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Incorporating Measurement Non-Equivalence in a Cross-Study Latent Growth Curve Analysis

机译:在跨研究潜在增长曲线分析中纳入测量非等值

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摘要

A large literature emphasizes the importance of testing for measurement equivalence in scales that may be used as observed variables in structural equation modeling applications. When the same construct is measured across more than one developmental period, as in a longitudinal study, it can be especially critical to establish measurement equivalence, or invariance, across the developmental periods. Similarly, when data from more than one study are combined into a single analysis, it is again important to assess measurement equivalence across the data sources. Yet, how to incorporate non-equivalence when it is discovered is not well described for applied researchers. Here, we present an item response theory approach that can be used to create scale scores from measures while explicitly accounting for non-equivalence. We demonstrate these methods in the context of a latent curve analysis in which data from two separate studies are combined to create a single longitudinal model spanning several developmental periods.
机译:大量文献强调了对量度进行测试的重要性,这些量度可以用作结构方程建模应用程序中的观察变量。当在一个以上的发育期中测量同一结构时,如纵向研究中所示,在整个发育期中建立测量等价性或不变性可能尤其重要。同样,当将来自多个研究的数据合并到一个分析中时,再次评估跨数据源的测量等效性同样很重要。然而,对于应用研究人员来说,如何在发现非等价性时将其纳入并没有很好的描述。在这里,我们提出了一种项目响应理论方法,该方法可用于从度量中创建量表分数,同时明确说明不对等。我们在潜伏曲线分析的背景下展示了这些方法,其中将来自两个单独研究的数据进行组合以创建一个跨越多个发展时期的纵向模型。

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