Title of article
Detecting Growth Shape Misspecifications in Latent Growth Models: An Evaluation of Fit Indexes
Author/Authors
Walter L. Leite & Laura M. Stapleton ، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2011
Pages
21
From page
361
To page
381
Abstract
In this study, the authors compared the likelihood ratio test and fit indexes for detection of misspecifications of growth shape in latent growth models through a simulation study and a graphical analysis. They found that the likelihood ratio test, MFI, and root mean square error of approximation performed best for detecting model misspecification when a linear model was fit to scores presenting nonlinear growth trajectories, in terms of being sensitive to severity of misspecification, and providing stable results with different types of nonlinearity and sample sizes.
Keywords
misspecification of growth shape , model selection , Monte Carlo simulation , nonlinear growth trajectory , latent growth models , longitudinal analysis , sensitivity of fit indexes
Journal title
The Journal of Experimental Education
Serial Year
2011
Journal title
The Journal of Experimental Education
Record number
708801
Link To Document