Graphs are ubiquitous in encoding relational information of real-world objects in many domains. Graph generation, whose purpose is to generate new graphs from a distribution similar to the observed graphs, has received increasing attention thanks to the recent advances of deep learning models. In this paper, we conduct a comprehensive review on the existing literature of graph generation from a variety of emerging methods to its wide application areas. Specifically, we first formulate the problem of deep graph generation and discuss its difference with several related graph learning tasks. Secondly, we divide the state-of-the-art methods into three categories based on model architectures and summarize their generation strategies. Thirdly, we introduce three key application areas of deep graph generation. Lastly, we highlight challenges and opportunities in the future study of deep graph generation.
翻译:由于最近深层学习模式的进展,人们越来越关注旨在从类似观察到的图表的分布中产生新图表的图表生成。在本文件中,我们全面审查了从各种新兴方法到其广泛应用领域的现有图形生成文献。具体地说,我们首先提出深层图形生成问题,并讨论其与若干相关图表学习任务的差异。第二,我们根据模型结构将最新方法分为三类,并总结其生成战略。第三,我们介绍深层图形生成的三个关键应用领域。最后,我们强调今后深层图形生成研究的挑战和机遇。