Evaluation of Student's Physiological Response Towards E-Learning Courses Material by Using GSR Sensor

Handri Santoso, K. Yajima, S. Nomura, Nobuyuki Ogawa, Yoshimasa Kurosawa, Y. Fukumura
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引用次数: 25

Abstract

This study aims to evaluate student physiological response towards the e-learning materials. The experiments were conducted by introducing two contracting e-learning materials, i.e., the one is characterized as interactive material and the other is non-interactive one. During the experiment physiological sensor, i.e., galvanic skin response (GSR) sensor was attached to the participant. Furthermore, GSR data were extracted by feature generator, LDA. The purpose of feature extraction is to find preferably small number of features that are particularly distinguishing or informative for the classification process and that are invariant to irrelevant transformations of the data. Finally, several classifiers were performed discriminating student attitude towards e-learning course materials response using GSR sensor data. The results showed that discriminant analysis (DA) and support vector machine (SVM) give high accuracy rate, while the k-nearest neighbor (KNN) give moderate accuracy rate.
用GSR传感器评价学生对网络学习课程材料的生理反应
本研究旨在评估学生对电子学习材料的生理反应。实验通过引入两种契约式电子学习材料进行,即一种具有互动特征,另一种具有非互动特征。在实验过程中,生理传感器即皮肤电反应(GSR)传感器被贴在被试身上。在此基础上,利用特征生成器LDA提取GSR数据。特征提取的目的是找到最好的少量特征,这些特征对分类过程特别有区别或有信息,并且对数据的不相关转换是不变的。最后,使用GSR传感器数据对学生对电子学习课程材料反应的态度进行分类。结果表明,判别分析(DA)和支持向量机(SVM)具有较高的准确率,而k近邻(KNN)具有中等的准确率。
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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