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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:
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Helena Blackmore
,
Terrence Jorgensen
3
2/14/20
multilevel SEM with lavaan
Thank you! This is really helpful. I considered using the mediation package, but wasn't sure
unread,
MLM
lavaan
mediation
multilevel
repeated
sem
multilevel SEM with lavaan
Thank you! This is really helpful. I considered using the mediation package, but wasn't sure
2/14/20
Raquel Juan Ovejero
, …
Mauricio Garnier-Villarreal
5
1/23/19
SEM with variables with different number of replications.
Also, you could use FIML. FIML its a model based approach, so if you set a model that accounts for
unread,
repeated
SEM with variables with different number of replications.
Also, you could use FIML. FIML its a model based approach, so if you set a model that accounts for
1/23/19
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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