Multivariate analysis for students' evaluation of teaching effectiveness in teleinformatics engineering

T. Silva, F. H. L. Vasconcelos, A. L. F. Almeida, J. C. M. Mota
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引用次数: 17

Abstract

In this work, we propose the use a multivariate analysis tool, called principal components analysis (PCA), to address the problem of Students' Evaluation of Teaching Effectiveness (SETE). We conducted a research with Engineering Students in an undergraduate course. The values obtained after collecting research data were transformed from a 3D array to a 2D array performing an average of students' responses. The PCA was applied in order to take same intrinsic information of the dataset collected. The Cronbach's α validates the PCA application in the dataset. The results show that our study allows an analysis of how students perceive different disciplines about different criteria, which may serve as an indicator for an educational assessment area.
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学生对远程信息工程教学效果评价的多元分析
在这项工作中,我们提出使用多元分析工具,称为主成分分析(PCA),以解决学生的教学效果评价(SETE)问题。我们对一门本科课程的工科学生进行了一项研究。收集研究数据后得到的数值从3D数组转换为2D数组,对学生的回答进行平均。采用主成分分析方法提取数据集的相同内在信息。Cronbach’s α验证了PCA在数据集中的应用。结果表明,我们的研究允许分析学生如何看待不同学科的不同标准,这可以作为教育评估领域的一个指标。
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