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Using Hidden Markov Models to Characterize Student Behaviors in Learning-by-Teaching Environments

机译:使用隐马尔可夫模型在教学环境中表征学生行为

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摘要

Using hidden Markov models (HMMs) and traditional behavior analysis, we have examined the effect of metacognitive prompting on students' learning in the context of our computer-based learning-by-teaching environment. This paper discusses our analysis techniques, and presents evidence that HMMs can be used to effectively determine students' pattern of activities. The results indicate clear differences between different interventions, and links between students learning performance and their interactions with the system.
机译:使用隐马尔可夫模型(HMMS)和传统的行为分析,我们研究了元认知促进在基于计算机的学习环境的背景下学生学习的影响。本文讨论了我们的分析技术,并提出了证据,即HMMS可以用于有效地确定学生的活动模式。结果表明不同干预措施之间的差异,以及学生学习绩效与系统互动之间的联系。

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