Detection of learning styles with prior knowledge data using the SVM, K-NN and Naïve Bayes algorithms

M. Hasibuan, RZ. Abdul Aziz
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Abstract

The two types of automatic learning style detection approaches are data driven (DD) and literature based (LB). Both methods of automatic learning style detection have advantages over traditional learning style detection methods because they use external data sources, such as forums, quizzes and views of teaching materials, that are more accurate than the questionnaires used in traditional styles of detection. The results of automatic detection, on the other hand, do not always reflect learning styles. This paper presents a learning style recognition method that uses data from the learner’s internal source, namely prior knowledge, to overcome these challenges. Prior knowledge is proposed because it is based on the learner’s knowledge or skills, which better reflect the learner’s characteristics, rather than on the learner’s behaviour, which tends to be dynamic. By using past knowledge, this paper presents a method for detecting automatic learning patterns. The learning style detection framework is unique in that it consists of three stages: prior knowledge question development, prior knowledge measurement and learning style detection using the Support Vector Machine (SVM), Naïve Bayes and K-Nearest Neighbour (K-NN) classification methods. The accuracy of learning style detection using prior knowledge data was higher than detection results using behavioural data or hybrid data (prior knowledge + behaviour) in this study
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使用SVM, K-NN和Naïve贝叶斯算法检测先验知识数据的学习风格
两种类型的自动学习风格检测方法是数据驱动(DD)和基于文献的(LB)。两种自动学习风格检测方法都比传统的学习风格检测方法有优势,因为它们使用外部数据源,如论坛、测验和教材的观点,比传统风格检测中使用的问卷更准确。另一方面,自动检测的结果并不总是反映学习风格。本文提出了一种学习风格识别方法,该方法使用来自学习者内部来源的数据,即先验知识,来克服这些挑战。提出先验知识是因为它是基于学习者的知识或技能,这更能反映学习者的特点,而不是基于学习者的行为,这往往是动态的。本文提出了一种基于已有知识的自动学习模式检测方法。学习风格检测框架的独特之处在于它由三个阶段组成:先验知识问题开发、先验知识测量和使用支持向量机(SVM)、Naïve贝叶斯和k -近邻(K-NN)分类方法的学习风格检测。本研究中使用先验知识数据的学习风格检测准确率高于使用行为数据或混合数据(先验知识+行为)的检测结果
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发文量
47
审稿时长
6 weeks
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