Title
Persistence Diagrams with Linear Machine Learning Models.
Abstract
Persistence diagrams have been widely recognized as a compact descriptor for characterizing multiscale topological features in data. When many datasets are available, statistical features embedded in those persistence diagrams can be extracted by applying machine learnings. In particular, the ability for explicitly analyzing the inverse in the original data space from those statistical features of persistence diagrams is significantly important for practical applications. In this paper, we propose a unified method for the inverse analysis by combining linear machine learning models with persistence images. The method is applied to point clouds and cubical sets, showing the ability of the statistical inverse analysis and its advantages.
Year
DOI
Venue
2017
10.1007/s41468-018-0013-5
Journal of Applied and Computational Topology
Keywords
Field
DocType
Topological data analysis,Persistent homology,Machine learning,Linear models,Persistence image,55-04,55U99,62P35,62J07
Inverse,Data space,Algebra,Linear machine,Algorithm,Learning models,Point cloud,Mathematics,Inverse analysis
Journal
Volume
Issue
Citations 
abs/1706.10082
3-4
3
PageRank 
References 
Authors
0.50
17
2
Name
Order
Citations
PageRank
ippei obayashi151.92
Yasuaki Hiraoka281.38