LMS 中的人工智能聊天机器人:认知、建构和自适应原则的教学回顾

Brian Kamau Mungai, Professor Kelvin Kabeti Omieno, Dr. Mathew Egessa, PhD, Peninah Njeri Manyara
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引用次数: 0

摘要

技术的突飞猛进深刻地改变了各个领域,尤其是教育领域,人工智能(AI)聊天机器人正在彻底改变学习管理系统(LMS)。学习管理系统(LMS)在教材管理以及教育工作者与学生之间的互动中起着关键作用。传统的 LMS 经常遇到互动性有限和内容静态等障碍,影响了学生的参与度和整体效果。人工智能聊天机器人可以通过提供实时、适应性强的支持来应对这些挑战,从而丰富教育过程。本研究从三个教学原则的角度出发,探讨如何将这些聊天机器人整合到 LMS 中:认知负荷理论(CLT)、建构主义学习理论和适应性学习理论。认知负荷理论致力于调节认知负荷以提高学习效率,聊天机器人可以简化内容并提供即时反馈。建构主义学习理论提倡通过互动进行积极的情境学习,人工智能聊天机器人支持这一原则,让学习者参与对话和解决问题的活动。自适应学习理论强调教育体验的个性化,人工智能聊天机器人可根据学生的表现实时调整内容并实现这一目标。本研究介绍了人工智能聊天机器人与教学原则的一致性,揭示了它们在增强 LMS 环境、提高学生参与度、理解力和成绩方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI Chatbots in LMS: A Pedagogical Review of Cognitive, Constructivist, and Adaptive Principles
The sudden growth of technology has profoundly shifted various sectors, notably education, where Artificial Intelligence (AI) chatbots are revolutionizing Learning Management Systems (LMS). LMSs are pivotal in the management of educational materials and engagements between educators and students. Traditional LMSs often encounter obstacles like limited interactivity and static content, which impact student engagement and overall effectiveness. AI chatbots can tackle these challenges by providing real-time, adaptable support, thereby enriching the educational process. This study explores the integration of these chatbots in LMS through the lens of three pedagogical principles: Cognitive Load Theory (CLT), Constructivist Learning Theory, and Adaptive Learning Theory. CLT strives to regulate cognitive load to enhance learning efficiency, with chatbots simplifying content and offering instant feedback. Constructivist Learning Theory advocates for active, contextual learning through interaction, a principle supported by AI chatbots engaging learners in conversations and problem-solving activities. Adaptive Learning Theory emphasizes the personalization of educational experiences, a goal achieved by AI chatbots tailoring content and adjusting to student performance in real time. This study presents AI chatbots' alignment with pedagogical principles, revealing their potential to enhance LMS environments and improve student engagement, comprehension, and achievements.
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