New aspects of the elastic net algorithm for cluster analysis

The elastic net algorithm formulated by Durbin–Willshaw as a heuristic method and initially applied to solve the traveling salesman problem can be used as a tool for data clustering in n-dimensional space. With the help of statistical mechanics, it is formulated as a deterministic annealing method,...

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Main Authors: Lévano, Marcos, Nowak, Hans
Format: Online
Language:English
Published: Springer-Verlag 2010
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3155750/
id pubmed-3155750
recordtype oai_dc
spelling pubmed-31557502011-09-21 New aspects of the elastic net algorithm for cluster analysis Lévano, Marcos Nowak, Hans Eann 2009 The elastic net algorithm formulated by Durbin–Willshaw as a heuristic method and initially applied to solve the traveling salesman problem can be used as a tool for data clustering in n-dimensional space. With the help of statistical mechanics, it is formulated as a deterministic annealing method, where a chain with a fixed number of nodes interacts at different temperatures with the data cloud. From a given temperature on the nodes are found to be the optimal centroids of fuzzy clusters, if the number of nodes is much smaller than the number of data points. We show in this contribution that for this temperature, the centroids of hard clusters, defined by the nearest neighbor clusters of every node, are in the same position as the optimal centroids of the fuzzy clusters. The same is true for the standard deviations. This result can be used as a stopping criterion for the annealing process. The stopping temperature and the number and sizes of the hard clusters depend on the number of nodes in the chain. Test was made with homogeneous and nonhomogeneous artificial clusters in two dimensions. A medical application is given to localize tumors and their size in images of a combined measurement of X-ray computed tomography and positron emission tomography. Springer-Verlag 2010-12-02 2011-09 /pmc/articles/PMC3155750/ /pubmed/21949468 http://dx.doi.org/10.1007/s00521-010-0498-x Text en © The Author(s) 2010
repository_type Open Access Journal
institution_category Foreign Institution
institution US National Center for Biotechnology Information
building NCBI PubMed
collection Online Access
language English
format Online
author Lévano, Marcos
Nowak, Hans
spellingShingle Lévano, Marcos
Nowak, Hans
New aspects of the elastic net algorithm for cluster analysis
author_facet Lévano, Marcos
Nowak, Hans
author_sort Lévano, Marcos
title New aspects of the elastic net algorithm for cluster analysis
title_short New aspects of the elastic net algorithm for cluster analysis
title_full New aspects of the elastic net algorithm for cluster analysis
title_fullStr New aspects of the elastic net algorithm for cluster analysis
title_full_unstemmed New aspects of the elastic net algorithm for cluster analysis
title_sort new aspects of the elastic net algorithm for cluster analysis
description The elastic net algorithm formulated by Durbin–Willshaw as a heuristic method and initially applied to solve the traveling salesman problem can be used as a tool for data clustering in n-dimensional space. With the help of statistical mechanics, it is formulated as a deterministic annealing method, where a chain with a fixed number of nodes interacts at different temperatures with the data cloud. From a given temperature on the nodes are found to be the optimal centroids of fuzzy clusters, if the number of nodes is much smaller than the number of data points. We show in this contribution that for this temperature, the centroids of hard clusters, defined by the nearest neighbor clusters of every node, are in the same position as the optimal centroids of the fuzzy clusters. The same is true for the standard deviations. This result can be used as a stopping criterion for the annealing process. The stopping temperature and the number and sizes of the hard clusters depend on the number of nodes in the chain. Test was made with homogeneous and nonhomogeneous artificial clusters in two dimensions. A medical application is given to localize tumors and their size in images of a combined measurement of X-ray computed tomography and positron emission tomography.
publisher Springer-Verlag
publishDate 2010
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3155750/
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