This function takes the output of a train
object and creates a
line or level plot using the lattice or ggplot2 libraries.
# S3 method for train
ggplot(
data = NULL,
mapping = NULL,
metric = data$metric[1],
plotType = "scatter",
output = "layered",
nameInStrip = FALSE,
highlight = FALSE,
...,
environment = NULL
)# S3 method for train
plot(
x,
plotType = "scatter",
metric = x$metric[1],
digits = getOption("digits") - 3,
xTrans = NULL,
nameInStrip = FALSE,
...
)
an object of class train
.
unused arguments to make consistent with ggplot2 generic method
What measure of performance to plot. Examples of possible values are "RMSE", "Rsquared", "Accuracy" or "Kappa". Other values can be used depending on what metrics have been calculated.
a string describing the type of plot ("scatter"
,
"level"
or "line"
(plot
only))
either "data", "ggplot" or "layered". The first returns a data
frame while the second returns a simple ggplot
object with no layers.
The third value returns a plot with a set of layers.
a logical: if there are more than 2 tuning parameters, should the name and value be included in the panel title?
a logical: if TRUE
, a diamond is placed around the
optimal parameter setting for models using grid search.
an object of class train
.
an integer specifying the number of significant digits used to label the parameter value.
a function that will be used to scale the x-axis in scatter plots.
If there are no tuning parameters, or none were varied, an error is produced.
If the model has one tuning parameter with multiple candidate values, a plot is produced showing the profile of the results over the parameter. Also, a plot can be produced if there are multiple tuning parameters but only one is varied.
If there are two tuning parameters with different values, a plot can be produced where a different line is shown for each value of of the other parameter. For three parameters, the same line plot is created within conditioning panels/facets of the other parameter.
Also, with two tuning parameters (with different values), a levelplot (i.e. un-clustered heatmap) can be created. For more than two parameters, this plot is created inside conditioning panels/facets.
Kuhn (2008), ``Building Predictive Models in R Using the caret'' (10.18637/jss.v028.i05)
# NOT RUN {
# }
# NOT RUN {
library(klaR)
rdaFit <- train(Species ~ .,
data = iris,
method = "rda",
control = trainControl(method = "cv"))
plot(rdaFit)
plot(rdaFit, plotType = "level")
ggplot(rdaFit) + theme_bw()
# }
# NOT RUN {
# }
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