混合式计算机教育课程中的学习分析

Xuefeng Jiang, Wenbo Liu, Junrui Liu
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引用次数: 3

摘要

大规模在线开放课程(mooc)得到了广泛的应用,许多机构在开发、推广和交付mooc课程方面投入了大量精力。网络教育模式,无论是在校园内还是校园外,都变得越来越流行。近年来,一个新的研究议程出现了,重点是预测和解释辍学生和低完成率的慕课。然而,由于问题规范和评估指标的不同,对在线教育进行学习分析是一项具有挑战性的任务。在线学习者有各种各样的目的,如完整的学习课程,工作学习课程中的一些知识点,复习考试的选择性学习,证书学习,观看感兴趣的视频。根据用户的上网行为数据,很难研究为什么有这么多人退出mooc。因为用户有很多原因,比如不理解、网络连接不好、其他事情要做等等。本研究旨在分析西北工业大学(NPU)混合计算机教育课程中学生在线活动的数据,以确定与学生表现相关的定量标记,并可作为可能的数据驱动措施的早期预警信号。我们将研究方法应用于中国大学MOOC (CUMOOC)慷慨提供的三门在线课程来评估其有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Analytics in a Blended Computer Education Course
Massive open online courses (MOOCs) have been widely used and many institutions have invested considerable effort in developing, promoting and delivering such courses. Online educational pattern, both inside and outside of the campus community, have been become more popular. In recent years, a new research agenda has emerged, focusing on predicting and explaining dropouts and MOOCs with low completion rates. However, due to different problem specifications and evaluation metrics, performing learning analytics (LA) of online education is a challenging task. The online learner has a variety of purposes, such as complete learning courses, some knowledge points in work-based learning courses, selective learning for reviewing exams, certificate-based learning, and watching videos for interest. According to users'online behavior data, it is difficult to study why so many people drop out of MOOCs. Because users have many reasons, such as not understanding, bad network connection, other things to do, and so on. This paper study was performed to analyze data of students' online activity in a blended computer education course in Northwestern Polytechnical University (NPU) to identify quantitative markers that correlate with students' performance and might be used as early warning signs for possible data-driven measures. We applied the research methodology to three online courses offered generously by the Chinese University MOOC (CUMOOC) to evaluate the effectiveness.
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