可视化分析对教师教学实践和绩效的影响:教育数据挖掘的案例研究

Atikah Khalid
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引用次数: 0

摘要

教师的教学实践和教学绩效已成为培养学生学术素质的重要因素之一。教师的绩效在学术机构中起着重要的作用。评估教师的表现有助于收集关键信息,并发现改进他们的新方法。在本文中,所提出的系统可以作为一个综合的系统来评估、报告和分析数据,并利用可视化分析平台使用教育挖掘技术。基于不同的参数,通过建立模型对教师的教学实践和教学效果进行评价和预测。在本次评估中,使用决策树、支持向量机(SVM)和人工神经网络(ANN)对样本数据进行收集、预处理和模型学习。此外,对每个分类器模型的变量重要性进行了分析,以确定哪些问题出现在决定教师绩效的成功。本文的想法是利用教育挖掘技术在学生自我反思工具(SSRT)调查中表明可视化分析对教师教学实践和绩效的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Analytics for Faculty Teaching Practice and Performance: A Case Study of Educational Data Mining
Faculty teaching practice and performance have become one of the utmost importance factors in developing students’ quality in academics. The performance of the faculty plays an important role in academic institutions. Evaluating the faculty members' performance helps to gather critical information and discover new ways of improving them. In this paper, the proposed system can be used as a comprehensive system for evaluating, reporting and analyzing data with a promising audience by utilizing the visual analytics platform in using the educational mining techniques. Based on different parameters, the faculty teaching practice and performance are evaluated and projected by building models. The sample data is collected, preprocessed, and model learning is done using Decision Tree, Support Vector Machine (SVM) and Artificial Neural Network (ANN) in this evaluation. Besides, an analysis of the variable importance for each classifier model is done to see which questions appear in determining the success of faculty members' performance. The idea of this paper is to indicate the effectiveness of Visual Analytics for Faculty Teaching Practice and Performance using Educational Mining Techniques on Student's Self-Reflection Tool (SSRT) survey.
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