TY - JOUR
T1 - Using SAS PROC CALIS to fit Level-1 error covariance structures of latent growth models
AU - Ding, Cherng G.
AU - Jane, Ten Der
PY - 2012/9
Y1 - 2012/9
N2 - In the present article, we demonstrates the use of SAS PROC CALIS to fit various types of Level-1 error covariance structures of latent growth models (LGM). Advantages of the SEM approach, on which PROC CALIS is based, include the capabilities of modeling the change over time for latent constructs, measured by multiple indicators; embedding LGM into a larger latent variable model; incorporating measurement models for latent predictors; and better assessing model fit and the flexibility in specifying error covariance structures. The strength of PROC CALIS is always accompanied with technical coding work, which needs to be specifically addressed. We provide a tutorial on the SAS syntax for modeling the growth of a manifest variable and the growth of a latent construct, focusing the documentation on the specification of Level-1 error covariance structures. Illustrations are conducted with the data generated from two given latent growth models. The coding provided is helpful when the growth model has been well determined and the Level-1 error covariance structure is to be identified.
AB - In the present article, we demonstrates the use of SAS PROC CALIS to fit various types of Level-1 error covariance structures of latent growth models (LGM). Advantages of the SEM approach, on which PROC CALIS is based, include the capabilities of modeling the change over time for latent constructs, measured by multiple indicators; embedding LGM into a larger latent variable model; incorporating measurement models for latent predictors; and better assessing model fit and the flexibility in specifying error covariance structures. The strength of PROC CALIS is always accompanied with technical coding work, which needs to be specifically addressed. We provide a tutorial on the SAS syntax for modeling the growth of a manifest variable and the growth of a latent construct, focusing the documentation on the specification of Level-1 error covariance structures. Illustrations are conducted with the data generated from two given latent growth models. The coding provided is helpful when the growth model has been well determined and the Level-1 error covariance structure is to be identified.
KW - Error covariance structure
KW - Latent growth model
KW - Structural equation modeling
UR - http://www.scopus.com/inward/record.url?scp=84865654824&partnerID=8YFLogxK
U2 - 10.3758/s13428-011-0171-z
DO - 10.3758/s13428-011-0171-z
M3 - Article
C2 - 22351601
AN - SCOPUS:84865654824
SN - 1554-351X
VL - 44
SP - 765
EP - 787
JO - Behavior Research Methods
JF - Behavior Research Methods
IS - 3
ER -