Adjusting Incremental Fit Indices for Nonnormality

作者:Brosseau Liard Patricia E; Savalei Victoria*
来源:Multivariate Behavioral Research, 2014, 49(5): 460-470.
DOI:10.1080/00273171.2014.933697

摘要

A variety of indices are commonly used to assess model fit in structural equation modeling. However, fit indices obtained from the normal theory maximum likelihood fit function are affected by the presence of nonnormality in the data. We present a nonnormality correction for 2 commonly used incremental fit indices, the comparative fit index and the Tucker-Lewis index. This correction uses the Satorra-Bentler scaling constant to modify the sample estimate of these fit indices but does not affect the population value. We argue that this type of nonnormality correction is superior to the correction that changes the population value of the fit index implemented in some software programs. In a simulation study, we demonstrate that our correction performs well across a variety of sample sizes, model types, and misspecification types.

  • 出版日期2014