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About
lavaan
1–8 of 4571
Welcome to the lavaan discussion group. Lavaan is an R package for latent variable analysis.
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Burt Hatch
, …
Nickname
3
2/21/20
Compare correlations between latent factors and observed variables
Burt, I have to wonder if there is not a deeper quandary behind your question. The fundamental
unread,
bifactor
imputed
partial
syntax
Compare correlations between latent factors and observed variables
Burt, I have to wonder if there is not a deeper quandary behind your question. The fundamental
2/21/20
Sebastian85
,
Terrence Jorgensen
2
10/2/19
Error using function "reliability" (semTools) with object of lavaan.mi and categorial variables
0.5-2 threw an error for complete ordered data, too. Although the error message was different, this
unread,
imputation
imputed
ordered
reliability
semTools
Error using function "reliability" (semTools) with object of lavaan.mi and categorial variables
0.5-2 threw an error for complete ordered data, too. Although the error message was different, this
10/2/19
garc...@unlv.nevada.edu
, …
Terrence Jorgensen
3
8/9/18
Pooling factor scores across imputed data sets?
There are rules on how to pool parameters and standard errors with multiple imputations. I would see
unread,
imputed
lavaan
Pooling factor scores across imputed data sets?
There are rules on how to pool parameters and standard errors with multiple imputations. I would see
8/9/18
Ionut Mone
,
Terrence Jorgensen
2
8/7/18
pooling mean and standard deviation over multiple imputed data with mice package
Does anybody know how i could calculate the pooled means and standard deviations of variables in my
unread,
imputed
mean
pooling mean and standard deviation over multiple imputed data with mice package
Does anybody know how i could calculate the pooled means and standard deviations of variables in my
8/7/18
garc...@unlv.nevada.edu
, …
Terrence Jorgensen
3
7/31/18
Modification indices from imputed data
I get this error message: Error in modindices(fit.mod.c2.wlsmvs.mi) : no slot of name "optim
unread,
imputed
modindices
Modification indices from imputed data
I get this error message: Error in modindices(fit.mod.c2.wlsmvs.mi) : no slot of name "optim
7/31/18
fotin...@gmail.com
, …
Terrence Jorgensen
4
7/31/18
cfa.mi function with multiply imputed data set
> fitallM1a <- cfa.mi(Model1a, data = mi_list, estimator = "WLSMV") Error in (
unread,
WLSMV
categorical
error
imputed
ordered
cfa.mi function with multiply imputed data set
> fitallM1a <- cfa.mi(Model1a, data = mi_list, estimator = "WLSMV") Error in (
7/31/18
dist...@umn.edu
, …
Terrence Jorgensen
5
7/31/18
Issue with pooled fit indices for longitudinal invariance model with multiply imputed data
Regarding my earlier post, I was confused by your calling the configural model "baseline.model
unread,
categorical
imputed
invariance
semTools
Issue with pooled fit indices for longitudinal invariance model with multiply imputed data
Regarding my earlier post, I was confused by your calling the configural model "baseline.model
7/31/18
garc...@unlv.nevada.edu
,
Terrence Jorgensen
4
7/24/18
Infinity degrees of freedom and no standard errors when running runMI command
However, is my variance also a fixed parameter in this case? Those values do not seem to be fixed to
unread,
CFA
imputed
standard-errors
Infinity degrees of freedom and no standard errors when running runMI command
However, is my variance also a fixed parameter in this case? Those values do not seem to be fixed to
7/24/18
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