How does neural connectivity in autistic children differ from neural connectivity in healthy children or autistic youths? What patterns in global trade networks are shared across classes of goods, and how do these patterns change over time? Answering questions like these requires us to differentially describe groups of graphs: Given a set of graphs and a partition of these graphs into groups, discover what graphs in one group have in common, how they systematically differ from graphs in other groups, and how multiple groups of graphs are related. We refer to this task as graph group analysis, which seeks to describe similarities and differences between graph groups by means of statistically significant subgraphs. To perform graph group analysis, we introduce Gragra, which uses maximum entropy modeling to identify a non-redundant set of subgraphs with statistically significant associations to one or more graph groups. Through an extensive set of experiments on a wide range of synthetic and real-world graph groups, we confirm that Gragra works well in practice.
翻译:自闭症儿童的神经连接与健康儿童或自闭症青年的神经连接有何不同?全球贸易网络中哪些模式在各类商品之间共享,这些模式如何随时间变化?回答这样的问题要求我们以不同的方式描述图表组:考虑到一组图表和将这些图表分成若干组,发现一个组的图表具有哪些共同点,它们与其他组的图表如何系统地不同,以及多组的图表如何相关。我们将此任务称为图表组分析,试图通过具有重要统计意义的子集来描述图表组之间的相似和差异。为了进行图表组分析,我们引入了格拉格拉,它使用最大变形模型来识别一组与一个或多个图形组具有统计意义的关联的非冗余子集。我们通过对一系列广泛的合成和真实世界的图形组进行广泛的实验,我们确认格拉格在实践上效果良好。