Let's say I have a histogram with two overlapping groups. Here's a possible command from ggplot2 and a pretend output graph.

ggplot2(data, aes(x=Variable1, fill=BinaryVariable)) + geom_histogram(position="identity")

Overlapping histograms

So what I have is the frequency or count of each event. What I'd like to do instead is to get the difference between the two events in each bin. Is this possible? How?

For example, if we do RED minus BLUE:

  • Value at x=2 would be ~ -10
  • Value at x=4 would be ~ 40 - 200 = -160
  • Value at x=6 would be ~ 190 - 25 = 155
  • Value at x=8 would be ~ 10

I'd prefer to do this using ggplot2, but another way would be fine. My dataframe is set up with items like this toy example (dimensions are actually 25000 rows x 30 columns) EDITED: Here is example data to work with GIST Example

ID   Variable1   BinaryVariable
1     50            T          
2     55            T
3     51            N
..    ..            ..
1000  1001          T
1001  1944          T
1002  1042          N

As you can see from my example, I'm interested in a histogram to plot Variable1 (a continuous variable) separately for each BinaryVariable (T or N). But what I really want is the difference between their frequencies.

up vote 2 down vote accepted

So, in order to do this we need to make sure that the "bins" we use for the histograms are the same for both levels of your indicator variable. Here's a somewhat naive solution (in base R):

df = data.frame(y = c(rnorm(50), rnorm(50, mean = 1)),
                x = rep(c(0,1), each = 50))
#full hist
fullhist = hist(df$y, breaks = 20) #specify more breaks than probably necessary
#create histograms for 0 & 1 using breaks from full histogram
zerohist = with(subset(df, x == 0), hist(y, breaks = fullhist$breaks))
oneshist = with(subset(df, x == 1), hist(y, breaks = fullhist$breaks))
#combine the hists
combhist = fullhist
combhist$counts = zerohist$counts - oneshist$counts
plot(combhist)

So we specify how many breaks should be used (based on values from the histogram on the full data), and then we compute the differences in the counts at each of those breaks.

PS It might be helpful to examine what the non-graphical output of hist() is.

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