caret (version 6.0-70)

bagFDA: Bagged FDA

Description

A bagging wrapper for flexible discriminant analysis (FDA) using multivariate adaptive regression splines (MARS) basis functions

Usage

bagFDA(x, ...) "bagFDA"(formula, data = NULL, B = 50, keepX = TRUE, ..., subset, weights, na.action = na.omit) "bagFDA"(x, y, weights = NULL, B = 50, keepX = TRUE, ...)

Arguments

formula
A formula of the form y ~ x1 + x2 + ...
x
matrix or data frame of 'x' values for examples.
y
matrix or data frame of numeric values outcomes.
weights
(case) weights for each example - if missing defaults to 1.
data
Data frame from which variables specified in 'formula' are preferentially to be taken.
subset
An index vector specifying the cases to be used in the training sample. (NOTE: If given, this argument must be named.)
na.action
A function to specify the action to be taken if 'NA's are found. The default action is for the procedure to fail. An alternative is na.omit, which leads to rejection of cases with missing values on any required variable. (NOTE: If given, this argument must be named.)
B
the number of bootstrap samples
keepX
a logical: should the original training data be kept?
...
arguments passed to the mars function

Value

A list with elements
fit
a list of B FDA fits
B
the number of bootstrap samples
call
the function call
x
either NULL or the value of x, depending on the value of keepX
oob
a matrix of performance estimates for each bootstrap sample

Details

The function computes a FDA model for each bootstap sample.

References

J. Friedman, ``Multivariate Adaptive Regression Splines'' (with discussion) (1991). Annals of Statistics, 19/1, 1-141.

See Also

fda, predict.bagFDA

Examples

Run this code
library(mlbench)
library(earth)
data(Glass)

set.seed(36)
inTrain <- sample(1:dim(Glass)[1], 150)

trainData <- Glass[ inTrain, ]
testData  <- Glass[-inTrain, ]


baggedFit <- bagFDA(Type ~ ., trainData)
confusionMatrix(predict(baggedFit, testData[, -10]),
                testData[, 10])

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