| Literature DB >> 33367228 |
René Corbet1, Ulderico Fugacci1, Michael Kerber1, Claudia Landi2, Bei Wang3.
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.Entities:
Keywords: Machine Learning; Multivariate Analysis; Persistent Homology; Topological Data Analysis
Year: 2019 PMID: 33367228 PMCID: PMC7755142 DOI: 10.1016/j.cagx.2019.100005
Source DB: PubMed Journal: Comput Graph X