glance.graph_lme | R Documentation |
graph_lme
objectGlance accepts a graph_lme
object and returns a
tidyr::tibble()
with exactly one row of model summaries.
The summaries are the square root of the estimated variance of the measurement error, residual
degrees of freedom, AIC, BIC, log-likelihood,
the type of latent model used in the fit and the total number of observations.
## S3 method for class 'graph_lme'
glance(x, ...)
x |
A |
... |
Additional arguments. Currently not used. |
A tidyr::tibble()
with exactly one row and columns:
nobs
Number of observations used.
sigma
the square root of the estimated residual variance
logLik
The log-likelihood of the model.
AIC
Akaike's Information Criterion for the model.
BIC
Bayesian Information Criterion for the model.
deviance
Deviance of the model.
df.residual
Residual degrees of freedom.
model.type
Type of latent model fitted.
augment.graph_lme
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