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lavaan
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Welcome to the lavaan discussion group. Lavaan is an R package for latent variable analysis.
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Myriam
,
Terrence Jorgensen
4
1/19/21
WLSMV Interpreting probit coefficients and thresholds in terms of probability
In this model I used theta parameterization, so it's the residual variance of Y1* that has unit
unread,
WLSMV
categorical
probit
threshold
WLSMV Interpreting probit coefficients and thresholds in terms of probability
In this model I used theta parameterization, so it's the residual variance of Y1* that has unit
1/19/21
Ugur Ozdemir
,
Nickname
3
3/30/20
Predicted Probability Plots For Probit
Hi Keith, Thank you very much for your response. It was tedious but I was able to do it, and your
unread,
logit
predictedprobability
probit
Predicted Probability Plots For Probit
Hi Keith, Thank you very much for your response. It was tedious but I was able to do it, and your
3/30/20
Karolina Ścigała
,
jpma...@gmail.com
5
12/5/19
logistic regression in lavaan
It is working well! Thank you so much. Best, Karolina On Thursday, 5 December 2019 10:25:42 UTC+1,
unread,
logistic_regression
logit
odds_ratio
probit
logistic regression in lavaan
It is working well! Thank you so much. Best, Karolina On Thursday, 5 December 2019 10:25:42 UTC+1,
12/5/19
Nedim Yel
,
Terrence Jorgensen
3
1/17/19
Probit regression reported R square
I appreciate the response. Thank you On Thursday, January 3, 2019 at 2:39:29 PM UTC-5, Terrence
unread,
lavaan
probit
probit-regression
pseudo-R-squared
regression
Probit regression reported R square
I appreciate the response. Thank you On Thursday, January 3, 2019 at 2:39:29 PM UTC-5, Terrence
1/17/19
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