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Modeling Learning in Doubly Multilevel Binary Longitudinal Data Using Generalized Linear Mixed Models: An Application to Measuring and Explaining Word Learning

机译:使用广义线性混合模型进行双重多级二元纵向数据建模学习:测量和解释词学习的应用

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摘要

When word learning is supported by instruction in experimental studies for adolescents, word knowledge outcomes tend to be collected from complex data structure, such as multiple aspects of word knowledge, multilevel reader data, multilevel item data, longitudinal design, and multiple groups. This study illustrates how generalized linear mixed models can be used to measure and explain word learning for data having such complexity. Results from this application provide deeper understanding of word knowledge than could be attained from simpler models and show that word knowledge is multidimensional and depends on word characteristics and instructional contexts.
机译:当青少年实验研究中的指导支持Word学习时,倾向于从复杂的数据结构中收集Word知识结果,例如词知识,多级读者数据,多级项目数据,纵向设计和多个组的多个方面。 本研究说明了广泛的线性混合模型如何用于测量和解释具有这种复杂性的数据的词学习。 本申请的结果提供了更深入的了解文字知识,而不是从更简单的模型实现,并显示Word知识是多维的,取决于词特征和教学上下文。

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