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Analyzing Complex Longitudinal Data in Educational Research: A Demonstration With Project English Language and Literacy Acquisition (ELLA) Data Using xxM

机译:在教育研究中分析复杂的纵向数据:使用xxM进行的项目英语和读写能力(ELLA)数据演示

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摘要

When analyzing complex longitudinal data, especially data from different educational settings, researchers generally focus only on the mean part (i.e., the regression coefficients), ignoring the equally important random part (i.e., the random effect variances) of the model. By using Project English Language and Literacy Acquisition (ELLA) data, we demonstrated the importance of taking the complex data structure into account by carefully specifying the random part of the model, showing that not only can it affect the variance estimates, the standard errors, and the tests of significance of the regression coefficients, it also can offer different perspectives of the data, such as information related to the developmental process. We used xxM (Mehta, 2013), which can flexibly estimate different grade-level variances separately and the potential carryover effect from each grade factor to the later time measures. Implications of the findings and limitations of the study are discussed.
机译:在分析复杂的纵向数据时,特别是来自不同教育背景的数据时,研究人员通常只关注均值部分(即回归系数),而忽略了模型中同等重要的随机部分(即随机效应方差)。通过使用Project English Language and Literacy Acquisition(ELLA)数据,我们通过仔细指定模型的随机部分,展示了考虑复杂数据结构的重要性,表明该模型不仅会影响方差估计,标准误差,以及回归系数的显着性检验,它还可以提供数据的不同视角,例如与发展过程相关的信息。我们使用了xxM(Mehta,2013年),它可以分别灵活地估计不同的年级水平差异,以及从每个年级因子到以后的时间度量的潜在结转效应。讨论了研究结果的含义和局限性。

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