My questions is similar to Normalizing y-axis in histograms in R ggplot to proportion but I'd like to add to it a bit.

In general, I have 6 histograms in a 2x3 facet design, and I'd like to normalize each of them separately. I'll try to make a sample data set here to give an idea:

```
hvalues=c(3,1,3,2,2,5,1,1,12,1,4,3)
season=c("fall","fall","fall","fall","winter","winter","winter","winter","summer","summer","summer","summer")
year=c("year 1","year 1","year 2","year 2","year 1","year 1","year 2","year 2","year 1","year 1","year 2","year 2")
group=c("fall year 1","fall year 1","fall year 2","fall year 2","winter year 1","winter year 1","winter year 2","winter year 2","summer year 1","summer year 1","summer year 2","summer year 2")
all=data.frame(hvalues,season,year)
```

Using

```
ggplot(all, aes(x=hvalues,group=group)) +
geom_histogram(aes(y=..count../sum(..count..))) +
facet_grid(season ~ year)
```

gives the proportions overall (i.e. combining all the facets). I'd like each group facet to be normalized to 1. hvalues are not integers in my actual data - they are numerical.

I am a novice using R, and would really appreciate some help. Thanks in advance!

`y = ..density..`

.`all`

has to be a dataframe. Try`all <- as.data.frame(cbind(hvalues,season,year))`

.`as.data.frame(cbind(...))`

in place of`data.frame(...)`

.`?stat_bin`

and try the options there. I think maybe`..ncount..`

is what you're looking for.8more comments