KnE Social Sciences

ISSN: 2518-668X

The latest conference proceedings on humanities, arts and social sciences.

Cluster Analysis for Grouping Districts in Sidoarjo Regency Based on Education Indicators

Published date: Jun 20 2022

Journal Title: KnE Social Sciences

Issue title: The 3rd International Conference on Intellectuals’ Global Responsibility (ICIGR) 2021

Pages: 311-317

DOI: 10.18502/kss.v7i10.11233

Authors:

Cindy Cahyaning Astuticindy.cahyaning@umsida.ac.idUniversitas Muhammadiyah Sidoarjo, Jalan Mojopahit 666B Sidoarjo, Indonesia

Vanda RezaniaUniversitas Muhammadiyah Sidoarjo, Jalan Mojopahit 666B Sidoarjo, Indonesia

Abstract:

The purpose of education is to develop self-ability, knowledge, skills, and habits that are passed down from one generation to the next and from educators to students through a teaching process to shape a personality physically and spiritually. It also serves as a benchmark of success for a region. Education indicators can be used as a measuring tool to analyze the quality of education in an area. The current study aimed to determine the level of education in the districts of the Sidoarjo Regency, Indonesia. In this study, the sub-districts of the Sidoarjo Regency were grouped based on the education indicators using cluster analysis. Cluster analysis is a multivariate analysis that groups objects into different categories. Based on the results, two clusters were formed. Of the 18 districts in Sidoarjo Regency, the first cluster comprised of 14 districts (Prambon, Tulangan, Krembung, Tarik, Wonoayu, Gedangan, Porong, Buduran, Candi, Sukodono, Tanggulangin, Sedati, Jabon, Balongbendo), while the second included 4 (Sidoarjo, Waru, Taman, Krian). The results showed higher education indicators in the second cluster. Therefore, the researchers recommend using the results of this study as a reference for developing an equal distribution of education in the Sidoarjo Regency.

Keywords: education indicators, cluster analysis, Sidoarjo districts

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