# Plotting two variables as lines using ggplot2 on the same graph

A very newbish question, but say I have data like this:

``````test_data <- data.frame(
var0 = 100 + c(0, cumsum(runif(49, -20, 20))),
var1 = 150 + c(0, cumsum(runif(49, -10, 10))),
date = seq.Date(as.Date("2002-01-01"), by="1 month", length.out=100))
``````

How can I plot both time series `var0` and `var1` on the same graph, with `date` on the x-axis, using `ggplot2`? Bonus points if you make `var0` and `var1` different colours, and can include a legend!

I'm sure this is very simple, but I can't find any examples out there.

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Should this sort of question be asked here or at stats.stackexchange.com – fmark Sep 23 '10 at 9:57
I don't see why this is not a place to ask such questions. It is nothing statistical. It is about using the R language and a specific plotting package to produce a plot. – Gavin Simpson Sep 23 '10 at 10:56
@fmark: Programming questions (like this one) go here. Questions about statistical methodology go there. This question would be offtopic there. – smci Mar 29 '14 at 16:02

For a small number of variables, you can use build up the plot manually yourself:

``````ggplot(test_data, aes(date)) +
geom_line(aes(y = var0, colour = "var0")) +
geom_line(aes(y = var1, colour = "var1"))
``````
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nice example, but how to customize my own colours (E.g. black and orange)?, because it seems that you are using `colour=` as the variable name. – Darwin PC Oct 27 at 14:23
Use a scale.... – hadley Oct 28 at 1:56

The general approach is to convert the data to long format (using `melt()` from package `reshape` or `reshape2`)

``````library("reshape2")
library("ggplot2")

test_data_long <- melt(test_data, id="date")  # convert to long format

ggplot(data=test_data_long,
aes(x=date, y=value, colour=variable)) +
geom_line()
``````

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This replicates the test data, but with other data I needed to add a "group = variable" parameter to the aes() call to get it to work properly. – Andy McKenzie Mar 11 at 14:50
Just realized this answer has more votes than the one above it from the guy that wrote the ggplot2 package. Kind of funny. Anyway both answers are helpful have and see. – Will Aug 12 at 19:03

``````test_data <- data.frame(
var0 = 100 + c(0, cumsum(runif(49, -20, 20))),
var1 = 150 + c(0, cumsum(runif(49, -10, 10))),
Dates = seq.Date(as.Date("2002-01-01"), by="1 month", length.out=100))
``````

I create a stacked version which is what `ggplot()` would like to work with:

``````stacked <- with(test_data,
data.frame(value = c(var0, var1),
variable = factor(rep(c("Var0","Var1"),
each = NROW(test_data))),
Dates = rep(Dates, 2)))
``````

In this case producing `stacked` was quite easy as we only had to do a couple of manipulations, but `reshape()` and the `reshape` and `reshape2` might be useful if you have a more complex real data set to manipulate.

Once the data are in this stacked form, it only requires a simple `ggplot()` call to produce the plot you wanted with all the extras (one reason why higher-level plotting packages like `lattice` and `ggplot2` are so useful):

``````require(ggplot2)
p <- ggplot(stacked, aes(Dates, value, colour = variable))
p + geom_line()
``````

I'll leave it to you to tidy up the axis labels, legend title etc.

HTH

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I think you have a misplaced parens in your code up there. I think this is what you are after: stacked <- with(test_data, data.frame(value = c(var0, var1), variable = factor(rep(c("Var0", "Var1"))), each = NROW(test_data), Dates = rep(date, 2))). Also, what is the purpose of the column "each"? And is this not just a more convoluted and less efficient way to melt the data as shown by rcs? I guess I could imagine an instance where melt wouldn't get the job done, but it is almost certainly the right tool for this job unless I'm missing something? – Chase Sep 23 '10 at 12:56
@chase, sorry, that is Emacs ESS getting the indenting wrong. each is an argument to `rep()`, so we really are only getting 3 cols in `stacked`. I'll edit the code to make the indent clearer. – Gavin Simpson Sep 23 '10 at 16:28
@chase; your comment about `melt()` is well taken, and I note that the reshape[2] package would be useful here. I'm not that familiar with reshape2 and for such a simple manipulation doing it by hand is more complex than a call to `melt()`, it was less effort as I didn't need to read how to use `melt()`. And rcs sneaked in with his answer whilst I was producing mine; when I started the reply there had been no answers. more than one way to skin a cat - as they say! ;-) – Gavin Simpson Sep 23 '10 at 16:33