论文标题
在图表上学习很少
Few-Shot Learning on Graphs
论文作者
论文摘要
图表的学习在许多现实世界应用中的表现出色,引起了极大的关注。但是,由于数据标记始终是时间和资源,因此,用于特定任务的普遍监督图表学习模型通常会遭受标签稀疏问题的困扰。鉴于这一点,已经提出了将图表表示学习和几乎没有射击学习的优势的图形学习(FSLG)(FSLG),以面对有限的注释数据挑战来解决性能退化。最近有许多研究FSLG的研究。在本文中,我们以一系列方法和应用的形式对这些工作进行了全面的调查。具体而言,我们首先引入FSLG挑战和基础,然后根据不同粒度级别的三个主要图形挖掘任务(即节点,边缘和图形)对FSLG的现有工作进行分类和总结。最后,我们分享了FSLG的一些未来研究方向的想法。在过去的几年中,这项调查的作者对FSLG的AI文献做出了重大贡献。
Graph representation learning has attracted tremendous attention due to its remarkable performance in many real-world applications. However, prevailing supervised graph representation learning models for specific tasks often suffer from label sparsity issue as data labeling is always time and resource consuming. In light of this, few-shot learning on graphs (FSLG), which combines the strengths of graph representation learning and few-shot learning together, has been proposed to tackle the performance degradation in face of limited annotated data challenge. There have been many studies working on FSLG recently. In this paper, we comprehensively survey these work in the form of a series of methods and applications. Specifically, we first introduce FSLG challenges and bases, then categorize and summarize existing work of FSLG in terms of three major graph mining tasks at different granularity levels, i.e., node, edge, and graph. Finally, we share our thoughts on some future research directions of FSLG. The authors of this survey have contributed significantly to the AI literature on FSLG over the last few years.