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Multilevel Applications in Education Studies

机译:教育研究中的多级应用

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Multilevel analysis is important in analysing hierarchically structured data. It aims not only to study the variations in the group but also the variation between groups. Meanwhile, in simple regression analysis, it involves data at one level only (group presence is negligible). Often we look at the research on hierarchical data (particularly in education studies) ignores the presence of level in hierarchical structure (e.g., class, schools) whereas each level also contribute a variation in the data. Therefore, this article will discuss the importance of doing multilevel analysis compared with simple regression analysis. Procedure for construction of multilevel estimation model is also shows in stages to observe the effects changing of the variations contributed by the group. Three types of multilevel models were compared with simple regression model, OLS and founds that multilevel model was better than the OLS model. Results also showed that the multilevel model with the inclusion of the level-2 variables gives the least model error and level-2 variance error.A simple example is used to facilitate the understanding of the fundamental in the construction of multilevel model.
机译:多级分析在分析分层结构数据方面很重要。它不仅可以研究组中的变化,还可以研究组之间的变化。同时,在简单的回归分析中,它仅涉及一个级别的数据(组存在可忽略不计)。通常,我们介绍分层数据的研究(特别是在教育研究中)忽略分层结构中的水平(例如,类,学校),而每个级别也会有助于数据的变化。因此,与简单回归分析相比,本文将讨论进行多级分析的重要性。用于构建多级估计模型的程序,也以阶段显示,观察效果改变组的变化。将三种类型的多级模型与简单的回归模型,OLS进行比较,发现多级模型优于OLS模型。结果还表明,包含级别-2变量的多级模型提供了最少的模型误差和级别 - 2方差误差。使用简单的例子用于促进对多级模型构建的基础的理解。

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