How can I make a histogram in which the center of each bar lies along a common axis? This would look like a violin plot with step-shaped edges.

I'd like to do this in Lattice, and don't mind customizing panel functions, etc., but would be happy to use base R graphics or even ggplot2. (I haven't yet thrown myself into ggplot2, but will take the plunge at some point.)

(Why do I want to do this? I think it might be a useful replacement for a violin plot when data is discrete and occurs at a few [5-50] evenly-spaced numeric values. Each bin then represents a point. Of course, I could just generate a normal histogram. But I think that sometimes it's useful to display both a box-and-whisker plot and a violin plot. With discrete data at regular intervals, a symmetrical histogram with the same orientation as a boxplot allows comparison of the detailed structure of the data with the boxplot, just as a violin plot does. In this case the symmetrical histogram could be more informative than a violin plot. (A beanplot might be another alternative for what I just described, although in fact my data is not literally discrete--it just converges to near a series of regular values. This makes R's beanplot package less useful for me, unless I normalize the values by mapping them to the nearest regular value.))

Here is a 30-observation subset of some of the data, which is generated by an agent-based simulation:

```
df30 <- data.frame(crime.v=c(0.2069526, 0.2063516, 0.06919754,
0.2080366, -0.06975912, 0.206277, 0.3457634, 0.2058985, 0.3428499,
0.3428159, 0.06746109, -0.07068694, 0.4826098, -0.06910966, 0.06769761,
0.2098732, 0.3482267, 0.3483602, 0.4829777, 0.06844112, 0.2093492,
0.4845478, 0.2093505, 0.3482845, 0.3459249, 0.2106339, 0.2098397,
0.4844956, 0.2108985, 0.2107984), bias=c("beast", "beast", "beast",
"beast", "beast", "beast", "beast", "beast", "beast", "beast", "beast",
"beast", "beast", "beast", "beast", "virus", "virus", "virus", "virus",
"virus", "virus", "virus", "virus", "virus", "virus", "virus", "virus",
"virus", "virus", "virus"))
```

A dataframe named `df`

with a full set of 600 observations in an Rdata file can be downloaded from this link: CVexample.rdata.

The `crime.v`

values are all near one of the following, which I'll call foci:

```
[1] -0.89115386 -0.75346155 -0.61576924 -0.47807693 -0.34038463 -0.20269232 -0.06500001
[8] 0.07269230 0.21038460 0.34807691 0.48576922 0.62346153 0.76115383 0.89884614
```

(The `crime.v`

values are actually averages of 13 variables, whose values can range from -1 to 1, but which end up converging to values which are in the neighborhood of .9 or -.9. Averages of 13 values at around .9 or -.9 are somewhat near the foci. In practice I determined appropriate values for the foci by examining the data, since there's some additional variation involved.)

A violin plot can be produced with:

```
require(lattice)
bwplot(crime.v ~ bias, data=df30, ylim=c(-1,1), panel=panel.violin)
```

If you run this with the larger dataset, you'll see that one of the violin plots produced is multimodal, while the other isn't. However, this doesn't seem to reflect a difference in the data underlying the two violin plots; it's an artifact due to the locations of the foci in relation to the plot, as far as I can tell. I can smooth away the difference by tweaking the parameters of `density`

passed to panel.violin, but it would be clearer to just represent how many points there are in each cluster.

Thanks!