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Welcome to the lavaan discussion group. Lavaan is an R package for latent variable analysis.
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franz...@gmail.com
, …
Terrence Jorgensen
6
8/3/18
How do I find out who is included in the fitting?
is it possible to save something like a dummy variable to exclude people from analysis with less
unread,
included
missings
sem
How do I find out who is included in the fitting?
is it possible to save something like a dummy variable to exclude people from analysis with less
8/3/18
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