使用位置敏感哈希算法对合并树进行快速比较分析

Weiran Lyu, Raghavendra Sridharamurthy, Jeff M. Phillips, Bei Wang
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引用次数: 0

摘要

标量场比较是科学可视化的一项基本任务。在拓扑数据分析中,我们会比较标量场的拓扑描述符(如持久图和合并树),因为它们提供了清晰而稳健的抽象表示。拓扑描述符的几种相似性度量似乎在渐近和实际操作上都很有效,而且采用了多项式时间算法,但在处理大规模时变科学数据和集合时,它们的扩展性并不好。在本文中,我们受局部敏感散列(LSH)工具的启发,提出了一种新的框架来促进合并树的比较分析。LSH 能将相似对象高概率地散列在同一个散列桶中。我们为合并树提出了两种新的相似性度量,分别使用递归最小散列(Recursive MinHash)和子路径签名(subpath signature)的新扩展,可以通过 LSH 计算。我们的相似性度量计算效率极高,与合并树编辑距离或几何交错距离等现有度量的结果非常相似。我们的实验证明了 LSH 框架在形状匹配、聚类、关键事件检测和集合汇总等应用中的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Comparative Analysis of Merge Trees Using Locality Sensitive Hashing
Scalar field comparison is a fundamental task in scientific visualization. In topological data analysis, we compare topological descriptors of scalar fields -- such as persistence diagrams and merge trees -- because they provide succinct and robust abstract representations. Several similarity measures for topological descriptors seem to be both asymptotically and practically efficient with polynomial time algorithms, but they do not scale well when handling large-scale, time-varying scientific data and ensembles. In this paper, we propose a new framework to facilitate the comparative analysis of merge trees, inspired by tools from locality sensitive hashing (LSH). LSH hashes similar objects into the same hash buckets with high probability. We propose two new similarity measures for merge trees that can be computed via LSH, using new extensions to Recursive MinHash and subpath signature, respectively. Our similarity measures are extremely efficient to compute and closely resemble the results of existing measures such as merge tree edit distance or geometric interleaving distance. Our experiments demonstrate the utility of our LSH framework in applications such as shape matching, clustering, key event detection, and ensemble summarization.
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