The structure of an object of S3 class bn.
An object of class bn is a list containing at least the following
  components:
learning: a list containing some information about the results
      of the learning algorithm. It's never changed afterward.
whitelist: a copy of the whitelist argument (a
        two-column matrix, whose columns are labeled from and to)
        as transformed by sanitization functions.
blacklist: a copy of the blacklist argument (a
        two-column matrix, whose columns are labeled from and to)
        as transformed by sanitization functions.
test: the label of the conditional independence test used by
        the learning algorithm (a character string); the label of the network
        score is used for score-based algorithms; the label of the network score
        used in the “Maximize” phase of hybrid algorithms; "none" for
        randomly generated graphs. For hybrid algorithms, test always
        has the same value as maxscore (see below).
ntests: the number of conditional independence tests or
        score comparisons used in the learning (an integer value).
algo: the label of the learning algorithm or the random
        generation algorithm used to generate the network (a character string).
args: a list. The values of the parameters of either the
        conditional tests or the scores used in the learning process. Only the
        relevant ones are stored, so this may be an empty list.
alpha: the target nominal type I error rate (a numeric
            value) of the conditional independence tests.
iss: a positive numeric value, the imaginary sample size
            used by the bge and bde scores.
k: a positive numeric value, the penalty coefficient
            used by the aic, aic-g, bic and bic-g
            scores.
prob: the probability of each arc to be present in a
            graph generated by the ordered graph generation algorithm.
burn.in: the number of iterations for the ic-dag
            graph generation algorithm to converge to a stationary (and uniform)
            probability distribution.
max.degree: the maximum degree for any node in a graph
            generated by the ic-dag graph generation algorithm.
max.in.degree: the maximum in-degree for any node in a
            graph generated by the ic-dag graph generation algorithm.
max.out.degree: the maximum out-degree for any node in
             a graph generated by the ic-dag graph generation algorithm.
training: a character string, the label of the training
             node in a Bayesian network classifier.
threshold: the threshold used to determine which arcs
             are significant when averaging network structures.
prior: the graphical prior used in combination with a
		     Bayesian score such as bde or bge.
beta: the parameters of the graphical prior.
nodes: a list. Each element is named after a node and contains
      the following elements:
mb: the Markov blanket of the node (a vector of character
        strings).
nbr: the neighbourhood of the node (a vector of character
        strings).
parents: the parents of the node (a vector of character
        strings).
children: the children of the node (a vector of character
        strings).
arcs: the arcs of the Bayesian network (a two-column matrix,
      whose columns are labeled from and to). Undirected arcs
      are stored as two directed arcs with opposite directions between the
      corresponding incident nodes.
Additional (optional) components under learning:
optimized: whether additional optimizations have been used in
      the learning algorithm (a boolean value).
illegal: arcs that are illegal according to the parametric
      assumptions used to learn the network structure (a two-column matrix,
      whose columns are labeled from and to).
restrict: the label of the constraint-based algorithm used in
      the “Restrict” phase of a hybrid learning algorithm (a character
      string).
rtest: the label of the conditional independence test used in
      the “Restrict” phase of a hybrid learning algorithm (a character
      string).
maximize: the label of the score-based algorithm used in the
      “Maximize” phase of a hybrid learning algorithm (a character
      string).
maxscore: the label of the network score used in the
      “Maximize” phase of a hybrid learning algorithm (a character
      string).
max.sx: the maximum allowed size of the conditioning sets
      in the conditional independence tests used in constraint-based algorithms.