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I am making a scatter plot of two variables and would like to colour the points by a factor variable. Here is some reproducible code:

data<-iris
plot(data$Sepal.Length, data$Sepal.Width, col=data$Species)

This is all well and good but how do I know what factor has been coloured what colour??

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maybe library(ggplot2); qplot(Sepal.Length, Sepal.Width, data=iris, colour=Species) would be helpful –  Ben Bolker Oct 11 '11 at 4:44
    
oups, just did not see your comment when answering. –  Matt Bannert Oct 11 '11 at 7:53
    
no problem, I was too lazy/hurried to answer properly –  Ben Bolker Oct 11 '11 at 14:40
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4 Answers

up vote 10 down vote accepted
data<-iris
plot(data$Sepal.Length, data$Sepal.Width, col=data$Species)
legend(7,4.3,unique(data$Species),col=1:length(data$Species),pch=1)

should do it for you. But I prefer ggplot2 and would suggest that for better graphics in R.

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Suggesting ggplot2 for "better graphics in R" is just so wrong. The standard R plotting functions have way more potential. –  Federico Giorgi Mar 20 at 5:52
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The command palette tells you the colours and their order when col = somefactor. It can also be used to set the colours as well.

palette()
[1] "black"   "red"     "green3"  "blue"    "cyan"    "magenta" "yellow"  "gray"   

In order to see that in your graph you could use a legend.

legend('topright', legend = levels(iris$Species), col = 1:3, cex = 0.8, pch = 1)

You'll notice that I only specified the new colours with 3 numbers. This will work like using a factor. I could have used the factor originally used to colour the points as well. This would make everything logically flow together... but I just wanted to show you can use a variety of things.

You could also be specific about the colours. Try ?rainbow for starters and go from there. You can specify your own or have R do it for you. As long as you use the same method for each you're OK.

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+1 for answering the question... –  Aaron Oct 11 '11 at 13:01
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Like Maiasaura, I prefer ggplot2. The transparent reference manual is one of the reasons. However, this is one quick way to get it done.

require(ggplot2)
data(diamonds)
qplot(carat, price, data = diamonds, colour = color)
# example taken from Hadley's ggplot2 book

And cause someone famous said, plot related posts are not complete without the plot, here's the result:

enter image description here

Here's a couple of references: qplot.R example , note basically this uses the same diamond dataset I use, but crops the data before to get better performance.

http://had.co.nz/ggplot2/book/ the manual: http://had.co.nz/ggplot2/

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As pointed out below, the original data have overlapping points, so using stat_sum is handy, e.g.: ggplot(iris,aes(Sepal.Length,Sepal.Width,colour=Species))+ stat_sum(alpha=0.5,aes(size=factor(..n..))) –  Ben Bolker Oct 11 '11 at 14:45
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The lattice library is another good option. Here I've added a legend on the right side and jittered the points because some of them overlapped.

xyplot(Sepal.Width ~ Sepal.Length, group=Species, data=iris, 
       auto.key=list(space="right"), 
       jitter.x=TRUE, jitter.y=TRUE)

example plot

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+1 for lattice. Often I am too automatic = ggplot when being asked questions like this. –  Matt Bannert Oct 11 '11 at 13:21
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