A kernel for multi-parameter persistent homology

Q2 Engineering
René Corbet , Ulderico Fugacci , Michael Kerber , Claudia Landi , Bei Wang
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引用次数: 37

Abstract

Topological data analysis and its main method, persistent homology, provide a toolkit for computing topological information of high-dimensional and noisy data sets. Kernels for one-parameter persistent homology have been established to connect persistent homology with machine learning techniques with applicability on shape analysis, recognition and classification. We contribute a kernel construction for multi-parameter persistence by integrating a one-parameter kernel weighted along straight lines. We prove that our kernel is stable and efficiently computable, which establishes a theoretical connection between topological data analysis and machine learning for multivariate data analysis.

Abstract Image

一个多参数持久同源的内核
拓扑数据分析及其主要方法——持久同调,为计算高维和噪声数据集的拓扑信息提供了一个工具箱。建立了单参数持久同调的核函数,将持久同调与机器学习技术相结合,在形状分析、识别和分类等方面具有广泛的应用。我们通过对沿直线加权的单参数核进行积分,给出了多参数持久性的核结构。我们证明了我们的核是稳定和高效可计算的,这在拓扑数据分析和多变量数据分析的机器学习之间建立了理论联系。
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来源期刊
Computers and Graphics: X
Computers and Graphics: X Engineering-Engineering (all)
CiteScore
3.30
自引率
0.00%
发文量
0
审稿时长
20 weeks
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