人工智能增强的STEM教育同伴领导的团队学习

K. Dsouza, Lin Zhu, P. Varma-Nelson, S. Fang, S. Mukhopadhyay
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引用次数: 0

摘要

高等教育中的主动学习方法通过在课堂上加强学习和关键技能使学生受益。在积极的教学模式中,如同伴领导的团队学习(PLTL),学生的课程成果更强。讲师不在PLTL研讨会上,可能无法从同行领导那里得到足够的反馈。此外,这些课程的注册人数很大。在cPLTL研讨会期间,缺乏支持人工智能的工具来监控或提供反馈。目前的研究通过使用网络同伴领导的团队学习(cPLTL)课程的录音,提出了一种基于人工智能的多模式解决方案,解决了这一差距。机器学习模型分析音频和文本特征来预测研讨会的结果。使用多模态学习的结果显示了该工具进一步发展的潜力。这种改进的建模将有助于减少教师的工作量,促进人工智能在教育中的整合。这种新颖的多模式方法旨在通过向教师提供自动反馈机制来提高学生的学习体验。
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AI-Augmented Peer Led Team Learning for STEM Education
Active learning methodologies in higher education benefit students by reinforcing learning and critical skills during the class. In active pedagogical models such as Peer-Led Team Learning (PLTL) students have stronger course outcomes. The instructor is not present in a PLTL workshop and may not receive sufficient feedback from peer leaders. Additionally, these classes have large enrollments. There is a lack of AI-enabled tools that monitor or provide feedback during cPLTL workshops. The current study addresses this gap by proposing an AI-based multimodal solution using recordings of cyber Peer-Led Team Learning (cPLTL) classes. The machine learning model analyzes audio and text features to predict the outcome of a workshop. The results using multimodal learning show potential for further development of the tool. Such improved modeling will help reduce the instructor’s workload facilitating the integration of AI in education. This novel multimodal approach aims to enhance the student’s learning experience by providing an automated feedback mechanism to the instructor.
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