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I'm trying to figure out how to do something with ggplot2 and R that seems like it should be really simple. It's so simple... that I cannot for the life of me figure out how to do it. I'm sure the answer is staring me in the face in the ggplot documentation, but I can't... find it. So. I'm here.

I frequently have datasets a lot like this:

tdf <- data.frame('datetime' = seq(from=as.POSIXct('2012-01-01 00:00:00'), 
             to=as.POSIXct('2012-01-31 23:59:59'), by=1))
tdf$variable <- rep(c('a','b','c'), length.out=length(tdf$datetime))
tdf$value <- sample(1:10, length(tdf$datetime), replace=T)
> head(tdf)
             datetime variable value
1 2012-01-01 00:00:00        a     7
2 2012-01-01 00:00:01        b     3
3 2012-01-01 00:00:02        c     7
4 2012-01-01 00:00:03        a     8
5 2012-01-01 00:00:04        b     2
6 2012-01-01 00:00:05        c     3

That is: I have a categorical variable (a factor), a value for that variable, and a timestamp at which said observation was recorded. I want to plot the sum of the value, for each categorical variable, for a given time "bucket" -- preferably using ggplot2. I would like to do it without having to pre-aggregate it before I visualize it -- that is, I really want the flexibility of leaving the dataset as it is and passing the arguments to ggplot2 to aggregate it at on time. And yet, I'm completely flummoxed. The documentation on geom_line says to use stat='identity' to get sum of value, but once I've done that I can no longer define any kind of bin. If I use stat_summary, I frequently don't get a plot back at all. The closest I've gotten is:

tdf$variable <- factor(tdf$variable)

vis <- ggplot(tdf, aes(x=datetime, y=value, color=variable))
vis <- vis + geom_line(stat='identity')
vis <- vis + scale_x_datetime()

...which at least prints a plot, with a line corresponding to the values of each factor... by second. I cannot get it to bin the sum(value) operation for, say, an hour or a day or a week without doing a bunch of work to pre-aggregate the data.


Edit: Apologies to anyone whose R session choked on this test data. I've cut it back.

share|improve this question
Have you considered using stat_function? It would smooth the data rather than bin it, but that would probably actually work better for your purposes (no sharp transitions between bins) –  David Robinson Mar 4 '13 at 20:53
(-1) you should really consider providing "smaller" data for testing. You killed my R session. –  Arun Mar 4 '13 at 21:02
@DavidRobinson -- haven't looked at that one -- I'll give it a try. Thanks! –  Gastove Mar 4 '13 at 21:12
@Arun -- apologies. I've tightened it down. –  Gastove Mar 4 '13 at 21:13
@DavidRobinson okay, I'm pretty much stumped with stat_function; I'm beginning to think I just don't understand how the ggplot2 docs are written. Any chance you could provide an example? –  Gastove Mar 4 '13 at 21:28

1 Answer 1

up vote 4 down vote accepted

Alright, I think this is what you want. I've cut down your dataset dramatically, the posted one is waaaay to big for a testing this stuff out.

tdf <- data.frame('datetime' = seq(from=as.POSIXct('2012-01-01 00:00:00'), to=as.POSIXct('2012-01-01 00:10:59'), by=1))
tdf$variable <- rep(c('a','b','c'), length.out=length(tdf$datetime))
tdf$value <- sample(1:10, length(tdf$datetime), replace=T)
tdf$variable <- factor(tdf$variable)

vis2 <- ggplot(tdf, aes(datetime, color=variable)) + 
geom_bar(binwidth=5,aes(weight=value),position="dodge") + 
scale_x_datetime(limits=c(min(tdf$datetime), max(tdf$datetime)))

geom_bar uses stat_bin so you can change your bins. By default it gets teh counts, but if you want the sum, you can add the weight argument in aes(). Let me know if this is not answering your question.

BTW, with the way this specific data is setup, is would probably make sense to separate your variables, using something like facet, ie:

vis2 <- ggplot(tdf, aes(datetime, fill=variable)) + 
geom_bar(binwidth=100,aes(weight=value),position="dodge") + 
scale_x_datetime(limits=c(min(tdf$datetime), max(tdf$datetime))) + 

Otherwise it might look like the variable are across different time bins.

share|improve this answer
I'm going to try this right now. –  Gastove Mar 4 '13 at 22:24
A question: what does binwidth mean in this context? Seconds? Minutes? Is there a way to assign a particular temporal value to binwidth? Good point about faceting -- that's definitely something I've been looking at doing. –  Gastove Mar 4 '13 at 22:40
It is seconds in this example, because that is how your data is broken down in this example. If you had an observation every minute, it would be minutes. –  alexwhan Mar 4 '13 at 22:52
Okay. The follow-up question then is, does binwidth=5 mean 'width of 5 seconds,' or 'width of 5 observations?' Is there a way to bin by a set amount of time? –  Gastove Mar 4 '13 at 23:03
binwidth=5 means width of 5 seconds. You can check by doing binwidth=60, and you'll see that it's broken at each minute. –  alexwhan Mar 4 '13 at 23:07

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