Analysis of online college teaching data before and after the COVID-19 epidemic

X. Kong, N. Liu, Ming Zhang, M. Xu
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引用次数: 2

Abstract

The corona virus disease 2019 (COVID-19) pandemic has led Chinese universities to turn to online teaching Several researchers have used surveys to study the characteristics and challenges of online teaching However, these surveys inevitably included subjective bias and sample limitations This study analyzed the server logs of the Tsinghua University course selection system during online teaching with comparisons with those of the past two years Since all students must visit the course selection system every semester, the server logs track the students' learning and living habits After data cleaning, visualization and analysis, the logs show that over 98% of the sessions came from outside the campus during the epidemic The number of visits to the system decreased by 25%-47%, the number of visits originating from mobile devices decreased by 7%, and the average browsing time per visit declined by 8% Thus, this study shows evidence that online teaching leads to a notable decline in student engagement with the system This study then suggests that colleges pay more attention to the student's productivity and engagement, thereby improving the quality of teaching © 2021, Tsinghua University Press All right reserved
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新冠肺炎疫情前后高校网络教学数据分析
2019冠状病毒病(COVID-19)大流行导致中国大学转向在线教学,一些研究人员通过调查来研究在线教学的特点和挑战。本研究对清华大学选课系统在网络教学过程中的服务器日志进行了分析,并与过去两年进行了对比。由于所有学生每学期都必须访问选课系统,因此服务器日志跟踪了学生的学习和生活习惯,经过数据清洗、可视化和分析,日志显示,超过98%的课程来自外校园流行期间访问系统的数量下降了25% -47%,来自移动设备访问的数量减少了7%,而平均浏览时间每次因此下降了8%,这项研究的证据表明,网络教学会导致显著下降的学生参与系统这一研究表明,大学更加注重学生的生产力和交往,©2021,清华大学出版社版权所有
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清华大学学报(自然科学版)
清华大学学报(自然科学版) Engineering-Engineering (all)
CiteScore
2.00
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0.00%
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11697
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