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Welcome to the lavaan discussion group. Lavaan is an R package for latent variable analysis.
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Scott Claessens
,
Terrence Jorgensen
2
8/17/19
Computing factor scores (with standard errors) for a follow-up Bayesian analysis
However, I was under the impression that this approach would give me a different standard error for
unread,
latent
predict
standard-errors
Computing factor scores (with standard errors) for a follow-up Bayesian analysis
However, I was under the impression that this approach would give me a different standard error for
8/17/19
Ana Inés
,
Christopher David Desjardins
3
7/18/19
factors scores from a cfa into a .csv file, strange numbers...
Thank you very much, Christopher, for your answer! I used the same code as you. Then read carefully
unread,
CFA
CSV
predict
factors scores from a cfa into a .csv file, strange numbers...
Thank you very much, Christopher, for your answer! I used the same code as you. Then read carefully
7/18/19
Stefan
,
Terrence Jorgensen
2
8/25/18
Predicting factor scores while leaving out certain indicators
Missing (NA) is very different from saying the value is known to be zero (on the scale of the
unread,
CFA
lavPredict
predict
Predicting factor scores while leaving out certain indicators
Missing (NA) is very different from saying the value is known to be zero (on the scale of the
8/25/18
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