K-Means Cluster Algorithm for Grouping Inequality in Regional Development

Authors

  • Tb Ai Munandar Universitas Bhayangkara Jakarta Raya
  • Dwipa Handayani Universitas Bhayangkara Jakarta Raya

DOI:

https://doi.org/10.58776/ijitcsa.v1i1.20

Keywords:

development inequality, clustering, k-means algorithm, hidden information, development priorities

Abstract

Unsupervised learning is a subset of machine learning. Many unsupervised learning algorithms are used to solve various problems, especially the extraction of hidden data patterns. One of the problems that concerns unsupervised tasks is clustering. Clustering techniques are widely used for data grouping needs, one of which is development inequality clustering. The classification of development inequality is an important consideration in a country's regional development strategy. However, development groupings often do not pay attention to the hidden information aspects of the data, so they do not get the appropriate results. This research was conducted to provide an additional alternative in the realm of development inequality clustering, namely by classifying development data using the k-means algorithm. The data used is GRDP data for 41 regions in the western part of Java Island for the 2010–2021 range. The results show that the forty-one regions are grouped into four clusters. The first cluster (C1) contains 35 regions, the second cluster (C2) contains three regions, the third cluster (C3) contains four regions, and the fourth cluster (C4) contains three regions. Based on the cluster results, it can be seen that all members of cluster C4 are areas with the best level of development, while cluster C1 is the area with the lowest level of development. As for clusters C2 and C3, these are areas with development levels between clusters C1 and C4. The grouping results can be used by policymakers or local governments to determine the direction of future development priorities based on the cluster with the lowest level of development.

 

Author Biography

Dwipa Handayani, Universitas Bhayangkara Jakarta Raya

 

 

References

G.O. Naibaho, J.R. Mandei, and L.R.J. Pangemanan, Analisis Ketimpangan Pembangunan dan Pertumbuhan Ekonomi Antar Wilayah Kabupaten/Kota Di Provinsi Sulawesi Utara, Jurnal Agri-Sosio Ekonomi Unsrat, Volume 16 Nomor 3, hal. 369 – 378, 2020, in Bahasa

M.J. Darmawan, dan Tukiman, Analisis Dimensi Ketimpangan Pembangunan Antar Wilayah Di Provinsi Jawa Timur Tahun 2014-2018, Jurnal Dinamika Governance: Jurnal Ilmu Administrasi Negara, Volume 10 Nomor 1, 2020, in Bahasa

R.H. Harahap, , H.B. Isyandi dan E.K. Pailis, Analis Pertumbuhan Ekonomi dan Ketimpangan Antar Kabupaten Hasil Pemekaran Wilayah Indragiri (Kabupaten Indragiri Hulu, Kabupaten Indragiri Hilir, Kabupaten Kuantan Singingi), Pekbis Jurnal, Vol.12, No.3, hal. 183 – 193, 2020, in Bahasa

Kadriwansyah, B. Semmaila, and J. Zakaria, Analisis Ketimpangan Wilayah di Provinsi Sulawesi Selatan Tahun 2014-2018, PARADOKS: JURNAL ILMU EKONOMI Volume 4.Nomor 1, hal. 25 – 36, 2021, in Bahasa

K. Gorbatiuk, O. Mantalyuk, O. Proskurovych, and O.V. Alkov, Analysis of Regional Development Disparities in Ukraine with Fuzzy Clustering Technique, HS Web of Conferences 65, 04008 (2019), https://doi.org/10.1051/shsconf/20196504008, 2019,

E. Raheem, J.R. Khan, and M.S. Hossain, Regional disparities in maternal and child health indicators: Cluster analysis of districts in Bangladesh, PLoS ONE 14(2): e0210697. https://doi.org/10.1371/journal.pone.0210697, 2019

M. Dube, S.K. Yadav, and V. Singh, Uncovering Regional Disparities in Infrastructural Development of Uttar Pradesh: An Exploratory Factor Analysis, Journal of Reliability and Statistical Studies, Vol. 15, Issue 1 (2022), hal. 21–36, doi: 10.13052/jrss0974-8024.1512, 2022

J.O. Soares, M.M.L. Marques, and C.M.F. Monteiro, A Multivariate Methodology To Uncover Regional Disparities: A Contribution To Improve European Union And Governmental Decisions, European Journal of Operational Research 145 (2003) 121–135, 2003

L.R. Bakaric, Uncovering Regional Disparities – the Use of Factor and Cluster Analysis, Economic Trends and Economic Policy. No. 105 , pp. 52-77, 2005,

M. Lukovics, Measuring Regional Disparities on Competitiveness Basis. JATEPress, Szeged, pp. 39-53, 2009

F. Kronthaler, A Study of the Competitiveness of Regions based on a Cluster Analysis: The Example of East Germany, Research Report of Institute for Economic Research Halle (IWH), 2003

H.V. Vydrová, and Z. Novotná, Evaluation Of Disparities In Living Standards Of Regions Of The Czech Republic, Acta Universitatis Agriculturae Et Silviculturae Mendelianae Brunensis, Volume LX 42 Number 4, 2012

O. Nosova, The Innovation Development in Ukraine: Problems and Development Perspectives, International Journal Of Innovation And Business Strategy, Vol. 02/August, , 2013

S. Ramzan, M.I. Khan, and F.M. Zahid F.M., Regional Development Assessment Based on Socioeconomic Factors in Pakistan Using Cluster Analysis, World Applied Sciences Journal 21 (2): 284-292, 2013

A. Widodo, and Purhadi, Perbandingan Metode Fuzzy C-Means Clustering dan Fuzzy C-Shell Clustering (Studi Kasus: Kabupaten/Kota di Pulau Jawa Berdasarkan Variabel Pembentuk Indeks Pembangunan Manusia). Tesis Magister Statistika, FMIPA-ITS, 2012, in Bahasa

Downloads

Published

14-01-2023

How to Cite

Munandar, T. A., & Handayani, D. (2023). K-Means Cluster Algorithm for Grouping Inequality in Regional Development. International Journal of Information Technology and Computer Science Applications, 1(1), 66–70. https://doi.org/10.58776/ijitcsa.v1i1.20

Issue

Section

New Submission