基于K-Means算法的高等教育领域社会教育分类

Nurahman Nurahman, Dian Aulia
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引用次数: 2

摘要

教育是每个人的基本需求,他们对国家的未来起着重要的作用,因为一个国家的先进可以从一个国家良好的学习体系中看出。衡量教育成功与否的标准是各地区各级教育毕业生的平均人数。但并非所有地区的教育质量都很好。其中之一是印度尼西亚的地区,如加里曼丹中部的卡普亚斯区。众所周知,在过去的几年里,这个地区的教育缺乏改善,导致几个地区的人不上学或辍学。许多问题是由经济因素、懒惰、对教育的重要性缺乏动力等造成的。此前的新冠肺炎大流行也是由于家庭经济衰退而导致辍学儿童人数增加的原因。卡普亚斯区的地区数目需要将现有村庄的数目组合起来。该组织的目的是使政府更容易特别关注那些被认为缺乏教育的地区,其他目的是找出哪些村庄的教育水平较低。在分组方面,系统采用K-Means聚类方法进行数据挖掘,并使用rapidminer软件进行处理。对229条记录的受教育程度数据进行分组,分为8个组,其中受教育程度最低的村列于(C1),共33个村。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Klasterisasi Pendidikan Masyarakat Untuk Mengetahui Daerah Dengan Pendidikan Terendah Menggunakan Algoritma K-Means
Education is a basic need for every human being who plays an important role in the future of the nation, because a nation that is said to be advanced can be seen from its good learning system. Successful education is measured by the average number of graduates at various levels of education in various regions. But not all regions are good in the quality of education. One of them is the area in Indonesia, such as the Kapuas district, Central Kalimantan. It is known that in previous years this area lacked improvement in education, causing several areas where people did not go to school or dropped out of school. Many of the problems are caused by economic factors, laziness, lack of motivation about the importance of education, and so on. The previous Covid-19 pandemic was also the reason for the increase in the number of children dropping out of school due to a declining family economy. The number of areas in Kapuas district requires grouping the number of existing villages. The grouping aims to make it easier for the government to pay special attention to areas where education is considered lacking and other purposes are to find out which villages have low levels of education. In grouping, the system applied is data mining using the K-Means Algorithm Clustering method which is processed using rapidminer software. The groupings formed on the education level data of 229 records are 8 clusters where the lowest education villages are stated in (C1) with a total of 33 villages.
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