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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.


share|improve this question
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(). enter image description here

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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
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))


share|improve this answer

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')

enter image description here

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.

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(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)

enter image description here

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Here are nice description how to add lines to


using function -




To color them differently you will need


option. To avoid superfluous axes descriptions use




for second and further plots.

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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)
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