A Distance for Geometric Graphs via the Labeled Merge Tree Interleaving Distance

Erin Wolf Chambers, Elizabeth Munch, Sarah Percival, Xinyi Wang
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Abstract

Geometric graphs appear in many real-world data sets, such as road networks, sensor networks, and molecules. We investigate the notion of distance between embedded graphs and present a metric to measure the distance between two geometric graphs via merge trees. In order to preserve as much useful information as possible from the original data, we introduce a way of rotating the sublevel set to obtain the merge trees via the idea of the directional transform. We represent the merge trees using a surjective multi-labeling scheme and then compute the distance between two representative matrices. We show some theoretically desirable qualities and present two methods of computation: approximation via sampling and exact distance using a kinetic data structure, both in polynomial time. We illustrate its utility by implementing it on two data sets.
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通过标签合并树交错距离计算几何图的距离
几何图出现在许多现实世界的数据集中,如道路网络、传感器网络和分子。我们研究了嵌入图之间的距离概念,并提出了一种通过合并树测量两个几何图形之间距离的度量方法。为了尽可能多地保留原始数据中的有用信息,我们引入了一种旋转子级集的方法,通过方向变换的思想获得合并树。我们使用一种投射式多标记方案来表示合并树,然后计算两个代表性矩阵之间的距离。我们展示了一些理论上理想的品质,并介绍了两种计算方法:通过采样的近似方法和使用动力学数据结构的精确距离方法,这两种方法都可以在多项式时间内完成。我们在两个数据集上实现了这种方法,从而说明了它的实用性。
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