利用机器学习技术从在线实验室实验中自动识别学生认知风格

A. Yousef, Ayman Atia, Amira Youssef, Noha A. Saad Eldien, A. Hamdy, Ahmed M. Abd El-Haleem, M. M. Elmesalawy
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引用次数: 6

摘要

由于新冠肺炎疫情,在线学习成为通过智能学习平台从传统教育向开放学习转变的有力学习方式。尽管其有效性,但许多研究表明,将在线学习方法与学生的认知学习风格联系起来是必要的。如果教学方法和教育干预措施适合每个学生的个体认知风格,学生的水平就会得到提高。目前,对学生认知风格的评价多采用心理测量方法,但在虚拟环境中的应用,问题就变得复杂起来。本研究的主要目标是提供一种基于机器学习技术的有效解决方案,通过分析学生在进行在线实验室实验时的鼠标交互行为来自动识别学生的认知风格。这将有助于设计一个有效的在线实验室实验系统,该系统能够根据每个学生识别的认知风格个性化实验指导和反馈。结果表明,KNN和SVM分类器在预测大多数认知学习风格方面都有较好的准确性。与KNN相比,扩大的研究集成了KNN、线性回归、神经网络和支持向量机,结果显示,总均方根误差增加了13%。我们相信,这一发现将使教育工作者和政策制定者能够预测学生在与在线实验互动时的不同认知类型。我们相信,将深度学习算法与更强调鼠标位置痕迹的集成将提高分类器预测的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Identification of Student’s Cognitive Style from Online Laboratory Experimentation using Machine Learning Techniques
Online learning has emerged as powerful learning methods for the transformation from traditional education to open learning through smart learning platforms due to Covid-19 pandemic. Despite its effectiveness, many studies have indicated the necessity of linking online learning methods with the cognitive learning styles of students. The level of students always improves if the teaching methods and educational interventions are appropriate to the cognitive style of each student individually. Currently, psychological measures are used to assess students’ cognitive styles, but about the application in virtual environment, the matter becomes complicated. The main goal of this study is to provide an efficient solution based on machine learning techniques to automatically identify the students’ cognitive styles by analyzing their mouse interaction behaviors while carrying out online laboratory experiments. This will help in the design of an effective online laboratory experimentation system that is able to individualize the experiment instructions and feedback according to the identified cognitive style of each student. The results reveal that the KNN and SVM classifiers have a good accuracy in predicting most cognitive learning styles. In comparison to KNN, the enlarged studies ensemble the KNN, linear regression, neural network, and SVM reveal a 13% increase in overall total RMS error. We believe that this finding will enable educators and policy makers to predict distinct cognitive types in the assessment of students when they interact with online experiments. We believe that integrating deep learning algorithms with a greater emphasis on mouse location traces will improve the accuracy of our classifiers’ predictions.
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