Research Methods, Institute of Psychology and Education, Ulm University.
Psychol Methods. 2018 Jun;23(2):318-336. doi: 10.1037/met0000122. Epub 2017 Mar 16.
Guidelines to evaluate the fit of structural equation models can only offer meaningful insights to the extent that they apply equally to a wide range of situations. However, a number of previous studies found that statistical power to reject a misspecified model increases and descriptive fit-indices deteriorate when loadings are high, thereby inappropriately panelizing high reliability indicators. Based on both theoretical considerations and empirical simulation studies, we show that previous results only hold for a particular definition and a particular type of model error. At a constant degree of misspecification (as measured through the minimum of the fit-function), statistical power to reject a wrong model and noncentrality based fit-indices (such as the root-mean squared error of approximation; RMSEA) are independent of loading magnitude. If the degree of model error is controlled through the average residuals, higher loadings are associated with increased statistical power and a higher RMSEA when the measurement model is misspecified, but with decreased power and a lower RMSEA when the structural model is misspecified. In effect, inconsistencies among noncentrality and residual based fit-indices can provide information about possible sources of misfit that would be obscured when considering either measure in isolation. (PsycINFO Database Record
结构方程模型拟合度的评估指南只有在它们同样适用于广泛的情况下才能提供有意义的见解。然而,先前的一些研究发现,当负荷较高时,拒绝指定不当模型的统计能力增加,描述性拟合指数恶化,从而不恰当地将高可靠性指标分组。基于理论考虑和实证模拟研究,我们表明,先前的结果仅适用于特定的定义和特定类型的模型误差。在恒定的误配程度(通过拟合函数的最小值来衡量)下,拒绝错误模型的统计能力和基于非中心的拟合指数(如近似均方根误差;RMSEA)与负荷大小无关。如果通过平均残差来控制模型误差的程度,则当测量模型误配时,较高的负荷与增加的统计能力和较高的 RMSEA 相关,但当结构模型误配时,其统计能力和 RMSEA 则较低。实际上,非中心和基于残差的拟合指数之间的不一致性可以提供有关可能的不匹配来源的信息,而当单独考虑任一指标时,这些信息可能会被掩盖。