In an old statistics textbook, I found a table of a distribution of ages for a country's population:

Percent of Age population ------------------ 0-5 8 5-14 18 14-18 8 18-21 5 21-25 6 25-35 12 35-45 11 45-55 11 55-65 9 65-75 6 75-85 4

I wanted to plot this distribution as a histogram in R, with the age ranges as breaks and the percent of population as the density, but there didn't seem to be a straightforward way to do it. R's `hist()`

function wants you to supply the individual data points, not a pre-computed distribution such as this.

Here's how I went about it.

```
# Copy original textbook table into two data structures
ageRanges <- list(0:5, 5:14, 14:18, 18:21, 21:25, 25:35, 35:45, 45:55, 55:65, 65:75, 75:85)
pcPop <- c(8, 18, 8, 5, 6, 12, 11, 11, 9, 6, 4)
# Make up "fake" age data points from the distribution described by the table
ages <- lapply(1:length(ageRanges), function(i) {
ageRange <- ageRanges[[i]]
round(runif(pcPop[i] * 100, min=ageRange[1], max=ageRange[length(ageRange)-1]), 0)
})
ages <- unlist(ages)
# Use the endpoints of the age class intervals as breaks for the histogram
breaks <- append(0, sapply(ageRanges, function(x) x[length(x)]))
hist(ages, breaks=breaks)
```

It seems like there has to be a less verbose/hacky way of going about it.

*EDIT*: FWIW, here's what the resulting histogram looks like:

`hist`

function allows both counts or density by changing the`freq=FALSE/TRUE`

input. – thelatemail Feb 6 '13 at 5:08