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# Plot multiple lines (data series) each with unique color in R

I am fairly new to R and I have the following queries :

I am trying to generate a plot in R which has multiple lines (data series). Each of these lines is a category and I want it to have a unique color.

Currently my code is setup in this way :

First, I am creating an empty plot :

``````plot(1,type='n',xlim=c(1,10),ylim=c(0,max_y),xlab='ID', ylab='Frequency')
``````

Then for each of my category, I am plotting lines in this empty plot using a "for" loop like so :

``````for (category in categories){
lines(data.frame.for.this.category, type='o', col=sample(rainbow(10)), lwd=2)
}
``````

There are 8 categories here, and so there are 8 lines produced in the plot. As you can see, I am trying to sample a color from the rainbows() function to generate a color for each line.

However, when the plot is generated, I find that there are multiple lines which have the same color. For instance, 3 of those 8 lines have green color.

How do I make each of these 8 lines have a unique color ?

Also, how do I reflect this uniqueness in the legend of the plot ? I was trying to lookup the `legend()` function, however it was not clear which parameter I should use to reflect this unique color for each category ?

Any help or suggestions would be much appreciated.

Thanks.

-
YOu might want to change col=category, then you might see the different colours for each series. Can you give us sample data to work with ? ggplot2 can be a easier option for this. – Jdbaba Feb 13 '13 at 18:09

If your data is in wide format `matplot` is made for this and often forgotten about:

`````` dat <- matrix(runif(40,1,20),ncol=4) # make data
matplot(dat, type = c("b"),pch=1,col = 1:4) #plot
legend("topleft", legend = 1:4, col=1:4, pch=1) # optional legend
``````

There is also the added bonus for those unfamiliar with things like `ggplot` that most of the plotting paramters such as `pch` etc. are the same using `matplot()` as `plot()`.

-
Thank you so much for pointing this out! – SirRichie Mar 3 '15 at 16:42

If you would like a `ggplot2` solution, you can do this if you can shape your data to this format (see example below)

``````# dummy data
set.seed(45)
df <- data.frame(x=rep(1:5, 9), val=sample(1:100, 45),
variable=rep(paste0("category", 1:9), each=5))
# plot
ggplot(data = df, aes(x=x, y=val)) + geom_line(aes(colour=variable))
``````

-

You have the right general strategy for doing this using base graphics, but as was pointed out you're essentially telling R to pick a random color from a set of 10 for each line. Given that, it's not surprising that you will occasionally get two lines with the same color. Here's an example using base graphics:

``````plot(0,0,xlim = c(-10,10),ylim = c(-10,10),type = "n")

cl <- rainbow(5)

for (i in 1:5){
lines(-10:10,runif(21,-10,10),col = cl[i],type = 'b')
}
``````

Note the use of `type = "n"` to suppress all plotting in the original call to set up the window, and the indexing of `cl` inside the for loop.

-
(Imo) a great solution for beginners in R :) – Christophe De Troyer Jun 19 '14 at 16:45

Using @Arun dummy data :) here a `lattice` solution :

``````xyplot(val~x,type=c('l','p'),groups= variable,data=df,auto.key=T)
``````

-

Here are nice description how to add lines to

plot()

using function -

par(new=T)

option

To color them differently you will need

col()

option. To avoid superfluous axes descriptions use

xaxt="n"

and

yaxt="n"

for second and further plots.

-

Here is a sample code that includes a legend if that is of interest.

``````# First create an empty plot.
plot(1, type = 'n', xlim = c(xminp, xmaxp), ylim = c(0, 1),
xlab = "log transformed coverage", ylab = "frequency")

# Create a list of 22 colors to use for the lines.
cl <- rainbow(22)

# Now fill plot with the log transformed coverage data from the
# files one by one.
for(i in 1:length(data)) {
lines(density(log(data[[i]]\$coverage)), col = cl[i])
plotcol[i] <- cl[i]
}
legend("topright", legend = c(list.files()), col = plotcol, lwd = 1,
cex = 0.5)
``````
-