Jin Hao-Yue, Cutumisu Maria
Centre for Research in Applied Measurement and Evaluation, Department of Educational Psychology, Faculty of Education, University of Alberta, 6-102 Education Centre North, Edmonton, T6G 2G5 Canada.
Educ Inf Technol (Dordr). 2023 Feb 20:1-21. doi: 10.1007/s10639-023-11642-7.
Computational thinking (CT) skills of pre-service teachers have been explored extensively, but the effectiveness of CT training has yielded mixed results in previous studies. Thus, it is necessary to identify patterns in the relationships between predictors of CT and CT skills to further support CT development. This study developed an online CT training environment as well as compared and contrasted the predictive capacity of four supervised machine learning algorithms in classifying the CT skills of pre-service teachers using log data and survey data. First, the results show that Decision Tree outperformed K-Nearest Neighbors, Logistic Regression, and Naive Bayes in predicting pre-service teachers' CT skills. Second, the participants' time spent on CT training, prior CT skills, and perceptions of difficulty regarding the learning content were the top three important predictors in this model.
职前教师的计算思维(CT)技能已得到广泛研究,但在以往的研究中,CT培训的效果参差不齐。因此,有必要识别CT预测因素与CT技能之间的关系模式,以进一步支持CT的发展。本研究开发了一个在线CT培训环境,并使用日志数据和调查数据,比较和对比了四种监督机器学习算法在对职前教师的CT技能进行分类时的预测能力。首先,结果表明,决策树在预测职前教师的CT技能方面优于K近邻、逻辑回归和朴素贝叶斯。其次,参与者在CT培训上花费的时间、先前的CT技能以及对学习内容的难度感知是该模型中最重要的三个预测因素。