How do I plot the equivalent of contour (base R) with ggplot2? Below is an example with linear discriminant function analysis:

iris.lda<-lda(Species ~ Sepal.Length + Sepal.Width + Petal.Length + Petal.Width, data =    iris)
datPred<-data.frame(Species=predict(iris.lda)$class,predict(iris.lda)$x) #create data.frame

#Base R plot

#Create decision boundaries
iris.lda2 <- lda(datPred[,2:3], datPred[,1])
x <- seq(min(datPred[,2]), max(datPred[,2]), length.out=30)
y <- seq(min(datPred[,3]), max(datPred[,3]), length.out=30)
Xcon <- matrix(c(rep(x,length(y)),
             rep(y, rep(length(x), length(y)))),,2) #Set all possible pairs of x and y  on a grid

iris.pr1 <- predict(iris.lda2, Xcon)$post[, c("setosa","versicolor")] %*% c(1,1)    #posterior probabilities of a point belonging to each class 
contour(x, y, matrix(iris.pr1, length(x), length(y)), 
    levels=0.5, add=T, lty=3,method="simple") #Plot contour lines in the base R plot
iris.pr2 <- predict(iris.lda2, Xcon)$post[, c("virginica","setosa")] %*% c(1,1)
contour(x, y, matrix(iris.pr2, length(x), length(y)), 
    levels=0.5, add=T, lty=3,method="simple") 

#Eqivalent plot with ggplot2 but without decision boundaries
ggplot(datPred, aes(x=LD1, y=LD2, col=Species) ) + 
geom_point(size = 3, aes(pch = Species))

It is not possible to use a matrix when plotting contour lines with ggplot. The matrix can be rearranged to a data-frame using melt. In the data-frame below the probability values from iris.pr1 are displayed in the first column along with the x and y coordinates in the following two columns. The x and y coordinates form a grid of 30 x 30 points.

df <- transform(melt(matrix(iris.pr1, length(x), length(y))), x=x[X1], y=y[X2])[,-c(1,2)]

I would like to plot the coordinates (preferably connected by a smoothed curve) where the posterior probabilities are 0.5 (i.e. the decision boundaries).

up vote 6 down vote accepted

You can use geom_contour in ggplot to achieve a similar effect. As you correctly assumed, you do have to transform your data. I ended up just doing

pr<-data.frame(x=rep(x, length(y)), y=rep(y, each=length(x)), 
    z1=as.vector(iris.pr1), z2=as.vector(iris.pr2))

And then you can pass that data.frame to the geom_contour and specify you want the breaks at 0.5 with

ggplot(datPred, aes(x=LD1, y=LD2) ) + 
    geom_point(size = 3, aes(pch = Species,  col=Species)) + 
    geom_contour(data=pr, aes(x=x, y=y, z=z1), breaks=c(0,.5)) + 
    geom_contour(data=pr, aes(x=x, y=y, z=z2), breaks=c(0,.5))

and that gives

ggplot with probability contour boundaries

  • To draw a line, we have to go through a contour plot? Is there no other way using geom_line? – user3236841 May 2 '17 at 4:43

The partimat function in the klaR library does what you want for observed predictors, but if you want the same for the LDA projections, you can build a data frame augmenting the original with the LD1...LDk projections, then call partimat with formula Group~LD1+...+LDk, method='lda' - then you see the "LD-plane" that you intended to see, nicely partitioned for you. This seemed easier to me, at least to explain to students newer to R, since I'm just reusing a function already provided in a way in which it wasn't quite intended.

Your Answer


By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.