W. Leite, S. Roy, Nilanjana Chakraborty, G. Michailidis, A. Huggins-Manley, S. D’Mello, Mohamad Kazem Shirani Faradonbeh, Emily Jensen, H. Kuang, Zeyuan Jing
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引用次数: 7
Abstract
This study presents a novel video recommendation system for an algebra virtual learning environment (VLE) that leverages ideas and methods from engagement measurement, item response theory, and reinforcement learning. Following Vygotsky's Zone of Proximal Development (ZPD) theory, but considering low affect and high affect students separately, we developed a system of five categories of video recommendations: 1) Watch new video; 2) Review current topic video with a new tutor; 3) Review segment of current video with current tutor; 4) Review segment of current video with a new tutor; 5) Watch next video in curriculum sequence. The category of recommendation was determined by student scores on a quiz and a sensor-free engagement detection model. New video recommendations (i.e., category 1) were selected based on a novel reinforcement learning algorithm that takes input from an item response theory model. The recommendation system was evaluated in a large field experiment, both before and after school closures due to the COVID-19 pandemic. The results show evidence of effectiveness of the video recommendation algorithm during the period of normal school operations, but the effect disappears after school closures. Implications for teacher orchestration of technology for normal classroom use and periods of school closure are discussed.
本研究提出了一种新的代数虚拟学习环境(VLE)视频推荐系统,该系统利用了参与测量、项目反应理论和强化学习的思想和方法。根据维果茨基(Vygotsky)的近端发展区(Zone of Proximal Development, ZPD)理论,但分别考虑低情感学生和高情感学生,我们开发了一个包含五类视频推荐的系统:1)观看新视频;2)与新导师一起回顾当前主题视频;3)与当前导师一起复习当前视频片段;4)与新导师一起复习当前视频片段;5)按课程顺序观看下一个视频。推荐的类别是由学生在测验中的分数和无传感器参与检测模型决定的。新的视频推荐(即类别1)是基于一种新的强化学习算法选择的,该算法从项目反应理论模型中获取输入。在因COVID-19大流行而关闭学校之前和之后,在一项大型现场实验中对该推荐系统进行了评估。结果表明,视频推荐算法在学校正常运营期间是有效的,但在学校关闭后效果消失。讨论了教师对正常课堂使用和学校关闭期间的技术编排的影响。