Evaluasi Pembayaran Keuangan Siswa berdasarkan Penghasilan Wali Siswa menggunakan Metode Clustering K-Means

Imam Ahmad Ashari, Iis Setiawan Mangku Negara, R. B. B. Sumantri
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引用次数: 1

Abstract

One of the problems that often occurs in school administration is the late payment of tuition fees. Therefore, it is necessary to evaluate the education payment process so that in the future the payment process can run in an orderly and disciplined manner. This study aims to create a cluster model for grouping student administration payments. This type of research is quantitative using the K-Means Clustering method to classify payment data based on 2 variables, namely the time of payment and the income of students' guardians carried out in private elementary schools in Semarang. The data used in this study is payment data for the 2019/2020 academic year, which totals 1,933 records, covering transactions from 419 students. Determining the number of clusters is calculated using the elbow method, the best clusters obtained from the data used are 3 clusters, namely clusters 0, 1 and 2. Our findings show that cluster 2 has the largest percentage of early monthly administration payments, namely 52.5%, the percentage is on time the highest was in cluster 1, namely 74.8%, and the highest percentage of late payments was in cluster 0, namely 28.6%. The results of the analysis show that the main factor for late payments is not the guardian's income but other external factors, as evidenced by the highest percentage of late payments in cluster 0, where the average income of student guardians is = 10,000,000.
基于监护人收入的学生财务支付评估使用了k -均值方法
学校管理中经常发生的问题之一是拖欠学费。因此,有必要对教育支付过程进行评估,以便今后支付过程能够有序、有纪律地进行。本研究旨在建立一个分组学生管理费用的集群模型。这类研究采用K-Means聚类方法对在三宝垄私立小学开展的支付时间和学生监护人收入两个变量的支付数据进行定量分类。本研究中使用的数据是2019/2020学年的支付数据,共有1933条记录,涵盖了419名学生的交易。聚类数的确定采用肘部法计算,所使用的数据得到的最佳聚类为3个,即聚类0、1和2。研究结果表明,集群2的月度提前支付比例最高,为52.5%;集群1的月度按时支付比例最高,为74.8%;集群0的月度逾期支付比例最高,为28.6%。分析结果表明,延迟付款的主要因素不是监护人的收入,而是其他外部因素,从集群0中学生监护人的延迟付款比例最高可以看出,学生监护人的平均收入为= 1000万。
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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