Data Analytics of Students' Profiles and Activities in a Full Online Learning Context

Tuti Purwoningsih, H. Santoso, Z. Hasibuan
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引用次数: 3

Abstract

The use of a Learning Management System (LMS) in e-learning makes it easier for teachers to track and record student learning behavior. The right analytics of e-learning students can help teachers understand the student context and what learning experiences are most suitable for e-learning students to improve learning outcomes. However, e-learning teachers often experience difficulties in analyzing student data due to a large number of students who must be analyzed and limited data. To support research in this area, we conducted a descriptive analysis of a dataset containing student data from the Open and Distance Learning (ODL) that organizes e-learning. The dataset contains data on student demographic profiles and student activity or behavior during e-learning which is recorded in the LMS system at the Open University of Indonesia. In this initial study, the dataset contained information from 120 classes in 18 subjects with 4,741 students from 33 study programs with many logs on LMS 1,641,234 entries. This article presents an analytical description of the characteristics of students participating in e-learning using Exploratory data analytics (EDA) and machine learning approaches as the basis for predictive and prescriptive analytics of student learning outcomes based on a combination of demographic profile data and learning behavior. This study helps education practitioners in the first step of analytics data as the basis for developing e-Learning instructional designs that support the success of fully online students.
在一个完整的在线学习环境中,学生档案和活动的数据分析
在电子学习中使用学习管理系统(LMS)使教师更容易跟踪和记录学生的学习行为。对e-learning学生进行正确的分析,可以帮助教师了解学生的情境,了解哪些学习体验最适合e-learning学生,从而提高学习效果。然而,由于需要分析的学生数量众多,数据有限,使得e-learning教师在分析学生数据时往往遇到困难。为了支持这一领域的研究,我们对一个数据集进行了描述性分析,该数据集包含来自组织电子学习的开放和远程学习(ODL)的学生数据。该数据集包含印度尼西亚开放大学LMS系统中记录的学生人口统计概况和电子学习期间的学生活动或行为数据。在最初的研究中,数据集包含来自18个学科的120个班级的信息,来自33个学习项目的4,741名学生,LMS上有1,641,234个条目。本文使用探索性数据分析(EDA)和机器学习方法对参与电子学习的学生的特征进行分析描述,作为基于人口统计资料数据和学习行为相结合的学生学习结果预测和规范分析的基础。这项研究帮助教育从业者在分析数据的第一步,作为开发电子学习教学设计的基础,支持完全在线学生的成功。
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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