When you specify `probability=T`

(or better yet `probability=TRUE`

so that you don't get messed up if `T`

is changed to something besides `TRUE`

) is a scaling such that the entire area of the histogram bars add to 1, since the width of your bars is quite a bit less than 1 the heights need to be greater than 1 so that the areas all add to 1. This makes it easy to superpose a density estimate curve or a theoretical density curve or add other references.

In general you should just ignore the tick labels on the y-axis (it would be better if they were not even plotted), they just distract from the important parts of the plot.

Many people think they want the y-axis tick labels to represent the proportion (or percentage) of observations within each grouping (and that is possible with your own custom axis), but I think this is still a distraction. Consider what happens if you change the number of bars/intervals in the histogram, the overall structure of the histogram stays the same (provided you don't make to drastic a change), but the tick labels on the y-axis change, sometimes by quite a bit, so they are better ignored (or not produced in the first place).

If you really think that the percentages (or proportions) are needed then the code is as simple as:

```
x <- rgamma(327, 5, 3)
tmp <- hist(x, yaxt='n',ylab='Percent')
tmp2 <- pretty( tmp$counts/sum(tmp$counts)*100 )
axis(2, at=tmp2*sum(tmp$counts)/100, labels=tmp2)
```

That could be easily wrapped into a function if you wanted.

`estimator=rnorm(100); hist(estimator, probability=TRUE, br=5)`

The y-axis looks like density to me! – Justin Nov 28 '12 at 22:41`plot=FALSE`

as a parameter. This is in`?hist`

– Dason Nov 28 '12 at 22:56