Application of K-Means Algorithm in Clustering Model for Learning Management System Usage Evaluation

M. Sholeh, Suraya, D. Andayati
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引用次数: 1

Abstract

The use of a learning management system (LMS) is one of the media that can be used to disseminate lecturer materials to students. Materials that can be uploaded on the LMS can be in the form of lecture materials in the form of files, videos, or questions.  The effectiveness of LMS can be evaluated by looking at activities in using LMS. The effectiveness of using LMS can be seen from the log.  Log results from LMS can be evaluated in various ways and one way is to use data mining clustering models. The clustering model can be used to create student groupings and the clustering results can be labeled in the form of categories, such as very good, good, and bad categories. This labeling depends on the clustering results that will be processed in the modeling. The research method uses CRISP DM which consists of business understanding, data understanding, data preparation, modeling, evaluation, and deployment. The beginning of the research process is carried out by taking log data in the Moodle LMS. The clustering model in this research will use the K-Means algorithm and the evaluation of clustering results will be evaluated for performance using the Davies-Bouldin method. Implementation of data mining processing using Rapid Miner application. The datasheet used is a datasheet taken from the LMS log of the Computer Programming course in the Mechanical Engineering study program - AKPRIND Institute of Science & Technology Yogyakarta odd semester of the 2021/2022 and 2022/2023 academic years.  The results of the study resulted in the best clustering based on the Davies Bouldin method of 2. The clustering results, cluster 0 consists of 28 data named the category of frequent access to LMS and cluster 1 consists of 54 with the category of not frequent access to LMS.
k -均值算法在学习管理系统使用评价聚类模型中的应用
使用学习管理系统(LMS)是可以用来向学生传播讲师资料的媒介之一。可以上传到LMS上的材料可以是讲座材料、文件、视频或问题的形式。LMS的有效性可以通过观察使用LMS的活动来评估。从日志中可以看出使用LMS的有效性。LMS的日志结果可以通过多种方式进行评估,其中一种方法是使用数据挖掘聚类模型。聚类模型可以用于创建学生分组,聚类结果可以以类别的形式进行标记,例如非常好、好和差的类别。这种标记取决于将在建模中处理的聚类结果。研究方法采用CRISP DM,包括业务理解、数据理解、数据准备、建模、评估和部署。研究过程的开始是通过在Moodle LMS中获取日志数据进行的。本研究中的聚类模型将使用K-Means算法,聚类结果的评价将使用Davies-Bouldin方法进行性能评价。使用Rapid Miner应用程序实现数据挖掘处理。使用的数据表是取自机械工程学习计划中计算机编程课程的LMS日志的数据表- AKPRIND科学技术研究所日惹2021/2022和2022/2023学年的奇数学期。研究结果表明,基于Davies Bouldin方法(2)的聚类效果最佳。聚类结果显示,聚类0包含28个数据,命名为频繁访问LMS的类别,聚类1包含54个数据,命名为不频繁访问LMS的类别。
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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