Generates a scatter plot of the input data of a svm
fit for
classification models by highlighting the classes and support
vectors. Optionally, draws a filled contour plot of the class regions.
# S3 method for svm
plot(x, data, formula, fill = TRUE, grid = 50, slice = list(),
symbolPalette = palette(), svSymbol = "x", dataSymbol = "o", ...)
An object of class svm
data to visualize. Should be the same used for fitting.
formula selecting the visualized two dimensions. Only needed if more than two input variables are used.
switch indicating whether a contour plot for the class regions should be added.
granularity for the contour plot.
a list of named values for the dimensions held constant (only needed if more than two variables are used). The defaults for unspecified dimensions are 0 (for numeric variables) and the first level (for factors). Factor levels can either be specified as factors or character vectors of length 1.
Color palette used for the class the data points and support vectors belong to.
Symbol used for support vectors.
Symbol used for data points (other than support vectors).
additional graphics parameters passed to
filled.contour
and plot
.
# NOT RUN {
## a simple example
data(cats, package = "MASS")
m <- svm(Sex~., data = cats)
plot(m, cats)
## more than two variables: fix 2 dimensions
data(iris)
m2 <- svm(Species~., data = iris)
plot(m2, iris, Petal.Width ~ Petal.Length,
slice = list(Sepal.Width = 3, Sepal.Length = 4))
## plot with custom symbols and colors
plot(m, cats, svSymbol = 1, dataSymbol = 2, symbolPalette = rainbow(4),
color.palette = terrain.colors)
# }
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