Suppose I have the following data frames:

df1 = data.frame(c11 = c(1:5), c12 = c(1:5))
df2 = data.frame(c21 = c(1:5), c22 = (c(1:5))^0.5)
df3 = data.frame(c31 = c(1:5), c32 = (c(1:5))^2)

I want to plot these as lines in the same plot/panel. I can do this by

p <- ggplot() + geom_line(data=df1, aes(x=c11, y = c12)) + 
     geom_line(data=df2, aes(x=c21,y=c22)) + 
     geom_line(data=df3, aes(x=c31, c32))

All these will be black. If I want them in a different color, I can specify the color explicitly as an argument to geom_line(). My question is can I specify a list of a few colors, say 5 colors, such as, red, blue, green, orange, gray, and use that list so that I do not have to explicitly specify the colors as an argument to geom_line() in case of each line. If the plot p contains 2 geom_line() statements then it will color them red and blue respectively. If it contains 3 geom_line statements, it will color them red, blue and green. Finally, how can I specify the legend for these plots. Even if I can give the colors as a vector at the end of p that would be great. Please let me know if the question is not clear.



ggplot2 works best if you work with a melted data.frame that contains a different column to specify the different aesthetics. Melting is easier with common column names, so I'd start there. Here are the steps I'd take:

  • rename the columns
  • melt the data which adds a new variables that we'll map to the colour aesthetic
  • define your colour vector
  • Specify the appropriate scale with scale_colour_manual


names(df1) <- c("x", "y")
names(df2) <- c("x", "y")
names(df3) <- c("x", "y")

newData <- melt(list(df1 = df1, df2 = df2, df3 = df3), id.vars = "x")

#Specify your colour vector
cols <- c("red", "blue", "green", "orange", "gray")

#Plot data and specify the manual scale
ggplot(newData, aes(x, value, colour = L1)) + 
  geom_line() +
  scale_colour_manual(values = cols)

Edited for clarity

The structure of newData:

'data.frame':   15 obs. of  4 variables:
 $ x       : int  1 2 3 4 5 1 2 3 4 5 ...
 $ variable: Factor w/ 1 level "y": 1 1 1 1 1 1 1 1 1 1 ...
 $ value   : num  1 2 3 4 5 ...
 $ L1      : chr  "df1" "df1" "df1" "df1" ...

And the plot itself:

enter image description here

  • 1
    +1 For a cleaner version of my answer... – joran Jun 29 '11 at 19:34
  • @Chase. Thanks! However, the example you have given plots a single line, not three different lines. I suppose I can take care of that by adding group = L1 as an argument to aes(). The problem with that is the legend. Can you please try? The legend does not make sense. The legend has more than three keys in it. – Curious2learn Jun 30 '11 at 5:15
  • @Curious - What's the structure of your real data? Running the code above yields three lines with a legend that makes intuitive sense to me...I'll update my answer with the str of newData and give the plot I'm seeing. Not sure why you'd be getting something else unless your data isn't representative of your example data. You could force L1 to be a factor if needed, though that shouldn't be an issue. – Chase Jun 30 '11 at 5:42
  • @Chase. Thanks for the clarification. For some reason, the L1 variable in my case is an int (1 1 1 1 1 2 2 2 etc.) and not chr. If I correct that, it works. Now I need to figure out how to change the legend title and names. Thanks for your help. – Curious2learn Jun 30 '11 at 6:40
  • 1
    @geotheory - yep, that shouldn't be much of a problem at all. ggplot2 has specific geoms for points and another one that fits a model of your choosing to your data. To adopt the data above to show an xy scatterplot with an abline from the linear model would be geom_point() + geom_smooth(method = "lm"). Check out the ggplot2 website for more details on the different geoms available. – Chase Jul 21 '12 at 14:38

These sorts of questions become much easier to solve if you adjust your thinking to the way that ggplot2 approaches graphics. ggplot2 is organized around the idea that everything that appears in your graph should (in principle) exist as a column in your data frame. (There are exceptions, of course, but this is the general idea.)

So your attempt to build this graph piece by piece, one line at a time, each coming from different data frames and then assigning colors to them is very un-ggplot2ish. If you want to label things in your graph with different colors, your first thought should always be:

How can I encode this color labeling information as a variable?

In this case, the solution is fairly simple. Simply rbind your three data frames together (you'll need to make sure the colnames match up first) and create a new column, say grp that has three levels corresponding to your three data frames:

dat <- rbind(df1,df2,df3)
dat$grp <- rep(factor(1:3),times = c(nrow(df1),nrow(df2),nrow(df3)))

and then map the variable grp to the aesthetic color in the ggplot call:

ggplot(data = dat, aes(x=...,y=...,colour = grp) + 

Finally, if you don't like the default colors, you can specify your own using scale_colour_manual:

+ scale_colour_manual(value = c('green','blue','grey'))

or you can use some nice 'pre-chosen' palettes from scale_colour_brewer.

EDIT: I fixed a typo above to ensure that grp is a factor. Here's my final version:

df1 = data.frame(c1 = c(1:5), c2 = c(1:5))
df2 = data.frame(c1 = c(1:5), c2 = (c(1:5))^0.5)
df3 = data.frame(c1 = c(1:5), c2 = (c(1:5))^2)

dat <- rbind(df1,df2,df3)
dat$grp <- rep(factor(1:3),times=c(nrow(df1),nrow(df2),nrow(df3)))

ggplot(data = dat, aes(x = c1, y = c2, colour = grp)) + 

You dont have to melt, group or gather. Its pretty simple. Just add the color to the geom_line


df1 = data.frame(c11 = c(1:5), c12 = c(1:5))
df2 = data.frame(c21 = c(1:5), c22 = (c(1:5))^0.5)
df3 = data.frame(c31 = c(1:5), c32 = (c(1:5))^2)

p <- ggplot() + geom_line(data=df1, aes(x=c11, y = c12), color= "red") + 
  geom_line(data=df2, aes(x=c21,y=c22), color = "blue") + 
  geom_line(data=df3, aes(x=c31, c32), color = "green")

The result plot

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