Pattern Detection of Economic and Pandemic Vulnerability Index in Indonesia Using Bi-Cluster Analysis

Bi-clustering is a clustering development that aims to group data simultaneously from two directions. The Iterative Signature Algorithm (ISA) is one of the bi-clustering algorithms that work iteratively to find the most correlated bi-cluster. Detecting economic and pandemic vulnerability using bi-cl...

Full description

Bibliographic Details
Main Authors: Wiwik Andriyani Lestari Ningsih, I Made Sumertajaya, Asep Saefuddin
Format: Article
Language:Indonesian
Published: Universitas Muhammadiyah Purwokerto 2022-11-01
Series:Jurnal Informatika
Subjects:
Online Access:https://jurnalnasional.ump.ac.id/index.php/JUITA/article/view/14940
_version_ 1811206088879505408
author Wiwik Andriyani Lestari Ningsih
I Made Sumertajaya
Asep Saefuddin
author_facet Wiwik Andriyani Lestari Ningsih
I Made Sumertajaya
Asep Saefuddin
author_sort Wiwik Andriyani Lestari Ningsih
collection DOAJ
description Bi-clustering is a clustering development that aims to group data simultaneously from two directions. The Iterative Signature Algorithm (ISA) is one of the bi-clustering algorithms that work iteratively to find the most correlated bi-cluster. Detecting economic and pandemic vulnerability using bi-cluster analysis is essential to get spatial patterns and an overview of Indonesia's economic and pandemic vulnerability characteristics. Bi-clustering using ISA requires setting the row and column threshold to form seventy combinations of thresholds. The best is chosen based on the average value of mean square residue to volume ratios. In addition, the similarity of the best bi-cluster with the other is also seen based on the Liu and Wang index values. The -1.0 row and -1.0 column threshold combinations were selected and produced the best bi-cluster with the smallest average value of mean square residue to volume ratios (0.00141). Based on Liu and Wang index values, it has more than 95% similarity with the combination of -1.0 row and -0.9 column thresholds and the -0.9 row and -1.0 column thresholds. These selected threshold combinations produce three bi-clusters with five types of spatial patterns and different characteristics because of the overlap between these three bi-clusters.
first_indexed 2024-04-12T03:40:50Z
format Article
id doaj.art-576f2eb83e914a9c85fdc91b7083a4eb
institution Directory Open Access Journal
issn 2086-9398
2579-8901
language Indonesian
last_indexed 2024-04-12T03:40:50Z
publishDate 2022-11-01
publisher Universitas Muhammadiyah Purwokerto
record_format Article
series Jurnal Informatika
spelling doaj.art-576f2eb83e914a9c85fdc91b7083a4eb2022-12-22T03:49:16ZindUniversitas Muhammadiyah PurwokertoJurnal Informatika2086-93982579-89012022-11-0110227328210.30595/juita.v10i2.149404879Pattern Detection of Economic and Pandemic Vulnerability Index in Indonesia Using Bi-Cluster AnalysisWiwik Andriyani Lestari Ningsih0I Made Sumertajaya1Asep Saefuddin2<p>IPB University</p><p>BPS-Statistics Indonesia</p>IPB UniversityIPB UniversityBi-clustering is a clustering development that aims to group data simultaneously from two directions. The Iterative Signature Algorithm (ISA) is one of the bi-clustering algorithms that work iteratively to find the most correlated bi-cluster. Detecting economic and pandemic vulnerability using bi-cluster analysis is essential to get spatial patterns and an overview of Indonesia's economic and pandemic vulnerability characteristics. Bi-clustering using ISA requires setting the row and column threshold to form seventy combinations of thresholds. The best is chosen based on the average value of mean square residue to volume ratios. In addition, the similarity of the best bi-cluster with the other is also seen based on the Liu and Wang index values. The -1.0 row and -1.0 column threshold combinations were selected and produced the best bi-cluster with the smallest average value of mean square residue to volume ratios (0.00141). Based on Liu and Wang index values, it has more than 95% similarity with the combination of -1.0 row and -0.9 column thresholds and the -0.9 row and -1.0 column thresholds. These selected threshold combinations produce three bi-clusters with five types of spatial patterns and different characteristics because of the overlap between these three bi-clusters.https://jurnalnasional.ump.ac.id/index.php/JUITA/article/view/14940bi-clusteringiterative signature algorithmliu and wang indexmean square residuepattern detection
spellingShingle Wiwik Andriyani Lestari Ningsih
I Made Sumertajaya
Asep Saefuddin
Pattern Detection of Economic and Pandemic Vulnerability Index in Indonesia Using Bi-Cluster Analysis
Jurnal Informatika
bi-clustering
iterative signature algorithm
liu and wang index
mean square residue
pattern detection
title Pattern Detection of Economic and Pandemic Vulnerability Index in Indonesia Using Bi-Cluster Analysis
title_full Pattern Detection of Economic and Pandemic Vulnerability Index in Indonesia Using Bi-Cluster Analysis
title_fullStr Pattern Detection of Economic and Pandemic Vulnerability Index in Indonesia Using Bi-Cluster Analysis
title_full_unstemmed Pattern Detection of Economic and Pandemic Vulnerability Index in Indonesia Using Bi-Cluster Analysis
title_short Pattern Detection of Economic and Pandemic Vulnerability Index in Indonesia Using Bi-Cluster Analysis
title_sort pattern detection of economic and pandemic vulnerability index in indonesia using bi cluster analysis
topic bi-clustering
iterative signature algorithm
liu and wang index
mean square residue
pattern detection
url https://jurnalnasional.ump.ac.id/index.php/JUITA/article/view/14940
work_keys_str_mv AT wiwikandriyanilestariningsih patterndetectionofeconomicandpandemicvulnerabilityindexinindonesiausingbiclusteranalysis
AT imadesumertajaya patterndetectionofeconomicandpandemicvulnerabilityindexinindonesiausingbiclusteranalysis
AT asepsaefuddin patterndetectionofeconomicandpandemicvulnerabilityindexinindonesiausingbiclusteranalysis