C. A. Vazquez Rodriguez, M. M. Lavalle, Raúl Pinto Elías
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引用次数: 11
摘要
在教育中,学生参与度是指学生在学习或被教时所表现出的注意力、好奇心、兴趣、乐观和热情的程度,这延伸到他们在教育中学习和进步的动力水平。这篇论文的目的是自动判断学生是否对课堂感兴趣;这些信息是从他们的面部表情和行为中获得的。定义了五个属性进行评价:“脸”属性、“眼睛”属性、“肩膀”属性、“嘴”属性,最后是“感兴趣”属性,其中其他属性分为“感兴趣”、“不感兴趣”和“中性”。从5个不同的学生中存储了60个实例,并使用Weka软件中的决策树进行分类,其中使用的决策树有:ID3, RANDOM TREE, C4.5, BFTREE, REPTree。运用F-Measure度量对这些决策树进行评价,以获得最佳决策树。这项工作是一个更大项目的一部分。
Modeling Student Engagement by Means of Nonverbal Behavior and Decision Trees
In education, student engagement refers to the degree of attention, curiosity, interest, optimism, and passion that students show when they are learning or being taught, which extends to the level of motivation they have to learn and progress in their education. This paper is intended to automatically decide whether students are interested in the class or they are not; this information was obtained from their face expressions and behavior. Five attributes are defined for evaluating: the "face" attribute, the "eyes" attribute, the "shoulders" attribute, the "mouth" attribute and finally the attribute "interested" in which the others attributes are classified in "interested" "uninterested" and "neutral". 60 instances were stored from five different students and were classified using decision trees found in Weka software, among which were used: ID3, RANDOM TREE, C4.5, BFTREE, REPTree. Applying F-Measure metric we evaluate these decision trees in order to obtain the best of them. This work is part of a bigger project.