I don't think I can really satisfy your "without making a new data frame" requirement, but you can create the new data frame on the fly:

```
ggplot(transform(iris,
Species=factor(Species,levels=c("virginica","setosa","versicolor")))) +
geom_histogram(aes(Petal.Width))+ facet_grid(Species~.)
```

I agree it would be nice if there were another way to control this, but `ggplot`

is already a pretty powerful (and complicated) engine ...

Note that the order of (1) the **rows in the data set** is independent of the order of (2) the **levels of the factor**. #2 is what `factor(...,levels=...)`

changes, and what `ggplot`

looks at to determine the order of the facets. Doing #1 (sorting the rows of the data frame in a specified order) is an interesting challenge. I think I would actually doing it by doing #2 first, and then using `order()`

or `arrange()`

to sort according to the numeric values of the factor:

```
neworder <- c("virginica","setosa","versicolor")
library("plyr")
iris2 <- arrange(transform(iris,
Species=factor(Species,levels=neworder)),Species)
```

I can't immediately see a quick way to do this *without* changing the order of the factor levels (you could do it and then reset the order of the factor levels accordingly).

In general, functions in R that depend on the order of levels of a categorical variable are based on factor level order, not the order of the rows in the dataset -- i.e., the answer above is more general than `ggplot2::facet_grid`

.

`facet_grid(factor(Species,levels=c("virginica","setosa","versicolor")) ~ .)`

? [oops, doesn't work] – Ben Bolker Feb 27 '13 at 15:46