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A Hidden Markov Model for Learning Trajectories in Cognitive Diagnosis With Application to Spatial Rotation Skills

机译:一种用于运动轨迹认知技能的隐马尔可夫模型及其在空间旋转技巧中的应用

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摘要

The increasing presence of electronic and online learning resources presents challenges and opportunities for psychometric techniques that can assist in the measurement of abilities and even hasten their mastery. Cognitive diagnosis models (CDMs) are ideal for tracking many fine-grained skills that comprise a domain, and can assist in carefully navigating through the training and assessment of these skills in e-learning applications. A class of CDMs for modeling changes in attributes is proposed, which is referred to as learning trajectories. The authors focus on the development of Bayesian procedures for estimating parameters of a first-order hidden Markov model. An application of the developed model to a spatial rotation experimental intervention is presented.
机译:电子和在线学习资源的不断增加为心理测量技术带来了挑战和机遇,这些技术可以帮助测量能力,甚至加速他们的掌握。认知诊断模型(CDM)是跟踪许多包含领域的细粒度技能的理想选择,并且可以协助在电子学习应用程序中仔细培训和评估这些技能。提出了用于对属性变化建模的一类CDM,称为学习轨迹。作者专注于贝叶斯程序的发展,以估计一阶隐马尔可夫模型的参数。提出了开发的模型在空间旋转实验干预中的应用。

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