Brain Cognitive Performance Identification for Student Learning in Classroom

Wanus Srimaharaj, Supansa Chaising, P. Temdee, R. Chaisricharoen, Phakkharawat Sittiprapaporn
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引用次数: 12

Abstract

Human has sustainability to concentrate about 45-50 minutes, approximately. The student who spent a long time during the class without a break is decreasing the brain learning ability. Taking mental breaks every 45 minutes is considered as stress reduction and prepared for better learning. However, a person has a different level to maintain a focus on learning, which is longer or shorter. The well-established information for manipulating this problem is necessary to support the instruction and teaching planning. Therefore, this study proposes the method to define the learning state of each student via brain cognitive performance identification and information technology innovations. The brain signals of students are recorded by electroencephalography (EEG) during studying. Due to the performance values are presented under the specific neuroscience criteria, the Decision Tree algorithm is chosen to perform learning state classification and description. The results present the several levels of cognitive performance including low, neutral, good, and high level, which is related to the learning ability of a student. The student who has low cognitive performance will be noticed to have a mental break before class ends appropriately. The classification method provides 87% of accuracy, which is acceptable to support the implementation of the decision tree with neuroscience in this study.
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学生课堂学习的脑认知表现识别
人的可持续性集中时间约为45-50分钟。长时间上课而不休息的学生正在降低大脑的学习能力。每45分钟进行一次精神休息被认为是减轻压力,为更好的学习做准备。然而,一个人保持专注学习的程度是不同的,长短不一。解决这一问题的完善的信息是支持教学和教学计划所必需的。因此,本研究提出了通过大脑认知表现识别和信息技术创新来定义每个学生学习状态的方法。利用脑电图(EEG)记录学生在学习过程中的脑信号。由于性能值是在特定的神经科学标准下给出的,因此选择决策树算法进行学习状态分类和描述。结果表明,学生的认知能力表现为低水平、中等水平、良好水平和高水平,这与学生的学习能力有关。认知表现较差的学生会在下课前适当地休息一下。该分类方法的准确率为87%,为本研究中神经科学决策树的实现提供了可接受的支持。
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