C50 (version 0.1.6)
Description
Fit classification tree models or rule-based models using Quinlan's C5.0 algorithm
Usage
# S3 method for default C5.0( x, y, trials = 1, rules = FALSE, weights = NULL, control = C5.0Control(), costs = NULL, ... )# S3 method for formula C5.0(formula, data, weights, subset, na.action = na.pass, ...)
Value
An object of class C5.0 with elements:
boostResults
a parsed version of the boosting table(s) shown in the output
call
the function call
caseWeights not currently supported.
control
an echo of the specifications from C5.0Control()
cost
the text version of the cost matrix (or "")
costMatrix
an echo of the model argument
dims
original dimensions of the predictor matrix or data frame
levels
a character vector of factor levels for the outcome
names
a string version of the names file
output
a string version of the command line output
predictors
a character vector of predictor names
rbm
a logical for rules
rules
a character version of the rules file
size
n integer vector of the tree/rule size (or sizes in the case of boosting)
.
tree a string version of the tree file
trials
a named vector with elements Requested (an echo of the function call) and Actual (how many the model used)
Arguments
x
a data frame or matrix of predictors.
y
a factor vector with 2 or more levels
trials
an integer specifying the number of boosting iterations. A value of one indicates that a single model is used.
rules
A logical: should the tree be decomposed into a rule-based model?
weights
an optional numeric vector of case weights. Note that the data used for the case weights will not be used as a splitting variable in the model (see http://www.rulequest.com/see5-win.html#CASEWEIGHT for Quinlan's notes on case weights).
control
a list of control parameters; see C5.0Control()
costs
a matrix of costs associated with the possible errors. The matrix should have C columns and rows where C is the number of class levels.
...
other options to pass into the function (not currently used with default method)
formula
a formula, with a response and at least one predictor.
data
an optional data frame in which to interpret the variables named in the formula.
subset
optional expression saying that only a subset of the rows of the data should be used in the fit.
na.action
a function which indicates what should happen when the data contain NA. The default is to include missing values since the model can accommodate them.
Author
Original GPL C code by Ross Quinlan, R code and modifications to C by Max Kuhn, Steve Weston and Nathan Coulter
Details
This model extends the C4.5 classification algorithms described in Quinlan (1992). The details of the extensions are largely undocumented. The model can take the form of a full decision tree or a collection of rules (or boosted versions of either).
When using the formula method, factors and other classes are preserved (i.e. dummy variables are not automatically created). This particular model handles non-numeric data of some types (such as character, factor and ordered data).
The cost matrix should by CxC, where C is the number of classes. Diagonal elements are ignored. Columns should correspond to the true classes and rows are the predicted classes. For example, if C = 3 with classes Red, Blue and Green (in that order), a value of 5 in the (2,3) element of the matrix would indicate that the cost of predicting a Green sample as Blue is five times the usual value (of one). Note that when costs are used, class probabilities cannot be generated using predict.C5.0().
Internally, the code will attempt to halt boosting if it appears to be ineffective. For this reason, the value of trials may be different from what the model actually produced. There is an option to turn this off in C5.0Control().
References
Quinlan R (1993). C4.5: Programs for Machine Learning. Morgan Kaufmann Publishers, http://www.rulequest.com/see5-unix.html
See Also
C5.0Control(), summary.C5.0(), predict.C5.0(), C5imp()
Examples
Run this codelibrary(modeldata) data(mlc_churn)
treeModel <- C5.0(x = mlc_churn[1:3333, -20], y = mlc_churn$churn[1:3333]) treeModel summary(treeModel)
ruleModel <- C5.0(churn ~ ., data = mlc_churn[1:3333, ], rules = TRUE) ruleModel summary(ruleModel)
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