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# Colouring plot by factor in R

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

``````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 '14 at 5:52
Hi there, I'd like to point out that this method of setting the colors for the legend can mix them up. Better to use the method below, in John's comment. Call "levels" instead of "unique" to get the possible values from the factor. – Eleanor Dec 3 '14 at 19:30
Your answer worked for me, but how would you achieve the same result using ggplot2? – thomasrive Jan 30 at 11:24
Be very careful with using this method, as the colors are typically not the correct species with this code. You really need to first add a column for the species number, then sort your data frame based on the variable of interest, then plot and reference that species number for the color. Or use levels() as others have mentioned, if it is a factor. – Adam Erickson Feb 19 at 16:33

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

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:

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.

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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

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)
``````

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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

There are two ways that I know of to color plot points by factor and then also have a corresponding legend automatically generated. I'll give examples of both:

1. Using ggplot2 (generally easier)
2. Using R's built in plotting functionality in combination with the `colorRampPallete` function (trickier, but many people prefer/need R's built-in plotting facilities)

For both examples, I will use the ggplot2 diamonds dataset. We'll be using the numeric columns `diamond\$carat` and `diamond\$price`, and the factor/categorical column `diamond\$color`. You can load the dataset with the following code if you have ggplot2 installed:

``````library(ggplot2)
data(diamonds)
``````

# Using ggplot2 and qplot

It's a one liner. Key item here is to give `qplot` the factor you want to color by as the `color` argument. `qplot` will make a legend for you by default.

``````qplot(
x = carat,
y = price,
data = diamonds,
color = diamonds\$color # color by factor color (I know, confusing)
)
``````

Your output should look like this:

# Using R's built in plot functionality

Using R's built in plot functionality to get a plot colored by a factor and an associated legend is a 4-step process, and it's a little more technical than using ggplot2.

First, we will make a `colorRampPallete` function. `colorRampPallete()` returns a new function that will generate a list of colors. In the snippet below, calling `color_pallet_function(5)` would return a list of 5 colors on a scale from red to orange to blue:

``````color_pallete_function <- colorRampPalette(
colors = c("red", "orange", "blue"),
space = "Lab" # Option used when colors do not represent a quantitative scale
)
``````

Second, we need to make a list of colors, with exactly one color per diamond color. This is the mapping we will use both to assign colors to individual plot points, and to create our legend.

``````num_colors <- nlevels(diamonds\$color)
diamond_color_colors <- color_pallet_function(num_colors)
``````

Third, we create our plot. This is done just like any other plot you've likely done, except we refer to the list of colors we made as our `col` argument. As long as we always use this same list, our mapping between colors and `diamond\$colors` will be consistent across our R script.

``````plot(
x = diamonds\$carat,
y = diamonds\$price,
xlab = "Carat",
ylab = "Price",
pch = 20, # solid dots increase the readability of this data plot
col = diamond_color_colors[diamonds\$color]
)
``````

Fourth and finally, we add our legend so that someone reading our graph can clearly see the mapping between the plot point colors and the actual diamond colors.

``````legend(
x ="topleft",
legend = paste("Color", levels(diamonds\$color)), # for readability of legend
col = diamond_color_colors,
pch = 19, # same as pch=20, just smaller
cex = .7 # scale the legend to look attractively sized
)
``````

Your output should look like this:

Nifty, right?

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The `col` argument in the `plot` function assign colors automatically to a vector of integers. If you convert `iris\$Species` to numeric, notice you have a vector of 1,2 and 3s So you can apply this as:

``````plot(iris\$Sepal.Length, iris\$Sepal.Width, col=as.numeric(iris\$Species))
``````

Suppose you want red, blue and green instead of the default colors, then you can simply adjust it:

``````plot(iris\$Sepal.Length, iris\$Sepal.Width, col=c('red', 'blue', 'green')[as.numeric(iris\$Species)])
``````

You can probably see how to further modify the code above to get any unique combination of colors.

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