Find the equivalence class and the v-structures of a Bayesian network, construct its moral graph, or create a consistent extension of an equivalent class.
cpdag(x, moral = FALSE, wlbl = FALSE, debug = FALSE)
cextend(x, strict = TRUE, debug = FALSE)
moral(x, debug = FALSE)colliders(x, arcs = FALSE, debug = FALSE)
shielded.colliders(x, arcs = FALSE, debug = FALSE)
unshielded.colliders(x, arcs = FALSE, debug = FALSE)
vstructs(x, arcs = FALSE, moral = FALSE, debug = FALSE)
an object of class bn
or bn.fit
(with the exception of
cextend
, which only accepts objects of class bn
).
a boolean value. If TRUE
the arcs that are part of at least
one v-structure are returned instead of the v-structures themselves.
a boolean value. If FALSE
we define a v-structure as in
Pearl (2000); if TRUE
, as in Koller and Friedman (2009). See below.
a boolean value. If TRUE
arcs whose directions have been
fixed by a whitelist or a by blacklist are preserved when constructing
the CPDAG.
a boolean value. If no consistent extension is possible and
strict
is TRUE
, an error is generated; otherwise a partially
extended graph is returned with a warning.
a boolean value. If TRUE
a lot of debugging output is
printed; otherwise the function is completely silent.
cpdag()
returns an object of class bn
, representing the
equivalence class. moral
on the other hand returns the moral graph.
See bn-class
for details.
cextend()
returns an object of class bn
, representing a DAG that
is the consistent extension of x
.
vstructs()
returns a matrix with either 2 or 3 columns, according to the
value of the arcs
argument.
What kind of arc configuration is called a v-structure is not uniquely defined in literature. The original definition from Pearl (2000), which is still followed by most texts and papers, states that the two parents in the v-structure must not be connected by an arc. However, Koller and Friedman (2009) call that a immoral v-structure and call a moral v-structure a v-structure in which the parents are linked by an arc. This mirrors the unshielded versus shielded collider naming convention, but it is confusing.
Setting moral
to TRUE
in cpdag()
and vstructs()
makes those functions follow the definition from Koller and Friedman (2009);
the default value of FALSE
, on the other hand, makes those functions
follow the definition from Pearl (2000). The former call v-structures
both shielded and unshielded colliders (respectively moral v-structures
and immoral v-structures); the latter requires v-structures to be
unshielded colliders. Hence, the moral
argument controls whether moral
v-structures (shielded colliders) are returned along with immoral v-structures
(unshielded collides).
Note that arcs whose directions are dictated by the parametric assumptions of
conditional linear Gaussian networks are preserved as directed arcs in
cpdag()
.
Dor D (1992). A Simple Algorithm to Construct a Consistent Extension of a Partially Oriented Graph. UCLA, Cognitive Systems Laboratory.
Koller D, Friedman N (2009). Probabilistic Graphical Models: Principles and Techniques. MIT Press.
Pearl J (2009). Causality: Models, Reasoning and Inference. Cambridge University Press, 2nd edition.
# NOT RUN {
data(learning.test)
res = gs(learning.test)
cpdag(res)
vstructs(res)
# }
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