Bridge sampling to evaluate ERGM log-likelihoods and log-likelihood ratios
ergm.bridge.llr
uses bridge sampling with geometric spacing to
estimate the difference between the log-likelihoods of two parameter vectors
for an ERGM via repeated calls to simulate.formula.ergm
.
ergm.bridge.0.llk
is a convenience wrapper that
returns the log-likelihood of configuration θ
relative to the reference measure. That is, the
configuration with θ=0 is defined as having log-likelihood of
0.
ergm.bridge.dindstart.llk
is a wrapper that uses a
dyad-independent ERGM as a starting point for bridge sampling to
estimate the log-likelihood for a given dyad-dependent model and
parameter configuration. Note that it only handles binary ERGMs
(response=NULL
) and with constraints (constraints=
) that that
do not induce dyadic dependence.
ergm.bridge.llr( object, response = NULL, constraints = ~., from, to, basis = NULL, verbose = FALSE, ..., llronly = FALSE, control = control.ergm.bridge() ) ergm.bridge.0.llk( object, response = response, constraints = ~., coef, ..., llkonly = TRUE, control = control.ergm.bridge() ) ergm.bridge.dindstart.llk( object, response = NULL, constraints = ~., coef, dind = NULL, coef.dind = NULL, basis = NULL, ..., llkonly = TRUE, control = control.ergm.bridge() )
object |
A model formula. See |
response |
Name of the edge attribute whose value is to be
modeled in the valued ERGM framework. Defaults to |
constraints |
A one-sided formula specifying one or more
constraints on the support of the distribution of the networks
being simulated. See the documentation for a similar argument for
|
from, to |
The initial and final parameter vectors. |
basis |
An optional |
verbose |
Logical: If TRUE, print detailed information. |
... |
Further arguments to |
llronly |
Logical: If TRUE, only the estiamted log-ratio will
be returned by |
control |
Control arguments. See
|
coef |
A vector of coefficients for the configuration of interest. |
llkonly |
Whether only the estiamted log-likelihood should be
returned by the |
dind |
A one-sided formula with the dyad-independent model to use as a
starting point. Defaults to the dyad-independent terms found in the formula
|
coef.dind |
Parameter configuration for the dyad-independent starting
point. Defaults to the MLE of |
If llronly=TRUE
or llkonly=TRUE
, these functions return
the scalar log-likelihood-ratio or the log-likelihood.
Otherwise, they return a list with the following components:
llr |
The estimated log-ratio. |
llrs |
The estimated
log-ratios for each of the |
path |
A numeric matrix with nsteps rows, with each row being the respective bridge's parameter configuration. |
stats |
A numeric matrix with nsteps rows, with each row being the respective bridge's vector of simulated statistics. |
Dtheta.Du |
The gradient vector of the parameter values with respect to position of the bridge. |
ergm.bridge.0.llk
result list also includes an llk
element, with the log-likelihood itself (with the reference
distribution assumed to have likelihood 0).
ergm.bridge.dindstart.llk
result list also includes
an llk
element, with the log-likelihood itself and an
llk.dind
element, with the log-likelihood of the nearest
dyad-independent model.
Hunter, D. R. and Handcock, M. S. (2006) Inference in curved exponential family models for networks, Journal of Computational and Graphical Statistics.
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