naive.bayes(training, explanatory, data)
## S3 method for class 'bn.naive':
predict(object, data, prior, ..., prob = FALSE, debug = FALSE)tree.bayes(x, training, explanatory, whitelist = NULL, blacklist = NULL,
mi = NULL, root = NULL, debug = FALSE)
## S3 method for class 'bn.tan':
predict(object, data, prior, ..., prob = FALSE, debug = FALSE)
bn.naive
, either fitted or not.mi
(discrete mutual information) and mi-g
(Gaussian mutual information).TRUE
the posterior probabilities
used for prediction are attached to the predicted values as an attribute
called prob
.TRUE
a lot of debugging output
is printed; otherwise the function is completely silent.naive.bayes
returns an object of class c("bn.naive", "bn")
,
which behaves like a normal bn
object unless passed to predict
.
tree.bayes
returns an object of class c("bn.tan", "bn")
,
which again behaves like a normal bn
object unless passed to
predict
. predict
returns a factor with the same levels as the training
variable from data
. If prob = TRUE
, the posterior probabilities
used for prediction are attached to the predicted values as an attribute
called prob
.
naive.bayes
functions creates the star-shaped Bayesian network
form of a naive Bayes classifier; the training variable (the one holding
the group each observation belongs to) is at the center of the star, and
it has an outgoing arc for each explanatory variable. If data
is specified, explanatory
will be ignored and the
labels of the explanatory variables will be extracted from the data.
predict
performs a supervised classification of the observations
by assigning them to the group with the maximum posterior probability.
Friedman N, Geiger D, Goldszmidt M (1997). "Bayesian Network Classifiers". Machine Learning, 29(2--3), 131--163.
data(learning.test)
bn = naive.bayes("A", LETTERS[2:6])
pred = predict(bn, learning.test)
table(pred, learning.test[, "A"])
tan = tree.bayes(learning.test, "A")
fitted = bn.fit(tan, learning.test, method = "bayes")
pred = predict(fitted, learning.test)
table(pred, learning.test[, "A"])
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