在ETHOL学习管理系统中开发一个用户行为分析工具

Dwi Susanto, Nuril Ratu Qurani, M. A. Rasyid
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引用次数: 4

摘要

学生在网上学习时有不同的学习方式。与此同时,讲师对所有参加在线讲座的学生使用相同的方法。这些不同的学习方式会影响学生的理解水平和获得的结果。通过了解学生的学习风格,教师被期望能够使用正确的方式来传递材料。在本研究中,我们在自主开发的虚拟学习环境(VLE)上开发了一个名为企业混合在线学习(ETHOL)的学生行为分析功能。收集的学生数据包括在线活动数据、个人数据和学生学习风格调查数据。用户行为分析分为三类:平均分、收集作业的时间和学生的学习风格。使用的聚类方法是分层KMeans。得到的结果是,有按时收集作业习惯的学生比其他学生得分更高。此外,讲师能够看到每个学生的行为和学习风格的分析结果。这些结果可以作为提供讲座材料的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Develop a User Behavior Analysis Tool in ETHOL Learning Management System
Students have different learning styles when studying online. Meanwhile, lecturers use the same method for all students who take their online lectures. These different learning styles can affect the level of understanding and the results obtained by students. By knowing student learning styles, lecturers are expected to be able to use the right way in delivering material. In this research, we developed a student behavior analysis feature on self-developed Virtual Learning Environment (VLE) called Enterprise Hybrid Online Learning (ETHOL). Students’ data collected includes data on online activities, personal data, and survey data on student learning styles. User behavior analysis was carried out by dividing into three clusters: average scores, time to collect assignments, and student learning styles. The clustering method used is the Hierarchical KMeans. The results obtained are students who have the habit of collecting assignments on time have higher scores than others. In addition, the lecturer is able to see the results of the analysis of the behavior and learning styles of each student. These results can be used as information in delivering lecture material.
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