Systematic Literature Review: Penggunaan Algoritma K-Means Untuk Clustering di Indonesia dalam Bidang Pendidikan

Intech Pub Date : 2021-06-26 DOI:10.54895/intech.v2i1.866
Cahya Kamila
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引用次数: 4

Abstract

K-Means is a non-hierarchical data clustering method that can group data into several clusters based on data similarity, so that data with the same characteristics are grouped in one cluster and data with different characteristics are grouped in another cluster. The K-Means method can be used to process various data, including for clustering in the field of education. The use of the K-Means algorithm has been widely carried out but not many activities have been handled and are only often used for selection or acceptance activities and the use of attributes that must be reproduced to get optimal results. In this study, we will review various papers that perform clustering using the K-Means method for research in the field of education. Based on our research, papers related to the use of the K-Means algorithm for clustering in education have proved feasible and useful for future research. So it can be concluded that the K-Means method has been tested to be used for clustering in the field of education and the K-Means method can be useful in many aspects of education, both having an impact on educators, students and other educational aspects.
K-Means是一种非分层的数据聚类方法,它可以根据数据相似度将数据分成几个簇,将特征相同的数据分组在一个簇中,将特征不同的数据分组在另一个簇中。K-Means方法可用于处理各种数据,包括用于教育领域的聚类。K-Means算法的使用已经得到了广泛的应用,但处理的活动并不多,通常只用于选择或接受活动,以及必须复制才能获得最佳结果的属性的使用。在本研究中,我们将回顾使用K-Means方法在教育领域进行聚类研究的各种论文。基于我们的研究,有关在教育中使用K-Means算法聚类的论文已经被证明是可行的,并且对未来的研究有用。因此可以得出结论,K-Means方法已经被测试用于教育领域的聚类,K-Means方法在教育的许多方面都很有用,对教育者、学生和其他教育方面都有影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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