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lavaan
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Welcome to the lavaan discussion group. Lavaan is an R package for latent variable analysis.
If you enjoy using lavaan, please consider giving a donation to support the lavaan project. See:
https://lavaan.ugent.be/about/
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Christopher Galgo
7/14/19
Please help me. Can I use a vcv matrix of factor scores as input to lavaan?
I have a covariance matrix from factor scores and I want to use that as input for my analysis.
unread,
Heywood
analysis
covariance
covarianceMatrix
latent
lavaan
model
positive
r
regression
warning
Please help me. Can I use a vcv matrix of factor scores as input to lavaan?
I have a covariance matrix from factor scores and I want to use that as input for my analysis.
7/14/19
Isa...@hotmail.de
,
Terrence Jorgensen
6
4/27/19
Moderation in lavaan-Pathmodel
Ok, so letting the variables covary is not necessary because lavaan already allows them to covary?
unread,
covariance
definite
moderation
pathmodel
positive
warning
Moderation in lavaan-Pathmodel
Ok, so letting the variables covary is not necessary because lavaan already allows them to covary?
4/27/19
Terrence Jorgensen
2
1/30/19
Re: Bug with warning messages?
It's possible that lavaan internally sets warn=FALSE when bootstrapping so that 1000 copies of
unread,
LGM
error
negative
positive
warning
Re: Bug with warning messages?
It's possible that lavaan internally sets warn=FALSE when bootstrapping so that 1000 copies of
1/30/19
asas asas
,
Terrence Jorgensen
4
1/25/19
About the output of lavaan for lisrel model
does lavaan parameter them in the scale of sigma^2 Yes, they are variances, not SDs. If sigma^2 is
unread,
Output
check
definite
positive
About the output of lavaan for lisrel model
does lavaan parameter them in the scale of sigma^2 Yes, they are variances, not SDs. If sigma^2 is
1/25/19
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