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The Importance of Isomorphism for Conclusions about Homology: A Bayesian Multilevel Structural Equation Modeling Approach with Ordinal Indicators

机译:同构对于同源性结论的重要性:具有序数指示符的贝叶斯多级结构方程建模方法

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摘要

We describe a Monte Carlo study examining the impact of assuming item isomorphism (i.e., equivalent construct meaning across levels of analysis) on conclusions about homology (i.e., equivalent structural relations across levels of analysis) under varying degrees of non-isomorphism in the context of ordinal indicator multilevel structural equation models (MSEMs). We focus on the condition where one or more loadings are higher on the between level than on the within level to show that while much past research on homology has ignored the issue of psychometric isomorphism, psychometric isomorphism is in fact critical to valid conclusions about homology. More specifically, when a measurement model with non-isomorphic items occupies an exogenous position in a multilevel structural model and the non-isomorphism of these items is not modeled, the within level exogenous latent variance is under-estimated leading to over-estimation of the within level structural coefficient, while the between level exogenous latent variance is overestimated leading to underestimation of the between structural coefficient. When a measurement model with non-isomorphic items occupies an endogenous position in a multilevel structural model and the non-isomorphism of these items is not modeled, the endogenous within level latent variance is under-estimated leading to under-estimation of the within level structural coefficient while the endogenous between level latent variance is over-estimated leading to over-estimation of the between level structural coefficient. The innovative aspect of this article is demonstrating that even minor violations of psychometric isomorphism render claims of homology untenable. We also show that posterior predictive p-values for ordinal indicator Bayesian MSEMs are insensitive to violations of isomorphism even when they lead to severely biased within and between level structural parameters. We highlight conditions where poor estimation of even correctly specified models rules out empirical examination of isomorphism and homology without taking precautions, for instance, larger Level-2 sample sizes, or using informative priors.
机译:我们描述了一项蒙特卡洛研究,该研究在以下条件下,不同程度的非同构性下,假设项目同构(即,整个分析级别的等效构造含义)对同构结论(即,整个分析级别的等效结构关系)的影响。序数指示器多级结构方程模型(MSEM)。我们关注一个条件,即一个水平上的一个或多个负载比内部水平上的一个或多个负载高,这表明尽管过去有关同源性的许多研究都忽略了心理同构的问题,但心理同构实际上对于同源性的有效结论至关重要。更具体地,当具有非同构项的测量模型在多级结构模型中占据外生位置并且未建模这些项的非同构性时,会低估水平内的外生潜在方差,从而导致对模型的过高估计。层次结构系数之间的差异,而层次之间的外生潜在方差被高估,导致层次结构系数之间的低估。当具有非同构项的测量模型在多级结构模型中占据内生位置并且未对这些项的非同构性进行建模时,级别内潜在方差内的内在性会被低估,从而导致对内部结构的低估内在水平之间的潜在方差被高估,导致水平之间的结构系数之间的高估。本文的创新之处在于,即使对心理计量同构的微小违反也使同源性主张变得站不住脚。我们还显示,序数指标贝叶斯MSEM的后验预测p值对同构违规不敏感,即使它们导致严重的内部和水平结构参数之间的偏差。我们着重指出了以下条件:即使没有正确指定的模型,也无法很好地估计出同构和同源性的经验检查,而无需采取预防措施,例如,更大的Level-2样本大小或使用先验信息。

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