Knowledge tracing for adaptive learning in a metacognitive tutor

Q2 Social Sciences
M. Carlon, J. Cross
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引用次数: 3

Abstract

Abstract Adaptive learning is provided in intelligent tutoring systems (ITS) to enable learners with varying abilities to meet their expected learning outcomes. Despite the personalized learning afforded by ITSes using adaptive learning, learners are still susceptible to shallow learning. Introducing metacognitive tutoring to teach learners how to be aware of their knowledge can enable deeper learning. However, metacognitive tutoring on top of cognitive tutoring can lead to unsustainable cognitive loads. Using metacognitive inputs for knowledge tracing was explored for managing cognitive loads. Hidden Markov models (HMM) and artificial neural networks were used to train models on a synthetic dataset created from predetermined learner personas. The models created with metacognitive inputs were compared with the models created without said inputs. The models using metacognitive inputs performed better than the standard models while still following learning intuitions. This indicates that combining knowledge tracing and metacognitive tutoring is a viable option for improving learning outcomes. This is an important finding since online learning, which demands metacognitive skills, is becoming popular for various topics, including those that are challenging even with immediate teacher assistance.
元认知导师的适应性学习知识追踪
摘要智能辅导系统(ITS)提供自适应学习,使不同能力的学习者能够达到预期的学习效果。尽管ITSes使用自适应学习提供了个性化学习,但学习者仍然容易受到浅学习的影响。引入元认知辅导,教学习者如何意识到自己的知识,从而实现更深层次的学习。然而,在认知辅导之上的元认知辅导会导致不可持续的认知负荷。探讨了利用元认知输入进行知识追踪来管理认知负荷。使用隐马尔可夫模型(HMM)和人工神经网络在由预定学习者角色创建的合成数据集上训练模型。将有元认知输入的模型与没有元认知输入的模型进行比较。使用元认知输入的模型在遵循学习直觉的情况下比标准模型表现得更好。这表明,结合知识追踪和元认知辅导是提高学习效果的可行选择。这是一个重要的发现,因为在线学习需要元认知技能,在各种主题中越来越受欢迎,包括那些即使在老师的即时帮助下也具有挑战性的主题。
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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来源期刊
Open Education Studies
Open Education Studies Social Sciences-Social Sciences (miscellaneous)
CiteScore
1.80
自引率
0.00%
发文量
19
审稿时长
27 weeks
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