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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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Stephan Junker
,
Yves Rosseel
2
6/9/20
bug since new version?: se=robust.cluster
On 6/8/20 1:06 PM, 'Stephan Junker' via lavaan wrote: > sdq_fit <-sem(data=example,
unread,
SE
bug
clustering
bug since new version?: se=robust.cluster
On 6/8/20 1:06 PM, 'Stephan Junker' via lavaan wrote: > sdq_fit <-sem(data=example,
6/9/20
Pasha
2/27/20
Model fit with and without correction for clustering
Hello everyone! I estimate a model with two latent factors (3 categorical indicators each), a control
unread,
clustering
correction
fit
syntax
Model fit with and without correction for clustering
Hello everyone! I estimate a model with two latent factors (3 categorical indicators each), a control
2/27/20
Elisabeth Graf
,
Terrence Jorgensen
6
6/25/19
Cluster Variable contains missing values
it seems as it takes all missing values as one cluster. In that case, you can assign them unique IDs,
unread,
clustering
data
nested
partially
Cluster Variable contains missing values
it seems as it takes all missing values as one cluster. In that case, you can assign them unique IDs,
6/25/19
jordo...@gmail.com
,
Terrence Jorgensen
4
3/6/19
Clustered data troubleshooting- nlevels> 1L is not TRUE?
Yes, so I should specify a saturated model at the second level. If you want a saturated Level-2 model
unread,
MLM
clustering
multilevel
Clustered data troubleshooting- nlevels> 1L is not TRUE?
Yes, so I should specify a saturated model at the second level. If you want a saturated Level-2 model
3/6/19
Shu Tian Ng
,
Chao Xu
2
12/29/18
Accounting for nestedness for ordinal data
Shu, You are right that lavaan doesn't support multilevel CFA/SEM on ordinal measures yet. To my
unread,
clustering
ordinal
survey
Accounting for nestedness for ordinal data
Shu, You are right that lavaan doesn't support multilevel CFA/SEM on ordinal measures yet. To my
12/29/18
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