Graph generative models are a highly active branch of machine learning. Given the steady development of new models of ever-increasing complexity, it is necessary to provide a principled way to evaluate and compare them. In this paper, we enumerate the desirable criteria for such a comparison metric and provide an overview of the status quo of graph generative model comparison in use today, which predominantly relies on maximum mean discrepancy (MMD). We perform a systematic evaluation of MMD in the context of graph generative model comparison, highlighting some of the challenges and pitfalls researchers inadvertently may encounter. After conducting a thorough analysis of the behaviour of MMD on synthetically-generated perturbed graphs as well as on recently-proposed graph generative models, we are able to provide a suitable procedure to mitigate these challenges and pitfalls. We aggregate our findings into a list of practical recommendations for researchers to use when evaluating graph generative models.
翻译:鉴于日益复杂的新模型的稳步发展,有必要提供一个原则性的方法来评估和比较这些模型。在本文件中,我们列举了这种比较指标的可取标准,并概述了目前使用的图形变形模型比较的现状,主要依赖最大平均差异(MMD)。我们在图形变形模型比较方面对MMD进行了系统评估,强调了研究人员无意中可能遇到的一些挑战和陷阱。在对合成生成的渗透性图和最近提出的图形变形模型的MMD行为进行彻底分析之后,我们能够提供一个适当的程序来减轻这些挑战和陷阱。我们把调查结果汇总成一份实用建议清单,供研究人员在评价图形变形模型时使用。