training orders for the model optimization status. To tackle this critical problem, curriculum graph machine learning (Graph CL), which integrates the strength of graph machine learning and curriculum learning, arises and attracts an increasing amount of attention from the research community. Therefore, in this paper, we comprehensively overview approaches on Graph CL and present a detailed survey of recent advances in this direction. Specifically, we first discuss the key challenges of Graph CL and provide its formal problem definition. Then, we categorize and summarize existing methods into three classes based on three kinds of graph machine learning tasks, i.e., node-level, link-level, and graph-level tasks. Finally, we share our thoughts on future research directions. To the best of our knowledge, this paper is the first survey for curriculum graph machine learning.
翻译:然而,在文献中,大多数现有的图形机学习模型的设计是为了以随机顺序进行数据样本培训,由于忽视不同图形数据样本的重要性及其培训订单对于模型优化状态的重要性,这种培训可能表现欠佳。为了解决这一关键问题,课程图机学习(Graph CL)结合了图形机学习和课程学习的力量,产生并吸引了研究界越来越多的关注。因此,在本文件中,我们全面概述了关于CL图的方法,并详细调查了这方面的最新进展。具体地说,我们首先讨论了CL图的关键挑战,并提供了其正式的问题定义。然后,我们根据三种图形机学习任务,即节点、链接级别和图表层次的任务,将现有方法分类并归纳为三个班。最后,我们分享了我们对未来研究方向的想法。据我们所知,本文是课程图机学习的第一次调查。