Merge trees are a type of graph-based topological summary that tracks the evolution of connected components in the sublevel sets of scalar functions. They enjoy widespread applications in data analysis and scientific visualization. In this paper, we consider the problem of comparing two merge trees via the notion of interleaving distance in the metric space setting. We investigate various theoretical properties of such a metric. In particular, we show that the interleaving distance is intrinsic on the space of labeled merge trees and provide an algorithm to construct metric 1-centers for collections of labeled merge trees. We further prove that the intrinsic property of the interleaving distance also holds for the space of unlabeled merge trees. Our results are a first step toward performing statistics on graph-based topological summaries.
翻译:合并树是一种基于图表的地形摘要,它跟踪了标量函数子层各组相连接组件的演变情况,在数据分析和科学可视化方面得到了广泛的应用。在本文中,我们考虑了通过在测量空间设置中互移距离的概念比较两个合并树的问题。我们研究了这种测量的各种理论特性。特别是,我们表明,连接距离是贴有标签的合并树空间的内在部分,并且提供了一种算法,用于为标签的合并树的集成建立标准1中心。我们进一步证明,相互分离距离的内在特性也保留着未贴标签的合并树的空间。我们的结果是朝着在基于图表的构造摘要上进行统计迈出的第一步。