Topology Applied to Machine Learning: From Global to Local
Through the use of examples, we explain one way in which applied topology has evolved since the birth of persistent homology in the early 2000s. The first applications of topology to data emphasized the global shape of a dataset, such as the three-circle model for 3 × 3 pixel patches from natural im...
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Frontiers Media S.A.
2021-05-01
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Online Access: | https://www.frontiersin.org/articles/10.3389/frai.2021.668302/full |
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doaj-1ddf9c333f0d4859b62c93dea723cc242021-05-14T07:35:33ZengFrontiers Media S.A.Frontiers in Artificial Intelligence2624-82122021-05-01410.3389/frai.2021.668302668302Topology Applied to Machine Learning: From Global to LocalHenry AdamsMichael MoyThrough the use of examples, we explain one way in which applied topology has evolved since the birth of persistent homology in the early 2000s. The first applications of topology to data emphasized the global shape of a dataset, such as the three-circle model for 3 × 3 pixel patches from natural images, or the configuration space of the cyclo-octane molecule, which is a sphere with a Klein bottle attached via two circles of singularity. In these studies of global shape, short persistent homology bars are disregarded as sampling noise. More recently, however, persistent homology has been used to address questions about the local geometry of data. For instance, how can local geometry be vectorized for use in machine learning problems? Persistent homology and its vectorization methods, including persistence landscapes and persistence images, provide popular techniques for incorporating both local geometry and global topology into machine learning. Our meta-hypothesis is that the short bars are as important as the long bars for many machine learning tasks. In defense of this claim, we survey applications of persistent homology to shape recognition, agent-based modeling, materials science, archaeology, and biology. Additionally, we survey work connecting persistent homology to geometric features of spaces, including curvature and fractal dimension, and various methods that have been used to incorporate persistent homology into machine learning.https://www.frontiersin.org/articles/10.3389/frai.2021.668302/fullpersistent homologytopological data analysismachine learninglocal geometryapplied topology |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Henry Adams Michael Moy |
spellingShingle |
Henry Adams Michael Moy Topology Applied to Machine Learning: From Global to Local Frontiers in Artificial Intelligence persistent homology topological data analysis machine learning local geometry applied topology |
author_facet |
Henry Adams Michael Moy |
author_sort |
Henry Adams |
title |
Topology Applied to Machine Learning: From Global to Local |
title_short |
Topology Applied to Machine Learning: From Global to Local |
title_full |
Topology Applied to Machine Learning: From Global to Local |
title_fullStr |
Topology Applied to Machine Learning: From Global to Local |
title_full_unstemmed |
Topology Applied to Machine Learning: From Global to Local |
title_sort |
topology applied to machine learning: from global to local |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Artificial Intelligence |
issn |
2624-8212 |
publishDate |
2021-05-01 |
description |
Through the use of examples, we explain one way in which applied topology has evolved since the birth of persistent homology in the early 2000s. The first applications of topology to data emphasized the global shape of a dataset, such as the three-circle model for 3 × 3 pixel patches from natural images, or the configuration space of the cyclo-octane molecule, which is a sphere with a Klein bottle attached via two circles of singularity. In these studies of global shape, short persistent homology bars are disregarded as sampling noise. More recently, however, persistent homology has been used to address questions about the local geometry of data. For instance, how can local geometry be vectorized for use in machine learning problems? Persistent homology and its vectorization methods, including persistence landscapes and persistence images, provide popular techniques for incorporating both local geometry and global topology into machine learning. Our meta-hypothesis is that the short bars are as important as the long bars for many machine learning tasks. In defense of this claim, we survey applications of persistent homology to shape recognition, agent-based modeling, materials science, archaeology, and biology. Additionally, we survey work connecting persistent homology to geometric features of spaces, including curvature and fractal dimension, and various methods that have been used to incorporate persistent homology into machine learning. |
topic |
persistent homology topological data analysis machine learning local geometry applied topology |
url |
https://www.frontiersin.org/articles/10.3389/frai.2021.668302/full |
work_keys_str_mv |
AT henryadams topologyappliedtomachinelearningfromglobaltolocal AT michaelmoy topologyappliedtomachinelearningfromglobaltolocal |
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