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Improving generalizability coefficient estimate accuracy: A way to incorporate auxiliary information

机译:提高概化系数估计的准确性:一种合并辅助信息的方法

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Initially proposed by Marcoulides and further expanded by Raykov and Marcoulides, a structural equation modeling approach can be used in generalizability theory estimation. This article examines the utility of incorporating auxiliary variables into the structural equation modeling approach when missing data is present. In particular, the authors assert that by adapting a saturated correlates model strategy to structural equation modeling generalizability theory models, one can reduce any biased effects caused by missingness. Traditional approaches such as an analysis of variance do not possess such a feature. This article provides detailed instructions for adding auxiliary variables into a structural equation modeling generalizability theory model, demonstrates the corresponding benefits of bias reduction in generalizability coefficient estimate via simulations, and discusses issues relevant to the proposed approach.
机译:结构方程建模方法最初是由Marcoulides提出的,然后由Raykov和Marcoulides进行了进一步扩展,可以用于概化理论估计。本文探讨了在缺少数据时将辅助变量合并到结构方程建模方法中的实用性。尤其是,作者断言,通过使饱和相关模型策略适应结构方程模型的泛化理论模型,可以减少由缺失引起的任何偏差效应。传统方法(例如方差分析)不具备这种功能。本文提供了将辅助变量添加到结构方程模型可概化理论模型中的详细说明,通过仿真演示了可概化系数估计中偏差减少的相应好处,并讨论了与该方法相关的问题。

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