Usage
learn.mb(x, node, method, whitelist = NULL, blacklist = NULL, start = NULL,
  test = NULL, alpha = 0.05, B = NULL, debug = FALSE)
learn.nbr(x, node, method, whitelist = NULL, blacklist = NULL,
  test = NULL, alpha = 0.05, B = NULL, debug = FALSE)
Arguments
x
a data frame containing the variables in the model.
node
a character string, the label of the node whose local structure
    is being learned.
whitelist
a vector of character strings, the labels of the whitelisted
    nodes.
blacklist
a vector of character strings, the labels of the blacklisted
    nodes.
start
a vector of character strings, the labels of the nodes to be
    included in the Markov blanket before the learning process (in
    learn.mb). Note that the nodes in start can be removed from
    the Markov blanket by the learning algorithm, unlike the nodes included due
    to whitelisting.
test
a character string, the label of the conditional independence test
    to be used in the algorithm. If none is specified, the default test statistic
    is the mutual information for categorical variables, the 
    Jonckheere-Terpstra test for ordered factors and the linear
    correlation for continuous variables. See bnlearn-package for
    details. alpha
a numeric value, the target nominal type I error rate.
B
a positive integer, the number of permutations considered for each
    permutation test. It will be ignored with a warning if the conditional
    independence test specified by the test argument is not a permutation
    test.
debug
a boolean value. If TRUE a lot of debugging output is 
    printed; otherwise the function is completely silent.