持久性理论中的振幅

Pub Date : 2024-07-08 DOI:10.1016/j.jpaa.2024.107770
Barbara Giunti , John S. Nolan , Nina Otter , Lukas Waas
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引用次数: 0

摘要

某些稳定性结果的有效性证明了在应用中使用持久同调的合理性。这些结果的核心是与数据集相关联的不变式之间的距离概念。在这里,我们引入了一个通用框架,用于比较多参数持久性中的距离和不变式,在这种情况下,不变式和它们之间的距离没有自然选择。我们定义了振幅不变式、单调不变式和次正不变式,这些不变式产生于将一个非负实数分配给一个无性范畴的对象。然后,我们介绍了将距离与这些不变式相关联的不同方法,并对与拓扑数据分析相关的振幅类别进行了分类。此外,我们还研究了拓扑数据分析中出现的振幅距离的关系和判别能力。
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Amplitudes in persistence theory

The use of persistent homology in applications is justified by the validity of certain stability results. At the core of such results is a notion of distance between the invariants that one associates with data sets. Here we introduce a general framework to compare distances and invariants in multiparameter persistence, where there is no natural choice of invariants and distances between them. We define amplitudes, monotone, and subadditive invariants that arise from assigning a non-negative real number to objects of an abelian category. We then present different ways to associate distances to such invariants, and we provide a classification of classes of amplitudes relevant to topological data analysis. In addition, we study the relationships as well as the discriminative power of such amplitude distances arising in topological data analysis scenarios.

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