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Consideration of a Bayesian Hierarchical Model for Assessment and Adaptive Instructions

机译:考虑贝叶斯分层模型进行评估和自适应指令

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People appear to practice what they do know rather than what they do not know [1], suggesting a necessity of an improved assessment of multilevel complex skill components. An understanding of the changing knowledge states is also important in that such an assessment can support instructions. The changing knowledge states can be generally visualized through learning curves. These curves would be useful to identify and predict the learner's changing knowledge states in multi-domains, and to understand the features of task/subtask learning. Here, we provide a framework based on a Bayesian hierarchical model that can be used to investigate learning and performance in the learner and domain model context particularly a framework to estimate learning functions separately in a psychomotor task. We also take an approach of a production rule system (e.g., ACT-R) to analyze the learner's knowledge and skill in tasks and subtasks. We extend the current understanding of cognitive modeling to better support adaptive instructions, which helps to model the learner in multi-domains (i.e., beyond the desktop) and provide a summary of estimating a probability that the learner has learned each of a production rule. We find the framework being useful to model the learner's changing knowledge and skill states by supporting an estimate of probability that the learner has learned from a knowledge component, and by comparing learning curves with varying slopes and intercepts.
机译:人们似乎在练习他们所知道的而不是不知道的东西[1],这表明有必要改进对多层次复杂技能组成部分的评估。了解不断变化的知识状态也很重要,因为这样的评估可以支持指令。不断变化的知识状态通常可以通过学习曲线来可视化。这些曲线将有助于识别和预测学习者在多领域中不断变化的知识状态,并有助于了解任务/子任务学习的特征。在这里,我们提供了一个基于贝叶斯分层模型的框架,该框架可用于调查学习者和领域模型上下文中的学习和表现,尤其是用于估计心理运动任务中的学习功能的框架。我们还采用生产规则系统(例如ACT-R)的方法来分析学习者在任务和子任务中的知识和技能。我们扩展了对认知建模的当前理解,以更好地支持自适应指令,这有助于在多域(即,超出桌面)中对学习者进行建模,并提供估算学习者已学习每种生产规则的概率的摘要。我们发现该框架通过支持对学习者已从知识组件中学习的概率的估计,以及通过将学习曲线与变化的斜率和截距进行比较来对学习者的不断变化的知识和技能状态建模有用。

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