Sensitivity of Fit Indices to Misspecification in Growth Curve Models.
نویسندگان
چکیده
This study investigated the sensitivity of fit indices to model misspecification in within-individual covariance structure, between-individual covariance structure, and marginal mean structure in growth curve models. Five commonly used fit indices were examined, including the likelihood ratio test statistic, root mean square error of approximation, standardized root mean square residual, comparative fit index, and Tucker-Lewis Index. The fit indices were found to have differential sensitivity to different types of misspecification in either the mean or covariance structures with severity of misspecification controlled. No fit index was always more (or less) sensitive to misspecification in the marginal mean structure relative to those in the covariance structure. Specifying the covariance structure to be saturated can substantially improve the sensitivity of fit indices to misspecification in the marginal mean structure; this result might help identify the sources of specification error in a growth curve model. An empirical example of children's growth in math achievement ( Wu, West, & Hughes, 2008 ) was used to illustrate the results.
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ورودعنوان ژورنال:
- Multivariate behavioral research
دوره 45 3 شماره
صفحات -
تاریخ انتشار 2010