Artificial Neural Networks in Pattern Recognition

Clustering constitutes an ubiquitous problem when dealing with huge data sets for data compression, visualization, or preprocessing. Prototype-based neural methods such as neural gas or the self-organizing map offer an intuitive and fast variant which represents data by means of typical representati...

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Other Authors: Prevost, Lionel
Format: Book
Language:English
Published: Springer 2017
Subjects:
006
Online Access:http://repository.vnu.edu.vn/handle/VNU_123/25014
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Institution: Vietnam National University, Hanoi
Language: English
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spelling oai:112.137.131.14:VNU_123-250142020-07-16T09:14:34Z Artificial Neural Networks in Pattern Recognition Prevost, Lionel Marinai, Simone Schwenker, Friedhelm Computer Science 006 Clustering constitutes an ubiquitous problem when dealing with huge data sets for data compression, visualization, or preprocessing. Prototype-based neural methods such as neural gas or the self-organizing map offer an intuitive and fast variant which represents data by means of typical representatives, thereby running in linear time. Recently, an extension of these methods towards relational clustering has been proposed which can handle general non-vectorial data characterized by dissimilarities only, such as alignment or general kernels. This extension, relational neural gas, is directly applicable in important domains such as bioinformatics or text clustering. However, it is quadratic in m both in memory and in time (m being the number of data points). Hence, it is infeasible for huge data sets. In this contribution we introduce an approximate patch version of relational neural gas which relies on the same cost function but it dramatically reduces time and memory requirements. It offers a single pass clustering algorithm for huge data sets, running in constant space and linear time only. 2017-04-07T03:11:19Z 2017-04-07T03:11:19Z 2008 Book 978-3-540-69938-5 0302-9743 http://repository.vnu.edu.vn/handle/VNU_123/25014 en © Springer-Verlag Berlin Heidelberg 2008 327 p. application/pdf Springer
institution Vietnam National University, Hanoi
building VNU Library & Information Center
country Vietnam
collection VNU Digital Repository
language English
topic Computer Science
006
spellingShingle Computer Science
006
Artificial Neural Networks in Pattern Recognition
description Clustering constitutes an ubiquitous problem when dealing with huge data sets for data compression, visualization, or preprocessing. Prototype-based neural methods such as neural gas or the self-organizing map offer an intuitive and fast variant which represents data by means of typical representatives, thereby running in linear time. Recently, an extension of these methods towards relational clustering has been proposed which can handle general non-vectorial data characterized by dissimilarities only, such as alignment or general kernels. This extension, relational neural gas, is directly applicable in important domains such as bioinformatics or text clustering. However, it is quadratic in m both in memory and in time (m being the number of data points). Hence, it is infeasible for huge data sets. In this contribution we introduce an approximate patch version of relational neural gas which relies on the same cost function but it dramatically reduces time and memory requirements. It offers a single pass clustering algorithm for huge data sets, running in constant space and linear time only.
author2 Prevost, Lionel
author_facet Prevost, Lionel
format Book
title Artificial Neural Networks in Pattern Recognition
title_short Artificial Neural Networks in Pattern Recognition
title_full Artificial Neural Networks in Pattern Recognition
title_fullStr Artificial Neural Networks in Pattern Recognition
title_full_unstemmed Artificial Neural Networks in Pattern Recognition
title_sort artificial neural networks in pattern recognition
publisher Springer
publishDate 2017
url http://repository.vnu.edu.vn/handle/VNU_123/25014
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