大规模学习流评价

Tiina Lynch, Ioana Ghergulescu
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引用次数: 9

摘要

个性化和适应性学习是电子学习中发展最快的领域。自适应电子学习系统通常非常适合现实世界中的异构用户,这些用户表现出不同的动机和知识水平。此外,当学生处于心流状态时,也就是当难度水平与他们的个人能力完美匹配时,他们学得最好。一个个性化的、自适应的、智能的学习环境可以为每个学生提供这种学习体验。在本文中,我们提出了一种在自适应和个性化系统(Adaptemy系统)中大规模评估流中学习的方法。本文介绍了两项研究的结果:一项是对7,614名爱尔兰中学生在数学课上评估他们的学习流程的客观研究,另一项是对80名学生评估他们感知到的学习体验的主观研究。客观研究结果表明,88%的学生在流动通道内工作。在主观研究中,70%的学生报告说,在自适应智能学习系统的练习学习后,他们的数学技能有了明显的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large Scale Evaluation of Learning Flow
Personalized and adaptive learning is the fastest growing field in e-learning. Adaptive e-learning systems are typically well suited for real-world heterogeneous users, which exhibit different levels of motivation and knowledge. Furthermore, students learn best when they are in flow, i.e. when the level of difficulty is perfectly adjusted to their individual abilities. A personalized, adaptive, and intelligent learning environment can provide each student with this learning experience. In this paper, we present a large-scale evaluation of learning in flow within an adaptive and personalized system, the Adaptemy system. The paper presents the results of two studies: an objective study with 7,614 Irish secondary school students in math classes assessing their learning flow, and a subjective study with 80 students assessing their perceived learning experience. The results from the objective study show that 88% of the students worked within the flow channel. In the subjective study, 70% of students reported a perceived improvement in their math skills after the exercise studying with the adaptive and intelligent learning system.
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