Exploring topology preservation of SOMs with a graph based visualization

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Date

2008

Authors

Kadim TaÅŸdemir

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Volume Title

Publisher

Springer Verlag

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Green Open Access

Yes

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Publicly Funded

No
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Average
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Average
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Average

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Abstract

The Self-Organizing Map (SOM) which projects a (high-dimensional) data manifold onto a lower-dimensional (usually 2-d) rigid lattice is a commonly used manifold learning algorithm. However a postprocessing - that is often done by interactive visualization schemes - is necessary to reveal the knowledge of the SOM. Thanks to the SOM property of producing (ideally) a topology preserving mapping existing visualization schemes are often designed to show the similarities local to the lattice without considering the data topology. This can produce inadequate tools to investigate the detailed data structure and to what extent the topology is preserved during the SOM learning. A recent graph based SOM visualization CONNvis [1] which exploits the underutilized knowledge of data topology can be a suitable tool for such investigation. This paper discusses that CONNvis can represent the data topology on the SOM lattice despite the rigid grid structure and hence can show the topology preservation of the SOM and the extent of topology violations. © 2008 Springer Berlin Heidelberg. © 2021 Elsevier B.V. All rights reserved.

Description

Keywords

Conformal Mapping, Data Visualization, Learning Algorithms, Self Organizing Maps, Visualization, Data Manifolds, Graph-based Visualization, Grid Structures, High-dimensional, Interactive Visualizations, Manifold Learning Algorithm, Topology Preservation, Topology-preserving Mappings, Topology, Conformal mapping, Data visualization, Learning algorithms, Self organizing maps, Visualization, Data manifolds, Graph-based visualization, Grid structures, High-dimensional, Interactive visualizations, Manifold learning algorithm, Topology preservation, Topology-preserving mappings, Topology

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OpenCitations Citation Count
3

Source

9th International Conference on Intelligent Data Engineering and Automated Learning IDEAL 2008

Volume

5326

Issue

Start Page

180

End Page

187
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5

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Web of Science™ Citations

5

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