An hybrid architecture for clusters analysis: rough setstheory and self-organizing map artificial neural network

The database of real world contains a huge volume of data and among them there are hidden piles of interesting relations that are actually very hard to find out. The knowledge discovery in databases (KDD) appears as a possible solution to find out such relations aiming at converting information into...

Full description

Bibliographic Details
Main Author: Renato José Sassi
Format: Article
Language:English
Published: Sociedade Brasileira de Pesquisa Operacional 2012-04-01
Series:Pesquisa Operacional
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0101-74382012000100009
id doaj-fd677c722aa64b00b9efa0c9a4b14ed9
record_format Article
spelling doaj-fd677c722aa64b00b9efa0c9a4b14ed92020-11-24T22:15:19ZengSociedade Brasileira de Pesquisa OperacionalPesquisa Operacional0101-74381678-51422012-04-01321139164An hybrid architecture for clusters analysis: rough setstheory and self-organizing map artificial neural networkRenato José SassiThe database of real world contains a huge volume of data and among them there are hidden piles of interesting relations that are actually very hard to find out. The knowledge discovery in databases (KDD) appears as a possible solution to find out such relations aiming at converting information into knowledge. However, not all data presented in the bases are useful to a KDD. Usually, data are processed before being presented to a KDD aiming at reducing the amount of data and also at selecting more relevant data to be used by the system. This work consists in the use of Rough Sets Theory, in order to pre-processing data to be presented to Self-Organizing Map neural network (Hybrid Architecture) for clusters analysis. Experiments' results evidence the better performance using the Hybrid Architecture than Self-Organizing Map. The paper also presents all phases of the KDD process.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0101-74382012000100009clusters analysisrough sets theoryself-organizing map
collection DOAJ
language English
format Article
sources DOAJ
author Renato José Sassi
spellingShingle Renato José Sassi
An hybrid architecture for clusters analysis: rough setstheory and self-organizing map artificial neural network
Pesquisa Operacional
clusters analysis
rough sets theory
self-organizing map
author_facet Renato José Sassi
author_sort Renato José Sassi
title An hybrid architecture for clusters analysis: rough setstheory and self-organizing map artificial neural network
title_short An hybrid architecture for clusters analysis: rough setstheory and self-organizing map artificial neural network
title_full An hybrid architecture for clusters analysis: rough setstheory and self-organizing map artificial neural network
title_fullStr An hybrid architecture for clusters analysis: rough setstheory and self-organizing map artificial neural network
title_full_unstemmed An hybrid architecture for clusters analysis: rough setstheory and self-organizing map artificial neural network
title_sort hybrid architecture for clusters analysis: rough setstheory and self-organizing map artificial neural network
publisher Sociedade Brasileira de Pesquisa Operacional
series Pesquisa Operacional
issn 0101-7438
1678-5142
publishDate 2012-04-01
description The database of real world contains a huge volume of data and among them there are hidden piles of interesting relations that are actually very hard to find out. The knowledge discovery in databases (KDD) appears as a possible solution to find out such relations aiming at converting information into knowledge. However, not all data presented in the bases are useful to a KDD. Usually, data are processed before being presented to a KDD aiming at reducing the amount of data and also at selecting more relevant data to be used by the system. This work consists in the use of Rough Sets Theory, in order to pre-processing data to be presented to Self-Organizing Map neural network (Hybrid Architecture) for clusters analysis. Experiments' results evidence the better performance using the Hybrid Architecture than Self-Organizing Map. The paper also presents all phases of the KDD process.
topic clusters analysis
rough sets theory
self-organizing map
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0101-74382012000100009
work_keys_str_mv AT renatojosesassi anhybridarchitectureforclustersanalysisroughsetstheoryandselforganizingmapartificialneuralnetwork
AT renatojosesassi hybridarchitectureforclustersanalysisroughsetstheoryandselforganizingmapartificialneuralnetwork
_version_ 1725794968729026560