Here's another approach using the plyr package:

```
library(plyr)
#Make some fake data
set.seed(1)
dat <- data.frame(subject = rep(c(1,4,2,6), each = 3), rate = sample(1:20, 12, TRUE))
set.seed(1)
#Assign treatment based on the subject ID. This does not ensure that you will get
#at least one subject in each treatment group.
ddply(dat, "subject", transform, treatment = sample(letters[1:2], TRUE))
```

**EDIT - to address your comment**

Given that you want to specify which subject gets assigned to which treatment, Gavin's suggestion of `merge`

is spot on. I would first make a new data.frame that contains one record for each unique subject, assign their treatment, and then merge them together:

```
treatments <- data.frame(subject = unique(dat$subject), treats = c("a", "b", "b", "a"))
merge(dat, treatments)
```

Note that the order of `unique(dat$subject)`

is 1,4,2,6 which corresponds to the order of the values in the original data.frame. If your real problem contains more than four subjects, you may want to consider a more automated way of assigning treatments groups. One approach I've used in the past is to assign a random number to each respondent, and then assign groups based on a given threshold of that random number. It is essentially the same as the approach above, but can ensure that you get equal numbers in each group. For example:

```
dat <- ddply(dat, "subject", transform, treatment = runif(1))
dat <- within(dat, treatment <- ifelse(treatment < quantile(treatment, 0.5),"a", "b"))
```

`Treat`

in my Answer with the mapping you want, then do the merge. You don't need to code before the merge step. I'll update the answer. – Gavin Simpson Jun 14 '11 at 15:02