| gof.ergmm {latentnet} | R Documentation |
Conduct Goodness-of-Fit Diagnostics on a Exponential Family Random Graph Mixed Model Fit
Description
gof calculates p-values for geodesic distance, degree,
and reachability summaries to diagnose the goodness-of-fit of exponential
family random graph mixed models. See ergmm for more
information on these models.
Usage
## S3 method for class 'ergmm'
gof(
object,
...,
nsim = 100,
GOF = ~idegree + odegree + distance,
verbose = FALSE
)
Arguments
object |
|
... |
Additional arguments, to be passed to lower-level functions in the future. |
nsim |
The number of simulations to use for the MCMC |
GOF |
formula; an formula object, of the form |
verbose |
Provide verbose information on the progress of the simulation. |
Details
A sample of graphs is randomly drawn from the posterior of the
ergmm.
A plot of the summary measures is plotted. More information can be found by
looking at the documentation of ergm.
Value
gof and gof.ergmm return an object of
class gof. This is a list of the tables of statistics and
p-values. This is typically plotted using
plot.gof.
See Also
ergmm, ergmm (object),
ergm, network, simulate.ergmm,
plot.gof
Examples
#
data(sampson)
#
# test the gof.ergm function
#
samplike.fit <- ergmm(samplike ~ euclidean(d=2,G=3),
control=ergmm.control(burnin=1000,interval=5))
samplike.fit
summary(samplike.fit)
#
# Plot the probabilities first
#
monks.gof <- gof(samplike.fit)
monks.gof
#
# Place all three on the same page
# with nice margins
#
par(mfrow=c(1,3))
par(oma=c(0.5,2,1,0.5))
#
plot(monks.gof)
#
# And now the odds
#
plot(monks.gof, plotlogodds=TRUE)