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Welcome to the lavaan discussion group. Lavaan is an R package for latent variable analysis.
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Amonet
, …
Terrence Jorgensen
6
7/15/18
How to obtain the 'imputed data' from the FIML estimator? (needed for making QQ plots)
so I can for example make a QQ plot of the observed indicators indicators (ie use the raw data sample
unread,
estimator
missing
skew
How to obtain the 'imputed data' from the FIML estimator? (needed for making QQ plots)
so I can for example make a QQ plot of the observed indicators indicators (ie use the raw data sample
7/15/18
christophe...@nicholls.edu
,
Terrence Jorgensen
3
6/30/18
Measurement invariance for ordered categorical data (Likert) and missing item responses
Thanks Terrence. This is helpful. As for the sample size issue, I agree that my sample size is rather
unread,
DWLS
invariance
missing
skew
Measurement invariance for ordered categorical data (Likert) and missing item responses
Thanks Terrence. This is helpful. As for the sample size issue, I agree that my sample size is rather
6/30/18
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