I want to overlay a few density plots in R and know that there are a few ways to do that, but they don't work for me for a reason or another ('sm' library doesn't install and i'm noob enough not to understand most of the code). I also tried plot and par but i would like to use qplot since it has more configuration options.

I have data saved in this form

x <- read.csv("clipboard", sep="\t", header=FALSE)
     V1     V2    V3
1    34     23    24
2    32     12    32

and I would like to create 3 overlaid plots with the values from V1, V2 and V3 using or tones of grey to fill in or using dotlines or something similar with a legend. Can you guys help me?

Thank you!

3 Answers 3


generally for ggplot and multiple variables you need to convert to long format from wide. I think it can be done without but that is the way the package is meant to work

Here is the solution, I generated some data (3 normal distributions centered around different points). I also did some histograms and boxplots in case you want those. The alpha parameters controls the degree of transparency of the fill, if you use color instead of fill you get only outlines

x <- data.frame(v1=rnorm(100),v2=rnorm(100,1,1),v3=rnorm(100,0,2))
data<- melt(x)
ggplot(data,aes(x=value, fill=variable)) + geom_density(alpha=0.25)
ggplot(data,aes(x=value, fill=variable)) + geom_histogram(alpha=0.25)
ggplot(data,aes(x=variable, y=value, fill=variable)) + geom_boxplot()

enter image description here

  • It worked! You have to include library "reshape" for the "melt" function to work. But once that happens it works. Thank you!
    – Alex Lungu
    Feb 4, 2014 at 21:54
  • This answer should be in the next edition of the ggplot book.
    – Pete
    Aug 6, 2014 at 17:28
  • Can you still do this if the three variables are of different lengths and in separate files? R complains when trying to merge into a single data frame.
    – cryptic0
    Mar 29, 2018 at 22:02

For the sake of completeness, the most basic way to overlay plots based on a factor is:

ggplot(data, aes(x=value)) + geom_density(aes(group=factor))

But as @user1617979 mentioned, aes(color=factor) and aes(fill=factor) are probably more useful in practice.three density plots overlaid by factor

  • This is more useful for data across a time series. If you want to add colours and legend based on groups, be sure that the grouping variable is a '''factor'''
    – Bob
    Apr 1, 2021 at 11:18

Some people have asked if you can do this when the distributions are of different lengths. The answer is yes, just use a list instead of a data frame.

x <- list(v1=rnorm(100),v2=rnorm(50,1,1),v3=rnorm(75,0,2))
data<- melt(x)
ggplot(data,aes(x=value, fill=L1)) + geom_density(alpha=0.25)
ggplot(data,aes(x=value, fill=L1)) + geom_histogram(alpha=0.25)
ggplot(data,aes(x=L1, y=value, fill=L1)) + geom_boxplot()

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