In recent years, graph representation learning has achieved remarkable success while suffering from low-quality data problems. As a mature technology to improve data quality in computer vision, data augmentation has also attracted increasing attention in graph domain. For promoting the development of this emerging research direction, in this survey, we comprehensively review and summarize the existing graph data augmentation (GDAug) techniques. Specifically, we first summarize a variety of feasible taxonomies, and then classify existing GDAug studies based on fine-grained graph elements. Furthermore, for each type of GDAug technique, we formalize the general definition, discuss the technical details, and give schematic illustration. In addition, we also summarize common performance metrics and specific design metrics for constructing a GDAug evaluation system. Finally, we summarize the applications of GDAug from both data and model levels, as well as future directions.
翻译:近年来,图表代表性学习取得了显著成功,同时存在低质量数据问题。作为提高计算机视觉数据质量的成熟技术,数据增强也日益引起对图形领域的关注。为了推动开发这一新兴研究方向,我们在这次调查中全面审查和总结了现有的图表数据增强技术。具体地说,我们首先总结了各种可行的分类,然后根据细度图表元素对现有的GDAug研究进行了分类。此外,对于每一种GDAug技术,我们正式确定了一般定义,讨论了技术细节,并提供了示意图说明。此外,我们还总结了用于构建GDAug评价系统的共同性能指标和具体设计指标。最后,我们从数据和模型层面以及未来方向总结了GDAug的应用。