通过椭圆体实现持久同构

Sara Kališnik, Bastian Rieck, Ana Žegarac
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引用次数: 0

摘要

持久同源性是拓扑数据分析中最常用的方法之一。使用持久同源性分析的第一步是根据点云构建一个嵌套的简单复数序列,称为过滤。有大量不同的复合体可供选择,其中 Rips、Alpha 和见证复合体很受欢迎。在本手稿中,我们构建了一种不同类型的几何简并复合物,称为椭圆复合物。与构建 Rips 和 Alpha 复合物时使用的以样本点为中心的传统(欧几里得)球相比,与切线方向对齐的椭圆能更好地逼近数据,而这种复合物正是基于这一理念。我们使用主成分分析法(PrincipalComponent Analysis)直接从样本中估算切线空间,并提出了计算椭球体条形码(即基于椭球体复合体的拓扑描述符)的算法和实现方法。此外,我们还进行了大量实验,并将椭球体条形码与标准 Rips 条形码进行了比较。我们的研究结果表明,椭球体复合物对于从样本中估计流形和有瓶颈空间的同源性特别有效。特别是,与使用数据的里普斯复合码相比,与地面真实拓扑特征相对应的持续时间间隔更长。此外,椭球体条形码在稀疏采样点云中的分类结果更好。最后,我们证明椭球体条形码在分类任务中优于 Rips 条形码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Persistent Homology via Ellipsoids
Persistent homology is one of the most popular methods in Topological Data Analysis. An initial step in any analysis with persistent homology involves constructing a nested sequence of simplicial complexes, called a filtration, from a point cloud. There is an abundance of different complexes to choose from, with Rips, Alpha, and witness complexes being popular choices. In this manuscript, we build a different type of a geometrically-informed simplicial complex, called an ellipsoid complex. This complex is based on the idea that ellipsoids aligned with tangent directions better approximate the data compared to conventional (Euclidean) balls centered at sample points that are used in the construction of Rips and Alpha complexes, for instance. We use Principal Component Analysis to estimate tangent spaces directly from samples and present algorithms as well as an implementation for computing ellipsoid barcodes, i.e., topological descriptors based on ellipsoid complexes. Furthermore, we conduct extensive experiments and compare ellipsoid barcodes with standard Rips barcodes. Our findings indicate that ellipsoid complexes are particularly effective for estimating homology of manifolds and spaces with bottlenecks from samples. In particular, the persistence intervals corresponding to a ground-truth topological feature are longer compared to the intervals obtained when using the Rips complex of the data. Furthermore, ellipsoid barcodes lead to better classification results in sparsely-sampled point clouds. Finally, we demonstrate that ellipsoid barcodes outperform Rips barcodes in classification tasks.
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