基于集成树法Felder Silverman模型的学生行为分析预测学习风格

Yunia Ikawati, M. A. Rasyid, Idris Winarno
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引用次数: 4

摘要

了解学习方式非常重要,这样学生才能有效地学习。通过了解学习方式,学生将在学习过程中了解自己的需求。其中一个著名的学习管理系统叫做Moodle。Moodle可以捕捉学生在学习过程中的经历和行为,并将所有学生活动存储在Moodle Log中。在电子学习中有一个基本的问题,即不是所有的学生都有相同的理解程度。因此,在E-Learning学习的某些情况下,学生往往会离开课堂,在课堂上缺乏主动性。为了解决这些问题,我们必须通过了解每个学生的学习风格来了解学生在学习过程中的偏好。为了找到合适的学生学习风格,有必要根据访问Moodle E-learning的频率分析学生的行为,并填写索引学习风格(ILS)问卷。费尔德·西尔弗曼模型将学习风格分为四个维度:输入、处理、感知和理解。我们提出了一种使用集成树方法的学习风格预测模型,即Bagging和Boosting-Gradient boosting树。然后,我们使用分层交叉验证来评估分类结果,并使用准确性来衡量性能。结果表明,集成树方法的分类效率比单树分类模型具有更高的准确率。
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Student Behavior Analysis to Predict Learning Styles Based Felder Silverman Model Using Ensemble Tree Method
Learning styles are very important to know so that students can learn effectively. By understanding the learning style, students will learn about their needs in the learning process. One of the famous learning management systems is called Moodle. Moodle can catch student experiences and behaviors while learning and store all student activities in the Moodle Log. There is a fundamental issue in e-learning where not all students have the same degree of comprehension. Therefore, in some cases of learning in E-Learning, students tend to leave the classroom and lack activeness in the classroom. In order to solve these problems, we have to know students' preferences in the learning process by understanding each student's learning style. To find out the appropriate student learning style, it is necessary to analyze student behavior based on the frequency of visits when accessing Moodle E-learning and fill out the Index Learning Style (ILS) questionnaire. The Felder Silverman model's learning style classifies it into four dimensions: Input, Processing, Perception, and Understanding. We propose a learning style prediction model using the Ensemble Tree method, namely Bagging and Boosting-Gradient Boosted Tree. Afterwards, we evaluate the classification results using Stratified Cross Validation and measure the performance using accuracy. The results showed that the Ensemble Tree method's classification efficiency has higher accuracy than a single tree classification model.
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