Assessing Model Similarity in Structural Equation Modeling

作者:Lai Keke*; Green Samuel B; Levy Roy; Reichenberg Ray E; Xu Yuning; Thompson Marilyn S; Yel Nedim; Eggum Wilkens Natalie D; Kunze Katie L; Iida Masumi
来源:Structural Equation Modeling, 2016, 23(4): 491-506.
DOI:10.1080/10705511.2016.1154464

摘要

Two models can be nonequivalent, but fit very similarly across a wide range of data sets. These near-equivalent models, like equivalent models, should be considered rival explanations for results of a study if they represent plausible explanations for the phenomenon of interest. Prior to conducting a study, researchers should evaluate plausible models that are alternatives to those hypothesized to evaluate whether they are near-equivalent or equivalent and, in so doing, address the adequacy of the study's methodology. To assess the extent to which alternative models for a study are empirically distinguishable, we propose 5 indexes that quantify the degree of similarity in fit between 2 models across a specified universe of data sets. These indexes compare either the maximum likelihood fit function values or the residual covariance matrices of models. Illustrations are provided to support interpretations of these similarity indexes.

  • 出版日期2016-8