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About
lavaan
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Welcome to the lavaan discussion group. Lavaan is an R package for latent variable analysis.
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John Gelissen
,
Terrence Jorgensen
2
4/16/20
fixed group-specific residual covariances with measEq.syntax {SEMTOOLS} not always estimated
I am trying to figure out how I can specify a model with configural measurement invariance, with the
unread,
invariance
measEqsyntax
measurement
multigroup
semTools
fixed group-specific residual covariances with measEq.syntax {SEMTOOLS} not always estimated
I am trying to figure out how I can specify a model with configural measurement invariance, with the
4/16/20
Blaž Rebernjak
,
Terrence Jorgensen
4
3/21/20
Questions about using lavaan with multiple imputations on longitudinal data with multiple groups
No, we are using theta, but I couldn't come up with a reproducible example, I think it could be
unread,
WLSMV
imputation
measEqsyntax
multigroup
multiple
Questions about using lavaan with multiple imputations on longitudinal data with multiple groups
No, we are using theta, but I couldn't come up with a reproducible example, I think it could be
3/21/20
João Marôco
,
Terrence Jorgensen
5
7/6/19
measurment invariance for categorical itens: "measurmentinvarianceCAT" vs measEQ.Syntax
Thanks Terrence,. Yes, I did that (I left the 2nd order comment by mistake). The thresholds model
unread,
invariance
measEqsyntax
semTools
measurment invariance for categorical itens: "measurmentinvarianceCAT" vs measEQ.Syntax
Thanks Terrence,. Yes, I did that (I left the 2nd order comment by mistake). The thresholds model
7/6/19
João Marôco
,
Terrence Jorgensen
6
6/29/19
measEq.syntax() Error in TEST[[2]] : subscript out of bounds
No, no... 390 per group... But, yes... For measurement invariance with WLSMV does not suffice. It
unread,
measEqsyntax
semTools
measEq.syntax() Error in TEST[[2]] : subscript out of bounds
No, no... 390 per group... But, yes... For measurement invariance with WLSMV does not suffice. It
6/29/19
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