The Level of Student Satisfaction with the Online Learning Process During a Pandemic Using the K-means Algorithm

Talitha Syahla Janiar Arifin, Nakia Natassa, Dinda Khoirunnisa, Retno Hendrowati
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引用次数: 3

Abstract

The number of cases of Covid-19 in this pandemic era is increasing and getting out of control every day. This triggers the Indonesian government to set policies on schools with online learning methods. Of course, online learning cannot ensure that it runs smoothly in all circles because several factors hinder the learning process. The difficulty of the internet network, limited quotas, unfamiliarity with the use of learning media, and an unsupportive environment for conducting online learning are the obstacles to ineffective online learning. The purpose of this study was to determine the level of satisfaction with online learning during the pandemic. This study uses quantitative research methods with a descriptive approach. Quantitative research methods will be processed into data mining using the K-Means Clustering Algorithm. The clustering process is carried out to get the results of clustering the level of student satisfaction. The dataset was obtained from the results of the questionnaire by submitting statements of satisfaction and dissatisfaction. The cluster type is based on high, medium, and low class. The test results obtained a value with the final iteration, namely the level of satisfied statements is categorized as high with a value of 11.79 compared to the dissatisfied statement, which is categorized as moderate with a value of 7.46. In contrast, for the low category level, there is no value of 0.00 cluster results state that the category is satisfied with online learning with a value of 9.33.
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使用K-means算法的大流行期间在线学习过程的学生满意度水平
在这个大流行时代,Covid-19病例数每天都在增加,并且失去控制。这促使印尼政府对采用在线学习方法的学校制定政策。当然,在线学习不能保证它在所有的圈子里顺利进行,因为有几个因素阻碍了学习过程。互联网网络的困难、有限的配额、不熟悉学习媒体的使用以及不支持在线学习的环境是在线学习无效的障碍。本研究的目的是确定大流行期间在线学习的满意度。本研究采用定量研究方法和描述性研究方法。定量研究方法将使用k均值聚类算法处理成数据挖掘。进行聚类处理,得到学生满意度水平的聚类结果。数据集是通过提交满意和不满意的陈述从问卷的结果中获得的。集群类型分为高、中、低三类。测试结果在最后的迭代中得到一个值,即满意的语句级别为高,值为11.79,不满意的语句级别为中等,值为7.46。相比之下,对于低类别水平,没有值为0.00的聚类结果表示该类别对在线学习满意,值为9.33。
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31
审稿时长
10 weeks
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