# Stacked histogram from already summarized counts using ggplot2

I would like some help coloring a ggplot2 histogram generated from already-summarized count data.

The data are something like counts of # males and # females living in a number of different areas. It's easy enough to plot the histogram for the total counts (i.e. males + females):

``````set.seed(1)
N=100;
X=data.frame(C1=rnbinom(N,15,0.1), C2=rnbinom(N,15,0.1),C=rep(0,N));
X\$C=X\$C1+X\$C2;
ggplot(X,aes(x=C)) + geom_histogram()
``````

However, I'd like to color each bar according to the relative contribution from C1 and C2, so that I get the same histogram (i.e. overall bar heights) as in the above example, plus I see the proportion of type "C1" and "C2" individuals as in a stacked bar chart.

Suggestions for a clean way to do this with ggplot2, using data like "X" in the example?

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Very quickly, you can do what the OP wants using the `stat="identity"` option and the `plyr` package to manually calculate the histogram, like so:

``````library(plyr)

X\$mid <- floor(X\$C/20)*20+10
X_plot <- ddply(X, .(mid), summarize, total=length(C), split=sum(C1)/sum(C)*length(C))

ggplot(data=X_plot) + geom_histogram(aes(x=mid, y=total), fill="blue", stat="identity") + geom_histogram(aes(x=mid, y=split), fill="deeppink", stat="identity")
``````

We basically just make a 'mids' column for how to locate the columns and then make two plots: one with the count for the total (C) and one with the columns adjusted to the count of one of the columns (C1). You should be able to customize from here.

Update 1: I realized I made a small error in calculating the mids. Fixed now. Also, I don't know why I used a 'ddply' statement to calculate the mids. That was silly. The new code is clearer and more concise.

Update 2: I returned to view a comment and noticed something slightly horrifying: I was using sums as the histogram frequencies. I have cleaned up the code a little and also added suggestions from the comments concerning the coloring syntax.

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this is good except that your legend is wacky. Start with `geom_histogram(aes(x=mid, y=total), fill="blue")` (i.e. put the `fill` specification outside the mapping); then you will need to figure out how to add the guide (legend) manually. –  Ben Bolker Mar 5 '13 at 20:40
@BenBolker Yeah, it's just a quick solution to get the data displaying correctly. Now, the OP just needs to customize from here. –  Dinre Mar 5 '13 at 21:19

Here's a hack using `ggplot_build`. The idea is to first get your old/original plot:

``````p <- ggplot(data = X, aes(x=C)) + geom_histogram()
``````

stored in `p`. Then, use `ggplot_build(p)\$data[[1]]` to extract the data, specifically, the columns `xmin` and `xmax` (to get the same breaks/binwidths of histogram) and `count` column (to normalize the percentage by `count`. Here's the code:

``````# get old plot
p <- ggplot(data = X, aes(x=C)) + geom_histogram()
# get data of old plot: cols = count, xmin and xmax
d <- ggplot_build(p)\$data[[1]][c("count", "xmin", "xmax")]
# add a id colum for ddply
d\$id <- seq(nrow(d))
``````

How to generate data now? What I understand from your post is this. Take for example the first bar in your plot. It has a count of 2 and it extends from `xmin = 147` to `xmax = 156.8`. When we check `X` for these values:

``````X[X\$C >= 147 & X\$C <= 156.8, ] # count = 2 as shown below
#    C1 C2   C
# 19 91 63 154
# 75 86 70 156
``````

Here, I compute `(91+86)/(154+156)*(count=2) = 1.141935` and `(63+70)/(154+156) * (count=2) = 0.8580645` as the two normalised values for each bar we'll generate.

``````require(plyr)
dd <- ddply(d, .(id), function(x) {
t <- X[X\$C >= x\$xmin & X\$C <= x\$xmax, ]
if(nrow(t) == 0) return(c(0,0))
p <- colSums(t)[1:2]/colSums(t)[3] * x\$count
})

# then, it just normal plotting
require(reshape2)
dd <- melt(dd, id.var="id")
ggplot(data = dd, aes(x=id, y=value)) +
geom_bar(aes(fill=variable), stat="identity", group=1)
``````

And this is the original plot:

And this is what I get:

Edit: If you also want to get the breaks proper, then, you can get the corresponding `x` coordinates from the old plot and use it here instead of `id`:

``````p <- ggplot(data = X, aes(x=C)) + geom_histogram()
d <- ggplot_build(p)\$data[[1]][c("count", "x", "xmin", "xmax")]
d\$id <- seq(nrow(d))

require(plyr)
dd <- ddply(d, .(id), function(x) {
t <- X[X\$C >= x\$xmin & X\$C <= x\$xmax, ]
if(nrow(t) == 0) return(c(x\$x,0,0))
p <- c(x=x\$x, colSums(t)[1:2]/colSums(t)[3] * x\$count)
})

require(reshape2)
dd.m <- melt(dd, id.var="V1", measure.var=c("V2", "V3"))
ggplot(data = dd.m, aes(x=V1, y=value)) +
geom_bar(aes(fill=variable), stat="identity", group=1)
``````

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What is your solution doing that `require(reshape2);ggplot(melt(X,id.vars="C"),aes(x=C,fill=variable)) + geom_histogram()` does not do? –  rpierce Nov 8 '13 at 14:16

``````library("reshape2")
@PaulJHurtado I think you misunderstand Ben's code. The total counts will be exactly the same for each bin, since they will be stacked. The 'melt' function just condenses the data and then the histogram option `position="stack"` puts the variables on top of each other. The total height will be the same. I'll add some detail to Ben's answer to hopefully make it clearer. –  Dinre Mar 5 '13 at 19:35
@PaulJHurtado If you really want to preserve the original stack, speak up and I will write up a different function for you. We'll have to flip over to calculating the stacks ourselves and using `stat="identity"` in order to do something like that. –  Dinre Mar 5 '13 at 20:00