Behavioral tracking analysis on learning management system with apriori association rules algorithm

Dino Aviano, B. L. Putro, E. Nugroho, Herbert Siregar
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引用次数: 4

Abstract

Online learning has been applied in various educational institutions, and have some positive effects on the conventional learning, especially if both learning is collaborated. Online learning helps teaching difficulties in conventional learning where learning process of individual student is hard to know in detailed by the teacher because of too many students in a single class. With online learning assisted by Learning Management System (LMS) teachers can know each student individual learning process by analyzing student log activity on the LMS which is often called by behavioral tracking. LMS used as research material is Moodle that has been applied to the Computer Science Education Department, UPI. The purpose of this research is to find learning status of each student by analyzing student's behavior while using the Moodle LMS. One of behavioral tracking model which can be used to determine the student's learning status is Monitoring Online Course with Log Data (MOCLog) model. By combining the concept map, and solution map, this model can analyze log data on Moodle LMS, and generate learning status of each individual student. Then the teacher can determine what behavioral traits are dominant, and most influential on learning with association rule data mining technique with apriori algorithms. This study provides that dominant learning status on the Computer Network course with 84.75 % students is Normal Learning Status while Frequent Access the Course to be an activity that greatly affect the student's learning status in the Moodle LMS course with 48 students.
基于先验关联规则算法的学习管理系统行为跟踪分析
在线学习已经在各种教育机构中得到了应用,并对传统学习产生了一些积极的影响,特别是在两种学习都是协作的情况下。在线学习有助于教授传统学习的难点,因为一个班级的学生太多,老师很难详细了解单个学生的学习过程。通过学习管理系统(LMS)辅助的在线学习,教师可以通过分析LMS上学生的日志活动来了解每个学生的个人学习过程,这通常被称为行为跟踪。作为研究材料的LMS是已应用于UPI计算机科学教育系的Moodle。本研究的目的是通过分析学生在使用Moodle LMS时的行为来发现每个学生的学习状态。MOCLog (Monitoring Online Course with Log Data)模型是一种可以用来确定学生学习状态的行为跟踪模型。通过概念图和解决方案图的结合,该模型可以分析Moodle LMS上的日志数据,生成每个学生的学习状态。然后利用关联规则数据挖掘技术和先验算法确定哪些行为特征是主导的,对学习影响最大的。本研究发现,在有48名学生的Moodle LMS课程中,84.75%的学生在计算机网络课程中占主导地位的学习状态是“正常学习状态”,而“频繁访问课程”是对学生学习状态影响较大的活动。
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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