# How to give color to each class in scatter plot in R?

In a dataset, I want to take two attributes and create supervised scatter plot. Does anyone know how to give different color to each class ?

I am trying to use `col == c("red","blue","yellow")` in the plot command but not sure if it is right as if I include one more color, that color also comes in the scatter plot even though I have only 3 classes.

Thanks

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Here is a solution using traditional graphics (and Dirk's data):

``````> DF <- data.frame(x=1:10, y=rnorm(10)+5, z=sample(letters[1:3], 10, replace=TRUE))
> DF
x        y z
1   1 6.628380 c
2   2 6.403279 b
3   3 6.708716 a
4   4 7.011677 c
5   5 6.363794 a
6   6 5.912945 b
7   7 2.996335 a
8   8 5.242786 c
9   9 4.455582 c
10 10 4.362427 a
> attach(DF); plot(x, y, col=c("red","blue","green")[z]); detach(DF)
``````

This relies on the fact that `DF\$z` is a factor, so when subsetting by it, its values will be treated as integers. So the elements of the color vector will vary with `z` as follows:

``````> c("red","blue","green")[DF\$z]
[1] "green" "blue"  "red"   "green" "red"   "blue"  "red"   "green" "green" "red"
``````

You can add a legend using the `legend` function.

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One way is to use the lattice package and xyplot():

``````R> DF <- data.frame(x=1:10, y=rnorm(10)+5,
+>                  z=sample(letters[1:3], 10, replace=TRUE))
R> DF
x       y z
1   1 3.91191 c
2   2 4.57506 a
3   3 3.16771 b
4   4 5.37539 c
5   5 4.99113 c
6   6 5.41421 a
7   7 6.68071 b
8   8 5.58991 c
9   9 5.03851 a
10 10 4.59293 b
R> with(DF, xyplot(y ~ x, group=z))
``````

By giving explicit grouping information via variable `z`, you obtain different colors. You can specify colors etc, see the lattice documentation.

Because `z` here is a factor variable for which we obtain the levels (== numeric indices), you can also do

``````R> with(DF, plot(x, y, col=z))
``````

but that is less transparent (to me, at least :) then `xyplot()` et al.

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``````library(e1071); library(ggplot2)

mysvm      <- svm(Species ~ ., iris)
Predicted  <- predict(mysvm, iris)

mydf = cbind(iris, Predicted)
qplot(Petal.Length, Petal.Width, colour = Species, shape = Predicted,
data = iris)
``````

This gives you the output. You can easily spot the misclassified species from this figure.

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If you have the classes separated in a data frame or a matrix, then you can use `matplot`. For example, if we have

``````dat<-as.data.frame(cbind(c(1,2,5,7),c(2.1,4.2,-0.5,1),c(9,3,6,2.718)))

plot.new()
plot.window(c(0,nrow(dat)),range(dat))
matplot(dat,col=c("red","blue","yellow"),pch=20)
``````

Then you'll get a scatterplot where the first column of `dat` is plotted in red, the second in blue, and the third in yellow. Of course, if you want separate x and y values for your color classes, then you can have `datx` and `daty`, etc.

An alternate approach would be to tack on an extra column specifying what color you want (or keeping an extra vector of colors, filling it iteratively with a `for` loop and some `if` branches). For example, this will get you the same plot:

``````dat<-as.data.frame(
cbind(c(1,2,5,7,2.1,4.2,-0.5,1,9,3,6,2.718)
,c(rep("red",4),rep("blue",4),rep("yellow",4))))

dat[,1]=as.numeric(dat[,1]) #This is necessary because
#the second column consisting of strings confuses R
#into thinking that the first column must consist of strings, too
plot(dat[,1],pch=20,col=dat[,2])
``````
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