计算机科学
主动学习(机器学习)
风格(视觉艺术)
适应性学习
鉴定(生物学)
学习环境
虚拟现实
教学模拟
人工智能
同步学习
虚拟学习环境
机器学习
人机交互
教育技术
多媒体
合作学习
教学方法
数学教育
心理学
历史
生物
考古
植物
作者
Yi Chun Lin,Shunbo Wang,Yangfan Lan
摘要
Learning style is the endogenous cause of students' unique behaviors when they are performing learning tasks. The adaptive learning system that considers learning style can provide a personalized experience to stimulate students' enthusiasm, which had been widely studied in recent years. However, most of such existing systems are constructed based on a desktop environment, which leads to the less-than-ideal effect of personalized learning due to the limitation of interaction means and environmental dimension. Therefore, an adaptive virtual reality learning method based on the learning style model was proposed in this study. This method continuously iterated the identification of learning style based on students' subjective and objective data. Then, the content of virtual learning environment was sustainedly adjusted according to the identification results, thus enabling the environment to dynamically adapt to students' learning styles. To evaluate the feasibility of this proposed method, a controlled experiment on 152 participants was conducted. Results show that this method obtained relatively stable and accurate results of learning style identification, with an accuracy range of 74.38%–80.30%. Moreover, learning in the virtual environment constructed based on this method had a positive impact on students' learning motivation and outcomes.
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