View source: R/E4_FactorQuery.R
FactorQuery | R Documentation |
Obtain the joint, marginal, and conditional distributions of discrete variables
FactorQuery(tree, vars = c(), mode = c("joint", "conditional", "list"))
tree |
a |
vars |
the variables to be queried |
mode |
type of desired distribution |
Query the joint distribution of any combination of discrete variables when
mode is "joint", or conditional distribution of a discrete variable. The mode "list"
return a list
of variable combinations, such that joint distributions of any subset
of them are ready for extraction. Queries outside this list are also supported but may
take longer computing time. This function will also return marginal distribution if only
one variable is queried.
data.frame
object specifying a joint or conditional distribution.
Han Yu
Cowell, R. G. (2005). Local propagation in conditional Gaussian Bayesian networks.
Journal of Machine Learning Research, 6(Sep), 1517-1550.
Yu H, Moharil J, Blair RH (2020). BayesNetBP: An R Package for Probabilistic Reasoning in Bayesian
Networks. Journal of Statistical Software, 94(3), 1-31. <doi:10.18637/jss.v094.i03>.
data(chest) dag <- chest$dag node.class <- rep(TRUE, length(dag@nodes)) names(node.class) <- dag@nodes tree.init.p <- Initializer(dag=dag, data=chest$data, node.class=node.class, propagate=TRUE) # joint distribution FactorQuery(tree=tree.init.p, vars=c("tub", "xray", "dysp", "asia"), mode="joint") # conditional distribution FactorQuery(tree=tree.init.p, vars=c("xray"), mode="conditional")
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