An Architecture of Decision Support System for Visual-Auditory-Kinesthetic (VAK) Learning Styles Detection Through Behavioral Modelling

Fatihah Mohd, Wan Fatin Fatihah Yahya, Suryani Ismail, M. Jalil, N. M. M. Noor
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引用次数: 7

Abstract

Learning style (LS) is a description of the attitudes and behaviors which determine an individual’s preferred way of learning. Since each student has different LS, it is important for the teacher to recognize the differences in LS. Thus, an appropriate technique to detect students' LS, improve the motivation and academic achievement are required. The common approach using questionnaires to identify LS is less accurate due to complete the questionnaire is a tedious task for students and tend to choose answers randomly without understanding the questions. Emotions such as anger, sadness, and happiness resulting the different questionnaire answers. Due to the approach constrains, this study has focused on automated approaches that identify student LS from student behavior in the learning process. Implementation of decision support system (DSS) as automated application systems is needed to help teachers make decisions in determining students' LS. Thus, the objective of this study is to propose the architecture of LS detection automatically using decision support system. The development of the architecture is applying the behavioral modelling, that are contained student’s behavior parameters for visual-auditory-kinesthetic (VAK) model. Evaluation of the architecture is tested with the precision DSS engine. The accuracy of the rule technique achieves significant 80% accuracy. This study aims to help teachers to identify the ability of the student through the learning style (LS) in order to create effectiveness of learning and improving student’s achievement indirectly. Keywords— decision support system, reasoning engines, learning style detection, user behavior, visual-auditory-kinesthetic (VAK) model
基于行为建模的视觉-听觉-动觉学习风格检测决策支持系统架构
学习风格(LS)是对态度和行为的描述,这些态度和行为决定了个人首选的学习方式。因为每个学生都有不同的语言能力,所以老师认识到语言能力的差异是很重要的。因此,需要一种适当的技术来检测学生的学习动机,提高学习成绩。通常使用问卷来识别LS的方法准确性较低,因为完成问卷对学生来说是一项繁琐的任务,并且往往在不理解问题的情况下随机选择答案。愤怒、悲伤和快乐等情绪会导致不同的问卷答案。由于方法的限制,本研究侧重于从学生学习过程中的行为中识别学生LS的自动化方法。需要实施决策支持系统(DSS)作为自动化应用系统,以帮助教师在确定学生的LS时做出决策。因此,本研究的目的是提出基于决策支持系统的LS自动检测体系结构。建筑的发展是应用行为建模,其中包含学生的行为参数的视觉-听觉-动觉(VAK)模型。利用精密决策支持引擎对体系结构进行了评估。该规则技术的准确率达到了显著的80%。本研究旨在协助教师透过学习风格来辨识学生的能力,进而创造学习效能,间接提升学生的学习成绩。关键词:决策支持系统,推理引擎,学习风格检测,用户行为,视觉-听觉-动觉模型
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