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, ...)
data | an object of class |
---|---|
mapping, environment | unused arguments to make consistent with ggplot2 generic method |
metric | 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. |
plotType | a string describing the type of plot ( |
output | either "data", "ggplot" or "layered". The first returns a data
frame while the second returns a simple |
nameInStrip | a logical: if there are more than 2 tuning parameters, should the name and value be included in the panel title? |
highlight | a logical: if |
... |
|
x | an object of class |
digits | an integer specifying the number of significant digits used to label the parameter value. |
xTrans | 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'' (http://www.jstatsoft.org/article/view/v028i05/v28i05.pdf)
if (FALSE) { library(klaR) rdaFit <- train(Species ~ ., data = iris, method = "rda", control = trainControl(method = "cv")) plot(rdaFit) plot(rdaFit, plotType = "level") ggplot(rdaFit) + theme_bw() }