FEATURE SPACE UNIDIMENSIONAL PROJECTIONS FOR SCATTERPLOTS

Multidimensional projection techniques are important tools employed in data set exploration and data mining tasks. The data set instances are described in a multidimensional space and projection techniques can be employed to reduce the data set dimensionality and to aid the visualization of instance...

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Main Authors: Danilo Medeiros Eler, Alex Castilho de Almeida, Jaqueline Batista Martins Teixeira, Ives Rene Venturini Pola, Fernanda Paula Barbosa Pola, Maurício Araujo Dias, Celso Olivete Junior
Format: Article
Language:Portuguese
Published: Universidade do Oeste Paulista 2017-04-01
Series:Colloquium Exactarum
Subjects:
Online Access:http://journal.unoeste.br/index.php/ce/article/view/1624
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spelling doaj-c706bf78288e4fe8a73aa2ef6597b4c62021-04-05T14:43:42ZporUniversidade do Oeste PaulistaColloquium Exactarum2178-83322017-04-01911624FEATURE SPACE UNIDIMENSIONAL PROJECTIONS FOR SCATTERPLOTSDanilo Medeiros Eler0Alex Castilho de Almeida1Jaqueline Batista Martins Teixeira2Ives Rene Venturini Pola3Fernanda Paula Barbosa Pola4Maurício Araujo Dias5Celso Olivete Junior6Universidade Estadual Paulista (Unesp)Universidade Estadual Paulista (Unesp)Universidade Estadual Paulista (Unesp)Universidade Estadual Paulista (Unesp)Universidade Estadual Paulista (Unesp)Universidade Estadual Paulista (Unesp)Universidade Estadual Paulista (Unesp)Multidimensional projection techniques are important tools employed in data set exploration and data mining tasks. The data set instances are described in a multidimensional space and projection techniques can be employed to reduce the data set dimensionality and to aid the visualization of instances relations in a computer screen. Usually, the whole multidimensional space is projected, i.e., if it is composed by distinct feature spaces they are handled as a unique feature space. This work proposes an alternative approach dealing with multidimensional spaces as distinct feature spaces, so multidimensional projections can reduce the dimensionality of each feature space into unidimensional spaces and be visualized by a scatter plot -- each unidimensional space will be associated with an axis. Our approach was compared with the traditional way that projects the whole multidimensional space (feature spaces) into the bi-dimensional space. Experiments with different data sets were performed to evaluate which approach better preserves the groups cohesion on the projected space, revealing our approach with good results.http://journal.unoeste.br/index.php/ce/article/view/1624Multidimensional ProjectionScatter PlotDimensionality Reduction
collection DOAJ
language Portuguese
format Article
sources DOAJ
author Danilo Medeiros Eler
Alex Castilho de Almeida
Jaqueline Batista Martins Teixeira
Ives Rene Venturini Pola
Fernanda Paula Barbosa Pola
Maurício Araujo Dias
Celso Olivete Junior
spellingShingle Danilo Medeiros Eler
Alex Castilho de Almeida
Jaqueline Batista Martins Teixeira
Ives Rene Venturini Pola
Fernanda Paula Barbosa Pola
Maurício Araujo Dias
Celso Olivete Junior
FEATURE SPACE UNIDIMENSIONAL PROJECTIONS FOR SCATTERPLOTS
Colloquium Exactarum
Multidimensional Projection
Scatter Plot
Dimensionality Reduction
author_facet Danilo Medeiros Eler
Alex Castilho de Almeida
Jaqueline Batista Martins Teixeira
Ives Rene Venturini Pola
Fernanda Paula Barbosa Pola
Maurício Araujo Dias
Celso Olivete Junior
author_sort Danilo Medeiros Eler
title FEATURE SPACE UNIDIMENSIONAL PROJECTIONS FOR SCATTERPLOTS
title_short FEATURE SPACE UNIDIMENSIONAL PROJECTIONS FOR SCATTERPLOTS
title_full FEATURE SPACE UNIDIMENSIONAL PROJECTIONS FOR SCATTERPLOTS
title_fullStr FEATURE SPACE UNIDIMENSIONAL PROJECTIONS FOR SCATTERPLOTS
title_full_unstemmed FEATURE SPACE UNIDIMENSIONAL PROJECTIONS FOR SCATTERPLOTS
title_sort feature space unidimensional projections for scatterplots
publisher Universidade do Oeste Paulista
series Colloquium Exactarum
issn 2178-8332
publishDate 2017-04-01
description Multidimensional projection techniques are important tools employed in data set exploration and data mining tasks. The data set instances are described in a multidimensional space and projection techniques can be employed to reduce the data set dimensionality and to aid the visualization of instances relations in a computer screen. Usually, the whole multidimensional space is projected, i.e., if it is composed by distinct feature spaces they are handled as a unique feature space. This work proposes an alternative approach dealing with multidimensional spaces as distinct feature spaces, so multidimensional projections can reduce the dimensionality of each feature space into unidimensional spaces and be visualized by a scatter plot -- each unidimensional space will be associated with an axis. Our approach was compared with the traditional way that projects the whole multidimensional space (feature spaces) into the bi-dimensional space. Experiments with different data sets were performed to evaluate which approach better preserves the groups cohesion on the projected space, revealing our approach with good results.
topic Multidimensional Projection
Scatter Plot
Dimensionality Reduction
url http://journal.unoeste.br/index.php/ce/article/view/1624
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AT ivesreneventurinipola featurespaceunidimensionalprojectionsforscatterplots
AT fernandapaulabarbosapola featurespaceunidimensionalprojectionsforscatterplots
AT mauricioaraujodias featurespaceunidimensionalprojectionsforscatterplots
AT celsoolivetejunior featurespaceunidimensionalprojectionsforscatterplots
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