Assign, extract or compute various quantities of interest from an object of
class bn.fit
, bn.fit.dnode
, bn.fit.gnode
,
bn.fit.cgnode
or bn.fit.onode
.
## methods available for "bn.fit"
# S3 method for bn.fit
fitted(object, ...)
# S3 method for bn.fit
coef(object, ...)
# S3 method for bn.fit
residuals(object, ...)
# S3 method for bn.fit
sigma(object, ...)
# S3 method for bn.fit
logLik(object, data, nodes, by.sample = FALSE, na.rm = FALSE, debug = FALSE, ...)
# S3 method for bn.fit
AIC(object, data, ..., k = 1)
# S3 method for bn.fit
BIC(object, data, ...)## methods available for "bn.fit.dnode"
# S3 method for bn.fit.dnode
coef(object, for.parents, ...)
## methods available for "bn.fit.onode"
# S3 method for bn.fit.onode
coef(object, for.parents, ...)
## methods available for "bn.fit.gnode"
# S3 method for bn.fit.gnode
fitted(object, ...)
# S3 method for bn.fit.gnode
coef(object, ...)
# S3 method for bn.fit.gnode
residuals(object, ...)
# S3 method for bn.fit.gnode
sigma(object, ...)
## methods available for "bn.fit.cgnode"
# S3 method for bn.fit.cgnode
fitted(object, ...)
# S3 method for bn.fit.cgnode
coef(object, for.parents, ...)
# S3 method for bn.fit.cgnode
residuals(object, ...)
# S3 method for bn.fit.cgnode
sigma(object, for.parents, ...)
logLik()
returns a numeric vector or a single numeric value, depending
on the value of by.sample
. AIC
and BIC
always return a
single numeric value.
All the other functions return a list with an element for each node in the
network (if object
has class bn.fit
) or a numeric vector or
matrix (if object
has class bn.fit.dnode
, bn.fit.gnode
,
bn.fit.cgnode
or bn.fit.onode
).
an object of class bn.fit
, bn.fit.dnode
,
bn.fit.gnode
, bn.fit.cgnode
or bn.fit.onode
.
a vector of character strings, the label of a nodes whose log-likelihood components are to be computed.
a data frame containing the variables in the model.
additional arguments, currently ignored.
a numeric value, the penalty coefficient to be used; the default
k = 1
gives the expression used to compute AIC.
a boolean value. If TRUE
, logLik()
returns
a vector containing the the log-likelihood of each observations in the
sample. If FALSE
, logLik()
returns a single value, the
likelihood of the whole sample.
a boolean value, whether missing values should be used in
computing the log-likelihood. See below for details. The default value is
FALSE
, and it only has an effect if by.sample = FALSE
.
a boolean value. If TRUE
a lot of debugging output is
printed; otherwise the function is completely silent.
a named list in which each element contains a set of values
for the discrete parents of the nodes. codef()
and sigma()
will only return the parameters associated with those parent configurations.
(Only relevant for conditional Gaussian nodes.)
Marco Scutari
coef()
(and its alias coefficients()
) extracts model
coefficients (which are conditional probabilities for discrete nodes and
linear regression coefficients for Gaussian and conditional Gaussian nodes).
residuals()
(and its alias resid()
) extracts model residuals and
fitted()
(and its alias
fitted.values()
) extracts fitted
values from Gaussian and conditional Gaussian nodes. If the bn.fit
object does not include the residuals or the fitted values for the node of
interest both functions return NULL
.
sigma()
extracts the standard deviations of the residuals from Gaussian
and conditional Gaussian networks and nodes.
logLik()
returns the log-likelihood for the observations in
data
. If na.rm
is set to TRUE
, the log-likelihood will be
NA
if the data contain missing values. If na.rm
is set to
FALSE
, missing values will be dropped and the log-likelihood will be
computed using only locally-complete observations (effectively returning the
node-average log-likelihood times the sample size). Note that the
log-likelihood may be NA
even if na.rm = TRUE
if the network
contains NA
parameters or is singular.
The for.parents
argument in the methods for coef()
and
sigma()
can be used to have both functions return the parameters
associated with a specific configuration of the discrete parents of a node.
If for.parents
is not specified, all relevant parameters are returned.
bn.fit
, bn.fit-class
.
data(gaussian.test)
dag = hc(gaussian.test)
fitted = bn.fit(dag, gaussian.test)
coefficients(fitted)
coefficients(fitted$C)
str(residuals(fitted))
data(learning.test)
dag2 = hc(learning.test)
fitted2 = bn.fit(dag2, learning.test)
coefficients(fitted2$E)
coefficients(fitted2$E, for.parents = list(F = "a", B = "b"))
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