A Research on Online Teaching Behavior of Chinese Local University Teachers Based on Cluster Analysis

Bing Liu, Xiaobing Luo, Shuixia Lu
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Abstract

COVID-19 boosted online teaching and yielded a significant amount of valuable data, yet utilizing it for education is a challenge. This study employed the K-means clustering method to analyze the online teaching behavior data of 1147 courses from a local university in East China. As a result, five types of courses with distinct teaching behaviors were identified: resource preparation (4.1%), online classroom interaction (3.6%), task evaluation (9.2%), active interaction (15.5%), and inactive interaction (67.6%). By examining the relationship between these course types and academic performance, the authors discovered no significant difference in the academic performance of students in the three course groups (i.e., resource preparation, online classroom interaction, and task evaluation) and students in the inactive interaction course group. However, there was a significant disparity in academic performance between students in active interaction courses and students in inactive interaction courses. These findings can assist teachers in planning online teaching activities more effectively and improving teaching outcomes.
基于聚类分析的中国地方高校教师网络教学行为研究
COVID-19推动了在线教学,并产生了大量有价值的数据,但将其用于教育是一项挑战。本研究采用k均值聚类方法对华东地区某地方高校1147门课程的在线教学行为数据进行分析。结果发现,资源准备课程(4.1%)、在线课堂互动课程(3.6%)、任务评价课程(9.2%)、主动互动课程(15.5%)和非主动互动课程(67.6%)五种类型的课程具有明显的教学行为。通过考察这些课程类型与学业成绩之间的关系,作者发现三个课程组(即资源准备、在线课堂互动和任务评估)的学生与非互动课程组的学生在学业成绩上没有显著差异。然而,积极互动课程的学生与不积极互动课程的学生在学业成绩上存在显著差异。这些发现可以帮助教师更有效地规划在线教学活动,提高教学效果。
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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