Discriminant AnalysisFor Cluster Validation In A Case Study of District Grouping In Jember Regency Based On Poverty

Cluster validation is a procedure to evaluate the results of cluster analysis quantitively and objectively on a data. The validation process is very important to get the results of a good and appropriate grouping. In the validation process, the author uses internal validation, stability, and discrim...

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Main Authors: Fikriana Nur Istiqomah, Made Tirta, Dian Anggareni
Format: Article
Language:English
Published: Fakultas MIPA Universitas Jember 2019-07-01
Series:Jurnal Ilmu Dasar
Online Access:https://jurnal.unej.ac.id/index.php/JID/article/view/9862
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spelling doaj-3bcce9b305cf41f9a01af32dd4870f252020-11-25T02:10:31ZengFakultas MIPA Universitas JemberJurnal Ilmu Dasar1411-57352442-56132019-07-0120212913810.19184/jid.v20i2.98629862Discriminant AnalysisFor Cluster Validation In A Case Study of District Grouping In Jember Regency Based On PovertyFikriana Nur Istiqomah0Made Tirta1Dian Anggareni2Jurusan Matematika FMIPA Universitas JemberJurusan Matematika FMIPA Universitas JemberJurusan Matematika FMIPA Universitas JemberCluster validation is a procedure to evaluate the results of cluster analysis quantitively and objectively on a data. The validation process is very important to get the results of a good and appropriate grouping. In the validation process, the author uses internal validation, stability, and discriminant analysis test. This study aims to obtain validation results from the hierarchy and kmeans method. This data grouping uses “iris” simulation data, which results from the grouping method used can be applied to the original data to see which vaidation method is used for all data and produce an optimal grouping. The result of the study show that in the “iris” data, a single linkage link is an appropriate grouping method because the result of the grouping are optimal for all validations and classification of group members whose groups are significant. In District poverty data in Jember Regency with a single linkage link optimal grouping was obtained and complete linkage links were also used as a method that resulted in optimal groupig for all validation. Cluster validation discriminant analysis test is appropriate for various types of data in general annd shows that single linkage methods are better than other methods for grouping and validation methods for “iris” data and District data in Jember Regency based on variabels of poverty status. Keywords: Cluster Analysis, Diskriminant Analysis, Multivariate Analysis, Validation Cluster.https://jurnal.unej.ac.id/index.php/JID/article/view/9862
collection DOAJ
language English
format Article
sources DOAJ
author Fikriana Nur Istiqomah
Made Tirta
Dian Anggareni
spellingShingle Fikriana Nur Istiqomah
Made Tirta
Dian Anggareni
Discriminant AnalysisFor Cluster Validation In A Case Study of District Grouping In Jember Regency Based On Poverty
Jurnal Ilmu Dasar
author_facet Fikriana Nur Istiqomah
Made Tirta
Dian Anggareni
author_sort Fikriana Nur Istiqomah
title Discriminant AnalysisFor Cluster Validation In A Case Study of District Grouping In Jember Regency Based On Poverty
title_short Discriminant AnalysisFor Cluster Validation In A Case Study of District Grouping In Jember Regency Based On Poverty
title_full Discriminant AnalysisFor Cluster Validation In A Case Study of District Grouping In Jember Regency Based On Poverty
title_fullStr Discriminant AnalysisFor Cluster Validation In A Case Study of District Grouping In Jember Regency Based On Poverty
title_full_unstemmed Discriminant AnalysisFor Cluster Validation In A Case Study of District Grouping In Jember Regency Based On Poverty
title_sort discriminant analysisfor cluster validation in a case study of district grouping in jember regency based on poverty
publisher Fakultas MIPA Universitas Jember
series Jurnal Ilmu Dasar
issn 1411-5735
2442-5613
publishDate 2019-07-01
description Cluster validation is a procedure to evaluate the results of cluster analysis quantitively and objectively on a data. The validation process is very important to get the results of a good and appropriate grouping. In the validation process, the author uses internal validation, stability, and discriminant analysis test. This study aims to obtain validation results from the hierarchy and kmeans method. This data grouping uses “iris” simulation data, which results from the grouping method used can be applied to the original data to see which vaidation method is used for all data and produce an optimal grouping. The result of the study show that in the “iris” data, a single linkage link is an appropriate grouping method because the result of the grouping are optimal for all validations and classification of group members whose groups are significant. In District poverty data in Jember Regency with a single linkage link optimal grouping was obtained and complete linkage links were also used as a method that resulted in optimal groupig for all validation. Cluster validation discriminant analysis test is appropriate for various types of data in general annd shows that single linkage methods are better than other methods for grouping and validation methods for “iris” data and District data in Jember Regency based on variabels of poverty status. Keywords: Cluster Analysis, Diskriminant Analysis, Multivariate Analysis, Validation Cluster.
url https://jurnal.unej.ac.id/index.php/JID/article/view/9862
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AT madetirta discriminantanalysisforclustervalidationinacasestudyofdistrictgroupinginjemberregencybasedonpoverty
AT diananggareni discriminantanalysisforclustervalidationinacasestudyofdistrictgroupinginjemberregencybasedonpoverty
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