Graph generative model evaluation necessitates understanding differences between graphs on the distributional level. This entails being able to harness salient attributes of graphs in an efficient manner. Curvature constitutes one such property of graphs, and has recently started to prove useful in characterising graphs. Its expressive properties, stability, and practical utility in model evaluation remain largely unexplored, however. We combine graph curvature descriptors with cutting-edge methods from topological data analysis to obtain robust, expressive descriptors for evaluating graph generative models.
翻译:图形突变模型评价需要理解分布层图的差别。 这需要能够有效地利用图表的突出特征。 曲线是图表的特性之一,最近开始证明对图表的定性有用。 但是,其表情属性、稳定性和模型评价的实际效用基本上尚未探索。 我们把图表曲线描述器与地形数据分析的尖端方法结合起来,以获得坚固、直观的描述器,用于评估图表基因模型。