The generic summary_formula()
(note the underscore) expects a
formula argument and will attempt to identify the class of the LHS
of the formula and dispatch to the appropriate summary_formula
method.
summary_formula(object, ..., basis = NULL)# S3 method for ergm
summary_formula(object, ..., basis = NULL)
# S3 method for network.list
summary_formula(object, response = NULL, ..., basis = eval_lhs.formula(object))
# S3 method for network.list.list
summary_formula(object, response = NULL, ..., basis = eval_lhs.formula(object))
# S3 method for network
summary_formula(object, response = NULL, ..., basis = ergm.getnetwork(object))
# S3 method for ergm_state
summary_formula(object, ..., basis = NULL)
# S3 method for matrix
summary_formula(object, response = NULL, ..., basis = ergm.getnetwork(object))
# S3 method for default
summary_formula(object, response = NULL, ..., basis = ergm.getnetwork(object))
A vector of statistics measured on the network.
A two-sided formula.
further arguments passed to or used by methods.
Optional object of the same class as the LHS of the formula, substituted in place of the LHS.
Either a character string, a formula, or NULL
(the default), to specify the response attributes and whether the ERGM is binary or valued. Interpreted as follows:
NULL
Model simple presence or absence, via a binary ERGM.
The name of the edge attribute whose value is to be modeled. Type of ERGM will be determined by whether the attribute is logical
(TRUE
/FALSE
) for binary or numeric
for valued.
must be of the form NAME~EXPR|TYPE
(with |
being literal). EXPR
is evaluated in the formula's environment with the network's edge attributes accessible as variables. The optional NAME
specifies the name of the edge attribute into which the results should be stored, with the default being a concise version of EXPR
. Normally, the type of ERGM is determined by whether the result of evaluating EXPR
is logical or numeric, but the optional TYPE
can be used to override by specifying a scalar of the type involved (e.g., TRUE
for binary and 1
for valued).
summary_formula(ergm)
: an ergm
fit method, extracting its model from the fit.
summary_formula(network.list)
: a method for a network.list
on the LHS of the formula.
summary_formula(network.list.list)
: a method for a network.list.list
on
the LHS of the formula.
summary_formula(network)
: a method for a network
on the LHS of the formula.
summary_formula(ergm_state)
: a method for the semi-internal ergm_state
on the LHS of the formula.
summary_formula(matrix)
: a method for a matrix
on the LHS of the formula.
summary_formula(default)
: a fallback method.
ergm()
, network()
, ergmTerm
summary.ergm_model()
#
# Lets look at the Florentine marriage data
#
data(florentine)
#
# test the summary_formula function
#
summary(flomarriage ~ edges + kstar(2))
m <- as.matrix(flomarriage)
summary(m ~ edges) # twice as large as it should be
summary(m ~ edges, directed=FALSE) # Now it's correct
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