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)