Description Usage Arguments Value Author(s) References See Also
Learn the structure of a Bayesian network using a hill-climbing (HC) or a Tabu search (TABU) greedy search.
1 2 3 4 | hc(x, start = NULL, whitelist = NULL, blacklist = NULL, score = NULL, ...,
debug = FALSE, restart = 0, perturb = 1, max.iter = Inf, maxp = Inf, optimized = TRUE)
tabu(x, start = NULL, whitelist = NULL, blacklist = NULL, score = NULL, ...,
debug = FALSE, tabu = 10, max.tabu = tabu, max.iter = Inf, maxp = Inf, optimized = TRUE)
|
x |
a data frame containing the variables in the model. |
start |
an object of class |
whitelist |
a data frame with two columns (optionally labeled "from" and "to"), containing a set of arcs to be included in the graph. |
blacklist |
a data frame with two columns (optionally labeled "from" and "to"), containing a set of arcs not to be included in the graph. |
score |
a character string, the label of the network score to
be used in the algorithm. If none is specified, the default
score is the Bayesian Information Criterion for both
discrete and continuous data sets. See |
... |
additional tuning parameters for the network score.
See |
debug |
a boolean value. If |
restart |
an integer, the number of random restarts. |
tabu |
a positive integer number, the length of the tabu list used
in the |
max.tabu |
a positive integer number, the iterations tabu search can perform without improving the best network score. |
perturb |
an integer, the number of attempts to randomly insert/remove/reverse an arc on every random restart. |
max.iter |
an integer, the maximum number of iterations. |
maxp |
the maximum number of parents for a node. The default
value is |
optimized |
a boolean value. See |
An object of class bn
.
See bn-class
for details.
Marco Scutari
Russell SJ, Norvig P (2009). Artificial Intelligence: A Modern Approach. Prentice Hall, 3rd edition.
Korb K, Nicholson AE (2010). Bayesian Artificial Intelligence. Chapman & Hall/CRC, 2nd edition.
Margaritis D (2003). Learning Bayesian Network Model Structure from Data. Ph.D. thesis, School of Computer Science, Carnegie-Mellon University, Pittsburgh, PA. Available as Technical Report CMU-CS-03-153.
Daly R, Shen Q (2007). "Methods to Accelerate the Learning of Bayesian Network Structures". In "Proceedings of the 2007 UK Workshop on Computational Intelligence", Imperial College, London.
constraint-based algorithms, hybrid algorithms,
local discovery algorithms.
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