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I want to have multiple "lines" on the same plot. Multiple data points.

In my example, how can I include the 'xa' and 'xb' data points.

This is what I have for just one set of data points but I want two. How can I modify this script.


da <- c("2012-02-02 09:01:00", "2012-02-02 09:02:00", "2012-02-02 09:03:00")
db <- c(0.4, 0.6, 0.5)

xa <- c("2012-02-02 09:01:00", "2012-02-02 09:02:00", "2012-02-02 09:03:00")
xb <- c(0.3, 0.43, 0.7)

da2 <- as.POSIXct(da)
dfx <- data.frame(da2, db)


png('time_data_errs6b.png', width=640, height=480)
gg <- qplot(da2, db, colour='red')+
    opts(title = 'Requests App')+xlab('Time')+ylab('Requests') +

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Observation: the gg <- qplot(...) statement now (June 2015; R version 3.1.1) generates Error: Use 'theme' instead. (Defunct; last used in version 0.9.1). The error refers to the use of opts(title='Requests App'). It appears that the direct replacement for opts (in this context) is labs(title='Requests App'), optionally modified by a theme such as theme(plot.title = element_text(size = rel(2), colour = "blue")). –  Jonathan Leffler Jun 19 at 22:23

2 Answers 2

up vote 5 down vote accepted

I would make two data.frames and merge them by the time variable.

> df.a<-data.frame(time=da, value.a=db)
> df.b<-data.frame(time=xa, value.b=xb)
> df.mix<-merge(df.a, df.b, by='time')

> df.mix
                 time value.a value.b
1 2012-02-02 09:01:00     0.4    0.30
2 2012-02-02 09:02:00     0.6    0.43
3 2012-02-02 09:03:00     0.5    0.70

Convert to POSIXct like you did then melt it to a long format.

> df.mix$time<-as.POSIXct(df.mix$time)
> df.melt<-melt(df.mix, id.vars='time')

ggplot deals with long format data very well, so its usually my goal to get data into a suitable structure with melt and merge before plotting.

> ggplot(df.melt, aes(x=time, y=value, colour=variable)) + geom_path()

I also like to uses the base ggplot rather than qplot for my own readability. but thats a matter of preference.

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Nice, that works. –  Berlin Brown Feb 3 '12 at 15:52
This was very helpful. One question: can you explain your comment on using ggplot rather than qplot? –  amh Apr 19 '12 at 0:28
When I build a complex plot, I like the syntax of using ggplot to establish the variables common to all geoms and the individual geom to assign their specifics. ggplot(df, aes(x=time, y=value)) + geom_line(aes(color=some_category)) + geom_point(aes(size=some_other_category)) does that help? if not, feel free to ask a question of your own and I'll chime in. –  Justin Apr 19 '12 at 1:24

Here is a much simpler approach, without the need to merge or melt data.

df_a <- data.frame(time = da, value = db)
df_b <- data.frame(time = xa, value = xb)
ggplot(df_a, aes(x = as.POSIXct(time), y = value)) +
  geom_line(col = 'red') + 
  geom_line(col = 'blue', data = df_b)
share|improve this answer
I find this approach more complex. It requires two separate geoms and makes it significantly more complicated if you need a legend or need more than two coloring variables. –  Justin Feb 3 '12 at 17:15
for the question in the post, i think it is a really round-about solution to merge then melt data, when you could do with a fewer operations and lines of code. for a more generic problem, yes the efficiency gains might pay off. –  Ramnath Feb 3 '12 at 17:37
True, but its hard to pass up a teachable moment! –  Justin Feb 3 '12 at 17:38
Either way. Can I simply add another geom_line if I need to add another line/set of points. –  Berlin Brown Feb 4 '12 at 0:07

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