Visualization of computer-supported collaborative learning models in the context of multimodal data analysis

Jianqiang Mei, Wanyan Chen, Biyuan Li, Shixin Li, Jun Zhang
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引用次数: 1

Abstract

Deep learning evaluation is a new direction formed by the intersection of multiple domains, and the core issue is how to visualize collaborative learning models to motivate learners. Therefore, this paper realizes real-time knowledge sharing and facilitates learners' interaction through computer-supported collaborative learning (CSCL) technology. In this paper, we collect, label, and analyze data based on five modalities: brain, behavior, cognition, environment, and technology. In this paper, a computer-supported collaborative learning process analysis model is developed under the threshold of multimodal data analysis. The model is based on roles and CSCL for intelligent network collaboration. This paper designs and develops an interactive visualization tool to support online collaborative learning process analysis. In addition, this paper conducts a practical study in an online classroom. The results show that the model and the tool can be effectively used for online collaborative learning process analysis, and the test model results fit well. The entropy index of the test model took a value of about 0.85, and about less than 10% of the individuals were assigned to the wrong profile. During the test, the participation of participants gradually increased from 5% to about 25%, and the participation effect improved by about 80%. This indicates the strong applicability value of the computer-supported collaborative learning process analysis model under the multimodal data analysis perspective.
多模态数据分析背景下计算机支持的协作学习模型的可视化
深度学习评价是多领域交叉形成的一个新方向,其核心问题是如何将协作学习模型可视化以激励学习者。因此,本文通过计算机支持的协同学习(CSCL)技术实现实时知识共享,促进学习者的互动。在本文中,我们收集、标记和分析基于五个模态的数据:大脑、行为、认知、环境和技术。本文提出了一种基于多模态数据分析阈值的计算机支持的协同学习过程分析模型。基于角色和CSCL的智能网络协作模型。本文设计并开发了一个支持在线协作学习过程分析的交互式可视化工具。此外,本文还在网络课堂中进行了实践研究。结果表明,该模型和工具可以有效地用于在线协同学习过程分析,测试模型结果拟合良好。测试模型的熵指数约为0.85,大约不到10%的个体被分配到错误的配置文件。在测试过程中,参与者的参与率从5%逐渐提高到25%左右,参与效果提高了80%左右。这表明在多模态数据分析视角下,计算机支持的协同学习过程分析模型具有较强的适用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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