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About
lavaan
1–8 of 4558
Welcome to the lavaan discussion group. Lavaan is an R package for latent variable analysis.
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Atanas Janackovski
, …
Terrence Jorgensen
12
10/4/21
Running RI-CLPM with semTools auxiliary: residuals of the observed variables (theta) is not positive definite;
The only questions I have is when bringing the aux vars into the model, should they be constrained so
unread,
auxiliary
fiml
ri-clpm
semTools
Running RI-CLPM with semTools auxiliary: residuals of the observed variables (theta) is not positive definite;
The only questions I have is when bringing the aux vars into the model, should they be constrained so
10/4/21
Ulrich Schroeders
,
Atanas Janackovski
7
9/17/21
Random-Intercept Cross-Lagged Panel Model with auxiliary variables
Hey Ulrich, I am now trying something similar to what you are suggesting in this post. I'm
unread,
auxiliary
fiml
semTools
Random-Intercept Cross-Lagged Panel Model with auxiliary variables
Hey Ulrich, I am now trying something similar to what you are suggesting in this post. I'm
9/17/21
Patrick Paschke
,
Terrence Jorgensen
2
3/29/19
error covariance of auxiliary variables
I checked the error covariances and found that all covariances substantially deviating from 0 are
unread,
fiml
missing
regression
sem
warning
error covariance of auxiliary variables
I checked the error covariances and found that all covariances substantially deviating from 0 are
3/29/19
kinga.bie...@gmail.com
,
Terrence Jorgensen
7
3/22/19
FIML and missing standard errors
Dear Terrence, Thanks a million for your advice! I was convinced group.equal would take care of
unread,
fiml
missing
standard-errors
FIML and missing standard errors
Dear Terrence, Thanks a million for your advice! I was convinced group.equal would take care of
3/22/19
sd1808
,
Terrence Jorgensen
4
2/8/19
Interaction within the groups
Can I confirm that in both the model the x:a1 is comparing when a=0 with when a=1. No, you are
unread,
fiml
interaction
linear
regression
Interaction within the groups
Can I confirm that in both the model the x:a1 is comparing when a=0 with when a=1. No, you are
2/8/19
Shimon Sarraf
,
Terrence Jorgensen
5
11/12/18
growth model with missing time variant covariates
Thank you once again, Prof. Jorgensen. I really appreciate your assistance. I have managed to produce
unread,
fiml
lcm
missing
tvc
growth model with missing time variant covariates
Thank you once again, Prof. Jorgensen. I really appreciate your assistance. I have managed to produce
11/12/18
Benedikt Heuckmann
, …
Terrence Jorgensen
8
4/9/20
FIML and Multiple Imputation show different results in interaction model and in MIMIC model
I am still running into the same error as I was before: "Error in data[, var1] : incorrect
unread,
MLR
fiml
interaction
mice_runMI
missings
multi-imputed
semTools
FIML and Multiple Imputation show different results in interaction model and in MIMIC model
I am still running into the same error as I was before: "Error in data[, var1] : incorrect
4/9/20
George
,
Terrence Jorgensen
3
9/12/18
repeated measures Lavaan regression model (with moderation)
Since you have a continuous (rather than categorical) moderator, and you want a "pure regression
unread,
categorical
fiml
measurement
measures
moderation
observed
regression
repeated
repeated measures Lavaan regression model (with moderation)
Since you have a continuous (rather than categorical) moderator, and you want a "pure regression
9/12/18
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